From 99678b9792de1a909058098ec61888de69029e4b Mon Sep 17 00:00:00 2001 From: heyarne Date: Tue, 16 Feb 2021 17:02:06 +0000 Subject: [PATCH] Remove unnecessary helper `scihub_product_ids` --- ...oad and plot single true-color image.ipynb | 7 +- .../01a Download from Scihub.ipynb | 13 +- true-color-image/01aa Coverage Analysis.ipynb | 991 ---- true-color-image/01c Coverage Analysis.ipynb | 4968 +++++++++++++++++ ...aic.ipynb => 01d Brandenburg Mosaic.ipynb} | 0 5 files changed, 4973 insertions(+), 1006 deletions(-) delete mode 100644 true-color-image/01aa Coverage Analysis.ipynb create mode 100644 true-color-image/01c Coverage Analysis.ipynb rename true-color-image/{01c Brandenburg Mosaic.ipynb => 01d Brandenburg Mosaic.ipynb} (100%) diff --git a/true-color-image/01 Download and plot single true-color image.ipynb b/true-color-image/01 Download and plot single true-color image.ipynb index 3864085..5c409ce 100644 --- a/true-color-image/01 Download and plot single true-color image.ipynb +++ b/true-color-image/01 Download and plot single true-color image.ipynb @@ -307,7 +307,6 @@ ], "source": [ "from tqdm.notebook import tqdm\n", - "from sentinel_helpers import scihub_product_ids\n", "\n", "gdf = gdf.sort_values(by='cloudcoverpercentage', ascending=False)\n", "geometry = footprint.iloc[0].geometry\n", @@ -551,7 +550,7 @@ }, { "cell_type": "code", - "execution_count": 11, + "execution_count": 19, "metadata": {}, "outputs": [], "source": [ @@ -559,8 +558,8 @@ "dst_path = Path('input/raster/true_color_pipeline')\n", "! mkdir -p {dst_path}\n", "\n", - "subset = scihub_product_ids(gdf.loc[:idx])\n", - "downloads = api.download_all(subset, dst_path)" + "product_ids = gdf.loc[:idx, 'uuid'].values\n", + "downloads, _m _ = api.download_all(subset, dst_path)" ] }, { diff --git a/true-color-image/01a Download from Scihub.ipynb b/true-color-image/01a Download from Scihub.ipynb index f6a7830..bd051e2 100644 --- a/true-color-image/01a Download from Scihub.ipynb +++ b/true-color-image/01a Download from Scihub.ipynb @@ -833,15 +833,6 @@ "! mkdir -p {dst_path}" ] }, - { - "cell_type": "code", - "execution_count": 21, - "metadata": {}, - "outputs": [], - "source": [ - "from sentinel_helpers import scihub_product_ids" - ] - }, { "cell_type": "code", "execution_count": 22, @@ -908,7 +899,7 @@ } ], "source": [ - "downloads = api.download_all(scihub_product_ids(largest_intersections), dst_path)\n", + "downloads, _, _ = api.download_all(largest_intersections['uuid'].values, dst_path)\n", "downloads" ] }, @@ -926,7 +917,7 @@ } ], "source": [ - "downloaded_bytes_total = sum(p['downloaded_bytes'] for p in downloads[0].values())\n", + "downloaded_bytes_total = sum(p['downloaded_bytes'] for p in downloads.values())\n", "print(f'Downloaded {(downloaded_bytes_total / 1024 ** 3):.2f}GB')" ] }, diff --git a/true-color-image/01aa Coverage Analysis.ipynb b/true-color-image/01aa Coverage Analysis.ipynb deleted file mode 100644 index 0785845..0000000 --- a/true-color-image/01aa Coverage Analysis.ipynb +++ /dev/null @@ -1,991 +0,0 @@ -{ - "cells": [ - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "# When is Brandenburg Covered in its Entirety?\n", - "\n", - "When trying to generate mosaics covering the entire federal state of Brandenburg it was discovered that even over relatively long time frames (i.e. four weeks) uncovered areas could be detected.\n", - "This discovery stands in contrast with the claim that the revisit time in that given latitude would be approximately one week.\n", - "This notebook contains the research that was undertaken to find out over which time frame exactly an image of the entire federal state can be generated." - ] - }, - { - "cell_type": "code", - "execution_count": 6, - "metadata": {}, - "outputs": [], - "source": [ - "import sentinel_helpers" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We first fetch the geometry of the area we are interested in" - ] - }, - { - "cell_type": "code", - "execution_count": 2, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "" - ] - }, - "execution_count": 2, - "metadata": {}, - "output_type": "execute_result" - }, - { - "data": { - "image/png": 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/rtFOSlkmhFhKyyX8xnaLLAE+o2PiFwLt5x5KATo0ABrNy3eNIyI4oO3R4LTMWJ74WDX8KS3uyEnhkRlDSOsfqncovdbttYkQIkwIEXHuZ2A2sF8I0X6y7xuBvE5W3w4MEUJkCCECgbuAT/setnvNyoo/rz/AbRNSyDHoYAvFcyKCArj7kjR+f9tYr056cO2MHw8sbS0YGAAskVKuFEJ8LIQYRsvjvBPAgwBCiCRaHtvNkVLahRCPAF/Q8jjvLSnlN+44EHcymQSLf3gJ3xTX0GR1sO5QGX/bdEzvsBQPuy0nRbN5CPTWbeJLKQuAsZ28f2sXyxcDc9q9XgGs6EOMhhAUYG6b33xSRgz/2HKCZrtqAPQnF5sU09t4TzOkQTickoeX7FRJ74esdt+pKqwSv4c2HSnni29K9Q5D0cE3xb5T68HrB+l4Wk56DN+bPJBmu4ODJbV+PyecPyk820hJdSOJUSHdL2xwKvF7KDwogGduGgXA2Xor17/6laox70cKz6rE93v9wgJZ+9h08svqqKiz8lHuqba6fqkxIdw9aSBNNgfVjTbWHCyl8GwjA/uH0mB1UH6R+eIV41q2q4iJ6d7frVslfh8FBZgZmRQFwGWZsdwwNomis43cOiGFqJBvq6/8aPoglmw9SWq/UBYs+3YG2YzYMOqa7eqLwEsM9PLn9+eoxNeQySS4emTnxRcSo0L42exhABwoqeHtzceZMqg/f7hjLJvzK/hsbzHrD1d4MlylhwbFhhm6qk5PqMTXwSUZMdw/LYPUmJazx+05qdyek8rY366iurHjzD+K/oItJl7/zngiDFpDr6fU4zwdXDs6sS3p2xuXFu35YBSXXDc6iRGJkXqHoRmV+AbSvkKQYixltU16h6ApdalvIBPS1EAgo9p0pILrXtnE6OQohsZHkBYTSlZSJEnR3vloTyW+gVwxLI7MuHDyVQVgQ/qmuOa83nuBASaWPzpN96KavaEu9Q1ECDALNfmHt7DanTz47g6vvA1QiW8Qa/NK+cu6o21zACreoaCinkcW76K+2a53KD2iEt8ApJSsyyvnpTWH9Q5F6YVtxyu5e9FWr5qXQSW+ARRVNfL/t57QOwylD/acquKqP27g5TVHKKk2/tgNlfgGUFbbTEyod5RlVrpW3WjjpTWHmf779fx1/VHsBq7UrBLfAMan9ePK4XF6h6FoxOpw8ruVeSz6yrjl2VTiG8CmI+WsPqiKe/iaFz7P46/rj+odRqdU4hvA1oJKqhpUH31f9PKXh9lbWKV3GB2oxDeAmVnxJEQG6x2G4gZNNif3v5NruGHXKvENIDs1mksGeX9xB6Vz5bXNPPXJfkM19qnEN4hrRiZgNqlee77q8/2nWfnNab3DaKMS3yBmZsUzJiVK7zAMwyQ4r4KRL3hm+QHe2GCMxj6V+AZhMZvUfX6rsEAzix+YzE9nDul+YS9SWtPM71bmGaI4q0p8Azl02vf76X9v8kDe/N6Eiy5jc0re336SWSMTGOaFI98uRkqYt/Brdpw4q2scKvENJDrUty5tLxQXEURseBBjU6I7fHbvlIHcPy2D+Mggtj55FS/eNpbk6BD+/eg0HpmR6flg3ehkZQO3v7GZF7/Io8mmz+w8ajy+QdQ3231qppb2okIsSCm5ZXwKP545hLP1VsKDAqhrHdE2Pi2an187nNDAAB69MpPodt2XAwNM1Fu9a+SbK5wSXl93lA+2F/Lfs4Yyb1IqwoNDsoWU0mM7c1VOTo7Mzc3VOwy3+8eW45TWNBFiMfPX9Uept/rO3GznxIYHsumJKwkJNJ/3vtXuZEvBGZxOyeRB/Tt8fs66vDJ+8PZ2T4Sqq8EDwvjjHdlkp0Zrtk0hxA4pZU5nn6kzvo4GDwjnqU+8btbwHvnJzKGdJnVggInpQwd0u/5n+0rcEZbhHC2v5843t/Cr60bwvSnpbt+fusfXUUKUb7bij0yKZFJGS4ekspq+VaeZMqi/FiF5hWa7k2eWH6TYA63+6oyvIyPeZvXVDy/L4KErMukXFsiuk2dZd6gcm8OJxdy7c8zc7CQuGxrL7pNV/HHVYZ+vUGR1OFlzsJR73HzWV2d8HcVFBhMe5FvfvSv2nebjnYUAjEvrx3/PGtrrpAcIMJuIiwhm9sgEPnxwis893uvM0/8+wF/W57t1HyrxdfTql0faWrZ9RVFVI2M1bKBqLyrEwoofX4bF7Ntdm+1OSVmNewf1qMTXSXFVI3/bZNxCDb11w9gkhsSFu237ZpPwqRltOnNnTiq/uXGkW/fhW9eZXmTNwVLMJoHD6Tv3+ZHBAbw6b5zb97Pkh5PZcvQM249XsnBjgdv352mXu/C0o69cOuMLIY4LIfYJIXYLIXJb33tRCJEnhNgrhFgqhIh2dV0Fjlc0sOHxK7hlXLLeoWhmsoda4MODApiVFU9seCBXDBtAgA+NaowOtXDdmES376cnl/ozpJTZ7ToErAZGSSnHAIeBJ3uwrt976oYsTEKw9lBZ23u/nDOcjNgwHaPqm6gQCxsPl9PooY5I8y8f7FJfAG9S1WAjv8z9Ty56fY8vpVwlpTzXMvU1kKJNSP5j3aGytpJbVwwbwPzLB3PD2CSdo+q9j3YUcs9b25j95w1U1lvdvr9V35zmt/8+gN2HbpcAlu8tcfstoKv3+BJYJYSQwJtSyoUXfH4f8EEv1wVACDEfmA+QlpbmYljebd7ENCpqrQRbTMxorbI7NzuJ19YeoV9oII02B5HBFk73sROMp901MY2YMPeXC//iG98sUPrnNUcQCH7sxmHJrib+VCllsRAiDlgthMiTUm4EEEIsAOzA4p6u217rF8JCaOmr3+Mj8UImU8df7uAB4bx0ZzazsxJ4evkBlu8p1im63rluTCIPe2A0nd3hpKDCdycXHRzn3ls+ly71pZTFrf+WAUuBSQBCiHuB64HvyC66oXW1rtK1udnJhASayU6NYkBkkN7huGx2Vjwv3jbGI/v6Kr8Ci8nEi7eNIWegb00v/rNZQ7l+jHtv+bo94wshwgCTlLK29efZwNNCiGuAnwPTpZQNPVlXu/B921Uj4nnxC++ZT+/hGZmEBnrmCfHUzFjGD+xHZLCF23NS+XD7KTYcLmfrsUqvmsPuQoEBJmaPTHD7flz5LcUDS1vHCgcAS6SUK4UQ+UAQLZfvAF9LKR8UQiQBi6SUc7pa1w3H4ZPe+uqYV/0RB1k81x/MYjad1xX4jompjEmN4rbqJh77cA9nPNC46A6/viGLYQnu75asxuMbVJPNQfbTq2iyGackc3cemJbBr67P0jsMbA4n8/+Ry7pD5XqH4rLk6BBuGpfE41cP12ybajy+F1q89aRXJT3AJQYYQut0Sj7ff5otBWf0DsVlQ+LC+fej0wi2dF6MxB1UX30Dyi+rY9muIr3DcJnFLHjnvknMyorv8NmpygYWbSrgy3ZzA3Z3lXmqsoF/9/JphskkeGP9Ua/60hyWEOHRpAd1xjek09VNxIZ7z7TZNodk5f7TjEmOol/r8/vNRyt44fM89hZWA3Dp4P5kp0az8Ug5h07X8fjVw1i2q4ibxiW3TSQipeShxTtZc7AUi9nEVSPietVYmNIvhAMl3lO/MCLY82moEt+Apg2JJSEqmHWHNugdisve23aSoqpGbh2fTL/QQH7x8V6Kq7/teLT56BkmPLsGaBlht/5QGXmna1n5zWleuGU0/cODEEJw/EwDNofE5nDw6tp87A4np2uaeWBaRttwXyllp4UpqxttLNpUwM6TVZ44ZM08dIXnqwirxDeov//H+4bsbjxczoHiairqLt6i7nBK8lrnEFh9oJQmm4MF141geEIk49OiOdh6tm4/xXRZTRNZSZGcONPy5HjRPTmY2g3OOVPXzG1vbOFYRb3Wh+V2G4+U851LBnp0n6pV36COlNZyzcubfGrY7sVMy4wlOzWapbuKXJpp5p4pAyk628ivrs9qG9j0/b9vY70XteSfExViYfuCmQQGaNvkplr1vUxds51b/rrZb5IeWnrifZVf4fLy/9hyAoDbJqRwtsHKs8sPsKe1PcHbVDfaqGq0EhfhueKrqlXfgMKDAvivKwbrHYZXuHpkAn/44hA7T1b51RdlX6nEN6h7p6Tr0trrTSxmwad7itl81Hue2Xfl4x2efXyrEt+g3tt2ktom3yrEqTWbQ/KTD3brHYYmiqo6He7iNirxDeh4RT1vbPC9WnJK1z7cXsjK/ac9tj+V+Ab09/941+Acpe+sDmeveyv2hkp8gymqauSfOwr1DkPRwaABnqu3qBLfYD7eUeiTs+Yq3WuwOjw2rZpKfIP51MtKbSna+d+vjrHqQCn1HphdST0vMhhPlaZWjOlH7+7AbBLckZPKnNEJjEmJJirEovl+VOIbSFltE2cbvLNyjKIdh1Py3raTvLftJCEWM5MHxfDnO8cRFardF4C61DeQuIhgFt2b45HS1Ip3aLQ5WHeonEVfaft4VyW+wQyNC+elO8Z69Yw6ivbe2Xwcp4ZdklXiG0xYkIWk6BBqGtUlv/Kt9Niw84Yh95W6xzeQ6gYbV/1pg+q8o3RwtcYlt9UZ30BKa5uobbLpHYZiMLdPSOG/pms7WlMlvkGU1Tax+1QVzXbvKRKpeEZ1ow2tu/WoxDeIl1Yf5ol/7tU7DMWAVh0oZflebTt2qcQ3iEkZMQRpXHpJ8R0hGpffVn9pBnHzuBQSozxXeknxHnNGJ2g+n55KfAN5UOMGHMU3PD13lObbVIlvIHdNSuP3HppmWvEeVW7oxq0S32DuyEklLNCz0ykpxtZo1f5Jj0p8Axo/sJ/eISgGcqBE+7LhKvEN6N37L+E3N2QRGx6kdyiKATyz/CAf5p6ivFa7Hp0q8Q3q+1MzeOe+iXqHoRhAXbOdJ/65lyv/uJ6tGk3/rRLfwEYmRalRekqb2iY7Ty7dp8koPZX4BvfrG7IID1JjqZQWBeX1rDlY2uftqMQ3uCuGxfH03JF6h6EYxORBMcwcEd/n7ahTiRe4eVwygwaE85/8Cl784pDe4Sg6arQ6NBmX71LiCyGOA7WAA7BLKXOEEC8CNwBW4CjwAyllVSfrXgO8DJiBRVLKF/octZ8RQpCdGk12ajQAr63Np9Hm4Cczh2BzOHl93dGLb0DxGcMTIjXZTk8u9WdIKbPbzbe9GhglpRwDHAaevHAFIYQZeB24FsgC5gkhsvoYs197eEYmr8wbx4jESB6cPpi52cloWJhFMbDQQDM/mJauybZ6fY8vpVwlpTxXAPxrIKWTxSYB+VLKAimlFXgfmNvbfSotZmXF8/mPLyPYYmZofAQv3ZnNuLRogi2d/zpjwwP5/MeXMWVQfw9HqmjFJOCJq4d5/IwvgVVCiB1CiPmdfH4f8Hkn7ycDp9q9Lmx9rwMhxHwhRK4QIre8vNzFsBSAudnJLH1oKovu6fjc32IWXD0ygRGJkbx7/yQ2/+JKrhoep0OUSl8IIZgwMEaz7bnauDdVSlkshIgDVgsh8qSUG1sDWgDYgcWdrNfZRWinDyGllAuBhQA5OTmemUfIxwxLiGBqZn+qGmyUVDfRZHOw59ezsZhbvt8DzCaSokP42z05rM0rY9vxShZuVLPyegOHUxIboV3ZdZcSX0pZ3PpvmRBiKS2X8BuFEPcC1wNXyc4n/SoEUtu9TgHUHFFuMiAiiMUPTO52OZNJMDMrnplZ8WSnRvPQ4p0eiE7pix9dPojEqBDNttdt4gshwgCTlLK29efZwNOtrfU/B6ZLKRu6WH07MEQIkQEUAXcBd2sTuqKFyYP6Mzc7iZpGGyOTonBIyV/Xq6cERnOmXtuhua6c8eOBpUKIc8svkVKuFELkA0G0XPoDfC2lfFAIkUTLY7s5Ukq7EOIR4AtaHue9JaX8RtMjUPokJiyQl+8a1/a6utGmEt+APt1TzH1TM8hK0qZxr9vEl1IWAGM7eT+zi+WLgTntXq8AVvQhRsWDIoPP/5MYEBFEdYMNq0NV/9WTwykJ1bBOg+q5p5xHCMHyR6fRYHXwp9WHePTKIUzKiOHrgjN873+36R2e31owZwTpGg7YUomvdDAqOQqA9+dPaXtvZFIUD10xmL+o2wBdaD1KUw3SUVwSExbI2NRoAs3qT8bTRiRGctmQWE23qc74isumZcZy+Llrqay3cqqygdUHSnltXb7eYfm0yOAA7p+WQYDGX7jq61txWVhrXYBzZ/8tF1SDiQqxaD7xgz9LjQnhowcv5bYJnfWG7xt1xld65Wh5HflldQAkRgUzNiWaOyamEB0ayL1vbaO2yd7NFpTuzJuUxrCECLdsWyW+0iuDB4Sz+6lZlNc1E2AyERP2bXfSy4bEsmLfaR2j8353TUzlvqkZbtu+Snyl14QQxEV8O+1XWW0T17/yFWUaVoP1R3///kSuGDaA1o5xbqHu8RXNxEUEkxitXX9yf3Td6EQmZsS4NelBJb6isfumpusdglebf/kgjxRXVYmvaGr60AGk9w/VOwyvVVrT5JH9qMRXNBUdGshzN4/WOwyv9erafGweGBehEl/R3JD4cL1D8Fr7iqqZ/PyXPLxkp1tmyT1HJb6iOZMQDFIzAPXamXorn+0tYdmuIrftQyW+ornjFfUUVNTrHYbX232qym3bVomvaO6dLSf0DsEnRIVY3LZtlfiK5u6floFZFfvvs0/3FFPf7J6uzyrxFbfoH6ZdRVh/FRFs0bTqTnsq8RXNZadG89rd4/UOw+udrGxg+/Gzbtm2SnzFLcKCzKplXwM/ejeX2iab5ttVia9o7vN9JTz20V7Vsq+Bsw02fvbhHs2TXyW+orn02DAOltToHYbPWHWglHl/+5qzGtbWV4mvaKrZ7uCD7ae6X1Dpkf1FNdz6180cOl2ryfZU4iua2ZxfweyXNvL25uN6h+KTCirqWbJVmz4SKvGVPquoa+Yn7+/i7kVbOXGmq9nUFC28s+UEJzX4P1YVeJRek1KyZNtJfr/yENWN2rc8Kx2ZTYLw4L6nrTrjK73mlPDulhMq6T3I4ZSajNpTia/0mtkkePamUbi5SpRyAWdnE9L3kEp8pU9y0mOYOzaJfqEWRrdOvaW41792FvZ5GyrxlT57aEYmT84ZwUcPTuGKYQP0DsfnHdOgY5RKfKXPhsZHcEdOKsEWM6/OG8fDMwbrHZJPEQJub51NJ6VfCL+cM6LP21St+oqmIoItRIeokXm9YRKd379LCfdemk50qIUHLhtEfGRwx4V6uq8+b0FR2qlrtrNwU4HeYXiVuIggHpmRycqfXM74tOgOn8eEBWI2CRZcl6VJ0oNKfEVjFrNgzqgEvcMwPJNoeSpiEnD50AE8dvUwhsZH8MQ1wzsse+ng/oxIjNR0/+pSX9FUUICZ384dxePXDOeRJTtZf6hc75AM5efXDGfO6ATiI4Opa7ZT22Qno93w5YnpMcwcEU9ydDBZSZEcP9PA3ZPSNI9DJb7iFuFBAYxIjPSZxBcCnrx2OEVnGymqaqKu2YbFbGLTkYpu171vagb55XVcPzqRy4bGkhjVMs1YsMVMbHjQecuaTYJF9+a45RjacynxhRDHgVrAAdillDlCiNuB3wAjgElSylxX1+172Io3+N7kgSzcWIBDix4nOrOYTdwyPqVDom45eoav8svJjAvnXzuLzvsiiAgK4E93ZjMrK97T4XarJ2f8GVLK9l9v+4FbgDd7sa7iB5KiQ7hrYiqLt57UO5Q+uX5MIvdemk6j1dHhsymD+zNlcH8Abh6XQkl1I8+vyKPR6uCXc4YzaIAxJxfp9aW+lPIg4PZZPRXv5gMne+6amMbE9BiXlk2MCuHB6YM4dLrWsEkPrrfqS2CVEGKHEGJ+D/fh0rpCiPlCiFwhRG55uW/cF/q7JpuDjYe993dpEjApPYZxnTxiu5iRSVHcMj7FPUFpxNUz/lQpZbEQIg5YLYTIk1Ju1HJdKeVCYCFATk6OD5wnlN98+g3F1Y16h9FrJiF4cs5wwjwwbbWnuXTGl1IWt/5bBiwFJrm6g76sq3i3NQfLkF74FT4qOZK3fzCROaMTO72v9wXdJr4QIkwIEXHuZ2A2LQ173erLuor3++msIQQGeF8fsf1FNWw6UsEr88ZxaWas3uG4hSu/lXjgKyHEHmAb8JmUcqUQ4mYhRCEwBfhMCPEFgBAiSQix4mLran8YihF955KBDHaxgWtEYqShhvXmHq/UOwS36vbmRUpZAIzt5P2ltFy6X/h+MTDnYusq/mHx1hNdltkODDAhgGa7k2CLiWfmjuRkZQO/+HgfVofTs4F2Ijs1mkargxA3TWGlN99rtVAMYcPhcppsTgb2D+20AGdooJlnbxpFoNnE2rwyctJjyEmP4VhFPRsPl5N3upZmuz5fABaz4N5L03026UElvuIm04cO4LLMWBZ/3bEcdGpMCO/8YFLbc+7ZI78d1DNvUho/vHwQS7ae5Hcr83RpHAyxmPHCNske8b6WF8VrmEyCK4fHnffe+LRoNjw2o8vOLUnRIUQGW7h6ZALP3zyatJhQwj34OC0+MoiF9+S43DbhrdQZX3GrOyamUlTVSFFVI7NGxDNtSCwmU/e9PTNiw8iIDWPepDSW7SriJx/sdkt8QQEm7r4kjU92F1NZb+WeKekkR4e4ZV9GohJfcauh8RH89bsTANh2rJJxaf16vI20/qFYzAKB4OZxyWw6Uk5xdVOPthEeFED/8EBOVzfRbHcSFmjmzolpzJuUypD4CE6caaDobCPfvWQgUaGWHsfobVTiKx4zKcO1/u4XGp/Wj+dvHs2Egf0YNCCcNzcc5ZUvj2BzSuwOJ+PT+lHTZKPobCP1rR1uEqOCqay3khoTSojFzA1jE5l/+WAOFNew/XglY1OjyU6NbtvHrKx4is42+kXSAwhpwK5VOTk5Mje301G+ioLTKTGZBFa7EyFahszaHU6Oltez+sBpCs828v2p6aw/VM6D0/238KcQYkdXw+DVGV/xOufaCNr3CgwwmxiWEMGwhIi294YnaFuuypeoVn1F8UMq8RXFD6nEVxQ/pBJfUfyQSnxF8UMq8RXFD6nEVxQ/pBJfUfyQSnxF8UOG7LIrhCgHOg7k9i6xgK9OIqKOzTsMlFIO6OwDQya+LxBC5PrqdGHq2LyfutRXFD+kEl9R/JBKfPdZqHcAbqSOzcupe3xF8UPqjK8ofkglvqL4IZX4GhBCvCWEKBNC7G/33otCiDwhxF4hxFIhRLSOIfZaF8f2TOtx7RZCrBJCJOkZY291dmztPntMCCGFED45eZ5KfG28DVxzwXurgVFSyjHAYeBJTwelkbfpeGwvSinHSCmzgeXAU54OSiNv0/HYEEKkArOAk54OyFNU4mtASrkRqLzgvVVSSnvry6+BFI8HpoEujq39hHhh4J0Tz3R2bK1eAp7AS4/LFarYpmfcB3ygdxBaEkI8B9wDVAMzdA5HM0KIG4EiKeUeIbqf+MNbqTO+mwkhFgB2YLHesWhJSrlASplKy3E9onc8WhBChAIL8N5bF5epxHcjIcS9wPXAd6TvdphYAtyqdxAaGQxkAHuEEMdpuT3bKYRIuOhaXkhd6ruJEOIa4OfAdCllx3mivZgQYoiU8kjryxuBPD3j0YqUch/QNstna/LnSCl9ZbReG3XG14AQ4j1gCzBMCFEohLgfeA2IAFa3PvZ6Q9cge6mLY3tBCLFfCLEXmA38WNcge6mLY/MLqsuuovghdcZXFD+kEl9R/JBKfEXxQyrxFcUPqcRXFD+kEl9R/JBKfEXxQ/8HHHSwLqVvYYwAAAAASUVORK5CYII=\n", - "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "brandenburg = sentinel_helpers.search_osm('Brandenburg, Germany')[:1]\n", - "brandenburg.plot()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Now we fetch all available Sentinel-2 level 2a products on SciHub in the last year:" - ] - }, - { - "cell_type": "code", - "execution_count": 3, - "metadata": {}, - "outputs": [], - "source": [ - "import os\n", - "from sentinelsat import SentinelAPI\n", - "\n", - "api = SentinelAPI(os.getenv('SCIHUB_USERNAME'), os.getenv('SCIHUB_PASSWORD'))" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We simplify the geometry and convert it to wkt we can run intersection queries against the api:" - ] - }, - { - "cell_type": "code", - "execution_count": 4, - "metadata": {}, - "outputs": [], - "source": [ - "footprint = brandenburg.convex_hull[0].wkt" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "The time frame we are interested in spans 4 weeks (i.e. approximately one month in the Gregorian calendar):" - ] - }, - { - "cell_type": "code", - "execution_count": 5, - "metadata": { - "scrolled": true - }, - "outputs": [], - "source": [ - "from datetime import date\n", - "import datetime\n", - "\n", - "end_date = date(2020, 7, 1)\n", - "start_date = end_date - datetime.timedelta(weeks=4)" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "## Which Area Exactly is Covered by the Products?" - ] - }, - { - "cell_type": "code", - "execution_count": 6, - "metadata": {}, - "outputs": [ - { - "name": "stderr", - "output_type": "stream", - "text": [ - "Querying products: 100%|██████████| 181/181 [00:03<00:00, 24.77 products/s]\n", - "/opt/conda/lib/python3.8/site-packages/pyproj/crs/crs.py:53: FutureWarning: '+init=:' syntax is deprecated. ':' is the preferred initialization method. When making the change, be mindful of axis order changes: https://pyproj4.github.io/pyproj/stable/gotchas.html#axis-order-changes-in-proj-6\n", - " return _prepare_from_string(\" \".join(pjargs))\n" - ] - } - ], - "source": [ - "products = api.query(footprint,\n", - " platformname='Sentinel-2',\n", - " processinglevel='Level-2A',\n", - " date=(start_date, end_date))\n", - "products = api.to_geodataframe(products)" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Let's verify visually that we have enough products to cover the area we are interested in:" - ] - }, - { - "cell_type": "code", - "execution_count": 7, - "metadata": {}, - "outputs": [], - "source": [ - "import matplotlib.pyplot as plt\n", - "%matplotlib inline" - ] - }, - { - "cell_type": "code", - "execution_count": 8, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "" - ] - }, - "execution_count": 8, - "metadata": {}, - "output_type": "execute_result" - }, - { - "data": { - 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\n", - "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "# let's get an overview of all products\n", - "ax = products.plot(color='None', edgecolor='blue', alpha=0.1, figsize=(16, 9))\n", - "brandenburg.plot(ax=ax, color='None', edgecolor='gray')" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "In order to be able to conviently reference the products by UTM tile we extract that information from the product identifier and save it in a separate column." - ] - }, - { - "cell_type": "code", - "execution_count": 9, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 T33UUS\n", - "a87c7ff5-8664-4002-9258-7b1508a1de78 T33UUT\n", - "f07d56ae-df3c-4402-a63d-e3879e4e671d T33UVV\n", - "6c1721a4-3628-49dd-a312-788111bf2ce9 T33UVU\n", - "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 T33UVT\n", - "Name: tile, dtype: object" - ] - }, - "execution_count": 9, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products['tile'] = products['identifier'].map(lambda s: s.split('_')[5])\n", - "products['tile'].head()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Some UTM tiles start with `T32` while others start with `T33`:" - ] - }, - { - "cell_type": "code", - "execution_count": 10, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "(75, 106)" - ] - }, - "execution_count": 10, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products['tile'].str.startswith('T32').sum(), products['tile'].str.startswith('T33').sum()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Which tile exactly a product is covering depends on the exact position of the satellite. It also determines the angle of the cutoff of the pixel image. In the plot below `T32…` tiles are plotted in blue and `T33…` tiles are plotted in green:" - ] - }, - { - "cell_type": "code", - "execution_count": 11, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "" - ] - }, - "execution_count": 11, - "metadata": {}, - "output_type": "execute_result" - }, - { - "data": { - "image/png": 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\n", - "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "ax = products[products['tile'].str.startswith('T32')].plot(color='None', edgecolor='blue', alpha=0.1, figsize=(16, 9))\n", - "products[products['tile'].str.startswith('T33')].plot(ax=ax, color='None', edgecolor='green', alpha=0.1)\n", - "brandenburg.plot(ax=ax, color='None', edgecolor='gray')" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We can see that because the satellites are crossing the area more frequently than their repeat frequency, the area covered per orbit is slightly different. This can be made more complicated when dealing with hardware failures. \n", - "\n", - "Each orbit gets a designated `orbitnumber` which allows us to plot all products in our area per orbit." - ] - }, - { - "cell_type": "code", - "execution_count": 28, - "metadata": {}, - "outputs": [ - { - "data": { - "image/png": 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2Zm58Ot8KSLMcBgJqYbKoaL9n2h4jSspmU69LS9V8byzuV1Ymf87dnAbG60AAVlbUMfPzSrZnZ5VxV1eX2u+ZbXLFuIrHrwI/A/yPVJzM5VKheenEyKsxlE2TSQnUXpVrIRLzPHk8Skg7O1WYV0EBtLXBq1d7u+4hJG03zHieq2xjMqmbHCg5NVawYG/yaqxamc3rN8urV1M3Xo1Go4lDSnWEbDM9DW+8sVW5tdmUcdXWppTuQEDN8S5Xdsap2ULK5NCIsEq3zmDoqsZr2J+uaoSwxuoS8QgE1PcznA1VVSo8MZcWoFNFLnwlCXxDCHFfCPFZACHEdwATUsrHOx0ohPisEOKeEOLe3Nzctp9bW1NGSrorhBjGlGFYwf4ENlGEWHd1Gq+NfC/NnjFumPtyIueqcRUKqdeb5TNWdvfC2JhSDgoL9zfGfEcIMSyE6BFCPBJC3Its+2dCiCeRbd8QQjQmeqwm/QwMDPDgwYNsD+MwknYdIdu43cpjUV29dV+8+T0U0iH/WSDtcuhyrecgpROzeT0Py9ATY1+ni1yR5UzoZLnw83xDSjkphKgF/kwI0Q98HvjUbgdKKb8EfAng8uXL2yrBmRJYk2ldWA6jwB5QjBumBH5NSvml2Bum2OFXGLnBfhagtbU1/slz1LgyVq02y+d+5XVoSFeMTILNHtMvSin/KYAQ4u8CPwf8ZILHatLM5OQkAIFAAOtuS7SaVJJ2HSHbjI1tXwBIL57mDBnRVdMdYQUbo1didVXtCEgdWfdcSSknI8+zwFeBd4AO4HEkH6YZeCCE2HPtseXlzBhXoIQzGFwXUi2wOc8bUsqLwLcAf1sI8Tbqhvlzux0opfySlPKylPJyzTZJSrloXBmrVrBVPvfjafX7YW5Oha9okkdKGRvoU8Q+vaaa9HDz5k1mZmaQmcqMPuRkQkfINlNTGyvKxqIXT3ODdMthpiKsYD16JXa+z1SUlaF75LssZ9W4EkIUCSFKjNeoFYC7UspaKWW7lLIdGAcuSimn93KNUEgJbUlJyoa9I0beSbbDAmO9Z5ngoOoZ6b5h5qJxtdlztTkscK9yMzSkEmMzMTnkAVtCTACEEP9cCDEGfD/bG/hxj9WkB7/fj8vloqOjI7qtr68Pj8eTxVEdDjKhI2SbcFgtSm3nsYinkOrF08ySCTnMVIQVbOy7GesIyFaUVT7KcrbtxTrgq5HQKwvwO1LKr6XyAisrKgk0Uwlzhrs1FwQ2H+NYU0nkJmmSUq7E3DB/UUpZG/OZYeDyXkOwjDKluUSscZXKnKvhYdWGQJMQW0JMpJTvSyk/D3xeCPGzwOeAn0/02M0fSiRsVbMzS0tLPHr0CACHwwHAlStXuHv3Li6Xi0KdXJhu0q4jZJvZWVWgYjtRyoX5/aAunqaQtMuhy5W5inmx0SuGfpoJR4CROgP5v1CQVeNKSjkInNvlM+37uUa6S7BvJp5xlQ1XazCoPQgJkPYbZq56royCFqkKC1xbU/0yWlpSMsS8J9ZjKoT4KvAxINZA+h3gj4ljXCVwrPG5A5FvkotIKXn27Blzc3OcOnWKyspKXC4XRUVF2Gw2jh07Rn9/PwUFBZRtmmCMcMGd8jU1iZEJHSHbTE5uHxIIOuw/F0i3HIbDqiJkpiKs4lULzIYjYHNRjXwi256rtONyrTfzzQRGzlUmVwNyYWXrIJKJiTvX+lzB1pyrVBS0GBpSYS1a5nZnO4+pEKJLSvki8rHvAPoTPTZTYz8szM7OMjc3x4kTJzDyKSsqKqL76+rqGBgYYGRkBLvdTigUoqSkhMbGRvr7+5mbm6O7u5twOIzf798QUqjRxDI9DWfPbr8/3mq/nt/zi2xEWBltg7LpCDBSaDK5DnXYmginBaMBX0FB5q65OecqW2GBemUrN8hVz9VOOVd7ucGOjOysIGg2ENdjKoT4fSFENxAGRohUCoyUZP91KeVntjs2C98hLwkGg4yPjzM2NgYoIyoeJpOJ8vJyLBYLxcXFBINBXr16xatXrzCbzZw/f57BwUF8Ph8+n4+WlhYsWhvWbMLvVwW3tqsUCLmTp5Jr81g+sboKxcWZu15sD9Zs1gcIBvN3kSBPv5YiE5b4ZgzPlVGpN1OrAbCuyOuVrdwh142r2BvqXmXV5VJ9WhrjdmXSbGY7j6mU8ru2+fwk8JmdjtWkhg8++ACA5uZmtqsACirk7/z58xu21dTU4HK5qKqqwmq1cvHiRQBu3bqF3+/XxpVmCxMTqrfVTqKhF0/zHykz+/+Ml3OVDUdAPstxXt/ts6HYmkyqGaDdrt5nYjUA1oVW33xzi1w2rjaHBexVVgcHVa5VroU/arJHIBCgr6+P+vp6ampqCIVCOW9cGNX/2tra9hTGV1hYuKXARSAQIBgMYjcmBI0mhunpnfOtYKtCGgqpZ32/zR/C4cwuhm+Xc3VYPFeHpYlw2siWcRVr2ITD616sdF/XUJSz4bnKxap4uUAuGlewtR8b7H3lamQErl5N3dg0B5/l5WWcTidOpxOLxUIwGKSgoACPx8PZs2eprKzM9hC38Pz5cwBaUliVZXx8nKqqKsx6pUsTh+lp6O7e+TObFdJAQC+c5huZ1hM2G1dSZi/nKpNpO7B+/XST12sf2VBs4+VcHQbP1fJy5irdHCRy1bgy5HRzMYtkZdXpVOfZKWdAc7gIBoM8ffoUi8USNaxKSkrweDzU1NTw8uVLRkdHmZ+fz5lGvKFQiKWlJdra2lLmYZufn2dqaorOzs4N2z0eD0NDQwQCgZRcR3MwcbnUIuhu6wzxPFc57gTWJEm2jCtDV820nmq8zrSe6vWq7xrpqpFW8vonmk3PVSaTBGGj0Bo/lEyFDQSDKudmkw6hIXeNq3ieq73I6uAgtLWldmyag41Rgvz111/HtEmgjBLnCwsLjI+PU1BQQEdHB2VlZVkrXS6lxOl0AlBUVJSSc87NzTEwMMDZs2ejIYHT09OMjIxEww9LSkqorq5OyfU0B4+JicQWpXJhtV+TXrJRVTi2Wl+mvKGbK19mOizQ6YSKCh0WuG9ywbjKVA3/zcaVEYro9Xqx2+1pVVwWF1VncR0DvpVcDZdMVVjgyAi8805qx6Y5eEgpEUIwMDDA5OTktmFwQghOnToFQDgcZnJyksePH9Pd3U19BtyfUkrC4XB0fPPz8zx9+hSAhoYGamtrdzo8Iebm5njx4gVnz56lJOLO9/l89Pf3U19fT1dXF+Pj4wSDwX1fS3NwmZpKbGFqpzwVr9cbbW6dTnLEwZy3ZHsRNtueKyklfr8/7bmpi4vQ3p7WS0TJa+MqG4ptPOMqW54rn8/HrVu3OH78eFoVl8VFSIFOkpfkYp8rUGPy+/dXhn12Vk3yevH9cBMOh7lx4wYmk4lQKERDQwNdXV1bvFabMZlMNDc34/F4eP78OQ6Hg5KSElwuFzabLWVeJAOv18udO3cIR9wALS0tLC4uAqqIRWtr676vEQqF6O3tpbW1ldXVVSwWC+FwmLt371JdXc3x48cBWFlZob+/n9LS0i1FMDT5TzgMc3Pw+uu7fzZeWKDZDAsLC/T09PDGG29gzURityZtZMO4ii2Kko0Iq9iFgp6eHpxOJ++8807aHAFra+raKZ5WtiWvjatcKGiRDaE1ynoa4Sf9/f2YzeYdSwvvlUBACW1pacpPnRdke0VqOzbLKSQvq0NDOiTwsBAIBPB6vfh8PioqKjCbzQwODjI6Ohr9zIkTJ7BYLJSXlyd17q6uLiwWC48ePQLAarUihKCwsJBwOIzL5eLIkSNJF5pYW1tjdHQUr9fLqVOnuHXrFg6Hg4sXL+JyuaIeq1Qqp4Y3amZmBpvNRn+/6gNdWlrK6dOno59raWlhbGwMt9utjatDyOysUvIScTptDqUyQrjcbjcAN2/e5NKlS1EvqebgkS3jyiAbEVaxnitjwevDDz/kypUr2Gy2lF/bCAnMFHlvXGXaa2A2b+0dlCmhNeKyg0GJ0znG0tJYdH9fX19ajKvFRSgvz03vTC6Qq8bVZjmF5GQ1HIaxMfjkJ9MzPk3uYKyQm83maEn1rq4u5ufnASguLubMmTP7CulobW2lqKiI4uJiHA4HUkpmZmZYWlrC5XLx6tUrbDYbZrM5atztxNraGnfu3Im+f/bsGQAXL17EZrNRXV1NfX09UsqUrvrb7XauX78efR8IBAiHw1uUhampKex2e1ruyZrcZ3Iy8SJAWxXSMKOj/cBi9DOvXr3a0nct1eTiPJYvZENPkHJrtFO62SzLPl+Ap08fIaVyBAQCASYmJvbUCmM3Fhfh6NGUn3Zb8t64yobnKhDIbljg+Phd7PY1Tp6so7CwkNraWm7fvs3g4CANDQ04HA48Hg8ejye6yrzXUsFO5+59Og4zuWpcbZdzlaisTk+rVdcknRSaA0QoFKKvr4/5+XlOnTpFTU0NgUCAmzdv8vLlS2pra6mqqqKlpWXfK41ms3lLvlNjYyONjY10dnYyNDTE9PQ0i4uLXLhwgbKyMvx+f/S6gUAAi8WCEIJAIBA1rN555x1cLhcPHz6ktrZ2wziNEL10Es9wW11dZXh4mHPnzmWtiIcmu0xPQ6K20MaQ/xDDwzdobbXR1lZNUVERJSUlPHz4kNnZWUpLS7Hb7bhcLkwmEw6HI/q70OQu2dITjGtmI8LK43EzOnqPc+cqKSsro6KiAr/fz4sXL6itrcVqtWK1Wpmfn6ekpASz2bznhTC3W32/TBaC0cZVislWtUCVQ+NncnIEv3+NM2cuceLEephAZWUlo6OjTExMEAqFNhxrNpt56623kr6m368aJuuQwO3JZePK59t4s0lGVoeGMpcYqskOUsoNhhUoYyGdcfHxcDgcnDhxgtXVVe7evUtvby9+vx+Ampoa5ubmALBYLLS2tjI4OAjA1atXEUJQVlbGOzlUdaWvr4/a2tqU55RpDgZ+v2pdkkyeshDgdq/y6NFjpITz569QW7tR0TS8s5upr6/PyEKCZu9koz6AEOvXzHRYoNPppKfnCVLCuXNnMda8jFSW+/fvR0MFYzl9+vSeKqwuLu7e8iDVaOMqxZhMSkn1+z04HA7CYZExoX3w4A5mc5CSklaKijbGX588eTIaAjM9PU0gEKCxsZHFxUUGBgb2dE2nU3kuctF4yAVy1bCC+DlXiTa8DodVGeFz59I3vt3weNTvS6/Ipo/t+j1l629eVFTEpUuXmJmZweFwYDabGR4exmQyEQ6HCQaDDA4OcvToUZqbm3NizJsJBoOsra1x4cKFnBmTJjmklNEqfXv5H05NqSJAyZSgFgLu3r2LlFBc3I3dvvFG/frrr2M2mzGZTIyOjlJYWEh5eTmTk5OsrKwkPUZNZslWzlU4HMbr9RMOOzLmufJ41njy5Anl5ZW43a0bdJCCggKuXbuG3W4nEAgwPj5OTU0NVquVV69eRY2vZJBSGVfHjqXwiySANq5SjNkMXu8a9+/fQQjl/g8GCzly5AhVVVVpu67Pt0owGOTs2VM8flyzxaCLVZRiKwd6PB7Kysr2dM3FRdikw2hiyGXjanOza0g8LHB8XDWMLi5O3/h2YmVlhfv37+95FUsTn1AohN/vx2w2Y7PZot6hTJR6TpSSkpINifsNDQ1IKRkfH2dycpLq6uothlUuYTKZEELg9/sp0M2KDiQvX75kYmIi+r6oqIhTp04lXJhkcjL5UHqXawYplTf2618v2GKYxYa7tsVUGVpdXaVUh5bkPNnKuRoZucvqqge3W83/S0uVnD59etdKr3vFZILp6ZcUFMDx42eYnt7qfDDmG5vNFm3AHg6Hcbvde7q3u91q0TjT05g2rlKMyQRO5yNqa9ev7/P56OnpoaKigtbWVirSULJkZmYQKVWYTKJK8uLiIqOjo5w/fx6fz8fk5CQLCwucOnVq14nf51O5ZdlSsA8CuWxc7aeJ8PBwdkMCl5eXAZXEbRRA0CSP3++P9qey2WzcuHEjuq+goCA6weZ6FTIhBC0tLUlXE8wGJpOJ8vJynE4nTU1N2R6OZg/EGlagDJgHDx5QUVFBe3v7ruGe09PQ3Z3cNaem+mhstFBYWLAl4mA7xsfHWVlZ4dixY7jdbiYmJlhbW+PcuXNpU541eyMbxdeCQT9+vyd6fbPZhNPp5O7du1FZTnXVPinDrKw46e5uRUqRkH4kpaS/v5/i4mJKS0uZn59nenoau91OV1fXrscvLma2SqCBNq5SiNfrpa9vgGDQz8mTJ6ioqOP5czhzRjWW9Hg89Pb2UlZWxunTp/cVFuL1egmFQtjtdj744ANcLmhsVEGlicTPOp1O+vr6OHXqFDabjZs3b0b3ud3uXY0rHRK4OwfNuEpEboJBFdZy+XJ6x7cdUsqoMeXxeLh16xZXrlzR+St74N69e1HvlMGFCxcwmUy8evUKi8XCkSNHsjS6/CUQCKS9WaYmtYTDYQKBAB999BGgPEjGHBkOh5mensbn83Hv3j1aW1u3rXbmcqlFrN3yP1ZXVxFCIKXk7t27CAHt7Z3RPle7hRSOjo4yNTXFuXPnWFtb48GDB9Fqn+FwOGnjSjcRTi+Z1BWCwSDBYJCXL28BcP36dcbHlXenvNzH/Pw8KysrfPjhh5w5c2ZfEVdSStxuNxaLBafTSX//C6RU0VNra7t/Zyklvb29hMNhTp06xdjYWDSn1mKxcPTo0R31aCMkMBsph3ltXKUzSdBIthNCRKtYzc7OEgqBzVZDbW0tPt+68mokhFdWVvLo0SNu3bpFYWEhxcXF0XCC+vr6HQXF5/OxsLCA3W6np6dnw76amiaOHTsaGdvWVZDYHlgAjx49AeDFi0FWV92YzVY+9rHXePnyBU+f9vH66zXbHislzMxktqzlQSQbSaqJstdqgWNjSjHIRmsep9PJkydPou/LyspYWVlhYWFBG1d7oLKyEiklnZ2dOJ1O3G43paWlSCnTXtb5sCKlxOVypSV6QZM6jPldSsnU1BQzMzPR3KVz585tWHw0mUw0NjYCKkTw2bNnzM/P43A4KCsrw2w243A4qKqqYmpq+0IWKysreL3eaDXJWBoajlFX1xgZ287zu1KcB7FYLPT29rO8vERtbR3d3Se4ffsjenufc/z4qS3HxTuX8by6mp17/mEhncZVOBxGCBHVH1+8eBHd19l5DVAGu92uWkkYHnWbzUZPTw+VlZUIIaiqqiIcDlNeXk7xLiFL8/Pz2O12nj59is/n27CvtfUchYWFuN1bF3M3y6HTucjs7DyFhYU8ePCIlZUVurtPUFVVzc2bNxgZmaShoWnDsbHPLpcyGrOxlpXXxpXTqUKYlpbUzcjoSB37Ot62nT4LYcbHB5maGkcIKC4uiqwywZEjR6ivb2ZmRhAKgderFFivV90QVV+BYtraTjMxMYbJVMLSUoDnz58jJVRXuygtraasrCr6eeN5fn6a0dH+Db0JTpx4m97e96mqamV0tJP+fhWmd/8+kdWBjX8P48ervs8JIMzMzAIORwslJU08f25iZsZCIFDJwMDGz8c+ezwwMpJ4KdnDSjZc/Yli5Fwl20R4ZARaW9M7ts0Yq1fz8/N0d3djtVoJBoPU1dUxOTnJixcvqKqq2mBgGQUO0tGMMF84evQovb29vHz5kq6uLpaWlvjwww+RUnLy5EkqM11e6RCwtLREYWHhnltfaNJLMBikt7eXxUXVQ6q0tBSXywWoHmklJSU7LoDW1tYSCoVwOp2UlJSwuLgYPVdHRwfPnlVSU1PC+Dgb5vjR0X4WFqaj83tVVTMVFc0MDNyipeUM9+9XMTys7s+3b6vk/Nh7dewcLaUZKTuR0sbk5CxFRZ0Eg808eyZZXHQQCBTvOL/Hex4ZUUpqMhUONYkzOKj0RLs9MT00EZ3V7/fw7Nkj/H4fQkBhYQFerwch4M033+LpUxOhkIjqqDab0u0Mmayp6WRlJYzfH6CgoJgXLyajjaubmjqpqKjDYrFv0VV7em4SDAaisnzs2Gusri4xNtZHe/ubvPeehZERWFhQUTANDRuNqli5C4VKCIXaWFuz4vW6KC5uYmGhjpmZAEtLNmZmilhZ2V52h4YgDS2zEiKvjSu/X62ynzih/vGbhWDzts2vQ6Gt254/f4DH46az8xJrayvMzU1QXNxOQUE5S0vlTEzAH/+x+rEYx124oJRYs1m58y2Wcszm8qjl3tDQxeLiMJOTk4yPTyEENDQ043Y7sdmsVFZWMTc3SF1dGS0tbUxOjtLdfRK73cSRI9cRAj78UN34uruVUXnihBKq7eeBusjzembtwsICS0sTvPXWx3ZM/nvwAHS6wO7kelhgsk2E/X7lsbx2Lf3ji2V5eXlLSXCDuro6Xrx4wbNnzzCZTNhsNurr65mfn2dmZobW1laWl5dpaGjYUMgl2wghhoEVIAQEpZSXhRD/DPjLQBiYBX5ESjkZ59hPA/9fwAz8upTyX+xlDBaLhdOnT/PgwQNu375NY2Mjly5dwufz8fTpU6qrqwmHw9GcjZKSEp2rsQ+CwSDDw8M06MaAOYmUkg8++ICCggJee+01RkZGWF1dpaOjg5qamoQLVjQ0NET/x62trYTDYV6+fMmrV0M8eTLEiRMmrNZm5ufHaGhoIRTysbY2w6lTXQgBLtcix48fwWwWHD9+HZNJKaFvvKEKCU1MwNmzShmOP78IwFgBW7/njYyMsLbm5dq11qTnpUi3A02a8PuVwexwbK+T7qSnBgIbt3s8a/T336GiopGmpiMMDT0mFHLgcDRQVtZEb6+ZP/9zpae2tSkHxNGjSoe0Wtf1Vav1KGazukZRUQuFhV6czmFevhzEZBqMNGSvZ35+lLa2I8zPT2K1Brh8+TJzc5NYrVba2+0IUcfFi3UEAvDiBXzXdynD53//b6Ufw3aybAW2Wkc9Pf0cP17GqVPl2/5Nw2Ho6cn8YrBBXhtXhvvcZFJGTSoU3fn5EJWVTXR1lQAlQOOG/U6nqqD3Uz8Fs7MwMADXryvhNIw143Xs+7KydtbWahkd7cPn8zE2Nh79sUxOLlNb20FJSStut6CiopL5+fUfAKgfRzAIRUWwsqJe+/3xXaXbPY+OzlFd3Ybf78Dw5MYLFxgdhddf3//fMt/JdeMqttk17O65GhtTJYQzVT/C7/fz4MEDvF4vwBbDClSPttbWVmw2G4WFhczPz9Pb2wvA5cuXmZiYiBbAyCXjKsLHpZTzMe+/KKX8pwBCiL8L/Bzwk7EHCCHMwL8FvhkYB+4KIf5QShm/yc0umM1mLl26RCgUijZodDgcnDlzhsXFRVZWVvjggw+QUtLe3k67bm62J0KhEI8ePaKoqEgXsshRDI/UkSNHsNvtHEtR7WaTycSxY8dYXq7G73+Ow2FmeHg0ErY0CkBT0wkCgTrMZigpaWJ6Ws3thhdieVlVaS0sVPftyC0xqfl9bGyW1tbjrKyIXT+/eZvPl7tzWT4QCq0vvqdi/crrNTE3B2+9dQSz2cypUxe3fGZgAOrq4Pu+D77+dTh5Ur2P1VG3vnZQWXmcmZkiZmZGCQQEIyOjEY/VK0wmQUfHRZzOYmy2Y5jNamHA0MPDYeWxGh9XhV38/vh6auzrzc+BQJDp6UUuXXodl2v7z83Oqh6s2Sq6ltfGlcUC8/Pw5IkRkpe4uxUk4XAAq9XC6Gg/a2suCguLWV72UFDgYH4+/rmWl9f7ALlc6rXPt3UFwlC8hVA/KiGgpKSQEycuISWEQhK/38fU1CDFxdUUFtYSDKpzBYPqESv0c3PQ369+MM+fK+H1+7e6SWNfb352uayEw75or6N4n/N6lQGnwwN2J9eNq2AQpAwRCISxWq275lxlukrg+Pg4Xq+Xs2fPbhvjLYSIlmsFlUfU2dmJEAKz2Ux3dze1tbUMDQ1lath7RkrpinlbBMRLI/8Y8FJKOQgghPgvKG/XnowrUMrfZo9UaWlptIRzKBTi9u3buN1uZmdnqdU//qTwer309PRQUlJCd3e37m+VA4TDYUKhEEIIHj9+jM/niybupyt/c2yskqqq1zh1CsJhidu9zPz8BBUVLVitpfj9G+d24xmUHvPee2quHxuDly/XQ8hg++fY1263lclJb3ThNJmwQLtd51ylE5tN6W+GAZJoCKAKAw1GFku9DA31ImUIi8WCzwcLC6YNRvrGsEG1EL+woJ5Vf9atnjJYPxbUc2NjC/X1LVFddWFhkrU1N1VVHYAtqqcachwMrnvapqeVMTc1pa5npIAlKo9SmnC7BRMTfhwOy7a67cxM8lU5U0leG1cVFWql3ViwNoyaRNytLtcK/f0PoscUFZWysrKE3V5EcXEDbnf84xYWlCD94R8qQ6ioSL23WGLDAje+jn1vuGTtdkFRkYOampMbthseuNgfCxCt9lJUpMZy4ULy5ScdDgs+X4idqltOTKjVAM3u5LpxFQrBnTs3sFigs7OT0dElysvLkTJMW1vbBiXQ61UT/FtvZWZ8wWCQ0dFRampqks792dz8dnZ2NhfzhyTwDSGEBH5NSvklACHEPwd+CFgGPh7nuCZgLOb9OHA13gWEEJ8FPgsqPGmvGEbq/Pw8g4ODeDwehBA0NzfrMMEdMMIAp6enaW1tpaWlRRtWOcKLFy+YmpqKvq+rq2Nqaoqampq09R9zOuHUKXXvtdkERUXlNDeXR+d2q3W7PG9oaVGh+HNzKpTqzBmlkCeD32+mujr5Hlug5jLd8SJ9tLWpHHbjdrpb2krstlu3PtiQi19SUsHq6gq1tR14PGLbc62tqQXT//pfieYAlpTsrKPG6qGGXmqzCTo6mjZ81vDAxcqzIctVVXDpEty8qQyg06eT+1tJKVhYMHHkyPYGv9Lh1e8mW2TduNpP7sFubFZujX9wIvqA3W6htNRCS0sLk5OTFBdbaWw8sWtZyqUl1bTsjTeU8Pp8KkwwXijgTq/9fpVcuHkfrIcLGGGBJpO66cY2SttL6VSXyxU39CqWxUWIcRRodiCXjSuzGdzu2ajL/NWrQVZWYGjICShvRllZGaWlpQghGBlRIQOZqg9hhPId32cN1YWFBRYWFrhy5Up0m5FwXlVVlU3j4A0p5aQQohb4MyFEv5TyfSnl54HPCyF+Fvgc8PObjosnUXF/7RGD7UsAly9f3sMdYZ2qqirKy8t58OABbrcbv99PMBikubkZq9WqjYZNLC4u0tvbS01NDRcuXNDVLPdBOnSEyspK5ubmaG5uZnZ2lmAwmNaWDsbqfUeHmhe83vjzv6GfxM7tZrNSfoNBNc+bzcnP71JKVlZWNnj5NcmRaV01Nu1jJ7q7W1hYWKCiogKXy0VhoY2urmtbFhk34/OpliqXLqncpGPHlFG0nU4aT14N79Tq6tbPxJNjs1k10a6uVmF7e6nr4/V6kVLumAPpcinDy4jCygZZN64iJJ17kAj7UW4LCws5d+4cDx8+pLy8nKqqKvr7+7FYLNTV1WG1WuPGzofD6wJqhFkJsW7N7xflho1vjEmpBOrIkeRvvvPz8ywtLe2ozK6tqWcdHpAYuWxcmUzg8y1TXl7GxYvnCQYljx4FOXdOKYYvXrzA6CnV2dnJyEglXV3p/zJSSoymgcC+qqotLCzQ39/P6dOnsVqteDweXr58ycLCAqBKKmerJLYxAUspZ4UQX0WF+70f85HfAf6YrcbVOBC7HtcMJD2Z7wWz2Rw1Ur1eL729vUxOTlJTU0N3NuMvcpDe3l46Ojp0flXqSKmOUFNTQygU4vnz59TX1+NwOHj06BE2m43a2lqKi4v31d9nM9PTyjuxWxpXbCGt2Hl+cREKCpRSGggkP7+PjIxgtVoTLsqh2ZaU66rG/3KvukJnZyehUIjp6WlaWlrwer3cvXuXoqIiSkpKqK2t3XbRwLi2oauuF7LY21hi2c55UFyswkwbGpQsJ4NRHCYRJ0C2u13kinG1gQRzDxI4z/6U25KSEt56663oqqyxMjA0NITX66WgoGBLuFE84yqVbGeora2tG1cFBcndfGdmZnjx4gVnzpyJJrXHIxcE9iCRi32uAoEAFouFGzfeY3UVamqMJnwCu92GzaZCZOrq6pBSMj09zePHvUxMtPFN39SWljGtrq5itVoxm80MDQ0xPj4OwNmzZ/d8TtWwUBlWZWVlhEIhenp68Pv9HDlyJLpanQ2EEEWASUq5Enn9KeAXhRBdUkqjCcl3AP1xDr8LdAkhOoAJ4HuBv5GJccficDi4dOkS/f39hAyXuiaKxWKhvLw828PIW1KhI9TX11NXVxed36uqqlheXubVq1eYzWbOnz+fMk+WUXJ6N9ZzvjdSUaHCqRwOlXqQ6PwupWRoaIi5uTnOnj2rPcwpJhVyuF89VQhBV1cXXV1dGI2nl5eXWVxcZGRkhMXFRc6ePbvFkxUbSpgOXXU7Q81I11lcVKGyiRIMBnn2TKUWH92hyWo4rGofZDMkEHLDuNpr7sGuOQWp8BzE3owKCgooKCigoqKCgYEBenp6KC4upru7O5pwH2tcqYbC+7t+4uNcv6bFktjN1+128/LlSzweD+fOnaOkpGTHzzudyiumSYxc8VxJKQkEAgghuHnzZnR7aenHaGlRK5nxbq5CCBoaGnj1KoTZPMj8vJ1AIEAwGIyWJvb7/djt9j1N2qFQiCdPnkRDAB0OB16vF4vFQnd3977ypJ48eYLdbmdqagqXy8XMzAzBYJCLFy9SWFhIOBymt7eX119/PRu9sOqAr0b+Zhbgd6SUXxNC/L4QohsVYjJCZAVUCNGIKrn+GSllUAjxOeDrqFLsvyGl7M30FzBYWlqioKCA6enpXKzGmDWKilT/Qx0OmBLSpiPE3reKi4spLi6mtLSUgYEBHj58SElJCSdPntxx0TERZmZUCNZeUYUL1nsTJjK/Lyws8PLlS6xWK+fPn8e+j06qe0kzyEPSIoep1lOFEJSXl1NeXk5RURGvXr3izp07VFVVcezYsehnY/+n6TCuth/reu5XIt9bSsn4+Dijo6NUV1fT1dW1Yzi/ERKYikix/ZALxtVecw92zSlIl3Jrs9k4efIkk5OThMNhHj58SEVFBadOnSIcFmn1XG2HIbCJGlfBYJB79+7R2dmZUGL66qq6ho4qSBy/XxWBKCnZWzPA2CTQZJicnMTlckW9NMFgkIcPHwIqtOvatWuEw4KZGUu0t9VOZdhXVprp7g7R39+PzWajpqaGx48fE4j49Ovr6xPOjRoYGGByUkWx1dbWsry8zNWrV7HZbNy4cQOAN954Y98rrPX19cjIj2BoaIji4mLOnDkTDYuprq5mbGws+plMEqn0dy7O9u/a5vOTwGdi3v8J8CdpG2ASnDt3DpfLxatXrxgfH6eoqIiysjLm5+fxer0UFxczOzvLpUuXKCwsxGQyHYrV8+LiYpaXl3VlxdSQNh0hHiUlJZw5c4bZ2VlWV1e5c+cOjY2NdOyxG6nXq+bP/YhC7PyeiHG1vLzM06dPOXnyJNXV1YfiN5cB0iKH6VyEra2tpaCgALfbzeTkJLdv3+bo0aNUV1dHrx2bvpIJYmU5Ef14bGyM8fFxzp07t23V4FicTtXfNttk3bjaR+7BrqQzLMtkMtHc3Bx9PzQ0RCAQIBy2YTavG1f7SBlJimRvvkKIpCp+LS7mhsAeJFZWlHt6c4O/RBpYx67sJNqpPRTyMzs7zMLCJHV1LaysrDA6eheLxUwoBDU1dRw9epzVVUEopMJL+vtVqInHo/7HMzMbq2qurqoKkZ/6VCtCtERl5ciRI7jdbiYmJpienmZ5eZni4mJOnTq17d/D6XQyOTlJU1MTy8vLzM7ObqjOdenSJfx+f0oUgVhjL57h9/z5c9ra2va1mqtZ9+ZXVVWxtrbG06dPmZmZobGxkUAgwOzsLKBW0e/fv4/X6+WbvumbsuEtzChGmW/N/kmnjrAdNpuN5uZmpJQEg0Hm5+dpbW3dUw7oxIQKg9rPQmuykSnhcJji4uJdc1M0iZMuOUx3hEtJSQklJSXU1dVx+/Zt5ufnI/mE6qKZdALARs9VIteVUkbzIHfDqBKYrcbBsWTVuNpn7sGuZCosq6KiAqfTGVEeClhbs+B0unG7vZw+3Y3dXpr28JDYsIFE3KFmsxmHw8Hq6uqu4YCgFO8dwlw1cQiHVWn8GBs8aRJtHRAOQ19fH0tLi1y48BpWq51QqJPZ2QmKiiqwWOyYTBaWltRnV1bgwYP1HL6VFVU9aGVlPbHVYlE90xwOMJtVXpaByWSK9kLq7Ozk+fPnzM3N8cEHHxAMBunu7mZsbIy1tTWOHz+Oy+VicnISm81GV1cXfr+fubm5DSv7ichhKnjx4gU+n4/GxsbdP6xJCIvFQmlpKa/H6S5+48YNRkZGqK+v58WLF0xOTuZ1M+KlpSXm5ua4dOlStody4Em3jpDA9amtrWVkZIQHDx5EF2OckWSRc+fOUVBQgGOHOuXT0+vtYPY+juQWT4uLi1lbWyMcDqesIuphXitIpxxmSk81mUw0NDQwNTXFw4cPmZiwEQz6WV52sbgoOHbsY1it1l2rDO6XeLK80/cvLi5mdHQ0oXMvLyudK9shgZB9z1VSuQfJkimhLSkp4dy5c7jdbj766Dk+3xp2uxUpYWjoOYODXo4ePbpjEt5+iV0NsFp3v/n6fD6CwWBCK3Grq0rhTlP7j7wlFZ7TZEqylpWZKS6uoKXF8MYImpriW3bz82rC/97vVR7JoSH1+KZv2lix6t134dOf3vm6drudY8eO8eLFC5aXl6msrOT58+fR/Ublv+PHj0eNKZvNlrVKagsLC5w5c2ZflQg1ifP6669H/9aFhYWsrq5meUTpZXV1FZvNFs1HKy4u1l6svZNWHSERampqqKqqwuVy0dPTQ0FBAXa7HZ/Px+PHj1lZWeGdd96JNt3ezPS06m+1HzYvnu42v7vdbn1/Sy1pk0MpM+c5am9vp7m5mbm5BQYGnmO3OzCbrUCAW7du4Xa7+cxnPpNW2RFiY+7gbnq62+1O2ODLpaJrWTWuks09SP78mYwjFZSUlNDVdRmvV5WbnJtbpqrKz9LSJB6PJ83XT25la2FhAbPZzOLiIhaLZccwnVwS2IOE0ahvaCjxPKtEQwCFUAayx+PB4XDgcDjw+XwJh7kFg6rYit+/8T2sX2d6Wq0ExbSI2haHw8GZM2dizq8q8d2+fRuTyURbW1tOFTzQFe4yR+xEXVVVxeDgIMeOHctb5a++vj4aEul2u6msrIxW8tIkR7p1hEQxmUyUl5fzVkwX9bm5OWw2Gz09PSwvL8c1rlwuNRfvt3BksjnVMzMzFBQUMDs7S21trW72vU/SKYeZLnxlsVioqanjxIk6TCZoapL09U1y/nw5N27cwO12U1ZWlrbrm0wqVcJsVnrHbrI8PT1NWVkZCwsLO7ZHyKWQQMi+5yqtZKNaW2y1QIejjNpasFoDDAwMpPW6yd58a2trCYVCLC4uMjMzw7lz57ZVdnRI4N4oL1f/j7Ky+KF8oVByYX9SwuLiDOGwxGYrYGzsYdTQcjiK8PtXaW5u5Pnz3Y2z6Wl1I7pxQ3mwDK97ZeW68XbrFhw/vjcXu7HS9MYbb6TuD5oiysvLWVpaSusEoomP4cUMh8N5a1yZzeZo2GMgEODBgwdMTExsyNHVHHyMfCabzcbIyAgtcWo/T0zsPyQQNs7vDsfu83t7ezszMzNMTEywvLy8oUqcJrfIlp5q6AOhkKCmpomCgjAOh4Opqam0zo2xnitDB9qJEydOsLCwwMDAAB0dHdsu0uZSSCBo4yrlGGF5sdUCBwYG0t68z0h4DQYTu/laLBZaWlpobm7m+fPnPHjwgI6OjmgVGQMdErh3TCZlYKWqEIjX6+XWrb7oyk9dHZw7dwEpYWJikrKyFqqr64Cdi2RIqW5Ara1KXhYWVEGLigp1gzI+Nz0Nf+WvpGbsuYTH49lXmXfN3lhaWmJlZSUlpa0PClarlXPnzvH48WNcLhctLS0Zyy3UpB+v18va2tq2lQSnplLTb8eY36VMLDLF4XDQ1tZGU1MTjx8/5smTJ3R2dmrZy0GybVwFAurZ6C/ZkEhDtn1gGFcWS2INsY3c7traWh4/fszy8jLt7e1bonRyLcJKG1cpxqgQ6Per1yoUl7QncMeubCWSc7V+nKC7uzu6MhAKhairq4vuzzWBPUikWv6sViuFhYVUVlZy5MgRlpeXcbtXMJvNnD17PKmVSbsdLlyA06eV8Repjo5R48HlUtuOHUvd+HMBKSWrq6vb5kdo0ofP5wM4dBXMjIbLk5OTUSU33QqMJjMY+YPxiuOEwyq39dq1/V8nNpTKmOsTwWKxcOHCBaampnj8+HFC/Sw1mSXbxlUwqJ6NfpPpjuiI9VwlI8tFRUVcuXKF4eFhHj16xKVLl6IRMrkWEgiQ14G42fZchUIQDKqklnTHPCcbFrjxWEF1dTVnzpzh5cuXGxLO8924EkIMCyF6hBCPhBD3Itv+mRDiSWTbNyJNXJMm1fJnNpu5cOECS0tLPH36lN7eXlZXVxkfH2d4eJjp6elortNuGIsAagFga9uA4WG14ppvofrz8/PY7XZdgj0LGGXZw4bQHSIsFgutra2cP3+ewcHBaLU5zcFmcXERIG6/PKdTLWKlImhls0KaDCaTiaamJrq6unj27FnCc4QmM2RDTzV6TKmwQCVXhiynm70aV6AWmI8ePUpFRQX9/f3R393ycm40Do4lz1SnjWSyCotBbM5VOAyFhQ7sdjtjY2MpvY7T6YwWyZifn+fWrXcJBsN7Mq4MSkpKaGtr48mTJwQCgcMUEvhxKeV5KeXlyPsvSinPSinPA/8T+Lm9nDQdfdasViunTp2irKyMy5cv093dzdmzZ3G5XIyOjvLgwQNu3Lixq7zFyqnxPva3MjoKbW2pHXu2WVhYoL+/n87OTp1/kAVcLhfAof7bFxUVceLECfr7+6OePM3BxagAbDRGj2Vycm/5VlJKZmZmokZQf38/jx59EJ3bk1VIDerq6igpKeHp06dJN0/PQq/1Q0O2PVdGWODVq1cBUlrNNRQKMT09HZW3999/n4mJgWhY4F5kWQjBkSNHWF1dZXh4GIClpdxzAuSQnZd6slnQIhhU1/b7fRQVFbG2tpaS80spGRsbY3BwcMu+4eGnNDSc3fPNF6CpqQmfz8f9+/cpLj5CRUU1sf2NDgNSSlfM2yJgT3/NdMlfQUEBrTH+b7vdzrlz55BSsrS0RH9/P/Pz85SUlFC+TZkqY7UqnnHlcoHXm5pE7FxhZmaGFy9ecObMmW3/Jpr0cu3aNW7cuMHc3NyG0ONcIJX9gHajsrKSxsZGnj17xtmzZ/O2sMdhwOv1Yjab8Xq9W/ZNTamCQMkQDAbp6+tjYWFhw/ZQCKanR6mvb93X/H78+HF6enp49OgRR44c0eHROUC2jSufD4SQ0YgCv9+fkr6sHo+H27dvA+uFjACczkmKi2spLi7fsyybzWbOnTvHo0eP8Hi8rK520NKyfa+5bJD3nqtsGldmM3z00Uc4nc64lYSSJRgMMjQ0tMWwqquro7q6Grd7eV8rW7C+KnDs2DFevhxkbq4v6VWuA4YEviGEuC+E+KyxUQjxz4UQY8D3s43nSgjxWSHEPSHEvbm5ua0nzrD8CSGoqKigu7sbs9nMwMAA/f39xBvbZs+VESYAMDgITU35ERK4srLCkydPGBwc5Ny5c9qwyiJmsxmbzcbMzEzWxrC4uLglJG9kZIT333+fpaWljI2jpaUFIcSG0BbNwePWrVtb8pRBzf9OJySTWuf1eunp6dliWJ04cSKyUBvcUyhVLCaTibNnz1JXV0dPT0/KI2o0yZNt4yoYBK93hdu3byOEoLi4eN/nd7vdUcMqljNnzkS+q23fsuxwOLh8+TKBgI2JiXusrGQmrDFRtOcqxRiue6OwREFBAc3NzSlpmPrBBx8AKn7/zTff3LDv5ctxgsF5Rkcf0th4Yd9ufLu9kiNHLuN232F2djbnVppTyBtSykkhRC3wZ0KIfinl+1LKzwOfF0L8LPA54Oc3Hyil/BLwJYDLly9v+YtnQ/5ArYwXFxfT19eHw+Hg+fPnBAIBSktLozfOncICR0fhYx/L/LhTzfj4OENDQ3R0dHDq1CntIcgBysrKspbz4fF4ePz4MQDXr19nZGSEoaGh6P6+vj5Onz6dkYR/s9nM6dOnefToEb29vXR1dek8wAPKpUuXtsjM7KxqwbFD+8gN+Hw+bt26BajF0hMnTmzYX129yODgKEVF0NTUua/5XQhBY2MjFRUV3Lt3j/Ly8oRk/hBH86aVbBZeM4wrh0N5fd5+++19h23Pzs7y7NkzQC0MxOqO4XAYu93Bixd3KC09iRC1+5Jli8VCaekRjh8vZmBggIsXL+ZMJdo8WJvenkwLrdFt2mIxmrOG8Xg8KflnG6ubLS0tcXsHNTU109p6FY9nmYcPPyQc3p91tbgIVVVqpTleyEO+IKWcjDzPAl8FNpsVvwPsqVFgtowrUL1Xzp07R3t7OydOnMDpdPLgwYOo69+4uRq9dI33S0tKdvMhJHBsbIzjx4/T3NysDassMzs7y9OnT6ONVzNNf3//hpXUDz74IGpYlZeXc+3aNXw+H36jq3YGsFgsXLx4kaKiIu7evcurV68OZbGPg8rKygqw3tMvlmTzrYz5/fTp0xyPE0t45MhxqqqOMjs7ytBQ777nd1Dh5FJKXeAiy2TbcxUKgdM5nbJzG7L85ptvblmUN5lMnDx5Dbu9jMHBZywt7e+64bAqZlFbW4jP58up+6c2rlLIZoENBlXBiWfPnnH37l3C4fCeQ0CMSd9iscRdWVCNXwtoaztOIOBnaWlrKFgyLC5CebkqW11bW7uvc+UqQogiIUSJ8Rr4FPBUCNEV87HvAPrjHb8b2TSuYqmqqqKgoIDCwsJoEn1sVUvjvcm0XiUwH7DZbHEVH03mGR0dZX5+nvb29mgRgEzg8/lYWFhgenqa7u5url27xokTJ6isrKS6uprr169z/vz5aBJ3pvufmUwmOjo6uHz5Mmtrazx8+DCnFATN9rjdbgBu375NX9/G8PnZ2eSMq/n5eUB5NLeb34uLmygqKmJpaQ6fb/8Lnmtra1gsFt1MPctk27gKBsHjUQsF7733HhMTE/sKVTaqwm5ntAsBdXVnMJlgYqJ/X56rlRVVcM3jcVFRUZFT3n9tXKWQzcZVYWERbZGSa6urq7z//vuMjIzs6dyG98u4oW9GCHVNIUKRzxfs+QeytqbOV1goKC0tZWpqak/nOQDUAR8IIR4Dd4A/llJ+DfgXQoinQognKIPrp/Zy8lwxrkApjVarlYcPHzI8PMzqqhuPx8n09ChjY2NMTw+ztraSV1UCS0pKoqvLmuxSW1tLbW0t7e3tGQvbmJub46OPPqKnpwdQIYkOh4O6ujpOnjzJ6dOno581wmJu374d7feSSRwOR3Q82cxJ0yROQ0NDNMx6ZmaG9957j5WVFfx+pfQlY1xVVVUBRCsAb0Y1ERaYzSKSp7L/iaWwsJBwOLwlx0uTWdJRVTiRa8YaV0eOdEf3vXjxgvfee2/P5zZ6+G0XBaB0VQtCgM3mIBDYu+fUaBVUVlbGwsJCRiMPdiOvl3WzZVzF0tHRQUdHR7Ryyl4ta6OM8eZYbAPDuPL51Arsixf3cTrh4sWLSVcEMgTW5XKxsrJCd3f37gcdQKSUg8C5ONv3FAa49Ty5UxSioqKCiooKnE4nS0tLPH9+D6tVlWH1+dRK69BQgPHxB7S1lVNfv+XPcuCw2Wy63HWOsLa2lrKKqcly9uxZwuEwBTv0lCgqKuLtt99mamqKhw8fcuXKlZRUzEoGIQRtbW08ffqUqqqqrIRPapLj8mXVvWN6epr+/n6sVitTU6oxezL3/vn5eYqKiuI2I4b13kCgFk97em4xOmrijTfe2FPIs1Hu3WKxZNxbq9lINvuxGsaVzWbh+vXrSCl58OABKysrSCn3lH81PT1NY2PjtnqnoauqMvBe7tz5gKam6g2LXYkgpUpjaGgIMzw8QXV1dU7dM7VxlUJiG7Fuvu7o6CjAngtDGB6v5eVlxsbGqKiooLCwkPLycqamphDCSiBQR3f3MYqKjtHbO4nPN8Ds7OyejKvGRi+PHz+mq6trR6VEsz255LkyqKyspLKyEq+3ldJSWF210NkZ4A/+4A4vXkxQVmZiZGSEY8eOHej/+9raGhMTE1y4cCHbQ4mLEGIYWEFpS0Ep5WUhxBeBbwf8wCvgR6WUS4kcm6Fh74lwOMz09DRnzpzJ6HWN6n/l5eUJlVk3mq3Oz89z//59mpub6ezsTPMoN7KwsEBDQ0POJGVrEsOo4OtwOJiehmSn+VevXmEymZiZmWFycpL6+noKCwspKipibGwMs7mSUKiMK1eusrYGd+++SzgcxuVS4VDJMj8/z9DQEKdPn9b5qFkm202EjcrWBisrKxQVFe3JsJJSMj8/T3NzM2NjYywuLlJXV0dxcTEmk4nx8XHM5laCQTuf+MR1Xr2SvHr1XjQsNhlcLhUSOD4+xMrKCmfPnk36HOlEG1cpJJ7nysDI/dhrLxWje/bjx49xOBxbygmHwzAy0ofdXkZdXQ1TU4NUVsKRI0eSuo6xuBwMuigqKqI+HyobZIlcNK4MhLDgcKjwFavVSnv7VSYnzVy9KpicfIDb7T7QxpXH48FkMjE7O0tRURHV1dW52Lz241LK2Fnlz4CflVIGhRC/DPws8I8TPDZnMe5dPT09nDlzBo/HQ1NTU9r/HxMTE9TV1SV9nZMnT3Lz5k1GR0cpLS2luro6TSPcysLCAmfPns1FWdXsgM1mi+bKTU9DnJpTuxIOh+nr68NsNvP8+fMN+7zeEcbGoKiolPLy1sjcIvZkWIGKSqmtrU144VV3C0gfuZBzZailRirJXr2Zxm9gfHw8um2zrupyTTA7C0+fVuL11gBQU1OT9LWMCKvx8WVaW1tzymsFeWxcGTeDTAruZuMq9rr7bVB5/fp13n33XU6fPk11dXW0ys/9+/cpLCzk6NFuZmcXEGKeV69eEghAW1snwaAaROzfY6fnqSkoL1cxrJtv8JrkyGXjymgZEA6rca6uWggEVJ7A1JRgampqTze8XKGyspIjR47gdrsZGhpibW0tmv+Yq0gpvxHz9hbw3dkaSyqpqKigvr6e6enpaP6T2WymtLSUgoKCtDXvbWhoYGpqCqvVmlQRDavVyunTp3n27FlKer4kQ3FxMdPT0xkt+qFJDWazmbU11YA9Wd307bff5v333+djH/sYhYWFSCnxeDzcuXOH9vZ2CgpqcToXcLkGmZl5SjgMFy9eJRBQxyc6vxvPFksp09MT1Ncndszysiotr0k92TBcN9cHMG7Bxr14r/n6ZrOZkydP8uzZM958800sFgvhcJi5uTn6+vo4deoU8/N2PB4nc3PDLCw4KSqCrq6TBALby+DmbVLC/DycPQsuV2m0IFEukbfGVSgEAwPqtaqkpwTIeN7udaLb4u1fXVWPtTXweNRNdnXVUGCL8HqVtR0Oryu1yTzX119ndhZmZlRyq5RWHI5rhELw9CncvdvI2lojLte7wDFcrkb6+tb/BgbG63jPPT3wiU+olTghBC6XS3dx3yO5bFzF9rkKh9Vqa0eHCjtdXl4+8H3NhBDRIgqNjY08fPgQk8lEc3NzrngFjObVEvi1SM+0WH4M+L09HguoJtfAZwFaW1tTM+o9YFTEW15ejv7tjYWbU6dOpc2Ir6urY35+PppgnQyvXr3CbrdnvNpkc3Mzvb29HDlyJFfkVJMABQUFBINBRkZUb6uFhcTndfXaRF3ddYaHjfeCcLiQ8vLrOJ1Kkbx3r5Dz52uYnb1FVdUlBgcdO87lBvH2+XxFTEy4KCkJYbGYdz2HkUeWQSfuoWFuDiYmVN5zqnXS7batrEBhoZLVlRWlrwYCSvYCATMuVxinc296qpS11NXVMjCwLtvhcB3l5XWMjSldtb+/lO7uAqam+jh9+g36+sSushz7PDsLbrcaf3FxMZOTk3R0dGT2H7cLeWtcGZb5pUvrlu5mo2b7G93WbaHQ7seMjiqD7tUr+Iu/UN3ZT51S8awLC8OUlHTw4IFSas3mjc/Gw2xWiYax2433RkfreD8YKeG99+B7vgc8nnf46CPBuSRrEjid8OwZqMJFgsrKSmZmZrRxtUcOgnEVCqnH7Cxcv65yBwoKCrYtnHIQcTgcnD9/nv7+fsbHxzl+/Piew2lSSNzm1QBCiM8DQeC3kz02lt2aXGcSu93O1atXAQiFQiwtLdHT05O2fA8pJY8ePeLUqVN7KkxhVG0zGre/8cYbac+DklIyPDxMR0eHNqwOEMbK/Pnz5/nKV9Q9f2Bg6/xuzO2x870xt1ut28/thjLZ3w8/+IMO+vvfwelMfn6PRcoCvF47VVXzCS2k7bHIsSYBjIiR8+eT00m3e20YSTsdf+sWlJaqnpbf+IaSM4cDQqEVFhZChEIdLC1tlN3Nr2Nld7M8byfHqoiFypX6a3+tjhs3aqmvF3R17fZX2ojTuV7VuKqqiv7+fnw+X06VYs9b48pojrq2tvEfG2ugpBqzGYqK4M03lSegqws++UnwegN89NEaH/tYM7BurBkG2+bXRgW3zds3j9/wyBnvZ2fVKojfL1hbUysSyYQLPH8Ozc3r36e8vJzBwUHMZjO1tbUZD5E56BwE4yocVquiwaC6wQ8NefOywl5BQQEXLlxgYWGB3t5ezp07R0lJSdbGE9u8WgjxVVTz6veFED8MfBvwCblNbMZ2x2Zm5PvHbDZHG5Onq8eOEfu/1/NfuXIFq9XKwsICz58/5+bNmzQ2NnLs2LFUDjNKIBBgaGiIcDi8J0+bJnsYOSXl5eU8fw4/8iPqXrrdHO/3x99uzO/rIVrr8/v8vNIpZmZgaUngdquEfoNkwwKlFAhRRk/PENPTPqqq6rBa7dse4/Pl7lx20DEMII9nq4fJMLpTzcuXSk+1WODxY/ju71b/5xcvZpidtXHpknVb/TT2tc+nxh273aiSbKybxcqxyaScEFNTSp5XVgSFheuyvF0YYOxzOKw8fUZ9JIvFQmFhIc+ePaOuro66urqcKNKSt8aVyaSs4+Hh7a3+VLtgnU5VGnJ8XD3Pz6uboc8XYGholPHx/8anPvW9u64qGM+w0RAMhdSN2fgMrPdICIfV9R88UD9In08JcKJhAqBCGC9eXP+c0cdjbm6OR48ecfXqVV3FKgly1bgyPLkWi3p++hSMFI98NKxiqaqqoquri97eXi5fvpyVJsORhtUmKeVKTPPqXxRCfBpVwOIdKWXcuuXbHZupsaeCcDjMixcvqKmpSdskaLSuCAaDmEwm5ufn8Xg8tLS0IKWM3seklCwuLm4pDmB4uxoaGnC73UxMTKR1VfTFixeEQiFdve0AMjExwcDAAKFQKYHARcrK1Fy6U/iUMX8Lsa6EGsqqsT9WqVxYUAunDx8aRYiUcrrXsECA2tpjFBYusbg4zezsLCdOXN72HOXlKoxMk3rsdqUvDg3F11MNY2W/qSyx25aXlfyYTCp9ZWpKve7rG2Ry8hVNTWcpKChOOBwQ1vVUw3vm9W7UT0F91umEsTEly/PzymOWiCwbz263WrwwAqqEEFy8eJGFhQUmJydZXV2lK1lXWBrIW+NKCJVDcvLk9p9Jxt2aiAvW61X/+L4+tc3tVjlMXm+Q5eUAEOLZs/hhgMYqxW5uV+MRT2n/4AP49m83ViAgmUVWr1fdtCO9DCN/Q9VE2GazMTk5qUNVkiRXjavYwismk/JYfuYz6r2RjBoIBLJmSIfDYbxeL4Vpms3r6upYXl6OJtimq6DCTkMAvhr5PVmA35FSfk0I8RKwo0L9AG5JKX9SCNEI/LqU8jPbHZvpL7AfjEbo6fJagaqqajz7fD6KiopYXV3d0MT9Yx/7GIODg9EywO3t7RQWFkarAxpyYXjZ0lUQRUrJ6uoqR44ciTYz1hwcysrKCAQCjI8v0NamvALbhflvF/IfO8cb0SmxTEwohfRbvkUpp8vLSr/ZHyagkoUFyatXrzZErWzG41Fj1KSe8nJVur+2Nv7+7dJaktFTY71KsWksfr8y7np71bXm5kysrATp6VmjrKw4bppKrCzH6q2xMm28Noy6WIRQuXvf8i1qDA7H9t89HqOjW3P/LBYLdXV1rK6uEjCqvGSZvDWuElFsDZ0qVQuFNpsyaBoblcA0NCiPwLvvPuDy5SO8/fb1hFytxmvD3RrvM8a4Y0MFw2H1OhTa6F5NhKUl9SOPh9vtxmKxZGWV/yCTy8aVIfNLS0rOjIr9RnGBpaWljFQLXFtbY2BggOPHj0c9A++/ryLc3n777bQZPu3t7Tx9+pRXr15x9OjRjC4c7NC8Om6JuEgY4Gd2OvYgUVpaSmFhYVqbCr/zzju89957+Hw+SktLuXjxIm63G7/fz8rKCj6fjzt37gBEq0rOzs5Gx2Q2mzl69ChLS0ssLCzQ0tKStrFKKfF6vdqwOqAMDw9z4cIFgsHXuXIFOjt3n9tjo1DifcbwMBi51oaXAdScksoKcy6XK20LWZrd2U1PiA2pSxXLyyqsLhhU8/9f+ktKDux2C62t30ZbW21COupOaSyb01mM54kJlT5jfLe96KrbOQ5cLhdVsR6CLJK32nI2FFsjj2UzZWVleL1ehJBYrakZlJQbhdnnUytZxvdOVmAXF9l25crv9+uJfw/ksnFl3KinppQyoLaHo5/JRGjS2tpaVMEdGxtjYmJiw/4bN27wzjvvpOXaNpuNkydP0tvby+PHjzl69KjOKcwQUkrW1tbSarwLIXjzzTc3hAAa/9/KykqklNjtdqampqioqIiGC/p8PsLhMHfu3NnQiiLZfoHJYDKZaGhoYHZ2lvb29rRdR5N6jLTI2tpaHjxQYfWpmCo3K6h2u4osgdQbV36//0D3NDzoZEtXNQqhGc+GDJSXl0WN+lSw2ShbXt64UJAMbrfSsbf7jeWSrprxeJhMkU2BNa5vcCaSeTc7O5uyawmhhMxuV7llDod6vRfjyu9Xj+10S7/fT1FREdvk12u2wYg3zjVi5XRuTvWKAHj48GHUa5TulUyjh4tBrGF15coV6urq0h6W6HA4uHjxIjU1NTx69IiXL19qGc8AQgjsdns03C5dWCyWbWVICEFbWxvXrl2LGl1CCBwOB4WFhVy5cgVQIaSvv/56WscJZOTvoUk9QgiuXLnCixfjCLG27RyaLEa4ld2ucp0KC9cXblNtXPl8Pu25yiKZ1lVj8/2MKJZwWPX36+7uZmBggGAwmLLrGaGFDofyWBUVbcyjSkaWd4qwAqIh4LlA1j1XQohhYAUIAUEp5WUhxBeBbwf8wCvgR6WUS8mcN9vGVSwWi4WjR4/S399PQUFBWkqbG01hY1ciEmVxUQnsdn+v2tpaenp6GBgYoLu7OyXjPQzkuudqaQmamtZd7Ha7HbPZzLlz59IWJufz+bh79y7BYBAhRNQzZXjNjDDAYDCI2WxmaWmJ8p3upvtECEFTUxM1NTU8efKEubk5apMJANckjZQSk8mU1WqNu1FYWEhzczMtLS3YbLa0X6+srIyRkZGs5jrmKunSEVJFUVERBQUdLCzcJxR6PS1e/1jdItXGVWNjY9RLu12lSr3mlD+6aqwsxVYNNpvVYtLCwgI9PT1cuHAh7ddPVpYXF9eLb8WjtbWVhw8fcvbs2azPL7niufq4lPK8lPJy5P2fAaellGeBAeBnkz1hLhhXsUJTU1NDZ2cnfX19uFwuPB5PSlfJQyH149hctjIRdlsNKCws5MSJE0xPT+uV/STIdeNqdFQZVwZCCKxWa1rzj5aWlggGg9TX12/IYzGZTBvyq7q7u6mrq+PRo0eMj4+nbTwGNpuN9vZ2+vr68r5iYraZmZnBZDLRFCt8OYYQgqNHj2asb0pJSQlFRUXMzc1l5HoHkJTrCKkkHG6jqamanp4evF5vyvMJjdwVSL1xVV1dTVtbG9PT06k7af5y4HXVWD3V0BuNjACTycTJkycJBAIMDAwQCARS7lHfq3G1tqY+v1MEa1tbG+Xl5TlxH80V42oDUspvSCkNv+QtYIc6NtudI/vG1WYaGxtpbGzk4cOH3L59m8HBQUKhEIFAgNHRUfx+/56vHeu5SkZgAwGV0LibM21xcZHS0lJdMTAJctW4Mibq0dH1RnxGI8zqzWV4UowRbtDZ2UmnkewVB8PYqaur4+XLlxvyX9KFx+OhtLRUew7SzODgIE1NTfpeEoMQgnA4jM/n0wtYCZAKHSFVhMMqvPry5WMUFhZy69Yt7ty5w8zMTLQS5MTEBCGjEtUer7HXUKpEWFxczPpK/0HkIOqqmz1XscYVKAPrzJkzeDwebt68ya1bt6IVXp1OJ7Ozs/u6R+1VlhcXIaZbRlxCoRAulysnZDnrYYGABL4hhJDAr0kpv7Rp/48BvxfvQCHEZ4HPgnIHbjhpDhpXQghaWlqoqKhgeXmZkZGRaP8VUEpHa2sr7e3tCCGSUj72alwtLUFZ2c5/KyklExMTOyrDmq3kqnEVDqs+LF6v6hcBsBLJlu7r62NlZYXS0tK0hMdNTEwghEg4dObYsWO43W6mpqaorKxMaxGExcVFGhoaslGa/dAQDofx+/3U1dVleyg5x9GjR+nt7Y0ucujG7VHSoiOkCqdT5ZOUlJgpKTlGTU0NKysr9PX18fLly2hp6JGRETo6Oqivr096YSGdYYF+v5+FhQVee+21HT+Xi3NZhskLXXW7sMBYCgoKOHv2LHNzc6ysrHDv3j1sNlvUAVBcXExXV9eeFtxDofWy/snqqrvV+3E6nYRCobQvEidCLhhXb0gpJ4UQtaj+Lv1SyvcBhBCfB4LAb8c7MCLcXwK4fPmy3LgvdwpabKa4uJji4mKqqqqYm5tjbW2Nrq4uVldXefz4MaOjo7S0tNDa2orFYklIeGPDApP53ouLu/cYkFLi9/vTkiuWz+SycTU9rUICDXktLS2lqamJiYmJaBje4uIiNTU1VFZWpuzabW1t9PX1MTw8nFAFNrPZTGdnJ/39/WnNvQIoLy9nbGyMuro67VVJE36/n1AoxPvvv8/HP/7xbA8npygrK+O1115jaWmJxcVFHj16xOXLlzdUv5qaUo03i4tVYnhxsQqTyXNxTYuOkCqmpzfOoRUVFVRUVFBeXs7i4iKhUIiOjg4WFhZ4+vQpz58/59SpU5SXlyfsJU+n58rn8yGEyEhu4QEnL3TV3TxXBkIIamtrqa2tpaysjJWVFex2O/X19YyMjPDw4UMArl69itVqTbhVz15k2eNRx+1Wq8IoaJEL83fWjatIDxeklLNCiK8CHwPeF0L8MPBtwCfkHnyQ2S5vmQgOh2ND3klJSQmvvfYac3Nz9Pf3MzY2BqieLbsJy+acK0NodzosGFRxrLvZTOF4vzzNjsT+H3KNcFiV9Y0UsQTUjbSzszNaaODZs2dMTU2xtLTE1atXU3ZtozJVMg1Ze3p6AJicnKS2tjZtZYMLCgoIBoNIKXPi5pyPOBwOXr16hdPp5OzZsznTkyRXEEJElfPV1VWcTieNjY3R/UYRGilVWeL5edWGw6jCVVys7uf5JL7p0hFSxcxM/CT70tLSDQuS1dXVvPHGG4yMjNAb6dpaXl7O+fPnd72GoQTvJad693OHdShqAuSLrpqI52oz1dXVG7xBHR0dNDY20tvby+3btwHVOzKRVhJ78cLuVhfAIBgM5kzkSVZHIYQoEkKUGK+BTwFPhRCfBv4x8B1Syj1lhmbTuEpUYONhNpupr6/nypUrXL6scibfe+89ZmZmmJ2d3dbQiQ0LhMSEdnkZSkp2DmWUUtLX10dxcbEu15oEueq1AnC5VK6dERJoYDabOXLkCLW1tdEqfqlWficmJmhvb0+qIbURCjg0NMTt27d59epVSscEyqMyODjI0aNHc+bmnI+43W46Ozu5cOECFbsF0B9ivF5vNDzXIBhUhlRFBVRVqXzJkydVK4X6enW/GR1Viki+kE4dIRWEw8rATTTK1Wq1cuTIES5cuMCpU6dYWlri3XffZXl5mfn5+W2P22vY/26EQiH6+/tpbGzUC0o7kE+66l6Mq3jY7XYuXLjAuXPnaG5uZnh4mHfffZe1tTWWl5fjHiPlekVrSFyWE8m3Wl1dZWRkhPrNik2WyLbnqg74auRHbQF+R0r5NSHES8COcr0C3JJS/mQyJ862cbWdqzVRjFr9b7/9Nu+//z59fX0AtLS0xA2n2s5ztROLi7BbxNfLly9ZWlri0qVLSX+Hw0zsDSTXWFhQq9s7jc+oHJXKPIVQKBRt0iqlZGFhgeLiYux2+4aJfW1tDZvNFjXATp06BUAgEODmzZuMjY3R2tqassITa2trPHjwgLq6urTmdGng3r17WCwWPvnJT2Z7KDnN4uIiZrN5Q88Wt3tjjxgDs1n9nktLVR5lnpE2HSEVzM+v95lMFCEEZWVlALzxxhvcvHkzGmJ1/vz5uOHPew3734lwOMyTJ08wmUw6n3p38kZXTZVxBeue9vLycioqKujp6Yn2r3zrrbe25FZv1lNhdz3V51OLwTuFBK6trdHT0xMNY8wFsmpcSSkHgXNxtu9QyT7Rc2fPuDJWmVIRTWcymXj77bfxer3cuXNn29WlZD1XoZCarDs6tv/M8vIyExMTnD9/XnutkiSXPVdlZXDixM6fMZr6pjIOf3R0FFCFW/r7+zfsM5vNnD17lsnJSWZmZiguLqa+vp76+vpomXbD2LLb7Smt6OdyuSgtLaWrqytl59RsxaiWlkxI6GGltraWFy9eEAgEor9Bl2v3EO58I506QiqYnIRtWkMlhNVq5c0338TtdvPo0aNtPfqbjatUeK6GhoZYXl7m9ddfTyqS4DCST7pqojlXySCEoKqqitdff53p6WkGBwfjRoDsJcLKCAnc6W/09OlT/H4/3d3dOeOBzdG19f2Tbc+V1Zoa4wqUgVVYWEhRUVFUQd1MMJic58rlUisBOxVtM264q6urex36oSVXjSu/X60E7VaptLlZVZRNZSy+oVQbxVHeeustjh07RltbG5WVlTx8+JCZmRna2towmUy8fPmSDz74gPfff5+hoSE+/PBDQFUQTCUejydj/YwOM2azmebmZtxut87x2IWRkRGqq6s3LG6srOz+u9VklpmZxEMCt8NisUS9VduFPKcjLLCoqAiTyRQts63JDtk2rlLlCAC1GGs0oo7XayqecbUbiYQElpaWYrPZcqpHZd4uV2RaYGNjSY3VgH20tYhLQUHBtobOZqE1xrQdiQhsUVERp06dore3V8dkJ0muGleJlN4H0jLhGl7YYDAYVRpjk/Wnp6eZmpqisbGRjo4OgsEgwWCQ58+fMzIyAqj8q1TngdXX10fDcjTppa2tjUePHjE5OZnTTYSzTTAY3JBvFQioBbTdAgi0zZo5wmFVhj2VKR6Li4tbthm6RaqNq7q6OtbW1hgaGkppRVhNcuRSE+FUYESVLC8vbwnRS9ZzFQioUOfdFpWMNhaTk5MJVSHOBHnruYot95gJYnNsUr0aYLAUyVSOt+qbTM5VOKw8V4lUXzFuuqnu0p3v5KpxlYhRDaQtbtlkMm0balhfX8+FCxeiXiSLxYLD4eDkyZMAHDlyJJp/lUpsNlu0gasmvVitVpqbmxkbG8PlcmV7ODmL3W7H6XRGeyCurKhKgJrcYXZWKX3prmBuzO2xFYBTYVwJISgpKUnIk6yN9vSRT56rWOItFCRrXC0u7h4SCEpXKCoqivbrzAXy1rjKR4E1Vnrjea+MxmyJCO3KikrCTSTM2mw2U1dXx+DgoC7JngS5aFwFAqpfRCJ5G+Pj4znT78lqtXLp0qW0eTrMZjOlpaXRPDNNeqmrq6OlpYVHjx4RDAazPZycpLm5mcLCQh48eMDKysqhzLfKdaan9x8SmAjpMq5AVYMtKChgdHRUh+pmiXzUVUEVmdhMssZVoiXYQd0zV1ZWcDqdSY81HWjjKkVsFliTaT1EMBWsra1FK7gVx1nCTMZzlaj3wqCrqwufz8ezZ8+SHfahJReNq0RDAv1+P7Ozs3TsVO0kw5SUlKS1RLrRJFGTfkwmE01NTVRVVTE4OJjt4eQkZrOZo0eP0tDQwOjoqM63ykGmp1MXEmhEpcRrT2DkU6fDuDKZTJw5c4aJiYlt87k16SXbumoqwwKllExNTQHQ3d29ZX8yxlWifVgNHA4Hp0+f5smTJ9HfUzbRxlWKSKdxtbi4yJ07d2hubo72H4rFMKxiGxhv992lVP2tEl0NAOVyPXbsGAsLC8kP/pCSjmaP+yVRo3phYQGTyYQjmfrCB5zKykqWl5d5+vQpMzMzafeoCCGGhRA9QohHQoh7kW1fFEL0CyGeCCG+KoQo3+bYTwshngshXgoh/klaB5pGuru7cTqdPHjwAI/Hw+rqqjZwN+H1erFYCpEyuXLfmvQSDKr7aSqMq7GxMR49esSpU6c4e/bslv3p9FyByuVub2/fdcU/1xYL84Vs66qpLL729OlThoaGuHz5crSwRSzJGFfLy7u3jNlMRUUFdXV1OeG90gUtUsTmJMFUGlcFBQWAqiRUU1OzRendfPOF7YXW7VYx4snEiUspMZvNSCkJBoO6bGsCmM2qMt/Dh+v5eEKsy0W814luS/YYIZJbBRoaGoo2MS05JMvlJSUlXLt2jbm5OWZmZhgbG+PSpUvpDov8uJQytnPonwE/K6UMCiF+GfhZVIPKKEIIM/BvgW8GxoG7Qog/lFIeOLeyxWLhypUrjI+Pc//+/ahB+/bbb2/wUno8Hkwm06Gr6BgOh1leXqaioiopr5VWgtOPEVqfio4QRg5qb2/vjr2BQqH0LNpJKbFarfj9/tSdVJMw2TauLJbU9ccz5OjVq1ecPXt2y/wZDCaevpJIH9bNhEIh7HZ7Tshy3mrJmW7imk7PlcPhoK6ujpmZGZ4/f865cxvbLSRjXCUawyqlZGxsDIfDgd1u5+HDh5jN5pzIwTkI2O1w/rx6bVR7Coe3Pm/3evO2QCD5Y4zXhizU1ib2mzh27Bi/9Vu/xdDQED/xEz+R1r9TLmGz2WhqaqKxsZEPPvgAr9cbXdjIBFLKb8S8vQV8d5yPfQx4Gem7ghDivwB/GThwxhWo8Le2trZoMvLa2ho3b96kq6uL+vp6nE4nT548QQhBS0sLbW1tW5TPfGV0dBSz2YzNVqtDAnOM1VVlXKWC2tpaBgcH8fl8TE5O0tLSsmF/PM/VfgkEAoyNjVFdXc38/Dyjo6O6YmCWyAXjKlWeq6NHjzI9Pc3i4iJut3vL4mwopH43u+mpifRhNVhdXWVqaiqax+vxeHIipSGvjat8CQsEOBHp+jozM4PX693gvUrWuOrqUquis7Oz2O12ioqKsFqthEIhxsfHGR4ejjuGq1evHhrFJpUY3qNMGvuxGIZWov+6ly9fbhuichiYnZ3FarWmOyxSAt8QQkjg16SUX9q0/8eA34tzXBMwFvN+HLga7wJCiM8CnwVobW3d94DTSXV1NdXV1dGY/f7+fiYnJ3G5XDQ2NlJbW8vLly8ZHR3l2LFjG0r45yurq6tUVVXhdgt01frcwu1OXZimEILXXnuNjz76iFevXtHc3LxhEXOn+X07Hcfn87G0tITdbqe4uBiLxYLH42FsbIzJycno54w8K7vdzunTp1PzhTRJkW1dNZXGlcVi4c033+SDDz5gYGCAS5cubdhvyDLs7IWN7cPqdrvxeDzYbLZo7vXi4iJDQ0MbKs6Oj48DqmBSLsx32rhKEfEENpXGFcDx48fxeDxMTU1tsMwTNa7W1tSYHA54+PAxy8vL0X1CiGi1oLq6OqqqqqisrGRubg6v10tTU9O2JbQ1uY0QiRtW8/PzeL1eurq6qMtEKawcJBQKYbPZ0u2lfUNKOSmEqAX+TAjRL6V8H0AI8XkgCPx2nOPiDSpuYEXEYPsSwOXLl3Mo+297hBA0NDRQWlqK3+/HZDJFG6xevnw56smanJzE4/Hw5ptv5q03fXV1ldLSGtbWlCdckxuEw6rqalHRxnl/v1y9epUbN26wsLBAdXV1dLuRp5KocSWl5KOPPop7DcMDXFpaSlVVFePj40gpaWlpSWvBIM325IKumko91WKxcPXqVW7fvo3P59sQzp1o/qARYeX1erl3717c6zgcDjo6OigrK6OwsJDJycloE+NcmBO0cZUi4lVgSbVxJYTA5XIRDAb3ZFwtLkJZmeTVq0GWl5c5d+4cFRUVhEIhJiYmGBwc5J133tkgmPGSEjX5S2GkS2lNTU2WR5I9wuFw2m/OUsrJyPOsEOKrqHC/94UQPwx8G/AJGb828jgQGzfUDEzG+dyBRQgRtyIqqMIjly5dIhQK8fjxY4aHh1lbW6OkpIT6+vq8WgAqLi5mZmaZ6ur09JzT7A23WzVz9nhSa1wZC5wrKytbjCu7PbHIlGAwSE9PD2azmUuXLlFQUEAwGKS3txchxJaUglxY4T/MZKOqsCGzhvykuolwLKFQaNP7jQsF8eTYKLpWVeXh3r37lJSUcObMGaxWK4FAgI8++ojOzs4t4bPt7e3p+RJ7RBtXKSLdYYEGFotlg0dhbm4el8uGEKXRPkYFBUo4i4vXe1lJqZoetrcHePlyjIKCgmjZV7PZTGtrq77RaigsLKS1tZVnz55x+fLlnFgByjTz8/NbbtypRAhRBJiklCuR158CflEI8WlUAYt3pJRbm4Qo7gJdQogOYAL4XuBvpG2wOYgRx9/R0REt5T43N8fc3NyWMJSDipSS+fl5KirO63yrHMMoi+/zpXZ+N/pIVlVVAUoGJiYmWV2txmaz4/WqFf1QSI1hbW1riJXT6WJubpmmplZCoUJU8U0rHR3nAaUXbA7HSuTZ6YQYe0+TIrJpXKVTT/X5fABRr1UoFGJsbByfr5VwWOD1qsV+v39dlg2Wl1XBtbm5SYLBIO3t7dFFM5vNFrdidi6ijasUEc+4Msq1xis6sJfnUEgyMRFkfn6eiYlyhocfIoQSTKu1mKKiy8zPq/KwY2Nw/DjRWP21NRgehtOn1R/l5MmTmfvjaA4UHR0dTE1NMTk5SWNj46EzsKxWa6RKW0W6cgzrgK9G/q4W4HeklF8TQrwE7KgwQYBbUsqfFEI0Ar8upfxMpJLg54CvA2bgN6SUvekYZK4TuyC0sLBAT08P7777LpWVlZw5c+bAyq2UkqGhoUgebElSxlUutX7IV9xuaGyEyUlYWFBepVTM8V6vj5kZePhwDZ9vnvn5UYQAl+sFDQ3tzM+3YzardhovXijvWSTQIKrrLC76cbmgubmVSLuh6L5En+Ntm51VukQy/TE1u5NN4yq2qvXKitJVU6GnhsMwN7cckeUwIyP38Pk8CAELC0Osrl7i1q0SxsfVd5+cVFWMjb/D8DC0tBDNpzIWGw4a2rhKEfGMq4WF9Upx25XKjrd9+2eBz1fKyooLn+8hR48W0tTUxP37LzCZ3Pj9H3LixCneequUv/gLQUcHtLdLZmdnWVqyYbXOc/PmBBC/EbFGA0rOTp8+TV9fH2azmfpUdco8IHR0dDAwMMDjx4+5cOFCypX0SKW/c3G2H93m85PAZ2Le/wnwJykd1AGnsrKSixcv8vTpU5xOJ3Nzc/T391NcXMzFixezPbykmJmZYXR0lK6uMywuiqTaZmjSSzisFiqLimBqSpWVNhTDzXO22byee53IHC+lneVlCIX6sVrh/PlaSkpKuH37FXb7MCUlaxw/3sKZMyX8/u9DdzcUFISYnZ3F4XAwPT2NzzdDXZ2ZkydTq9r19aX0dJoI2TSugsF1nXVoSC3KbyefJpOS9UR11ZaWWu7fH8LlukllJTQ1NWIymbh7dxy//z41NZ18/OO1OBwOvv51OHkS1tbWWFtb4/79EGVlE/j9LpoOcCWfvDauPB5VdSSRvkD7JZ5xZTar0LzOzv2f3zDSzp49x/Pnz5mdneXMmStIKejqasJk8nDv3m16ex+ysKBu/DMz6zfF8XFoalKr8KdPnz6wq7qpRggxDKwAISAopbwshPgi8O2AH3gF/KiUcilrg8wCZWVlHD16lBcvXlBWVpbRkuTZprCwkHPnzvHBBx+wtLQUDZ/V5C5CCEpLSzl16hQPHz7k2TNVmd7lcuHxeA6M/M7MzPDy5ctIZEFy/a006cfItzLm97q61DQSViv+Zq5de40HD+5TVFRMR8dJpIS2thZKSuZ4//1e7t2b5eVLFZnyv/7X1n6VUsKFC1eZm9tb+F/sc+zrSJSXJsUYet3ycmJ6aip1VePZaOqbCj3VOL/FUsCFC5d48OA+R450U1vbQCgEra1HKSzs59GjQf78zwcxmWBiwsSf/mkYKVW/rdVVFS4IcOTIkdQMKgvkrXFVVqbcnEbS6U59gTZ7lvbS2HV6WvUicrlgYkIZVV6vcqcXFKz/MITYm5sVjGuaEeIk9fUnGRxU28bHoby8gObm1xgdlTgcHoqK/NjtsxQX26ip6cRksvCpTwmkDOly6ltJupnrYaC6uhq3282dO3c4cuQIXq+X8vLyDcnW+Uo4HCYUCh2aJsr5QllZGdevXwfg+fPnzM3NpbukfspYXV2lr6+PlpYWamtrefUq+SaamvTicqkVf5dLebBevVqvwmsovnuZ39fbddgpK3sdk4no/D41BQUFNTQ0XGN1NYTD4aOw0I/JNEp1dSPV1Sp0W+kWYYJBM8Fg4mF/sUr7ds91dWhDPw2YzUpXnZtLrG9lbFuXveipQqhr9fcrg3ltTcmyzwcDA+veKaPQxF7CAtevVUJt7XVWVpTBFAyqaK7q6m5qatqx271YLGGKirwEAq/o7DzDykoZJ05Ad7ey6g9yBcu8Na6qqtQjEXYSokS3FRWp1Yf5eRWD7XYrIfN6YWRk/RqgflBW67qr1QgfiH0Y261W9d5sXq9AGPtaCLW/rg78fjvt7dDW5mB4GEpK6qiqUj8mh8PwrGnDajcSbOZ6KGhvb6empoZHjx4RCARwOp0IIaJx0M+fP8dut9PU1ITVas3yaFPH2NgYxcXFeiHiAFNVVcXU1BTBYPBAyObKygpCCDo7O5FS5UHspcaQDkpIH4WFak6fmVFzqtOpVtlj5/fNc/rm1/HmdiN8cPM8D0rxPX4cSkocFBVBdXURvb3Q2Vkfp5Fxeu5Xi4vZ69OYz5hMiTXKNdirfhr7urpa6arBoAppnZlRDoDR0Y2VAw3dcrN+asiuzRZfb40nxyaT+t2YzdDdLQgGHXR2OrDZoKcHzp9XfQufPoW2NjCZDv5NLG+Nq2SIXQ1IJWVlytXa3Ly+zRDwUEg9dnodDKob906fNdy7ra3KcxavVOvSkq70swOSvTVz5SA1ad0PRUVFXLt2DaPxdE9PD83NzdGmfXa7ncnJSZqamvKiX4qUkpmZGVpbW3X47AHG8LAODQ1x7NixLI9md6qqqhBC8OTJE9raTmC12jgANuGhorJy3ZtoFJeIjRpWhae2n69jt/n9KrJmp88a83u8Viuaw4eRy7cf4qUxeTzKgI8NM40ns9ttM7xg2+03DDbD+xmvFLvXq14bRVoOOtq4SiPxSlwaP45ULYgbKxJms3K9bjauQiG1PVXxtHnIXpu5chCbtO4Vs9mM2WymqakJi8WCy+WirKyMkydPYrfbWVxcpL+/n/n5eSwWC8ePH9/QPPAgEQwG8Xg8B7ZKkWYjk5OTB8K4slqtXL16lb6+PgYHJ6mubs/2kDQ7sN38bqzi75fNoWCJ9LnSaPZCPFk2QgpTgSHLxvli5TfWCRDpF58XaOMqjaSjf0C8axjEu/ka/a50dFN89tHM9dBSV1e3odcaQEVFBWfPnsXpdDI6OsqLFy8Ih8PU1NRQV1d3oLxZFosFi8XCysqKNrDygNrag9OE1263U1JSwsuXS0mFC2kyT7rn981eCm1cadJFbFPhdLCdLMd6YJeW4nvVDioHR+M5gGTCuIpl8w1XyvxbDUglQogiIUSJ8RrVzPVpTDPX79ihmatmE0VFRbS0tNDV1cX8/DxOp5Pnz58zOjqa7aElxerqKuFwmHL9w8kLZmdnsz2EpLDbHaytBXQBgRwnm/O7Nq40qSQbsmw8S6lCZH0+5QjIF7TnKo0YlQEzeb3Ym28opCrB5HE60H5Jqplr9oZ5sKitrY16C16+fMnw8DDDw8OcPn06WtY8VwtFBINBnj17RnV1dc6OUZM4DQ0NTE1Nsbq6SlFRUbaHkxDFxbWEw4O43UvawM9htHGlyReyLctLSxsbCecD2rhKI9kWWLdbVYFJRfx3PpJsM1dN8hw5coSOjg5u3LjB06dPo9vffPNNLDkmmFJKXr58iRCCrq6ubA9HkwKmpqYADlT+n9drpavrOL29vZw8eTKpPmta4c4cJpNawMwU8SJTNJpUkG1ddXERDlD0dkJkPSxQCDEshOgRQjwSQtyLbPtrQoheIURYCHE522PcK9kW2OVlHRKoyS5CCMxmM+fOnaOtrS26PZRJrSQBpJR8+OGHzMzMcPr06QNRuluzPVJKpqenAeju7s45Q34nVAn2Gk6cOMHjx49ZXl7O9pCySq7qCNmOTMmkcaUNudyVw1SQTV01FFKOgLKyzF0/E+TKjLO5ietT4DuBX8vSeFJCtnOutHGlyRUqKiqoqKiguLiY3t7enDNefD4fgUCAs2fPUrC1eYzmALG2tsbAwADBYJBLly4dqEbQUipFo7MTzObKaFhjWb5pHsmTczpCthdPNVkh5+QwFWRTltfWlNfqANW8Soic/DpSyj4p5fNsj2O/pLsCy2ZiBdbjUdVZDlA0jOYQYPQeMnpk5Qo2mw2bzcbU1BSBQCDbw9Hsg/7+foADZ1iBapvhcKxX1iosLEQXK91KLugI2TauMi0W2qDbSi7IYSrIphfW7c5PJ0AuGFdGE9f7kaaseUOmb76wLrBOZ34KrOZgYzTlHRoayvJINmIymTh//jw+n4+JiYlsD0ezD1paWlhaWuK9997D5XJlezhJsbLChiqBNpuNtbXkCpbmoRKckzrCYTOuNLkph6kgW7IcDquia/moq+aCcfWGlPIi8C3A3xZCvJ3ogUKIzwoh7gkh7s3NzaVvhHskmzff8XFoacnctTWaZKisrMz2ELZQWFhIaWkpS0tL2R6KZh/U1NREXz948AC3253F0SSHYVyFw2EGBgZwu93ak5qjOkI2I1O0cZUVclIOU0G2dNXJSVUl0OHI3LUzRdaNq9gmroDRxDXRY78kpbwspbwcO6HmCtkS2KUldd1IBJZGk3MsLCxkewhxKSkpwefz6VCsA87169d55513APB4PFkeze4sLS3x4MEDxscnKC4Gr9fL5OQkY2NjnDx5MtvDyyq5qiNoz9XhIlflMBVkS5bHxqC5OXPXzSRZNa62a+KazTGlkmwJ7Oho/gqs5uBjFLMIBoNZHslWampqEEIwNjaW1uvsp/JUvGM1WzHkq6+vD7/fn+XRbGV2dpZHjx5x48YNHj16hMvlxel8wfDwK3p6ejCZTLz55puUlpZme6hZI5d1hGwXrNLGVebIZTlMBdnywk5M5G8f1mxXC9yuietfBf4NUAP8sRDikZTyL2VxnHvGSBTMRCUUQ2DHx+H8+fRfT6NJlkAgQCAQoLCwMCfLY5tMJs6cOcOTJ0/wer0cO3YsnZfbT+WpzcdqNmG1Wnnttde4c+cOi4uL1NXVZeS6Xq+XW7duUVxcTDgcxmw2U19fT21tLRaLhcePH0dDTysrK6msrKS2tpZAoBqL5TnLy8sIIbh48WJO/kYyTM7qCNnMqdaeq4yTs3KYCrKxUDA7C1ZrfuZbQZaNqx2auH4V5XY98BhCmynjam1NVV+pr0//9TSaRJFSMjMzw+DgIE1NTXR2dmZ7SNtSUFDA6dOnuXv3Li0tLRkrzS6l7IP1oh+a/WO32zl69CiDg4MZMa5CoRB3794FoKOjA5/Px8DAAD6fj1evXhGOaDBHjhyhtrYWm80W/X8PDMCZM8fzrt/LfshlHSHbYYGazJHLcpgKsiHLY2PQ1JS5a2aaQ78slm4yKbRCqITo+vr86xmgOdjMzc3R399/YMpjFxUV4XA48Pv96TKujMpTEvg1KeWXMnTsoWN2dhafz5eRaw0NDVFQUMD58+ejXqfGxkYAlpeXefjwIdeuXcOxKYM7HFZl2IuL93d97c3IHNk2rvT/WpMqsiHLLhdcvJi5a2YarYKnmUzGshrGla4SqMk1qqqqALh//z5TU1NZHk1i2O32dBZD2HPlqUSPzfUKVZlicXGRdCeRh0KhSEGKccrKyuKG85WVlXH9+vUthhUow6qgYL2/lSb3yWZvIG1caVJJpo0rl0tdr7Y2c9fMNNq4SjOZFFopVfPgfHa1ag4mZrM5Ggr4/PlzFhcXszyijYRCIUKhEABut5sPPvgAl8uVthC9fVaeSujYXK9QlSkqKyux2Wxbtq+trTE9PZ2y67hcLmw2G21tbUkfu7m/lSb3OUyeK23I5TeZluW1tfyvZq3DAtNMJoXW7YYrVyCOHqHRZJ3W1laampq4ceMGXq8328MhFArh9XpxuVw8f/4cIQSvvfYa09PTBINB2tvbqU3D0lqk2pRJSrkSU3nqF9N97GEkHA7jdDqx2Wx0dXUBKnRvZGQk+pmpqSlOnz4drWK5F0yROOyampq4htxurKxAQ8OeL6/JAkZUipSZyYHSnitNusi0cVVcDEePZu562UAbV2kmk0K7tJS/lVc0+YHJZKK6uprnz59TVVW1J0U0EaSUjI2NYbVaMZvNVFRUYLFYEELgdruZmZnZUG69trYWr9fLhx9+CMDRo0dpTl8/g6QqTwkhGoFfl1J+Zrtj0zXQg47hjTTKsjudzg2GFahcqJs3b/L666/vWR6NnK6GPVhI4bBayd1vvpWBLnaQOQwDK9PGFWTeuNJylb9kMsQ1GFQRVvnuqdfGVZrJlHElpYpj1f2tNLmMEILTp0/T09PD5OQk7e3tabnO4OAgY2NjVFRUREMQbTYbBQUFLC8vYzabaW1tpa2tDZPJhBCCQCCAz+fDZrOlzeiD5CtPRcIAP7PTsZr4WK1WXn/9dW7dusW7774LQFtbGx0dHYDybK2urnL//n0+/PBDzpw5Q2lpadQQj4eUEiEEwWCQ8fHx6DOoQijJsroKhYW6CNFBJNPVgGM9V5kuA6/JXzLpBFheVoZVvt/vtHGVZjIltG63CgfcR2SLRpMx3G531KuQapaXlxkfH+fo0aM0NTUhhMDv9+PxeHj48CH19fUcP358y3FWq3VfoWGa3MRms3Hq1KloY95Yg95kMlFSUsL169cZGBigp6cHAIfDQUdHB9PT09EcKqfTyfLyMsvLy9HjS0pKWFlZAeDKlSt7ytFbWUmN10qHiWWeTFcDjvdao9kvmTauDkOElTau0kymhHZ5Gd0fRXMgkFLi8/n2FEK1GxMTE7x48QKLxbIhrM/wRr322mtp9UppcpOqqiquX7++42eOHDmC3++nsrKSmZkZpqamWF5exu12EwgEAKirq6OpqYnh4WFaWlqor69namoKi8WyJ68VqJDA5WVYXFw3kLZ73m2fELriYCbJtHGlc6406SBTVa2NCKvW1vRfK9to4yrNZMp9v7wMkUgXjSbnKS4uxrxJC1xcXGRhYYGj+8h0NZq0nj17Nu5+u92+53Nr8huz2czp06eB9d5UBqFQiGAwGJWf2EInmz+bLJ2d4PeveyP2+qzJPNq40uQDmZLjlRXVciJOp4q84xB8xeySCaH1eiEUUnH7Gk2u4/P5cLvdFEYEdnJykoGBgej+8fFxLly4QNkeXLFGftVBaFSsOTiYzeYtiwGpwmSCOK2vNAcAbVxp8oFMyfHS0uGJsMrzlLLskwmh1SGBmoOE0WA1GAzy5MkTBgYGKCgooKGhgYqKCgAePnzI8PBwwuf0eDysra3hdDqpqalJW38qjUajMchkYQltXGnSidZVU4v2XKWZ/Qis0UMjHN752emEfUamaDQZw2KxcO3aNW7dugWoEMHLly9H9xvV14aHh3E6nVRUVNDc3Izb7aasrIxgMEgoFOL27dtYLBbMZnO0FDbAsWPHMv6dNBrN4WO/8/vmuXyned7ng9lZ6O1VFSaFUB7P3fL0EsnX2+2zOdCWUJNm9lP5MhE59njUZwsKUjvuXEUbV2nGYoHRURVTn4ihFPsMStBNJnUjFWL9dexzQUH+9wzQ5BcOh4Pr16+zsrKypRCAxWKhra0Np9OJy+XC5XJFexMJIZAxGkAwGMRisXDmzBn6+/s5efKkrvin0WgyghAwMqKKkWw3l283v+80p8d7FgIqKlTeismkKkwGAvFz74zPJ5Ovt9Nnqqt12kG+EwzC0JAqiJOowW88Jyq/h8kJoI2rNFNTs169aS83U40mn9kuN0oIwcWLFzdsk1KysrLC3Nwc9fX1W4yyN954I23jPOjcv39/XggxsvsnU0Y1MJ/B62Wbg/B927I9gHyjvV0ZVonO6bFz+17md120SpMuTp9WLX0Sld/YbZqtaOMqA1RWZnsEGs3BRwhBaWkppaWl2R7KgUNKWZPJ6wkh7kkpL+/+yfzgsH1fjcJsVl4djeagY7erhyY1aJtTo9FoNBqNRqPRaFKANq40Go1Go9FoNBqNJgVo40qj0Wg0qeZL2R5Ahjls31ej0Wg026CNK41Go9GkFCnloTI2Dtv31Wg0Gs32iNiyxgcZIcQckMlqWDuR65WjMjm+tkwn02eDHJO/ZMh1WU2WTH2fQyHXGk2+kIV7dD7cW3f6DvoeuAdyTFfIZRk90Hpq3hhXuUSuV47K9fFpMke+yUK+fR+NRnMwyYd7UT58B8325PL/N5fHlgg6LFCj0Wg0e0YI8RtCiFkhxNOYbV8UQvQLIZ4IIb4qhCjP4hBTSrzvG7PvHwkhpBBCF+jWaDSaQ4o2rjQajUazH74MfHrTtj8DTkspzwIDwM9melBp5Mts/b4IIVqAbwZGMz0gjUaj0eQO2rhKD7me3Jzr49NkjnyThXz7PjmPlPJ9wLlp2zeklMHI21tAc8YHlibifd8Ivwr8DKBj7TWQH/eifPgOmu3J5f9vLo9tV3TOlUaj0Wj2hRCiHfifUsrTcfb9EfB7UsrfyvjA0sTm7yuE+A7gE1LKnxJCDAOXpZS5miiu0Wg0mjRiyfYANBqNRpOfCCE+DwSB3872WNKFEKIQ+DzwqWyPRaPRaDTZR4cFajQajSblCCF+GPg24PtlfodIHAE6gMcRr1Uz8EAIUZ/VUWk0Go0mK2jjap/kcqUsXdVKY5DLcrpXtHznLkKITwP/GPgOKeVatseTTqSUPVLKWillu5SyHRgHLkopp7M8NE0a2M+9VAgxLIToEUI8EkLcy9igt44j3nf4ghBiIjK2R0KIz2xz7KeFEM+FEC+FEP8kc6PW7Idc1gHycS7XxtX++TK5Wynry+iqVhrFl8ldOd0rX0bLd9YRQvwu8BHQLYQYF0L8TeD/B5QAfxZR1P6frA4yhWzzfTWHhy+zv3vpx6WU57Pcw+fLxLl3Ar8aGdt5KeWfbN4phDAD/xb4FuAk8H1CiJNpHakmVXyZ3NUBvkyezeXauNonuVwpS1e10hjkspzuFS3fuYGU8vuklA1SSquUsllK+R+klEellC0xitpPZnucqSLe9920v10Xs8hf8uFeusO9czc+BryUUg5KKf3AfwH+ckoHp0kLuSy3+TiXa+Mq/fwY8KfZHoRBpKrVhJTycbbHoskpckpO94qWb41Gk2V2updK4BtCiPtCiM9mcEyJ8rlIiNhvCCEq4uxvAsZi3o9HtmkOPjmlAxz0uVwbV2kk1yplxVS1+rlsj0WTO+SanO4VLd8ajSabJHAvfUNKeREVVve3hRBvZ2xwu/PvUMVZzgNTwP8nzmdEnG0Hzqug2Uiu6QD5MJdr4ypN5GilLF3VSrOBHJXTvaLlW6PRZIVE7qVSysnI8yzwVVSYXU4gpZyRUoaklGHg3xN/bONAS8z7ZmAyE+PTpIcc1QEO/Fyu+1ylgZhKWe/kUqUsKWUPUGu8180uDze5Kqd7Rcu3RqPJBoncS4UQRYBJSrkSef0p4BczOMwdEUI0SCmnIm//KrClchtwF+gSQnQAE8D3An8jQ0PUpJhc1QHyYS7Xnqt9ksuVsnRVK41BLsvpXtHyrdFoMk0y91IhRKMQwqi6Vwd8IIR4DNwB/lhK+bUsfIXtvsOvRMrEPwE+Dvz9yGej3yFS/OBzwNeBPuC/Sil7s/EdNMmRyzpAPs7lIne8gBqNRqPRaDQajUZzcNGeK41Go9FoNBqNRqNJAdq40mg0Go1Go9FoNJoUoI0rjUaj0Wg0Go1Go0kB2rjSaDQajUaj0Wg0mhSgjSuNRqPRaDQajUajSQHauNJoNBqNRqPRaDSaFKCNK41Go9FoNBqNRqNJAdq40mg0Go1Go9FoNJoUoI0rjUaj0Wg0Go1Go0kB2rhKAiHEF4QQv7XD/l4hxPXMjUij0WgOLvqeqjkoaFnVHAS0nOYGh9a4EkL8iBCiRwixJoSYFkL8OyFE+X7OKaU8JaV8N3L+HQU8znjuCCG6hBCdQogHm/Z9TghxTwjhE0J8edO+7xdCuGMea0IIKYS4FNn/cSHEXwghloUQw3GuOyyE8MQc/42YfQ1CiD8UQkxGztmezN9Do9EcHg7RPfWnhRBPhRArQoghIcRPbzq+PXLPXRNC9AshPrlp/9+JHOeKjOHN5P4qmv2iZTV6vJ7/cxgtp9HjX49ce0UI8WS7e6YQ4j9Gzns00e+ULg6lcSWE+IfALwM/DZQB14A24M+EELZtjrGkcTzWyPVfApeAB5s+Mgn8EvAbm4+VUv62lLLYeAB/CxiMOcdq5Lif3nxsDN8ec45PxWwPA18DvmsPX0uj0RwSDtk9VQA/BFQAnwY+J4T43phT/C7wEKgCPg98RQhRExnXVeBfAN+N+jv9B+CrQgjzvr+0JiG0rG6QVdDzf06i5VTJqRCiEvhD4ItAOfArwB8JISo2je9N4Mj+v2lqOHTGlRCiFPgF4O9IKb8mpQxIKYeB70EJzg9EPvcFIcRXhBC/JYRwAT8SOYVDCPF7EQv6gRDiXMy5h4UQnxRCfBr4P4C/HrHSH+8yrNPAMymlBC6zSWillP9dSvkHwEICX/GHgf8UORdSyjtSyv+MEuSkkFLOSCn/b+BussdqNJrDwSG8p/6KlPKBlDIopXwO/A/gjch4jwEXgZ+XUnqklL8P9LCuoLYDvVLK+5Hz/SegGqhNYByafaJldV1Wd0PP/9lDy+kGOX0dmJFS/jcpZUhK+VvAHPCdMd/JAvwb4HMJXDsjHDrjCvWPcgD/PXajlNIN/CnwzTGb/zLwFZS1/Nsx2/4bUAn8DvAHEYs+9lxfA/5P4Pcilvo54iCE+FEhxBJwE3gt8vofAr8shFgSQnQk88WEEG3A26gJOxl+WwgxJ4T4RuyPUKPRaBLg0N5ThRACeAvojWw6BQxKKVdiPvY4sh3U38MshLga8Vb9GPAImE5mXJo9o2V1XVYN9Pyfe2g5XZdTEXls+BjK2DP4+8D7UsonyYwlnRxG46oamJdSBuPsm4rsN/hISvkHUsqwlNIT2XZfSvkVKWUA+FeoH8C1vQxESvkfpZTlwP3IOc4CT4FSKWW5lHIoyVP+EHAjyeO+H7Wa2gb8BfB1sc+YXk32ETqpVZM5DvM99QuoefQ/Rt4XA8ubPrMMlERerwC/D3wA+ICfBz5rrOBq0o6W1XVZBT3/5ypaTtfl9EOgUQjxfUIIqxDih1Hhf4UAQogW4CeAn0tyHGnlMBpX80D1NrGpDZH9BmNxPhPdJqUMA+NAY7KDEEJURqz+ZdQqxbvAc6AbWBRC/L1kz4kS2t9M5gAp5c1I+MqalPL/ApZQqwaaHEEcnqTWj4sdiq9EPvNTQiW8rgoh+iJhWAghrgshwpvO/8NJ/VE0e+VQ3lOFEJ+L7P9WKaUvstkNlG76aCnKqAL4cZS36hRgQ4X3/E8hRNLfV7MntKyuy6qe/3MXLacROZVSLqA8cf8AmEHlZP0v1HcC+NfAL0opNy9qZZXDaFx9hFox/M7YjUKIIuBbgD+P2RxvNbEl5hgT0IxK5NvMjiuRUkpnZDXgJ4Bfj7z+Giq5tFxK+a93+yKbxv8G6sfzlWSOizc0trpgNVlCHK6k1h2Lrwghfhz4m8C3ojwE38bGSWYy9vxSyqQWGjR75tDdU4UQPwb8E+ATUsrxmF29QKcQoiRm2znWQ1zOAX8kpRyIrDR/DbUS/XoyY9PsGS2rO6Pn/9xAy+nGcbwnpbwipawEfhBl3N2J7P4E8MXIwrMRXv2REOJvJDO2VHPojKuIdfsLwL8RQnw64mZsR8WnjgP/eZdTXBJCfGdEgf17qB/ArTifmwHaI4K94/lYVy4voFyvGxBCWIQQDsCMitd3xFGgfxj4/U2x/gghTJFjreqtcBhKuRCiVQjxhhDCFtn+0yh3882Y4x2APfLWHnmvyQDi8CW1blt8JfI7+nng70spn0nFKymlM4HraNLIIbynfj8qV+GbpZQbZFVKOYDKofr5yDn/KiqM5vcjH7kLfGvE6yuEEN8MHEOF2WjSjJbVDfv0/J+jaDndcu4Lkb9BKfAvgXEp5dcju4+hFq3ORx4A3w58dZfvlF6klIfygVoBfwp4UAL2a0BFzP4vAL+16ZgvoCzu30OFeTwELsbsHwY+GXldhYqrXwQe7DCO/w1ciXz+1Taf+QJqhSH28YWY/Q6UO/8TcY69HufYdyP7TgFPUB6DBdRqyOVNx28+Vmb7f3dYHij3dxCwxNn3m8DvxshHAPgrqAWTgpht340yrP8RMARY48jqFlmPc70fjcjYGuCNvA5GfgdLQMemz/8S8OUdztcGhDYfF9n3SWB407bWiPz9FCrkYQg1+Zhi5NyP+i0PAb8KFGX7f3iYHhyee+pQ5Lfljnn8PzH721HhMx5UCM0nY/YJ4BeB0cj37QN+MNv/u8P20LKq5/+D8NByGt3/u6jc1eXI96rdYawSOJrt/52IDEaj0eQYQogfAP6llLI+zr5/AVySUn6zEOILwDdJKd+O2f8F4NNSymuR9yZgAvgeKeUNoXKaflxK+b8inz0qpfyBBMZ0A/g7gBPVe+KCjHMTEUL8EtAspfyRbc7zT1E32etx9n0SFYLQHrPtddSK6p+gkrDLgW8AX5RS/nshRD2qMlI/ynD7TaBPSvkTu30njUaj0Wg0mlRx6MICNZoDxKFMat0GowrSr0gpl6QKj/w14DMAUsppqcIFw1JVIfoZlNdOo9FoNBqNJmNo40qjyV0OXVLrDjxHhf0l6mrXidkajUaj0WgyjjauNJocRR6+pNZti69IKddQsdY/I4QoEUI0///Z+/PwRr/8oBP9HEmW5EXe93137Xv99q1vFjo9dLgBBgIBsty5nTxDYJgHBsjtIckEmAEyF4ZhuJAGQrOkIUCmCRDodD9A/9baq1xlV5Vddnlf5N2WLFnWdu4fR68s27It2Vrt83kePZJevcuR/dV5v9/z3YD/N/AfIsd+FEnQFkL1vfhrqC7vGo1Go9FoNBlDG1caTQ4jpfwbqGp+/zvgAu6hwv1+QMb0KzmA3wb+MCpZ9Y8Dv1+qpoJ7+deR5xWxp2/VHm4Cj4UQVUBISrkWZ5//GRXC9xdR1Qy3ItuAaPWpP0T8kMAPIvv/R1QBiy1UXpXBz6MSXedQXr1vsVPy/UZkmwfVdHAQ+NOHfBeNRqPRaDSalJPTBS2qq6tle3t7toehyRCPHj1allLWZHscGo0mMfQcnVr0HHg8tBzmJmdFnrX8nS0Skeu0NRtNBe3t7Tx8+DDbw9BkCCHEZLbHoNFoEkfP0alFz4HHQ8thbnJW5FnL39kiEbnWYYEajUaj0Wg0Go1GkwK0caXRaDQajUaj0Wg0KUAbVxqNRqPRaDQajUaTAnI65+ogwmGYjrRHFQJMJvU46etcJBwGKXeezWb10Gg0Gk1i+Hz759K1NQiF1HuLBRwOtR2Ofk5kn0Sei4qgri5131NzMD6f+n8fpAfkog4g5W6ZjfccCIDLpb6blGC3Q2FhauQzdhxHPVdWQllZ6r77aWBjQ80zqdRT80VObbZsjyq75KVx5fcroW1s3P3PDId3bpZ7tx/1WsrkhT12G8D6unqWUo0v9nObTT1ifxzxxrD3OfZaUkJpKXR2ZuXPrtmDrhCkOSvVsPKZxUWYmVFKpzEfB4MwOqqUQSnVPaW3V+1vzM/JPhv3gUT39/thdVUbV5kgHIahISUDB+kBkNw9f+9rKZWRE/tsMkFBARQXq/PHGnHx7vl7txnniDcG49nlUjJeUqJkym6H5uaD5S7ettjnWB0l0WeXSz20cbWbjQ31XFS0X08NBJLXU8Phnf/PcQ00nw+2ttQ5AwHwetV2s1k9FxWp18b/9ijjPp6cBgJqPnU4sve3zzZ5aVxJqVYaq6tTe97jGmXhMHg8yptWVqYEa2xMTajGypKU0N6+25CzWJQQFxTsvLbZ1Htju+GpMpnU+UtLU/udNcdHVwjS5HM1LCHEBOAGQkBQSnkr5rM/B/wqUCOlXM7OCFPDwgLU10NV1c58GgyqefnqVdjehpERNT9nEq93Z0HurJIpGdzcVN6cvr6D94ldfT+O0ut2q3u0wwGvXqn7v5Tq2j09O+c3DLnY+77FsvO+oGD3Z7EPQwmOfb2xARUV0NUFKytqHJmW5VBI/Y40u5FSGb2p1FUPM8gTee10KiPcaoWlJaW7Wizq860tNU8ai06Grr1XV7Vad8tsrIyGwzA+vrOgcFbJW+MqHa7RWC9UsmxvqxWBS5fUc0WFeg1KeKem4Pz5nf1jvWyh0M5j7/tgUD37fPD8OVy4cPLvqdFoNBG+tFdxFUK0AD8ETGVnSKkjGITBQTUXr67unlfHx9V8Hw7D5KRa8bdYoK0tN0NvTjFpl0GX6+iFyViPwHEwzt/XpxZJb9xQcvb8uTLiY5Hy4Ht+7Hu/f/f7ePtubioDa2tLGVZer7puSYlaVNBkD8PTlEqEOFlqSDCo5rraWqWXFhZCTST2YnxcGVaVleq9YZAdJavBoNKBw2F1Tovl+L+j00JajKt0r0aly7g6CSaTEjJQAhYr/HvfG/snI3zDwyp8xJKX5rBGo8kj/hbw54HfzvZATsrcnFIULl/evT0UUveQ3l6lFGxtKQVjdFQZV5kgNqdFs4+UyuDGRvq9OcaqfTi8c2+PfR2LEDsegZOyvq7kvKsLlpeV98rhUIsJ2rg6nLOoqxpyCvvlc+97w5BLxph7+RKuXEnNWPOZdKrqaVuNyneBPQ4TEzs5ARrNaSEcDrOwsEBdXR2ms77UlXkk8F0hhAR+TUr5DSHEjwKzUsqnItcm2WMwPw8NDfu3GyFVNpt6LixUCmmuFjY4xaRdBv1+tbJeVHTiUx2K4QU1imZAau79R2GEFdpsKhTL51PyrBdiE+ZM6aqGnMJuWTXen8Qr5nIpz2lj48nGeBrI9M8vJatRuS6weyfUvQKcLEZsfkvLiYZ4Joi3EiWE+MvA7wPCwCLwU1LKuUSOzdS4zyoLCwsMDw9js9moNGIRNJniXSnlnBCiFvieEGII+Drww4cdJIT4GvA1gNbW1vSP8gTMzcH77+/fbhQgiH0dDOpKrFngWDIIicuhy6UM53TrDEb0Suz9/6TKaiLEk+VMXDeWU+iFTZmummtrhiaTWnCA1DsCxsaUnppr3zkbpOtPYKxGPYpMgMSuRh12oBDia0KIh0KIh0tLS/FPnoPGFcRfuYL4YYHJMDYGTU16JSoJviSlvBZjHP2qlPKKlPIa8B+AX0ziWE0acbvdALx+/ZptnRGdUYwFBinlIvBt4EOgA3gaWWhoBh4LIer3HPcNKeUtKeWtmprcLZTocqmiFQclkxuKaKxCmuk5NhfvY5nkuDIYOSYhOcxUFTvj/h97v8+E5+qghQKtLyTEmdNV9zoC9qawnEReJyeho+Nk4zstpOtn/66U8gbwI8CfFEJ8gFqNOkypBRKbMHNRYGH35JrK1YCJicxX/zlNSCldMW+LUROqJgewRZpheDwe7t69y/JyXhemyxuEEMVCCIfxGuUpeCClrJVStksp24EZ4IaU0pnFoR6b2dnDc072Glfac5VZMiGDRln0TFTZjXf/z5RxZSjL2fJc5TFnTlc9LIXlJHKzvKzOV1t78jGeBtLysz/JalQipKMCSyqIDQuIFdCThAWur6sYah3DmjD7VqIAhBB/VQgxDfwEB0+ccY+NJZHVKs3RLCws8PDhQ2RMPEl5eTkLCwtZHNWZog74TAjxFLgP/I6U8jtZHlNKOSjfyiAXPFdnnLTLoNerykYXFKTyrPExKg0GApkNCzSZciPENRd1sqNIt66ai8bVYTlXJ1kMGB/PXDGgfCDlt5LICpRJSumOWY36FSllbcw+E8Ct01SBBQ73XB13otMxrEmzL4ZfSvmJlPLrwNeFEL8A/DzwS4keG7uDlPIbwDcAbt26pT1gSSKlZHJykunpaRwOB+vr61RVVdHb28vCwgKTk5O43W4cZ7n7YAaQUo4BV4/Ypz0zo0k94bDq4fLWWwfvszecKhDQq/2ZJBMymCmvlYHRoDrTnqt4OVd2e3qvm++cVV31sPoAx5VXo53FD/5gasZ4GkjHOl0d8O1IlR8L8K1Ur0blYpIg7Lhb460GHHflbHIS3n03NeM7C8SuRAkhvg28AcQaSN8Cfoc4xlUCx2pOyL179/D5fLz11lvY99z9W1paWFhYYHR0lIsXL7K9vU1JSQlCCAKBAJOTk9TX11NcXMz29va+4zUag8VFVTHtsApxe8OpdJ7K6cPlOtx7mWoMz5VhpJ+0mFUi6OIsxyYjumouGlfx2gYZPa2OI69OpzLmy8tTNsy8J+W3kkysRuWiwMJuz1XsTfq4E6yRfqJjWBPjoJUoIUSPlHIkstuPAkOJHpupsZ8FfD4fPp+Pc+fOxTWMhBBYrVbW1ta4d+8eJpOJQCBAVVUVfr8fj8fD/Pw8hYWFbG5ucuXKFV1hUBOXubmjQ6n3KqXauDpdhEIqLLCkJHPXjOe5yla1QC3Lh5MJXTUXU1gOyrk6iayOj+u6AHvJy59fLhtX8XKujiu0OoY1aeKuRAkhfksI0YcqxT4J/ByAEKIR+IdSyq8cdGwWvsOpw+Vy8fjx4+j72kNWC86dO8fW1hblkSUwl8vF8+fPsVqtvPPOOwQCAdxuNwsLC3g8Hm1caeLidMK1a4fvEy8sMFJfRXMKCARUvlUmo1zMZmVcWa3qfbaMK+25yg1yUVc1nACxMgMnCwmcnYWrh5qpZw9tXKWQVFYL1DGsyXPQSpSU8g8csP8c8JXDjs01QhF/vjmP7pxOpyr09cEHHyCE4LDGoDabLVpBEKC0tJS33347+t5isVBYWMjGxgZhY/lNo4nB74eNjaM9/nsLAWTac3UKewPlFNnQEwzPleGYD4XSX0wjnnG1N3pGkx1yUVc9SE89boTV9LTqI5dJD3E+kIOZS0eTiwILB+dcHUdodQyrJh6ffvopn376KVtbW7x48YL19XWcTifr6+vZHlpctra2mJubo66uDpPJdKhhlSjhcJjl5WWqqqpSMELNaWN2VvW2Okq51AUtTjfZCMnam3OlPVdnm1ysD2BEWKWqH+vkpA4JjEderm3kqnGVymqBOoZVsxfDAwSqMATA4uIiAAUFBbz99tuYcmwmX11dBaC3tzdl5xwfH6ekpISSPUtl4XD4SM+Y5vQzN5dYEYO9SqluIny6yIZiayiu2exzZYR8ZdK48vl0dcJ45KKuGq/ZNRxPVoNB1fLijTdSO8bTQF4aV7mYJAipE1odw6qJx/j4OBUVFVy4cIGNjQ3Ky8tZXFyktraWx48f88knn2A2m2ltbaW5uTknQgdHRlQdkVSNZWZmhuXlZa5fvw6o0u5er5eFhQWmpqZobGxMqSGnyT+cTjh//uj9tOfqdJMNxdbIuYrtc5UJ4wp2vm82wlvX1xP7zZ01ctG4MvqxxcopHE9WJydVlIA2rPeTl8ZVLrpaYXdBi5MI7cyMjmHV7CCl5PXr12xvb9Pe3k5BQQHV1dUANEZKot24cYOtrS1CoRBTU1PMzc3R1tYW/TzTjI+PY4nc4bu7u1N2zsXFRa5evYo1kjHudDoZHh5GCEFxcTHBYDAl19LkJy6Xuj8kUudEVws83WQz5yqT1QJhd0PsYDCzhVlcLqVcG0U8NDvkonEF8Y2r48jqxAS0tqZ0aKeGvLyV5KpxZaxanTQscGJChwRqwO12s7GxwejoKADNzc1Ro2ovFosl2ni3rKyM8fFxXr9+TWlp6b7wuVSztbXF6OgoxcXFFBUVUVVVxeTkJKCMv+bm5hNfY35+nqWlJW7cuEFBJEN8fn6e4eFhOjs7aW1tZWNjg8HBQXw+n+6BdUaZnYX6+sT2jdfnymyGoaEh6urqqKioSN9ANWknW8ZVIJDZsEDjusb3NcJbQ6EQL168oKenJ63z4doa6J9KfHLZuIqVU0heVn0+1S7o/fdTP77TQN4aV7kqsAc1EU5UaHUM69kmGAyytraG3W7nyZMn0Yp4PT09NDU1JXQOIQRtbW2EQiH6+/tpaWlhZWUFIQT19fVUVlbidruxWq2UlpYmPcZwOEwwGKSgoACXy8WTJ0+orKzE5XIxNTVFaWkpQgg+/PDDpM99EGNjYwQCAe7du0dhYSGlpaXMzs7S09MT9c6VlJRgNpsZGRnh8uXLKbu2Jn+Yn0+8fUWs58oINZcyjNPpZGNjY5chr8k/smVchUKZbSIMO7IcW1BjfX2dlZUVTCYT58+fT0s+bjisQgITvDWdOXJZV91rXCUrq5OTUFenPZYHoY2rFBKvoEXsymgiTE6qkBa98H76mZ+fZ3V1FZfLRXl5Ob29vWxsbPD8+XNAeaPef//9YxVoMJvNdHZ2srGxwdraGqWlpVRUVDAzM8Pw8HB0v/feey8avpcIY2NjTE1NAVBZWRktWHH58mWEELx69Yq5uTmuXLmS9JgP4/z589G+VpOTkwSDQdrb22loaIj+fUwmE3a7PdojS3O2CIdhaQneeSex/fcbV0Hm5xcA5Y29e/cu7+tl2bwlF3KushEWqCrBbbG2tgbA0tISABcvXkz5dTc2oKgo/eXm85Fc1VNhJyzwJP1YJybg3LmUD+3UoI2rFBKviXCyAqvLWp5+AoEAs7OzTE1N0dLSQmVlJcPDwywsLET3SUVhBrPZzK1bt3Ztq6qqwu/3EwwGuX//Pvfu3cNisVBfX0/bEUv+Ho+Hqakpqqqq6Ojo4OHDhwBcu3YtauB0d3fT1NREcXHxica+l8rKymjD4AsXLsTdx+l0EgqFspZnpskui4tQXJz4wlRsnyufb4vZ2UG2tz2A+p2srKywtramwwPzlFzJucqk5wrA611jZGQQh0P1RKyurmZpaYmtrS0KCwtTet21tcTyG88iuVp4DZROGuthheRk1evVHsuj0MZVCjEEFo7X9drvVyuv772XnvFpcoPBwUE2Nja4detWNB+qtLSU1dVV6uvrMZlMaa30Z7VasVqtfPDBB2xvb3Pv3j1cLhfPnz/H6/XS29uL3++PhhJ2dnaytLTEq1evAOVFslgsXL16FY/Hs8tTZDKZUm5YJcLa2hqvX7+mt7c3J6okajLP3Fzi+VawWyEdHb2HyWSOhrIKIXj27BlPnz6ltrYWm81GQUEB4+PjtLa2Eg6H6erqOtF4dRPh9JKtPleZrhYIO7K8vb3NwsJTLl5s4a23upARIfv444+5d+8eNTU1OBwOvF4v6+vr1NTUUFRUREMivQv2EAqpYha6oEF8clVPhZ2wwFiPYyiUeIjf+LgyrHQBoIPJyz9NrgrtSctbjo9DTY2OYT0L1NXV7So0UVxcnHGjxGQyUVhYSE9PT7RkutVq5cmTJ7v2c7lceDyeaIl3I4ywoqIiZ1b1l5eXaWpqora2NttD0WQJpxOuXUt8fyHA6ZxlYGAEKaGr681dIbgtLS3YbDZKSkoYHx8nGAzS2tqKy+VibW2Njo6OnOsrp9khm54rs3lnYTUTYxACnj8fwOVaQUpobe2KbFcX7+3txev1YrfbowWSWltbmZ6exmq1Hsu42thQFY21gh2fXNVTQcnl9vbxC69NTkKKI/9PHXn5s8hVoT2oAkuiAjs1BSmqWn0sjIpvx5loNYljs9kIBALZHkaUpqYmGhsbozfitbU1bDYbQ0NDUcMqmYIa2cDr9epwwDzn4cOHNDQ0UFBQQHFxMQUFBdGS+0fh9ytlLznbWjI1NUpZmZXOzjewWnffDmMXD5qampBSIoTA7/dHm3hrcpdsNRH2+7e5f/8xnZ09eL0Ct9tKUVFRWj3q4XCAlZUVGhtr2Nw8t+97x86Nzc3NUVkuLS1lZmbmWNdcXdVVAg8jV6taw/7CK5B4lJXLBZubkK3b7fb2Ni9evODixYsJ3x+yQV4aV7kay2qsWsXG/CcqsF6vmqxaWtI3vsMIh8PMzMxQVFREfX39sYooaPazurrK5OQkZrOZ2tpa6urqWFxcpLOzM9tD20Xs/9tQKI3eWVarNedD7SoqKpifn6empibbQ9Ecg8XFRTY3N6MeVAC73U5fXx9lZWVHeojm51Uzy2RW0X0+D+Gw5Nq1awwMWI6cp4UQSCkZHR2Nhu9KKaMFY5IpDLNzzqQP0SRItjxXq6tPqa7eZnBwkOVlteBaW1tLS0sLJSUlabm3rqxMIyWcO3eOiQnzkQu6QgiCwWA0zBVU6fb19XUqKyuPHGMopBTsjo5UfYPTR646AWB/4RXYb2wdxMSE0lOzZTga1Vw3NjZy+n6fl8ZVrq4IxKvAkmhY4OQkNDRkz8VuTKZer5f79+9z8eLFtPdHOo0Eg0E+++wzysvLsVgsLC8vA1BfX8/Q0BBDQ0MAeRO+luoE6HRRWFjI+vp6toehOQbBYJDh4WFKSkro7u7GYrEghGBoaIjBwUEKCgro7Ow89DczN6fmz0RZXV1lfHwYKaGoqCihCAMpJa9evcLn89HX14fT6Yz+nnPds3sWyYZy6/V6CQa9tLW1UVhYwcyMoLdXRAytZUpLS+ns7DxWC4yDcDqdLC9PUVqqihglonMEAgEGBgYoKyujtraWkZERZmdnAbh9+/aRIerr6+BwZKYSYr6Sy8bVQU2EE9FVJyay2yooFCls8Pz5c5qbm+ns7MzJ8Oy8Na5yUWiNghbHCQucmIA0VEpNiIWFBVwuFxUVFaytrbG1tcXr16+5evVqdgaUx6ysrABKYfT7/QB0dHTQ1tZGT08PHo+HkpKSnJwM8pm1tbVoE2VNfiClZHBwMPqb6enpoaysLPr5zZs3kVIyOzvLixcvooVYjJL7sTid0Nd3+LWGhoaiq53T09P4/dDXp+a4RBSLsbEx5ufnuXTpEmtrawwNDUW9/E6nc1dorSb7ZFJP8Pl8DA8P43Sq8ucNDQ2EQnZKSqC0FN555x3C4TBDQ0M8ffqU27dvEwgEsNvtSfdSCwaD9Pf3A6oS4MTEBELAzZuqB4GUR+sc/f39BINBenp6mJqaYnZ2lvPnzzM1NcXCwsKRkRWrq8pTrDmYXNVT4fjG1eqqCsFOpnBQqggGg7x+/ZqioqLotpmZGWpra1O6WJEqtHGVQo4rsJub4HZDc3N6x7cXKSUTExNMTk5iMpkwmUx0dHRgNpt5/fo1Ho8nK5Xf8pnKykoKCwspLy+nq6uLUCjEyspKNJQoFyeB04DX69WegxzG7/czNzeH1+ulubmZ4eFhPB5V9ry5uZnGxsZdN00DIQRNTU3RhtgABQUFhEIhwuFwxABzEAxCWZkKwZLSaOYepr//ER6PB6vVhs+3TWtrF69evUZKqKv7kJkZgc8HQ0PQ2alW42Gnkl/s89TUJi4XfP75YOT4Vuz2TjY315mamqesLITJtHNLjXeO2OfNTRUOfsKOC5oD8HrB41EV0YRQ92GjwMTe1/G2HYTb7WZhYYFAIEBHRwd3796NftbY2Izb3YXdLnC7d5/HZDJx7tw5Xrx4wd27dxFCYDKZoivx77//PiaTGSl3ZDgcVq83Nz0MDPQTCASin9fXt/DixQQ2WyHl5W/y6hUUFsLoKPT0qO8P8eVvbs6DxVLAf/kvj5ASOjsvs7VVhd/vZnh4BSE6D5Tb7W2YnoYTFss89eSqngoHR1kdZZRPTCTepD2VeL1eXrx4gdfrRQhBYWEhly5d4unTp8zMzHD+/PmcW9jSxlWaScRFPzGhylpm2plx9+5dtre3eeutt3atBEspmZmZ4eXLl3R2diKlpKSkBIvFwsjISLSc69bW1q6VZo1S/G7cuEF/fz+vXr1idXWVkpISiouLefbsGVeuXCEQCFBeXp5zk0G+srW1hcvl4vLly9keiiYOLpeLwcHBaCGXx48fRz97//33j8znE0LQ2toaLYkeDodZWVnh5cuXPHr0CKfTysbGDR4/FhHDaxur1c74+CO2tz3YbDbc7m1qa1uw21uoq1MesNlZgculjLLNTdja2rmvxM7FxraLF69G30spMZkE4XCY2dlJOjvbqKy07Nr/qOfFRdV6Q5Me1tbA54Py8h0jJdZgOWib8TqeweVyOZmbG8bhqMTtXuHlywWEgMLCYs6fv4XHI3jyRPVb83iUAru5GStXJsLh8zgcAQoKbASD27hcK8zPj/Cv/tWnlJTUUFPTQUGBNdKHLYTFYmZ4+EFkDGakDNHRcZnS0iq8XhO1tU08eKCKS1itquBAKLRflmPl7+23P4rKsdpHFWrxehfp7T2HcVuPJ7uvXimDVQdfHE4u66nxcq4ScQRMTsK776Z3bHvxeDw8ePCAiooK3n///V1607Vr17h//z6VlZWYzWbsdjtFRUWsr6+zsrJCR0dH1EmQrIf4pGjjKg3Eji2RsMCJieRKCJ+UYDDI/Pw829vb9PT07AuxEULgcDhYWlpicnKSYDAYXWW2WCysrKxEq90lohxlEiHEBOAGQkBQSnlLCPGXgd8HhIFF4KeklHNxjv0y8LcBM/APpZR/7ThjKCgo4OLFi8zMzHDhwoWoAVpcXBwtc15VVUU4HKaoqCjnilvkE16vl2fPntHa2ppTcqjZYXx8HL/fz9tvvw2olX+Hw5HU4oKxWglKQa2rq6Ouro6VlRUePBiguPguMzNq7o1Vis+f76GhoRGfbxOHoxiLBZqa6qKlsisr4dYttdpfU5NM3pYa+8LCEhaLjwsXLpDsvdvtTm5/TXKEQsqwOm4fpngG16efDtHUVMbFi5fx+4Nsb29jtxdHP19fVwZzQYEKnzIMduM8wSBIaSYcNhMIgBB2HI4mKiqaWF19zcrKNHNzS7vkWBlvcPnyTYqLi/D7vZSWOjCbobm5A5NJKb3d3eq7fvqpkuPEwvZ2foOvXk1QX++gs7PiUP1qdRXOnTve3/QskauF12CnWmAyxlUkfTzJiqwnY3Nzk4GBAQCuXLmy755h3PPHx8ex2+1sbGxECw8VFhbidDoJh8M0NjbSm+EQAW1cpYHY5pBHGVcul3LfZ6qsZSgU4rPPPkMIQWVl5YFl18+fP8+5c+eiwjszM8PW1lbUEAgGgzx69IhAIJCLSu2XpJTLMe9/VUr5lwCEEH8a+EXg52IPEEKYgb8L/BAwAzwQQvw7KeWL4wygqKho34/ZUAiDwSCzs7MsLy/j9/vZ3t7GZrMd5zJnGo/Hw8DAAE1NTTRnOqZWcyhbW1tsbm5SVlaGlHKXpzaVobFlZVXMzr7BT/+0CSE2cDpn2dx0EQhAT897BIMWxschFFKhg8GgUiqCQRgbU7laz59Dfz/YbFBVpc57VEif8by46MPvL2d0tCDu54cd63Lp1f90Eg6rv/H09NFhgYeFCHo8bgKBbSorKygogKam6kj4qIW9KtTWljJqPvpIGewrK3D9evzxSalkMRBQzy0tnWxs1GA221laWmRqajQqr+fOfcTqqvJ2hkIOAgH1/YxjHz+Ghw+V9+rVKyXbLtfOdRJ5Hh/3UVZWw9CQOHC/QEAZkDoC+2hyWU89qCfrYarc+Hhmq1nPzs4yMjJCaWkpbW1tcRfjbDYb7777brQIks/nY3p6Olqoxefzsb6+Hi0slkm0cZVihACv18WDB8P09fXhdgvKy4sjqxhin4BkuqzlxsYGoMpsH1YAYG/Bhb3KazgcJhQKHav8cKaRUrpi3hYDMs5ubwCjUsoxACHEv0R5u45lXB2GxWKhra0Nm83G8PAw9+7d44033sBkMuV034ZcIRwOs7S0xOjoKO3t7TrXKkeQUvLkyROCwSBeI+EjQneaGvhNT4PdXhQJU7LT1laHECpk76icmuZmpazW1akegy0tO317Yqfpw8L7iopKmJ5eorU18XBA49ntVtfXpIfKSqUr2Gw7nqdQ6PBQQON1MBjk1au7WK0leL3r0TwnIaC4uIa1tfgG2dyc8lz9s3+mnh0OIh4qNabYED0hdsLrCgrAbBYIUYrJBMXFzVy82AzIyPb41zOey8t3qijPzyuZNtYwEpXHYLCEcHjzUFleXlbfKQ9u+1knl/VUoyfr+PgrwuEAfX3n8Pm2EKKEcDgct+DW1BR86UuZGZ+UkrGxMWw2Gzdu3Dh039hwP7vdTk9Pz6732Vq8zsufSC67WwGmpgZxOPw8fvyY9XUVB11UFL9cb6bLWg4MDFBcXHziympTU1NUV1fnonElge8KISTwa1LKbwAIIf4q8CeADSDeFNEETMe8nwHe3LuTEOJrwNeAaH+Q41JfX09tbS39/f08fvyYYDBIS0sLHbp5yIEYxUGM0Mvy8vJsD0kTwev14nLtrGP09PREGwGn6/80PQ3nzyulGdTKqyoUoF4bz3tfm80qMd9iUb16KipUKFWyTVHX1rxUVBRznLo/FosuZZ1ObDYoKTleVbvp6Xmqq4PAOqWlcPnyZYLBIMXFDgoL7QcaZ2YzvPUWXL6svFalpSqMytgPdud7hUI7nlQjLMuQT3U+EV0UOEiOTSaVN1hWps7R0KAMy2Rv8VJ6qaqqPFSWPZ7sVIrLR3K1ZRAYxlWA+fk5TCYV3ry4qEJZYX+6x+Kimq8qKzMzvvX1dUKhENdOmC8TCASYnZ3NSj52zmnGiZDLKwJ+v5dAwE9zczMulwurtQKTaZPW1ipevXrF/Pw85eXltLe3s7lpyWhZS6/Xi5SSthOWe5mbm2NpaSm6ohAMBllbW2NiYoL6+npastUJWfGulHJOCFELfE8IMSSl/ERK+XXg60KIXwB+HvilPcfFk6h9Hq6IsfYNgFu3bsXzgCWFUUHK4/FQVlbGgwcP8Pl8OBwOmpqadNGLGJxOJ8PDw1y4cCGnmwfmCyfJT4xHcXExnZ2dzM3NIYRgZmYmWozC7/djNptTHkK8tQXvv6/ClFSFwJ1H7HsjfCp2+8qK8h653UoRT/anJqVkeXmZeq1tHptUy2AsJ9ETmpqacLlc+Hw+fD4fr169wuFwRHI5bJjNgoKC/Zqzz6eqqV28qHKTzObE7++GXMbKbTyZ9vv3fzYzoxRgKZVRJZO8MwWDQdbX1w/N/w0E1O9NF7xNjFzWU81mWFt7QWUltLe3s7y8TjBYTEeHleXlZe7cuUNJSQktLS1UVlYyPi4yWiVwcnIS4EROgGAwyMDAAPX19dHfrs/nY3Z2lpWVFa5du5ZWj1beGle5uCKwtbXF8vJLrNadMJiREbVyVVa246JcW1vj3r17+HxttLVlJldkaGgoGqpzkgp/09PTzMzMcPXqVaxWazSHy2Bzc/PEYz0Jxk1YSrkohPg2Ktzvk5hdvgX8DvuNqxkg1ipsBpK+oR+HoqKiaBnq69evs7KywuvXr6mqqsqbJr6ZwO1209raqg2r1JJ0fuJhtLS0YLFYsNvtVFZWMj09zezsbLTZ7rvvvpuyqk3BoFJgm5tVdECyrK7CxoYyzFyu5BRSo29WOBzOm4bgOUxKZdDgJHqCseg1OzsbnYdHRkaYnJxkaGgIh8PBjRs39i1+GTnWhuGTjKgbHqrjUFSkil4Y105GlgOBAP39/dTW1sZth2CwtqbCD3PVYMg1ctm4WlycZ3t7jc5O1YOzvh5ev1YLA01NTSwtLREMBhkZGaGgwMr4+Dm+/OWDZSNVuN1uxsfHWV9fP1FubiAQ4OnTp5SWlkYjgWZmZnj9+nWkYmeYYDCojau95JrQbmxsMDc3x8LCAtvb0NOz0w04tqBFZcSn2tDQwPT0NL/zO6P84A8WAxWEQiFMJlNKPBVSSp49exatRldfX4/T6QRUxZXjCtTKygrT09OcP3+eoqIitra2uHfvHkVFRbzxxhusrq7y/PlzvF7voZN0uhBCFAMmKaU78vqHgV8RQvRIKUciu/0oMBTn8AdAjxCiA5gFfhz4o5kYdyxFRUU4nU7dDysONpuNra2tbA/jVJNgfuKBCCFojKnO09LSQktLCxsbGzx58oRHjx7R1dUVLZ17EpxOpewdN03RqOJmJHYnqpC63W5ev34NwNWrV3OxoE9ec1IZ3DnPyfQEs9m8K/S7r68v2tR6dHSUwcFBGhsbqaysjN63Y42rREpbpwohdsIOLZbEZFlKGQ2zrq6upuuIxlVrazokMBlyTU8FGB0dZWtrC6dzBau1mrq6OmC3rFoslmihs8bGRv7zf37I1tYwDscVpFSGSarmvI2NDYaHh7FardTX10cX4UpLS08UEvjixQuKi4vp6OiIRlG8fv2ac+fOUV9fz7Nnz5icnOTChQsp+R7x0MZVwteUhEIhtra2KCoqwmw2MzIygtfrZW1tDbvdTk1NDaFQJ2VlO96GgybYoqJmiopCzMw8xem0EAwGKSwspLKyEp/Ph91up7u7OyFjS0rJxsYGMzMzdHd3R5satre343Q6mZ+fp7q6mkuXLp3ob7C0tITf72dgYCCa9FhYWMitW7cA5REzmUw4nc5slRevA74d+ZtZgG9JKb8jhPgtIUQfKsxkksgqqBCiEVVy/StSyqAQ4ueB30WVYv91KeXzbHyJyspK1tbWePToEZ2dnZSUlFBaWorX68Xv91NUVMT29jahUOhM5RwZ7QE0KeNY+YnHyTssKyvj3Xff5eHDh4yPjzM3N0dzczNVRnm+YzA/n0zp9P0YxpXhYUhEIR0bG2N+fp6Wlhaam5vjJn5rkuK4ObJHymE69AQhBM3NzTgcDgYGBvB4PNGquw6Hg3BYyVI2jCtjocDI1zqMcDjM4OAgPp+Pzs5OampqDtU1/H4V8qjX/BInW8ZVOBzG7/dHF9c3NzcZHh4mHA5H5bWtrYPV1TaMLjwH9WNVvaOuUlExwOeff044HEYIEc2339zcpKenJ+HF4FAoxNTUFEIIysrKePr0abRJvGFYvfnmmyeK2JFSsra2BsDCwkJ0e09PTzSEu7m5mWfPntHd3Z22ImJ5aVwND++UjTxOadXkO7WHGRp6zurqSrTKT3d3N7Ozs4ByoxoVSlZWdo81Xi8BKWF0VHD+fCt1dSbsdjvl5eV4PB6mp6dZXV0FVA6DxWKhurr60Jv40NBQVIhWIgN45513sFqt0ZtAKqp19fb20tHRgdVqZW1tDSklDocjOjafz4eU8sDy7ukmUunvapztf+CA/eeAr8S8/4/Af0zbABOkvLycmzdvsr6+ztzcHCMjI9Fmj7EYiqnH46GxsfHU52eVlJSwubmJlPLUf9cMcaz8xOPmHRYUFPD2228TCoUYHR1lYGCAt99++9ie9Pn5kxUDijWuEl3tn52d5cqVK7p5euo4bo7skXKYTuW2rKyM9957D5/Px8uXLxkcHOTtt9/e57nKlFMzWVne2tpifX2dd999NyEvxNqaSm3Q027irKzslONPhR6ayL6bm26ePn0U/T9VVVVitVpxR5rqXb58maqqKra2VPsJg72yalTHDAZhft7O+++fIxRap7i4mNLS0mjevdvt5unTp/T29lJYWHiokRUMBnelkBgYuvP29jZms/nEqRBCCN555x3MZjOhUIj19XVsNtuusa2urlJdXZ3W6sx5aVwFg3Dz5tElVQ/73EgIPWpfn8/DyMgDbLYSmpvfASyMjn7G8vIMDkczNpsdn6+Z58+VcH/+uRpfff1Oadbr19VqlhBKgC0Wtd9P/ZSJxsadFTer1UpFRQXhcJiRkRFWVlZYWVnhxo0bbG1tUVpaitVqxev1YjKZKCoqYnx8nIWFBc6dO0dFRQVPnjzB4XBEhaaqqoqPPvooJX93k8kUVYQq95SNCQQCjIyM0NTUpPOEUkR5eTnl5eX4fD4WFhaoqqqipKSE1dVVBgYGovLh8/kYHx/nvffey/aQ08rk5CRVVVXasEoRJ8hPPBFms5na2lrm5+eZnJykqakJq9XK1tYWFouFcDhMSUnJoefw+VRy/UnSnYxQqkRX+0GF7cZb6NAcj3TKYCY8B3a7nYqKCiYnJ5menmZrqwYpweXy4/EIKipsQPrbayRrXNkjLotE59K1tcz14jwtBAKqUuX160eX/j9MDz2ofcDebU7nGEtLU9TWdlNW1oTLtczz588pLa3Dam2hrKyW+XkHCwsqx/T731d5pxbLTrNro4q5yaS2r64a/3sHsFNcorW1ldbWVlwuF9PT0wwPD1NYWMiFCxfweDzU1NQQCATweDw4HA5CoRB37twB4IMPPmB+fp6RkRGuxzSBu3p137r4sTH0X+NeE8vq6iqzs7O88847KbtePPLOuDLKsBuPdLvdl5e3cLng/fevR1d4bt364EBBt1igvR1u3VI/iv/yX+DSpZ2+EKGQWs1wuQ6erEwmE319ffh8PlZWVnj8+HHc/ex2Oz6fj5aWFurq6hBC8NZbb6Xhr3A0S0tLhEIh3cw1Ddjt9l0VHisrK7l+/Toul4u6ujqWl5d59epVFkeYfvx+P3Nzc7z99tvZHsqp4IT5iSemoqKC27dvMzU1xYMHD/Z9HgqFuHTpUjQnYC+zs1BTc7L5/zieK5vNhtfrTUk47lm30dItg5kKy2ptbaWsrIyZmRlGR1/j96t+UF4vrK1ZCQa9vP/++2lNnk92ocBkMmGxWPB6vUcuZPj9qm3BCbu3nDmMsFBjUT3dXky3e4mKijKuXzd0sBqk/CiuITY7C3a7qrRaUKBaAnm9qoVArAPi8WPVquIgSktLuXjxIlNTU4yNjcWdyx0OB263G6vVypUrVzCZTDQ1NWWtP+Xo6Cjd3d0pK6x0EHlrXBmWdjxXaSoxCjPsXeE5qLKPzaZWK4wVgIcPobV1977/9b/ClStHX9tut/Puu+/i9XopLS1ldnYWIQQjI+q+4/P5ThRWk0o8Hg/V1dVpF1iNorS0NOrmrq+v5/Xr19FcvdNIQUEBhYWF3Lt3j+LiYqqrq7Nd8j/fSSo/MR0UFxdz/vx5urq6CAQCFBUV8fLlSxYjnXWHhoYONK6cTtUo9SQka1xtbm6yvr5Ob2/vyS6sMUirDGbKuDKZTFRUVFBRUYEQXoJBMzU1Zh48eEgotE0wGGRiYoK+vr60jSFWlhMxrubm5rDZbBQn0KBNVwk8HoYxs7UVP5Qv1X9Pq9W67/5vGHb791XGckuLyqMLBGBzc/eCfzCo+gj+xE8cfe3W1lYqKyujfU9nZ2fxer2srKzgdrspKSmJ5uZnk3A4jNfrzUj7jLwzrgCKi2F8PL7nyCi/etyYVZdrlZmZESwWM7W1jaytLbG1BW63KaFzGbGqRj+KcFgJbuzKwfPn8LM/m9h3LSgoiMb3G16hxsZG1tbWcDgcOWPMOBwOZmdnT9xDS5M8fr+fYDAYLWhyGhFCcOvWLfx+P16vl6GhIaxW64HKt+Zwks1PTCdWqzUaxnHhwgUuXLiAz+fj7t27hEKhuDkhTqfqJXQSkjWuLBYLZrOZu3fv0tzcnK2iPaeGdMtgNgoKWK1FWK3qul1db9HXB6urTqanp48++AQkW5zFbrfj9Xr54osv6O3tPbS9hQ4JPB42m4pQGhuLH8q3V/9MVmcdGxvE79/CarXS3t6D07lBW1s1LtfRxxtyYvT/8/mMNJidMT54oJqqJ2qHxHpAjcqTPp+P7e3tnKl+bDKZKCkpYXl5Oe26Q14aV+3tcFAFxVjjJtH41idP7rK97YseC1BRUc+rV6+QEhoaulhaSuxci4swObmTLLiwoLpaG7lWy8uqH8VJdGAhxL6cp2yTC96zs4oREnjaDQ0hBDabDZvNxuXLl3n69CnhcJj6+nqdh3XKmJiYAIhb9tfoSXXSyLzYCmuJ5qm8/fbbbG9v09/fj8lkoqWl5URlibXYpo9sGFfhsPIKxFYLNKqgpRNjYTdR46qqqor33nsPl8vF4OAgANXV1fvmUR0SeHxKSw83ThLVU43Xfn+Ax48/j/xvVUn0srIa1tfXePjwPmDCZKpnYeHoc01Pq9DAv/t3VY+09XVVedXIwTKb4d49uH37ZH8Du92ec9E0mdJV8864Miz+gzhOLpbDAWVlRVRWVjI7O8uFCxcildh6EUIkpbi5XCpcpb1dxbCOjKicK6OAxsOH8NWvJj62fGFtbU1X0MoCRq+S8+fPn6ibeb5RUlLCtWvXGB4eZnJykt7e3pxbcNAcH6fTSVNTU1zP/Oxsavrt7F3tDwYTO85ms0Vl7/79+1y5ciWh8CpNZsmWcRVbLVDKEJDaZP14JLtQoI5R5bAvXbrEq1evmJmZ4fLly9HQLtAhgSfhKPk7KGTvIDY3tykuVpFLgUCAzc1Nbt7sw2w2I6VMqi1EczOUlKj0lMJClXNVVKRSWkIh5dGamoIPP0x8fPmAUabdqFCYTvKuSUc6JszLly8jpcRut9PZ2cnr16/59NNPcTqdSRlWRkiixaIEtaRErV44HGqCqqwEtxuO6NWXl7hcrjOl3OcaPp8v20PIOMXFxdy4cYPe3l5evHgR7W2hyW+Oqsa3sHDyfCs4XkELA5vNxpUrV2htbWVwcJBgopaZJmNky7iyWHYWU12udYC0r96fRJbLysq4desWdrudoaGhXb+/tTXlfdEkT6rlr6SkhM7OTlZWVmhpaaG4uJg7d+5w//59AoFA0mOzWtWjpETpqA7HjrfN51OerNO2ZuTxeLBYLBnxXqXFuBJCTAghBoQQ/UKIh5Ftf1kI8Syy7buRBq5Jk44Js7i4mEuXLjE1NcXq6ioXL17k9u3bTExM8ODBA168eMHCwsKRDUxjGwjC/h5XTqf6/LQtsM/NzUULWmgyiyGTe8uNniUqKys5f/48L1++ZHt7O9vD0ZwQIQRmsxmv17vvMyP0+qSFpqSULC7OEw7LYymkBo2NjZSXl/Py5UvCxsSvyQmyZVwZXlCTiWg0RzqbnweDQVZXF6OVAo0QwWQQQkQrFE9NTQFnIyQw33TV1tZW6urqePbsGQ6Hg7feeov6+nqePHnCF198gdOp8vuOWmw1FgGMKWtvn6upKVWI7TRhtAtqaGjISBpBOsMCvySlXI55/6tSyr8EIIT408AvcowqQOmaMIuLi/fVvb958yYej4elpSVGRkaiuU4HxdjHhgQY72ONq8nJ0yWwUkrm5uaYnJzk6tWrJ8o90BwPIxRuZmYmI67uXKWqqorGxkZevnzJ1atXdQ5WnmP0wdrL6qpKFI8UcU0YKSWffPIJdrudvr4++vv7I/1jtqit7Ty2cSWEoLOzk6dPn0ZL/CYTnqNJH0elEKQDw1A3jCuLxYLVamVpaYnWFN38Q6EQn376KR0dHQSDwUh/LaipKcBmq4iWZU8Wk8nEuXPnePr0KVarFZOpnrIycRZCAvNKV+3s7NxVTKe1tTXaD3N+fp719XWCwSDt7e0H3gcNOY2nqwaDKvT6xo3Ujz1bBAIBBgYGKCoqyljRtYzdBaSUrpi3xcCxunxkcjXKZrNRWVlJX18f586dIxgMcufOHXw+H36/f9/+R60GTE+rXKzTwPb2djRO++rVq0f2ytCkB4vFQkNDQ1xFNJtIKenv78/ouNra2ggEAgwPD+tGr3nM9PQ08/PzcfOt5uaSz7cKh8N8/PHHSCnZ2tqiP1JtSAhYXp46kecKVEXXK1euEAgEuHfvHsvLy0cfpEk72Q4LNJthYGAAv9+fsrBAj8fDp59+CsD4+Hi0CqEQMDf3GrP5ZN+5pKSEq1evMjs7y6NHj7HZPKkYdl6Rb7qqkTtXV1fHtWvXKC8vZ3JykvHxcbxeb9x74V5HQGyU1eysCg9MdgErF5FSsrq6yqNHj3A4HPT19WVs8StdV5HAd4UQj4QQXzM2CiH+qhBiGvgJ1GrAPoQQXxNCPBRCPIznSs/GhAmqks67775LQUEBDx484P79+7hcrl37xDOujP+j06niW1PQezKrSCmZnJyMNou7ceOGTubOMnV1dVkNSZqbm+P73/9+9PewubnJ+Pg46+vrDA8PZyxUTwjB1atX2djYYHp6WhtYeYphkN+Is3S6sJCccTUzM8Mnn3wCwO3bt+nr66O+vp6PPvqI9vZ2pASvd+NExhWocvIXL16kr6+P4eFhNjc3j38yTUrItK5geMrM5h3P1crKCuXl5SnpcfX06dPofffWrVt0dnbS0dHBRx99RFlZOYFAkFDIF82/Oi4lJSVcuXKTwsJ6xsaeEgqFTjz2HObU6apXr17lwoULTE1N8fjxY549e7bvXniYrjo5eTqcAMZC2ujoKO3t7XR3d2c0oiVdxtW7UsobwI8Af1II8QGAlPLrUsoW4DeAn493oJTyG1LKW1LKW/F6L2RLYEF5Ca5evcqtW7fo6emJTnYej1rd2SuwsasBpyUkcHp6mtnZWW7cuEFfX1/O9Nk6i0gp2d7ejutFzQTBYBCn0xktBT81NcX3v/99Hj58yNTUVLTq1PPnzzM2JqML/MrKCk+ePGF9fT1j19akBrPZTHNzM4WFhbu2h8OqlUVDQ+LnGh0dBaC9vZ3i4mIaGho4d+4coPoGlpe3Mj39BK9380QKqUFlZSXV1dXRRu+HoW3/9JIN48roJxQIgBDqH9zU1LSrAt9xWVtbw2KxcO7cOUpKSmhtbY2GOHV1ncNksjIycpdwOHRi2VpfF3R0NFFQYGFycvLEY89hTp2uKoSgpqaG69ev88477xAKhbhz5070Pg27PazGe2NRYH4e8r1dqZSSx48fR5sXZ6NdS1qMKynlXOR5Efg28MaeXb4FHKtRoFGRL1vY7XYKCwupq6uLNjU1kgcPWg0Ih09PSGA4HKa2tpai0+AzznM2Nze5c+cOL168yEoxkdHRUYaGhigpKaGwsHBXONS1a9d47733ADJeIr2wsJBr167R1NTEixcvGBoaOu2rr6eGUCiE2+1mY2ODxcXFXSuuTieUlakIgGRoaGigPc7kW1Bgoby8k6qqRvr7H7K8PHPC0Ss2NzejDd812SObxlUwCFtbGwCsr6+feJHHWMC9fPky9XFct4WFdhoarmMywePHn7K1tb8YTDKsrYHDEWR7e5vGU9xBON26arYcAUaooMlk4vr16zQ2Nu6qpnuQrjo7q6KrToN6J6WkpaUlazmwKS9oIYQoBkxSSnfk9Q8DvyKE6JFSGst5Pwocq7NeNgV2L+FwmFAoxPT0NMXFxQSDNsxmNThVFlUCIRYXLaciJBBUyMDs7Gy2h6Fhp7zv22+/nbHGeFJKFhYWWFhYYG1tjb6+PhoOcCUYirGUEr/fjzVZrfgECCGoq6ujqqqK58+fMzs7m7KEck36MJlMWCwW3G43L168AFSYS0VFBU4nHKco5vz8PL29vftWLoVQK7dNTT3Mzc1htaYmvNlqteJ2u4m3mq3JDIZNnk3jqrKyGJcLZmdnmZ2djYYH7vXIJoJRLGpqaorLly/v+1zJsqCv7zrj4084ybp5IABbW1BRYcZkMuHxeHKuEWwqOCu6qhCC7e1twuEw4+PjtLW1EQ6bdhlXfn8QIcxMTopTEWElhKC4uBiv15s12U1HtcA64NuRG5kF+JaU8jtCiN8SQvQBYWCSY1RfgdwRWFAVBm/dusXi4mIkPDBMMGhlc3Ob9XXweMBuL6Sg4CINDQKVG5nflJSU7Ms102QHI9QkkyszW1tbDA0NYTKZKCkpOfTaQgiuXLnC3NwcX3zxBZcuXcq4h81isdDR0cHAwABlZWW60XWOI4TgzTffZHx8HFD5fOPj41Hj6tq1xM9leCvPnz9/YEhIOAwbG3MATE4+paamdVclruN+h0Tz/XLlXnbayGYDYZNJGe1WawG3b99mbm6Ozc1N1tfXWVtbO5ZxZfQxOkg2hVAG3djYM4SAFy/uUlOjFiWSZX1deYhBJiXLeUhaddVsVKs8iO7ubjY3NxkdHWVycpKNDRuwjZQwNqZCAZuarjIxEeDmzRogRwZ+AhwOBxsbGxmPnDFIuXElpRwD9rUjl1Iey7W6/zy5I7AARUVFtLe3097ezuDgDDMz87S29lFdvc7Q0BQ+3xYjIw+pr3fT0nI7rks/n1heXs7pyoBCiAnADYSAoJTylhDiV4GvAn7gNfDTUsr1RI7N0LCPxdzcHDabLaMl8K1WK0IImpubE1JCKysrqays5MGDB0xMTFBeXp6S/INkMLx6yTZa1GSHgoICent7CQaDzM3NUV9fj98PGxvJea6MXMTq6mp8Pl+kvLRaDJBSEgqFkNJCZWUdZWVevF4XU1NTOJ3OfW05EkFKycjICJubmykpYKA5PtlIH4j1XBn51sXFxfT09LC0tHQiRc8wyozV+MLCwuiCQTgcJhyWBINmLl26wdqak/HxaZ4+fRrVTZK7FlRWBnn6dACHw0FVVdWxxpzrnCVd1Ww2U1ZWxs2bNwkGg/zu7z6jsrKKwsJq7PZF5uac3LnzlO3tMP/5P2/y1a9+Na/bmYRCIVZXV+no6MjaGDKr5aSAXBLYvdTWNlNW1szGBrS1VSJlHdPTTurrG2lsfMrGxkbeG1djY2NcS2b5ODvs7VvxPeAXpJRBIcRfB34B+AsJHpuzGEnzxs02E0bW3NwcUsqk4/AvXrzI4OAgn332Gb29vRmN419aWqKiokI3uc4zjDLTDQ0NTE+r5uvJ2OVGyXWjdLVBZ2cn09PTBAIBlpebqKyso6enE49nG4/nPk3H7FAcCASYn5/nrbfe0oV+sky2PFcmE3H7TI2NjQEcO0TJOP773//+ru3d3d2Mjo4ipZnV1WaEqKG1tZONjQBSOpOeZwMB8HqhrGyNUCjElStX8lrJzia5qqtaLBba2m5QWwsuF3R2VjI352Bry8Qbb1QwP/99fD7fsTysucLi4iIWiyWrCwN51+0wVwUW9q9cWa3FBINddHcXcu7cOVZXV/PexV5XV8fTp0/5/PPP8yb3Skr5XSllMPL2LnAqss0NY2FxcZFPP/00Iz2lDPmdm5tL6riioiJu3rwJkPE+QMFgMOPeMs3JMVb5w+Ew8/NQV5fc8bGl3N966y26u7upr69nbGyMQCBAc3MzLtcsr18/5vPPP+X16/sAtLS0HGu8oVAIs9msZS0HyKZxBfuvfdJw5EuXLkVf3759m46ODiorK6PVMKuqalhfn+TFi4fcv/8xKytO7HZ70nmuOyGBYSwWS0ajIk4buayrxjYRDoehrKyJzc0G+vrsNDQ07Cp+kY+UlpYSCAT47LPPePjwYcbawcSSd3eBXBbYWOMqHFYx0E4nvPMOLC2tsL29TSgUyuubb19fH729vXi9Xp4+fYrNZss1j4DRt0ICvyal/Maez38G+M1jHptT9PX1sby8zNTUFADDw8OMjY3R0tKStuINjY2NuFwqfKqjoyOpVU0jTCtWUcgEtbW1PHnyhJqammPlIGiygzFPhsNhFhbMvPXW7s/DYXU/OPjZxvXrHxEOq9V4u70Zmw0KC9vw+XwUFVXg93cTCvmZmfmCjQ24evUm09OmaEGE5J4LWV21MDCwhd2+Ezp90DEbqpgcXV0n/lNp9hAKweKiqn4mxM592Xid6DbjdSLEGlew+7jDvABSHiXHYLVWc+3aR0gJPp8KNywshMLCdSwWK1IW4XKdQ0o3c3OPCAbh+vU3mJjYuUbs9Q56npiA69fB4Sjn1atXhMPhrFVby3dyXVeNNa6WllTBNSG2WVtTXst8rhJZXFzMm2++STgcZmpqisHBQa5evZpR3TvvtPxcF9iCgh3jamEB7Haw2baZnp6mra0trw0rA6MSy6VLlxgYGGBtbY3W1taMVaw7gnellHNCiFrge0KIISnlJwBCiK8DQVTviqSONYg0GvwakPXqcwUFBbz55psEAgGKiop48eIFq6uraa2Mt7a2xsbGBm+99VbS4SJGGOPz58+prq6mrq4uIzfuYFA5LU9jxavTjNvtxmQysbVlYXBQ5VtNTKj532jWulcxTuTZbC6kpKQQIZSB09Vlpb7+Ak+fFlFTo4wiQ7RjRXzvtnjPm5tlmExzNDf3HnmO6Wn10KQeI0fPbFb34lBIhbwZxkqs4RLPmNm7LREjbHZWLabOzsK9e6on2/S02mdx0UM4XMm9e2p8hhwkK7t7nwsLyxFCVfdzu6GmpoRwuIvNzXocDtOuax30bLz2+WBlRSnZFouNgoIClpeXqT1OiU5NzuuqRp+rUEjpqm+8oRZoQRUBOg2YTCba2toIBAI8evSItrY26urqMhLqmneafq4LrMm0M6FPT0NHh1p5BfI+32ovpaWl3Lp1i5mZGR4+fMi1a9coLs5uRcTYvhVCCKNvxSdCiJ8Efi/wA/KA2MyDjt2zzzeAbwDcunUr6zGehYWF0VXRy5cv8/HHH6e1Os7i4iLNzc3HMlQqKytZXV3FZrMxPDzM6OgoV65cSWsFP6P8bFNTU17HkJ9FxsbG6Onpob9fEApBYeHuviywo9iazTuV2pJ5XVICPT3Q3FzLxASc1AlfV1fKzMwMBQXbBy42GbOPTstKH4bymKpb7kGGV+zrxUUlTzU1sLmp5KuqSi3uzM4u0tn5BjabUmYNb5XxMAym48rx9rbqTXTlimB5uYWBgeRl2elUfy9j/be0tJTFxUWqqqp0eOAxyFVd1ahiaOipfr9aCOjogJERQWlp6am6Vwoh6O7uZm1tjfHxcVZXVw+tIJsqtHGVQvb2uZibgx/8QaKdsU9jkrPNZqOrq4vCwkIGBwe5ceNG1r7nIX0rvowqYPGhlDJud8WDjs3U2FPBysoKQFor5BhV145Dc3NztLlqRUUFz58/58mTJ3z00UcpHOEOPp+P/v5+7HZ71r2MmuQIh8Nsb2+zvb3Ny5dw/jxcuLDbmxAI7HgkgkH1MN77fDvbYrcb4drGtqdPVVPipiY1Xw9FOtocLywQwuF6VlZc/PZv38dmc9DcfBkhzLv2AXUPc7m0gZUupFT/49HR5EMAj9pWULDjPY2lqEjJUl+f8v40N8O5c+B0LlNdLbl8uSAaihUrx4b3YK88h0JK8TXk1vg8Vq6N7VtbSpa/9z31em0teVkeG4OrMbXz2tvbGR0d5fPPP6ehoYGenp60/K9OK9moWJkIe9NXJidVsSC7XekQp7GAiRCCyspKSktLefr0KVNTU7S1taX1mtq4SiFG+VWTCcbHwWZTq1gmUzNra2tsbm5Sfho6CcehoaGBzc1NhoeHM55TE8NBfStGARsq1A/grpTy54QQjcA/lFJ+5aBjs/Eljsvg4CBA2pr1ut1uNjc3aWxsZGVlhcnJSVwuFzU1NYTD4V05TSMjI6ytrfHGG29Ey7fHYuTppTPkZG1tjZKSEi5evHgqbxinGSEEL168oL+/n8XF/5HSUrh7V622Wizqsfe1ofxarQcrxnufX7xQCmVrqzrOqGVx3LBAMHPlynnC4TBPnjyirW2DqqrKfecApQCvrqb8T6dB3Xvb2tT997CwP8NwOSosMJ7HyjCwDFl79UqF5i0sKEP94UP1Pw4EHLx4McDDh8PcuPFzUbnd+2w8YmXXZlNK71GyHA7D/fsqX2prS3kiDpLleDIdDqsFidg1qKKiIq5cuUIgEODzzz+ns7NTe7CSIFd11dh+bOGwktveXvWZ1WrN+6Jrh2GxWLh06RIPHz6krKwsrfp43hlXudSYbS+xKwLPn6sVLCDqVp+ens6YcRUKhTCZTFGlcmtri3v37nH79u20hO4Zrtd79+4xNjZ24kacx+GQvhXdB+w/B3zlsGPzibq6OhYWFtJ2fsMjaXhijZLqExMT+Hw+VlZWsFgs1NfXs7GxQWlpKXfu3AGgqakJIQRdXV1IKXn06BGQ3ry19fV1SktLtWGVhywuLtLX10dtbTt37sDbb+/kzoRCu/NojEJQiYZRGfsaymlzswqHmptT3odUiMvWlhev10NZmePQ82nRTA9SqhC9dPYM32t82e3quaJChQX29kJjIwwMvKCvr4+enuuUlcWXY8NLtbW1I6d7n+O9NmQ4GASHQ13P41HnSuY2v7KivBfxPC2Li4sUFRVpwypJctm4MvRUv1/lsX75y+qzy5cv8+jRI/x+f9oWaWORUhIOh3fJ1tDQEF6vd1e111Ris9no7u5mcHCQ69evpy2VJe+Mq1wVWNgttAsLOwILKt/E5/NlZBx+v58vvviC4uJibt68yWeffRbN+xoeHuby5ctpCd0zmUzcvHmThw8fYjKZaG1t1ZWGMki6b352u50333yTe/fu0d3dHa0mVF9fH13tGhgYYGZmhsLCQi5cuEAoFGJubo7t7W0WFhaYmZnBbrfj8/m4fPlyWhtSl5WVsbS0pEMC85CxsTEsFguFhd309cFRfVANb0I8pTX2tRFaZWwvLFRKMaj7SqruLwUFBdqozyKZ0BOMvBUDq1UZ5zU1Ktequlq1D3j50kNDQymXLyfmpU9Ejo1cGeO116uMOmNcyTof1tdVKGM8cqRQVd6Rq7pqbD+2pSUlq8YihMPhAE4W/p8MQ0NDLCwscP36dfx+Py9fvozqqnNzc2mrWFhXV4ff72dwcJDz589TWlqa8mvkpXGVq/q64W6dnFQTbX09bG9vMzw8zOrqakYamo2PjzM5OQmAx+Phk0926jF0dXXx+vVrfD5f2vKirFYrN2/e5NWrV9y/f5+uri5qamrSci3NftJtzBYWFsbNkTIUycuXL+NyuSgqKqKgoICCgoKoF7O1tZUHDx7g8/koKytLa+ENgPLy8miZ+kTY2FChMbA/H6G4GNIw/2oO4Nq1azx8+JDJSRdNTUf/4Y1FrWSLsT57tqMgH0cpPYi1tTUqKipOZZ5tPpDtPlexXLhwgdHR0YT77RmynIzoeL0qx8r43snIcSikwhkPWsBYWVmhLtkmc5qcN64A5ud3IqxmZ2dxuVxA+g3qUCjE/fv3o/2nnjx5Ev2srKwMn8/H+Ph4WsvBt7S0YLPZGBwcpKysjO7u7pR+7xw1Uw4mVwUWdoQ2EIBIv1S8Xi+rq6s0NjbSawS2poFAIMDs7CyTk5O0tLRw48YN2trasFqtXL58mY8++ihaASbdFf1sNhuXL1+mr6+P0dFRpnW94YxQXV1NOBzOasy0EIKysrK4SmVxcTEOh4Py8nKuX7+e9pV9m81GMBjE641bw2QXUqo8SSOB3EgoD4dVqM7iYlqHqtlDYWEhzc3NjI29pKJiKy3XiM2bgdQaV3a7nc3NzYw3zNYocsm4qq2tjbbKMFblU00opBYJjvO9NzbU4tFBgQ+FhYUsLS2xubl58oGeIXJVVzXk1PB+Xrmito+MjLCwsEBvb29avVbr6+u8fPmS7e1trly5wqVLl6itrY0u3F6/fh2r1Zr2xVdQv80333wTu90eDYdMFXnpucpFgYUdoV1aUlUCYceQ6enpSZsyGQ6H+fzzz6Pvq6urKS0tpbS0dFflONV4sJBPPvmEvr4+Ghoa0jIeg4qKimgvrMrKyqyXaT/tjI2N0dXVldPhSNevX8/YtcxmMxUVFUxPT9NnLM8dgNe7u6BBLOvrKkH8tCGEmADcQAgISilvCSF+Ffgq4AdeAz8tpVzPxvgqK9spKPCzujpOXV3qS+fGKqSQWuOqvLycc+fOMTAwwDvvvKM9WAeQLhnMtnG1V44uX75Mf38/c3Nz0YqpqWSvcZWMHK+v74QUxqOlpYVQKMTLly+5ffv2icd6VshVXdUovDYzA52dO+Gg9fX12Gy2tHqLpqenef36NaDuz4YBVb2nb0BNTQ1jY2NsbGxw8+bNtM6fZrOZrq4u/H4/Y2Nj9PX1peReoz1XKSQcVkpYQcGOwK6trQGk1ZtgCEJjYyPvv//+gX2DCgsLefPNN2lvb2d4eJhAIJC2MRkUFxcjhGBVl8VKK0Y1yqampmwP5VBMJlNG8/DKy8vxeDxH7ud2q4TwM8iXpJTXpJS3Iu+/B1ySUl4BXgG/kK2BOZ2Cjo4uvF4vDx8+ZGBgYJcn6KRzaiikwghjT5PKadputyOl1IUAjiblMpht42ovZrOZc+fOMT4+zrNnz3j27BlbWzse2ZPKcjC4I8vJGFfhsGoJcFidLSEENptN508nQa7rqSYTTE3tVIeUUrK0tJT2RSCjP+bbb7/Nu+++e+B+ra2tfPDBB/h8Pl6/fp2RaJyqqioWFhYIhUIpOV/e/VpyPedqenr36vfLly8BVa0vlS7HWAzDpbGxMaEbeVtbGxUVFXz++eeMjo6mZUwGGxsbWCyWtKzWaXZYWlqiqalJ3wD3UFJSgsfjYWJigq2trQMnabf78JyqXL1Rphop5XellMHI27tA1n648/PQ1GTh5s2bVFdXs7KywosXL5iZmWFubo6PP/54n5KaDOn0XAHMzMxQUVGhf5NJkgoZzDXjCtRC4zvvvIPJZGJ1dZX+/n5WV1d58eIFH3/8MWNjY8de8Dyu58rlUkU4jkoFm52dzUjO+Gkh140rgNlZ1TgYwOVyEQqF2NraOvQ+eVImJiawWCwJGesmk4krV67gdDr5+OOPo/lZ6cIIiUwkLzIR8m7Wz1WhNcqxzszsTgw1Qu8ePHjAF198kVbBNUpkH4UQgiuRQNt0e6+klNFym5r0MTc3x+zsbLaHkXOUlZVx6dIl/H4/jx8/5sGDB/tysKRUpZPTWLgwV5HAd4UQj4QQX4vz+c8A/2nvRiHE14QQD4UQD5eWltI2uMVFaGhQ81VHRwcfffQR586dY3R0lFevXlFZWYnFYuHevXsMDQ2R7Fj2eq5SbVytra3pQgBHcywZhMPlMJvGlbEAHE+WzGYzly5d4sMPP6S2tpZnz56xuLhIW1sbLpeLzz//nLGxMdxud1LXPq5xdVRIICgdwePxpD2N4DSRq3oqKDldWFCLiUVFapuRYzU7O8u9e/d4/vx5VHdLNcFgkJWVlYT2raysjIb0p8s5YSClTJnXCnTOVcqQUiW+WyyqX4RBV1cXTqczKqT37t0D4MMPP0xZDkFFRQUVFRVJnc8wqtLdpbq8vJxwOMzi4qKenNOI3+/n1atX2Gw23n777WwPJ6cwfh89PT1MTEwwNja2q9H15qYqyX0Go7felVLOCSFqUQ22h6SUnwAIIb4OBIHf2HuQlPIbwDcAbt26lZaVotVVFV691+Ctra3d13i6traWiYkJnE4noObclnjJc3tIt3ElhDhUOTnFvTqT4VgyCIfLYbaMK7N59/NBGD3/urq6dm2fnp5mamqK6elpTCYT58+f35ePEo9YWU5UjqVUxtVRkeSGhyGViudpJ1f1VNhJX4lJx4+2Tnnx4gUWi4Xl5WU+/vhj6uvrOXfuXMqufe7cOR49epSUd2hpaYnCwsK05+w3NDQwNDSUsigrbVyliFBIudj33tMtFgsffvghoHoH9Pf3p7zf1dzcHB6Ph7feeivhY4wS1ffv3wfgjTfeoMhYxkghGxsbhMPhhG4QmuNTUVFBOBzW1ckOQQiB3W7fF0Z2VvOtIk20kVIuCiG+DbwBfCKE+Eng9wI/ILNUenJ+HmoTawtEdXU1lZWVDA4O4vF4eP36NVNTU1y7du3QG3K8sMBU4fV68Xq9VBzlFjjjpEsGs+m5Mgyd4wRrtLS0UFNTw8DAAF6vl8HBQSorKzl//vyh+TDH8Vy53arH21FpNsvLy9hstmi1Yc3R5KqeCio/z+2GvevqsQtXq6urPHv2LOXXfvbsGV1dXQfWBYiHkfbyySefYLVaefvtt9NStMvpdKY0Z10bVykiHFYC+8YbB+9jt9uxWCzY7faUCkcgEKCsrCyp2H6j/1RBQQH379/n/v371NbWcuHChZSNa2lpiZGREbq6unS1rDRihG185Stf2bcSqtkhGAwyMjLC5cuXd213u1X42VlCCFEMmKSU7sjrHwZ+RQjxZeAvAB9KKY+uYZ8mFhb23/wPw4jPB3WTHBoa4sGDBwC0t7fTHqeJT7o8V+FwmMePH1NbWxtN4NbsJ50ymE3jKhg82nN1GHa7ndu3byOlZHx8nKmpqWg14OvXr8dVTPfKciJyvLZ2dEigx+Ph5cuXaa12fBrJVT0VYG5OVcY9LAzemLdSHW0UDAaTMqwA3nzzTcxmM1NTU8zMzPDxxx+nNPIrFAoxMjLC1tYW58+fT8k5QRtXKcMICTzMQbO5ucnm5mZKy1FLKZmcnKSoqIiNjQ1mZ2dZXV2ls7OTgoICSkpKsFgsjI+PA0R7bRn9iECFBk5OTqa80tzw8DC9vb37wng0qeXRo0eAqrCjb4AHYzabcTgcuzzHoZAqw34G863qgG9H5MUCfEtK+R0hxChgQ4VoAdyVUv5cpge3tARJOOJ3UV9fj8ViYWpqCpfLdWD+SjoKWoTDYT755BNKSkoSulGf8Z9r2mQwW8aVEOq5oOD4xpWBEILOzk5MJhNTU1OEw+FoA/a9JBsWaIQEHhbx5fV6efDgAW1tbTlfhTbXMGQhF/H7j164Mpr6JmsIHcbi4mK0eurMzAzT09NUVVVhs9koLS2lvLyc9fV1pqamaGtrozxSwtLwmHZ3dzMzM5Oy8RgsLS3h9Xq5cuVKyopZgDauUobHc7QyYEQ3pDJ22Tin1+vlyZMntLS0YDKZdhW3qKiowO12EwwGmZubw2azUVVVRXt7e9Q4g9T+kIyiATocMP1UVlYyNzeX1sZ/p4FQKITf79/1d9rcVA00z1pBNynlGHA1zvbuLAxnF8vLKlzpJFHK1dXVVFdX8/jx4wOTp9PhuTIM997eXr3QcQTplMFM6wmxDakTyblKhvb2dtra2vj4449ZXl6OWyQl2SbCHo/yXthsB++zsbEBkFD+omY3uaqnSqkKWRy17lNWVpbyFANjbjQiCurr65mbm4t+Xl5ejsvlorCwkP7+fkB5zoqLi2lqaooaVqnu5elyuSgvL095lIE2rlLE2ppqyHYYRk5TMBg8fMckMJlMfPDBB3zyySfR8Jeurq5ohb6xsTFmZ2epqKigu7sbr9fL4uIiS0tLuwQ71c0BjVKbW1tbunlwmunu7mZ1dZWpqSlajcYVmn24XC4KCgp2lRROJN9KFx7ILE5n4vlWR1FXV4fL5UJKue+GHNsbCFJjXBUWFlJfX8/Tp0955513dI+rLJEN48pYoAmHj59zdRBCCIqKig6siHnQQsFBf4O1tcN7W4Fq5Do7O8vg4CDXrl079tjPIrmqp25uKqP6qHXYdKRxtLa24nQ68Xq93Lp1i5KSEs6dO0coFCIUCvHFF18ASp+xWCw4nU78fj+jo6O7Wgaluq2Pw+FgcXExpecEbVylhK0tNa6jVlqNcuSpdD2CMrA++uijXduEEJjNZnp6emhtbaWgoACTyURxcTE1NTUEg0E+++wzQK2MpdoAMpvNFBcXa+MqA5hMJi5dukR/fz+NjY0pl6/TgtlsJhgM7lK03e79RWg02WVh4eiFqkQxVkvjrXSmIyxQCMG5c+dwOp243e5oaIsms2TbuEql58rgsH5uyRpX6+vQfYR/0GKxcO7cOR4+fEg4HNb92pIgF/VUSCzPDkhbrugbcYoSmM1mzGYzH3zwAX6/P3ptR2TVc3l5mcHBQaxWK1evXk15REBpaSmTk5NxF+BOQt79WnJRaBMVWOMfl+kCXPEatlksFrq7u+ns7Iyb7J0KHA5HtDyyJr0UFxdTUVHBgwcP2NzczPZwchKHw4HJZOLx48d4PB6CQdjeVmGBmtzAKBOcqjxqo1qfUXEqlnSWYi8rK2N9fT01J9MkTbaNq1R7rmBH4Y0X+ZKMLHu96vNEiv8VFhYihEi679ZZJxf1VCPPLhFd1WQyZbwImclkimvUVVRUUF5ezo0bN9KyUF9UVITf78flcqX0vNq4SgGJGlcTExNUVlbmTKfz5ubmtIaRNTQ0sLy8nNIwSE18hBBcvHiR2tpaZmdnM27A5wMmk4kbN25QX1/PixcvcLslxcWJzSe5NuecVpaXldKXqoVTY7U/Xj7iXs8VpM646u3tZXZ2Ni0J2JqjOY3GlbE4u3eh1Mj3im1cfJhxlai+AsqrcP78eQYHB1lbWzvu0M8cuainejxKLg/LswMVYfX69WsuXryYmYEdgdls5tq1a2nzpgkhaGhoSLkjQBtXJ8TnUzfpowxqKSWzs7NnKifGuAksLy9HQyLTjRBiQggxIIToF0I8jGz7VSHEkBDimRDi20KI8gOO/bIQYlgIMSqE+IsZGXCKaWlpYW1tjYmJiWijaM0OJpOJkpIStra22NgIU1qa7RFpYnE6IU6+ftIYCsLExATnzp2jJE45yHR6roqLi7l06RKjo6N6cSkLnCbjant7m8HBQaSUXL9+fZ9xZZR+j5Xfw2R5ff3ofKtYamtraWpq2pX3ojmcXNNTIXGj2uhrdpZCmi0WC263G4/Hk7pzpuxMGUJKFZNfUKAmM2PFJvZ1MttOSqICGwgEkFJSeoa0OZvNxsWLF5mZmWFkZISqqirOnTuXidjtL0kpY0vdfA/4BSllUAjx14FfQPVRiSKEMAN/F/ghYAZ4IIT4d1LKF+kebCqxWq1cvHiRsbEx+vv7aWhoYGZmhitXrqSlSXQ+4vV6KSkpweMxp6xwgiY1LC1BKlq1bW1tRUv9xquuBsq4KihQz5Ba4wpUaKAQgkAgEDcPUjuX00c2jSvDI5qqcaysrLC8vExPT8+BZdj3GlfGtfeS6GLwXqqqqnYVwNIcjpQq5Hxm5mD9MxmdNRWsrUGkE8+hzM7Osr29nZqL5gmtra0Eg0H6+/uxWCx0dHScuIVQ3hlXzc1qgpBSTWih0M5r4zn2dbxtxmspj2+YGa/n5hITWJPJxMzMDN/4xjf42te+dmaSQ2tqaqipqcHv9/PixQtmZ2czXtpVSvndmLd3gT8YZ7c3gNFIeWCEEP8S+H1AXhlXoHKLrly5wsTERHS1cWxsjJaWlujNeX5+nqWlJdrb28+UwR8KhZienqampoGNjcTyDjSZQUoVunJU9cZEMGLzV1ZWGBwc3Nc4GnaUUsOxlAplPBwOI6XEZDLx8uVLpJRsb29He7VoMkO2PVeGjmAUtzgJ9fX1vHr1ipGREYB9PafiGVcHLRQk47UKBoOYzWa2t7cZHh7G7/frwhYJUlKiPPCxOmcodLROetC24+qnxrPR2jGRyDrDUxoIBPihH/qh9P6hcgSj+Ft3dzfr6+sMDAxQWVl5ouJgeWdclZWpRyowDKzjCryU0NGRWAPSUCiE2Ww+s71PCgoKolVh0owEviuEkMCvSSm/sefznwF+M85xTcB0zPsZ4M29OwkhvgZ8DcjpEE8hBB0dHbS2tiKlZGJigidPnnDx4kWcTicrKyuUlZXx+PFjqquraW1tPRNGlsfjwev1UlranNONHs8iXq/KB0iV7vbhhx/y6tUr5ufnCQQCuxK0DYU00TyVo1hfX2d5eTmaY9Xe3s7i4iJ1dXUp7R+oSYxsG1cWS+qMK5PJxIcffsidO3cYHR2lsbFxlx6RjHG1tqYWqA9CSsni4iKLi4usrKxQWFiI2Wxmc3OT3t5ebVgliNmcunYSkJxOGk+Ptdkg0T7QVVVVCCGilVbPEkII7HZ7tNr2Scg74yqVGE3/MjFfDA4O0tDQwI//+I+fSQNrc3OTlZUV+vr60n2pd6WUc0KIWuB7QoghKeUnAEKIrwNB4DfiHBfvn7Lv9hQx1r4BcOvWrZwP7DEmiO5I3d35+XncbjednZ20tLQQCASYnp7m8ePH9PT0EAqFaGhoyHiloEyxurpKeXk5m5siJR4STeoweo6lKldFCEFLSwvz8/PMz8/vWgxJRiE18Hg8PHjwAJvNxvb2Nl1dXYTDYcbHx6P71NTU4PP5mJiYoKmpiZ6entR8GU1SZNu4Mgz3VMpyX18fAwMDuFyuXQa7kTu4V5b34verR0kJzM3N8erVKywWC0IIurq6WFhY2FW0oq2tjcnJSQAuXLhw4jApzfERQslUutemA4EAs7OzvPfee1y9uq+/95lgYmKC6urqE+vpZ9q4yiRut5vS0tIzaVgBlJSUYLfb2drailu5K1VIKeciz4tCiG+jwv0+EUL8JPB7gR+Q8UvpzQCx8YrNwKkKMu+O09jEarXS1dWF1WplcXERl8uFEIKmpiaklKeuCWpxcTGLi4u43aldWdScnFQbV6DK7NbV1e0rJpSscRUOhxkYGACgq6uLmZkZnE4nHo+HhoYG2tvbsR1VhisOZ/R2kHaybVzFhgWmiqqqKsxmM4uLi/uMK6Pq5WGyvL6uon62t328evWKkpKSaJW0oaEhQFW5rKmpiS6udXR0pO4LaHKeqakpgEwsgucs1dXV0b/DSdDGVYbo6OiIliU/i01el5aWsFgsaQ09E0IUAyYppTvy+oeBXxFCfBlVwOJDKaX3gMMfAD1CiA5gFvhx4I+mbbA5RktLCy0tLUxNTfH69Wtev34NQHl5eVoa92ULr9eLlGZCocTzrXThgfRj5FtVVKS+hPXa2tquin1SykiFNZGQcSWl5JNPPgHg/fffx2w2U1tbSzgcZmFhgYZUNeXSpIzTaFyBSi+InYtjZdnIP4eDjavS0i3u3r0HwK1btwCVw+Xz+fB4PDnTJkaTHTo7O5mfn2d9fZ36+vpsDycrTE9P09jYeOLznD0tP0u0tLSwurrK/Px8xgs65AJSymgsaxqpA74duYYF+JaU8jtCiFHAhgoTBLgrpfw5IUQj8A+llF+JVBL8eeB3ATPw61LK5+kcbC7S0tKCw+FgY2ODsrIynj59yujoKJWVlVRWVua9kbW8vExZWRNpdJ5qjoHHo/ICCgoOVkiNlfm9+QVHPa+t+bFYCnA6YWTkOWtrS/h8UFn5BhsbRYyOwsQELC5CTQ20te0opsb1lpehtLSakRFzdLvqZNKAEUkVe0wiz+vrKsE8TT3czzS5blwdR47DYYnHAxsbJqangwwPP8Hr9eB2Q1fXe7hcFjY3VcGKyUmVw1hWpo4PBtW2jz5S8nv+/Pld47Hb7WnrI6TJH4QQXL58mf7+fmpra89kjp2UMiUFiLRxlSFMJhMtLS0MDQ1hMpn2Vfw57ZSWljI6Osrw8DA9PT1p+dFGKv3tCxSWUu6PhyMaQviVmPf/EfiPKR9YHiGEoKKigopIfwEjbGR2dpbz589TUVHB5uYmlZWVWR5pckgpGRwcxOPxUFZWpfOtcgwjJNDthtlZWFnZr2Aa1V33Vsk66jkYhFAowLNn99ne9kYV38XF+4TDrRQUdNLVpfaz25WBZSjmfr+fzc0NHA64eLGJsrKdz456Pmqf0VFVel6TerJhXBkBKYZxtbwMq6uq7PleQwmSl2UpQwSDqgLm7OzUrspw09OfYbVexOGooatLLRQ4HDuyPDEBQmwxMaFyqHT+lOYgysrKqKio4OHDh1y5cuXMGd2VlZUMDQ3R09NzIk+uNq4ySHV1NVeuXGFwcJDa2tpTWzQgHoWFhdy+fZuXL18yPT1NW1tbtoekSYC+vj7a2tq4e/cuQ0NDGOlqvb29KXGdZwIpJQsLC2xsbHDr1i1evy44tGJWPPLcYZfzuN2qdPHGhvJg9fTEVzCPQ2Pju3z++eeAl9u3r1JRUYHTGWZ8fIzFxSk2N6fx+eoJBCSBQClOp5v5+fld51DVtg5vaBivx9BBz0YVL016yAXPld8PDQ3KM7lXjo83NguVldfo7+/HaoV3332XgoIChof9LC09Z2rqOVtbYDJ1YTIFcLtNeL3rrK+vMz4OpaWqSXdNTU3eRyBo0svly5cZGhpidnaWrlQ0Hswj2tvbKSsr4/nz57z55pvHrhGQFuNKCDEBuIEQEJRS3hJC/CrwVcAPvAZ+Wkq5no7r5zKlpaXU1NTQ399Pd3c3DoeDUCh0rGTofMNqtVJQULAr/0GT+9jtdm7cuMHm5iZut1I88+nmPDAwwOrqKleuXMFsLkLKxPp9aDKDkW9VUqJW/6VU4YGxpYQDgeTDqHaeC2hv/4jt7W1WV22srIDTaSIc7kYIC0tL83z6qZuNjU3sdicLC2CzFbO97aGl5Rqbm8tUVrbS33+4AQXJebE2NrQcppOpqZ2qfcfpZZnMtnjGlVHBzwh1lfKkcgzhcDmtrR8QCASZmiogHIbJSStlZVcJBl+yvLzJd74zx8rKFpubymtmMhXg9Zr5Pb+nh62tdTo7O7P7j8khtK4aH6OVy+PHjwmFQnR2dhIMBrFarac+VFAIQUlJCaFQiPi1zxIjnZ6rL0kpl2Pefw/4hUhuy18HfgFVZODM0dXVxfz8PM+fP0dKSSgU4oMPPogKbSgUYmtri5JEGmjlEVJKXC4X7TrJIO8oLS2ltLSUQCDA/Px8tElrriOlZHV1ldbWViorK1leTk2TWk3q8PmU8jg8rMKZhoZUPx6zWSmosc/Ga+N9QcHubbGeAWO7sa201BZViAMBsFqht7edxsZ2enpgYUHtb3g1d4yh8j3v4z8ny8qK8thpUk9Hh/ofJ9MX6LAmr0dtczrB5dqp2hcKqbDA16+VXBuyahhde+U4nkzHGnCxcmwymRDCGn3vckFTk4nq6ov4fNDSAmNjqq9RWZky4peXQQUa6IIVcdC6ahzsdjvXrl1jbGyM+/fv4/f7aWlp2eXJ8nq9FBQUnLooLLfbjcViOZHTI2NhgVLK78a8vQv8wUxdO9cwcq5KS0txOp34fD4++eQTLl++TFFREY8fPyYQCFBWVkZvb2/eKLJHMTc3Rzgc1vHeeUxBQQE2m43h4WFu376d7eEkhNHAOhQK4XabtXGVYxQWwuXLSiF1OFRCflvbjrIbCh3+OhDY2WYy7Rhhxut427xelY9it6trlpXB1pY6T6aKnegqlOnDMFYyhVE0Ihjc+b8aDbGrqo6WY+PZ71deXCO/8Cg5NjplGJXZbTYV/ldSoow0q1WdTxcBTBytq+5QVFTExYsXmZmZwe/3Mz8/z+rqKrdu3WJubo6RkRFAOQwaGhpOTSXskZGRXa07jkO6/hIS+K4QQgK/Fmm8GsvPAL8Z70AhxNeArwEn/nK5jsPhwBHR9KampqJ9VABu3LjB3Nwcjx49orm5mdraWqxWa1p7RKUbt9tNdXX1qXcrn3ba2tp49eoV4XA45/+XQgjOnTvHyMgIbrebcPgSeZIqdqYwprXSUuXJqjg8vSkue70Qhymy9fVQWakMqkSbCGs0B2GE/8Uu4Dscavtxav8YspyIQdbSohYJXK79TYSlVJ4rPecdiNZVj8Boxg6qpdDnn3/Oxx9/HH1fVFTE1NQUU1NTXLp0CSFEWlvupBu/38/29jY1NTUnOk+6jKt3pZRzQohaVPnrISnlJwBCiK8DQeA34h0YEe5vANy6devM3OpaW1tpaWnB7/djtVqjAtrY2Eh/fz9TU1PU1dVx7tw5gLzKeYnltDWlPYsEAoFsDyEpqqqqKCoq4s6dB1RXS2y2/PztnAVO0hvICAU0QqsSPUYbV5p0YDIp4+c4xMpyMsfsleXNTbVwkcdrsulG66pJYDKZeO+996L5SEY4YE1NDa9eveLJkyeA6qFWVFSU84uv8TB065Pq2GkxriIlrpFSLgohvg28AXwihPhJ4PcCPyBPkil2ShFC7IvxLC0t5YMPPmB9fZ3+/n4WFhYA1fivp6cnG8M8NoFA4NS4jc8ya5HGPvk0cZrNZra2wlitXuB0hNmeRtLRePUwsm1c5ekamSYBjEIXmbzeXlleX1dhtpr4aF01eYQQcfW43t5eent7GRgY4OHDh9Htb731Vl6Vcw8GgycqZGGQcu1ICFEshHAYr4EfBgaFEF9GJQX+qJTSm+rrnnbKysq4ceMGHR0ddHV1MTs7y5MnT1hfX8/20BJCVepaPXP9vU4jxv9wKY+a9BQUFBAOW7FYfEkfq2+tmeOsGVea00suyLI2rg5G66rp4cKFC3R1dXHt2jUA7t69y4sXL/Im4mVhYYGKiooTG4TpcCPUAd+OuNQswLeklN8RQowCNpTrFeCulPLn0nD9U4kRJlhaWko4HCYUCjExMUF/fz/t7e0sLy9z8eLFlHSWTjWhUIi7d+9SUVGRk+PTJIeR97ewsHDiuORMIYSgvLwbp/MVTU3XtBzmKCZTZg2cvQaVNq40qSIbxlXsa49HPeup7kC0rpoGzGZzNEfr+vXrzM/P43Q6sdlseDwe7HY7vb29WR5lfJxOJxMTE1y9evXE50q5cSWlHAP2jUxK2Z3qa51VTCYT7e3tWCwWRkdHmZiYAGB+fj7nelj4/X4GBgYoLS3l8uXL2R6OJgU4nU4ALl68mOWRJM7WFlRU1FJe7ufx48dcvHiRcr2km3Pkwmq/RpMKsinLoApZHKcwzFlB66rpp6ysDIfDwcLCAtPT09HtHR0dOVe+fX5+ntHRUS5cj5v4nwABAABJREFUuEBFCn44+ZM0odlHc3MzH330Ee+88w4AlccpS5RmBgYGcLvdXLlyJW+LcGgU29vbDA4Osr6+zvXr1/Pq/+l2q+pdzc3N1NXVMTIyklRcdR591YQRQkwIIQaEEP1CiIeRbf+tEOK5ECIshLiV6TFl27jSZJZclMFUkU0vrBA6JFCTG5hMJj788EM+/PDDqEcr13Lvt7e3GR4epra2NmWtgrRxdQowwrSMngO5hMlkoq6uLq+KH2j2s7q6yp07dyguLub27duUGY1V8gTDuAJoaWnB4/GkJGn1FPAlKeU1KaWhxA4Cvx/4JBuDybZxpUUiK+SUDKaKbMpyIKAep6RFpuYUIISgKtJwze/3Z3k0uwkGgwBR4y8VaI33lNDR0ZGTCmNHRwcrKyu8fPky20PRnABjpamioiI6EeUTscaVbgdwMFLKl1LK4Wxd31AQMzWNaeMq98i2DKaKbBpXbrfqGae9sZpcwgjFf/HiRXYHsofi4mIaGxu5f/8+GxsbKTmnNq5OCaHjNtRIM+Xl5dy4cYPFxcWcM/w0iVNaWorD4aC/v58vvvgCj8eT7SEljNe70+AzEAgghMBut6dsEs1jjAaajyINMRNCCPE1IcRDIcTDdFSMzKRSqo2rrHMsGYT0y+FJyaZxtbAAeVJrSHMGKc5Bl2pvby+NjY0pq4KsjatTQi4rikbY4vb2dpZHojkJly9fpr29nYKCAp4/f57t4SSEx+NhcdET9Vo9fPiQTz/9FCklJSUl2R1c9nlXSnkD+BHgTwohPkjkICnlN6SUt6SUt9JRLfKsGFfakAOOKYOQfjk8Kdkyrnw+lW+lu55ocpXV1dVsDyEuUkq83tRU39fG1SnBaCg8Ozub5ZHsx2w243A48qovkmY/VquV9vZ2SkpKkFLmXNw07EyOa2trjI6O8uDBAx4/foCU60gpowb+zZs3c65aUaaJbaAJGA00s06mlVJdij175KoMpoJsGVfT08prlWM1AzSaKD6fLycjmerr63G5XCnRbfTP75RgNBPOxdV4IQTnzp2jv78fIQRNTU1pqzQnhJgA3EAICEopbwkh/lvgl4HzwBtSyoeJHpuWQeY5jY2NPH/+nImJiYz2q1hZWWF7exubzYbdbt8VWhAOh3E6nayurrK8vBzd3t3dw4sXPkZH+xkfV82E33nnnbyqdJgOIk0zTVJKd0wDzV/J8rCAzFZZM8RASh0WmGlyWQZTgRDZM65SmJev0ZwZysrKaGho4OnTp1y8eJGioqJjn0sbV6eAlZUVJiYmaGxszNnePcXFxVy7do0HDx5gt9uprq5O5+W+JKVcjnlvVJ/6tWMcq9lDTU0NN2/eZGBgIGP9KjY3NxkYGKCgoIDCwkJcLheg2g9UVVXx+vVrwuEwNTU1XLx4Mdrc2OuFhoYwLS1VlJSUIIRI2rA6pQr3QQ00fwz4O0AN8DtCiH4p5e/J5MCyteKfDXv7jNv4OSuDqSAbchwIwNISRLqzaDQ5QzAYZHx8HCFETrdy6ezsJBQK8ezZM958881jj1MbV3mMlJLBwUG8Xi8XLlzIyT5XsRQXF9PU1MTKykq6jatdSClfAjn7Y85HHA4Hfr8fj8eTEYN+aGgIh8NBb28vDoeD7e1tNjc38fl8jIyMIITg/fff31cJ0O2GsjJTzi46ZItDGmh+GxWelTWyoZQaz6fUkM5JclkGU4Hhgc2U4S4ErKyo3lZ2e/qvp9EkysbGBgMDA1RXV/POO+/kdEi+EILu7m4++eQTvF7vsYtvaOMqz1lfX6empiZaNCLXsdlsKUsYPACj+pQEfk1K+Y1UHhupaPU1gNbW1lSMNy8xcvvSXfXH4/EwMTHB5ubmLuPJZrNhs9kAtchQXV0dt8S62w2R1hqaPCGbnittXGlSiWFgZcq4cruhszP919JokiEYDBIMBiktLc2Lnqcmk4mCgoIT5YXl/rfUHIgQgt7eXpxOJw8fPmRxcTHbQzqUtbU1hBBsbm6m8zLHrj6VyLG5XqEqU/j9fhwOR9xO66lMVB0eHmZpaYna2toD+1M1Nzdjj7NUKyVsbu70tzoJ2umZObRxpTktZFKWjfmurS0z19NoEsVoHvzq1Svu3LmTs62DQLVrWV1dxWaznUhX1cZVnlNbW8uNGzcoKSnJuUqBy8vLDA0N4ff7kVLy9OlTXr9+TXNzc9queZLqU6e5clWqqaysxO12RxsKh8NhNjc3WVlZ4eOPP05ZZciGhgYAzp8/n/SxXi9YrbpqVr6hjSvNaSGTshwIqPLrOVjTSqPh3Xff5caNGwSDwZxqHWTkghn68/T0NM+ePcPv958o1UarHXmOEILS0lKsViurq6usr6+nNb/E8EoclL+0vr7OxMQEbrc7ujqxtLQUHdPVq1epqKhIy9hOUn3qtFeuSjVPnjwBduRgYmKCqamp6OdGH6z33nsvrncrUcbHx499rNudGq+VJrNkq8oaaONKk1oyaVy5XNDdnZlraTTJUlBQQDjyYxgZGeGNN95Iax58OBw+MARRSsnY2Birq6t4PJ7o9uXlZdbW1igsLOTGjRsnyg3TxtUp4dKlS/T39+N0OtNmXEkpuXPnDn6/HyEEUkoaGxtpamrC5XIxPDwMQFFRERUVFTQ1NWG32xkYGGB7e5uLFy+mzbCKkFT1KSFEI/APpZRfOejYdA42n7l+/TpPnjxhbW2NsbExtra2aG9vp6KiApPJxJMnTwiHw3z22WecP3+eurq6hM8dDofxer34fD78fj99fX3HmoTdbtXvRZNfaM+V5rSQSVne2ICOjsxcS6M5Djabjdu3b/PgwQM8Hk/aWgdtbGzw5MkTbDZbtH1Le3s7VVVV3Lt3L7rwX19fT3V1NU1NTczPz7O4uEhFRQUXLlw4cdENbVydEkwmExcvXuTOnTvHVkaPYnJyEr/fT1dXFw6Hg/HxcXw+Hw8ePACgpaWF1tbWfUL5xhuZia5LtvpUJAzwK4cdq4lPWVkZXV1dUQ9Vd3f3rnDPDz74AL/fz8jICC9fvmR9fZ2SkhKampoIBoOYzeaojBoho2azGbPZjNfr3RXrbIQGJoOU4PFoZSMfyZZxlQd51po8I1Oy7PNBKAQnaMuj0WSE4uJiqqqqmJ+fp6enJ+Xnl1JGI2suX77M+vo68/PzOJ3OqAPg6tWrlJeX79KT29raaEthwqI2rk4RIyMjaTlvOBxmYWGBiYkJrl+/TllZGaC8FwCLi4v4fL4zXT3vLNLS0kJzczNLS0vEK+5htVrp7e1laWmJ+fl5QIX5GXlahYWFbG1t7Tuuq6uL8vJyZmZmePvtt481Nq9XKRuR3tr7wr5iPRQHfWY8G7lbmsxwVjxX2kt2+slUiOvGhirBrtHkOlJKVlZW4uoMJ2Vra4sXL15gsVh47733ACgpKaG5uTnauqi3tzdaaTidaOPqFGE2mykrK9vntfL5fNhstmN7s9xud9Tij+fGra2tPdZ5NfmPEOLQ/39BQQHvv/8+Qgi2t7cJhUIIIfD5fLjd7qjBXlxcvC83q/sECQRFRVBZqapnxfYxSvZZCJW3pXO3MofJpAzjTKHDAjXpIlMLBRsbkETktUaTNYyQvL1eonA4TDAYPFFboVevXuF2u+N6oIQQXL58+djnThZtXJ0ifD7frioso6OjuN1uNjY2qK2t5fz588cysAyD6uLFiweWw9ZoDsKQmcLCwug2IzSgvb09LdcUQocE5ismk6p8lim0caVJF5kwrkIhFQKtF4A0+YChg66srFBSUsLW1havX79meXkZgJs3b+I4pjA7HA7W1tboyIGbvzauThGxhpXT6WRmZib6fnFxkcXFRd55552kVwYMoa/S3Vg1Gk2aOSthgZrTj9FEOJ1sbCjDSucMavIBI586HA4TCAR48uQJfr8/+vmjR48oKiri9u3bSTkDpJRMTU2dyPOVSrRxdYp4//33uXPnDt///vcBuHLlChUVFUgpWV9f59mzZ3zxxRdcvXoVq9VKcXHxvnMEAgHC4TBms5m5uTnW1tZYW1ujpKQkLzprazSa/CZbxhUcrAgflZeXTA6f8ez36+bUp51MyPLGBkTSoDWanKesrIyenh5GR0eZnJwEVMsWs9kcLYK1vLzMnTt3uHbtGlarNW47F6/Xi81mw+v1MjU1FXUuXLt2LZNf50C0cXWKMJvNXL16lcePH1NXVxdtgCaEoLKyko8++ohnz57x9OlTAKqrq1lfX6e2tpa1tbV9xQWKi4ujPQCuXtWF9DQaTfoxmWB7W1VAC4eVMWI8x75O1fPMDDx8qAyd2PWjWIPpoLy8wz5L5BjdKuB0YzLB1lZ8WU70+ah9fD6IKdSq0eQ8DQ0NSCkZHR3ljTfeiBpPNpuNS5cu4ff7+eKLL7h//z4AdXV1LC8v09TUxNTUFCUlJbsqChcVFeH3+2lsbKQoR0pmauPqlOFwOPjwww8P/PzixYssLS0hhGBzcxOTyUQgEIgaVufPn6e0tJSNjQ3q6urY2tpCSnnimv8ajUaTCEVFSiF9/XrH4In3HG+b2QwWy8HHxHvu61OKqtm828DSXiXNSamogKEh1XPvMLmN95yoHFssoG/PmnzCZDLR3Ny8q31LLFarlRs3bhAIBHC73YRCIcrKyqIGVUFBATdu3GBra4vS0lJsNhsul+vYuVrpQBtXZwyz2Ux9fT3AoY1djeIDubIKkIs8evRoWQgxmcFLVgPLGbxeLpDr3zl1jTE0gCp7H+nyoNHkNcXFcPNmtkeh0eQfpaWlwOG5/sY+AOU51otAG1cazTGRUmY0qEcI8VBKeSuT18w2Z/E7azQajUajyV90hQKNRqPRaDQajUajSQHauNJoNBqNRqPRaDSaFKCNK40mf/hGtgeQBc7id9ZoNBqNRpOnCJnDXROFEEtAJgsGpIpcT8JPlkx9n7ZM5zFpNJrjk4U5+jTMrYd9Bz0HHoMc0xVyXUYzOb4zIc85Jn+JkutyehxyRlfNaeMqXzltSfin7ftoNJr85DTMRafhO2gOJtf/v7k+Pk1mOI1ykEvfSYcFajQ5iBDi14UQi0KIwZhtvyqEGBJCPBNCfFsIUZ7FIaaUeN835rM/J4SQQojqbIxNo9FoNBqNJlG0caXR5CbfBL68Z9v3gEtSyivAK+AXMj2oNPJN9n9fhBAtwA8BU5kekEaj0Wg0Gk2yaOMqPZy2JPzT9n1yHinlJ8Dqnm3flVIGI2/vAvHbm+ch8b5vhL8F/HlAxy9r4HTMRafhO2gOJtf/v7k+Pk1mOI1ykDPfSedcaTQ5ihCiHfgPUspLcT7798BvSin/ecYHlib2fl8hxI8CPyCl/B+EEBPALSnlaUvA1Wg0Go1Gc4qwZHsAGo0mOYQQXweCwG9keyzpQghRBHwd+OFsj0Wj0Wg0Go0mUXRYoEaTRwghfhL4vcBPyNPtdu4COoCnEa9VM/BYCFGf1VFpNBqNRqPRHII2rk7Iaavqpqu25S5CiC8DfwH4USmlN9vjSSdSygEpZa2Usl1K2Q7MADeklM4sD02TBk4yjwohJoQQA0KIfiHEw4wNev844n2HXxZCzEbG1i+E+MoBx35ZCDEshBgVQvzFzI1acxJy+f6v7+Uag1yW0+OS6/KtjauT801OV1W3b6KrtmUdIcS/AO4AfUKIGSHE/wv4vwAH8L2Iovb3szrIFHLA99WcHb7JyebRL0kpr2W5x8k3iTN3An8rMrZrUsr/uPdDIYQZ+LvAjwAXgD8ihLiQ1pFqUsU3yd37/zfR93KN4pvkrpwel2+Sw/KtjasTctqquumqbbmBlPKPSCkbpJQFUspmKeU/klJ2SylbYhS1n8v2OFNFvO+75/N2Xczi9HIa5tFD5s6jeAMYlVKOSSn9wL8Efl9KB6dJC7kst/perjHIZTk9Lrku39q4Sj8/A/ynbA/iJESqts1KKZ9meywajeZMctg8KoHvCiEeCSG+lsExJcrPR0Jvfl0IURHn8yZgOub9TGSbJv/Jqfu/vpdrDiCn5PS45JJ8a+MqjZyGqm4xVdt+Mdtj0Wg0Z48E5tF3pZQ3UGF1f1II8UHGBnc0fw9VnOUaMA/8f+PsI+Js016FPCfX7v/6Xq6JR67J6XHJNfnWxlWaOEVV3XTVNo1GkxUSmUellHOR50Xg26gwu5xASrkgpQxJKcPAPyD+2GaAlpj3zcBcJsanSQ85ev/X93LNLnJUTo9LTsm37nOVBmKqun2Y71XdpJQDQK3xXjdz1Wg0mSCReVQIUQyYpJTuyOsfBn4lg8M8FCFEg5RyPvL2x4B9la2AB0CPEKIDmAV+HPijGRqiJsXk6v1f38s1seSqnB6XXJNv7bk6Iaetqpuu2qbRaDJNMvOoEKJRCGFU3asDPhNCPAXuA78jpfxOFr7CQd/hb0TKxD8DvgT8j5F9o98hklT+88DvAi+BfyWlfJ6N76BJjly+/+t7ucYgl+X0uOS6fIv89wRqNBqNRqPRaDQaTfbRniuNRqPRaDQajUajSQHauNJoNBqNRqPRaDSaFKCNK41Go9FoNBqNRqNJAdq40mg0Go1Go9FoNJoUoI0rjUaj0Wg0Go1Go0kB2rjSaDQajUaj0Wg0mhSgjSuNRqPRaDQajUajSQHauNJoNBqNRqPRaDSaFKCNK41Go9FoNBqNRqNJAdq40mhOIUKIXxZC/PNDPn8uhPgocyPSaDSa/EXPqZp8QMtpbqCNK40mxxFC/JQQYkAI4RVCOIUQf08IUX6Sc0opL0opvx85/6GTcZzx3BdC9AghOoUQj2O224QQ/0gIMSmEcAshngghfiTm83YhhBRCbMY8/tKe4/++EGJBCLEqhPj3QoimONf/MHKevxKz7SMhRHjPuX/yGH8ajUZzyjlDc2q5EOKfCCEWI49f3nPddiHEf438HYaEED8Y89l/I4T4TAixHvkb/QMhhON4fx3NcdByuu/6eXPv18aVRpPDCCH+LPDXgf8JKAPeAtqA7wkhrAccY0njeAoi1x8FbgKPYz62ANPAh5Gx/iXgXwkh2vecplxKWRJ5/OWY7f8D8DZwBWgE1oG/E+f6fxu4F2d4czHnLZFS/pPjfUuNRnNaOWNz6t8CioB24A3gjwshfjrm838BPAGqgK8D/0YIURP5rAz4K6i5+DzQDPzqib6sJmG0nO6S07y792vjSqPJUYQQpcD/AvwpKeV3pJQBKeUE8IdQk9wfi+z3y0KIfyOE+OdCCBfwU5FT2IUQvxlZSXoshLgac+4JIcQPCiG+DPx/gD8cWfF5esSwLgEvpJQSuEXMBCul9Egpf1lKOSGlDEsp/wMwjpqIE6ED+F0p5YKU0gf8S+Dinn3+LPBdYCjBc2o0Gg1wJufUrwJ/Q0rpjXzPfwT8TGS8vcAN4JeklFtSyt8CBoA/ELn2tyJ/I6+Ucg34B8C7CV5XcwK0nO7IaQx5de/XxpVGk7u8A9iB/zt2o5RyE/hPwA/FbP59wL8ByoHfiNn2r4FK4FvAv42s/sSe6zvA/wr8ZmTF5ypxEEL8tBBiHfgceDvy+s8Cfz0SNtIR55g6oBd4vuejSSHEjBDiHwshqmO2/yPgXSFEoxCiCPiJyPc0zteGmnB/Jd4YgVqhQgrHhRB/SwhRfMB+Go3mbHLW5lQAsef1pcjri8CYlNId8/lT9i9oGXwQ57qa9KDldEdO8/Ler40rjSZ3qQaWpZTBOJ/NRz43uCOl/LeRVaOtyLZHUsp/I6UMAH8TNVm/dZyBSCn/sZSyHHgUOccVYBAolVKWSynHY/ePTOS/AfwTKaWx0rQM3EatvN0EHOzcDABeAVPALOBChaLETqb/J/CXIjeYvQwB14AG4P8ROf/fPM531Wg0p5azNqd+B/iLQgiHEKIbpaAWRT4rATb2DGsjco5dCCF+CPhJ4BeP8101SaPldEdOIQ/v/dq4SgKhq7BoMssyUH1AHHVD5HOD6Tj7RLdJKcPADCp+PimEEJWRFaoN1Ira94FhoA9YE0L8mT37m4B/BviBn48Zw6aU8qGUMiilXIh89sOREAiAv4e6CVQBxahVu/8UOedXAYeU8jfjjVFK6ZRSvojcYMaBPw/8wWS/qyaz6DlVk2HO2pz6p4EtYAT4bVSO1Uzks03A2M+gFIj1ZCGEeAvl/fiDUspXyX5XzbHQchqR03y9959Z40rkSRWWyGc/L4R4KITYFkJ8c89nPyF2V0nxClVN5Wbk8z8jhBgTQriEEHMRl6kl5vgDqwVFPv9TEVerKzKG95L/y2iOyR1gG/j9sRsjLu8fAf5zzGYZ5/iWmGNMqITkuTj7xTt250MpVyMrVz8L/MPI6+8AX42sXP0fMdcRqPC+OuAPRFbODjy1cVjk+Srwzcj1tlHFLN6IhA/8AHAr8lt1An8Y+DNCiN8+5NzigM80aSBf5lSR5qqWQuU0bMUc+92Yz4QQ4utCiKnInPovYxQMTfo5U3Nq5Do/IaWsl1JeROl89yP7PAc6xe4KgFeJCeUSQlwH/h3wM1LK2L+NJr1oOd2R07y8959J40rkVxUWUD+KvwL8+t5jpZS/IWOqpAD/PTAWc45/D9yQUpaiYlivolYJDA6sFiSEeBP4a6hVgDLUD+fbQgjzib+05kiklBuopNa/I4T4shCiQKjqO/8atarzz444xU0hxO+PyO6fQU3Wd+PstwC0RybhQ8/HjlxdR4UJ7OXvocL5vhoTogAoeRJC9AkhTEKIKpSr//uR7wnwAPgTQoiyyG/iv0dVAVpGVR/qRbn/r6Fu+P8A+OnIuT8SQrRGlNcWlNweNPlqUkyezalpr2qJkn/j2B+O2f4ngD+OKgzQCBTGOVaTJs7anCqE6BJCVAkhzJEFhK+hdAkiXqh+4JeEEHYhxI+hZPq3IsdeQinSf0pK+e+P+B6aFKLldEdOydN7/5kzrkSeVWEBkFL+31LKfwusJPAVfxL4p5FzIaV8LaVcN4YIhIHuyHgPrRaEKov5XEr5KHK+f4qK9a1NYByaFCCl/BsoWfrfUXlI91CK4Q9EvDuH8duoVZ41lEL3+w9YTfrXkecVscdruoebwOPI5BiSqoJUFKGSTn8WNQE6Y1bufyKySyfqZu1GxWxvA38k5hR/DvChQgOWgK8APxb5O7gj7n+nlNKJCiHwSClXI8feQK32eYAvIuePXUTQpIl8m1NlZqpaHsRXgX8kpZyO5A/89ch3KjriOE2KOGNz6k3UPd0N/G/AT0gpY4sM/Djq97FGZCFVSrkU+ezPAjXAP4q5ri5okSG0nCo5zdt7v5TyTD2ALwNBwBLns38C/IvI618GAsD/E2WEFsZs+4NAAUoZHAcKIsdMAD8Yc/w/P2IsP41a9fSilMr1yNjckdcde/b/K6iwqYPO1waE4hz3R1E/TolSWq9Gtv8Y8HLPvv8X8Hcir0tRKxRvAmbgT6G8XCLb/0f90A/9yI1HPs+pkWPqIvuei7xvj8yVs6hV4n8MVMfsfwtVOasRlXT9LeD/iPl8ArUivIQqHXw15rPfAv58zPt3I9e6etj30g/90A/90I/8eZw5zxV5XIUlAf4E8One46TqV1GKcq3+fdSNH46uFuRGKQOfoVYafgn4mpTy0DhdjUZzpsjbOVWkp6rlT6AMtDbgvwK/K3Zyz/4T8N8JlddVBvyFyHbtudJoNJpTwlk0rvKyCkuC/AnUSnFcpJQjqGTV/19k01HVgv47VEnMi4AVFd7zH4QQSX9fjUZzasnLOVWkoapl5PjPpQqz9kop/zeUx+z9yMe/jspz/T5qLv6vke1GBTeNRqPR5Dln0bjKuyosiSCEMBKk/80Ru1qArsjro6oFXQX+vZTyVWSl+Tuoleh3khmbRqM51eTdnCpE2qpaHnS8URUrLKX8JSllu5SyGTXXzkYeGo1GozkFnDnjSuZhFRYhhEUIYUflPZkjlX32rhL/JPBbcne3dYQQ/50Qojby+gLwC0SUHXlEtSBU9bb/RqhSxkKoRoK9qDAbjUajycs5lTRVtYxUrXpXCGGNzKn/Eyos8vPIuSsjlbFEZD7+m8CvRDx2Go1GozkFpK0Ubi4jpfwbQogVVBWWLlTc/L9FVShJtArLP0GV+T2sCssfQ1VhGZdS3jjgfDdRZYDjVmGJ8D+j8p0M/hhKmfllgIjh9YfYqfIXy7vAXxVClKASrP81qrSlwY8D30RVlZlid7Wgf4r6+3wfqEApSj8bk5ugiVBdXS3b29uzPQxNhnj06NGylLIm2+PIFfJpTo2pbLWNqmxlfPSzUsrfQFW2+l9RVVFdwPfYX9Xy/0RVtbSiFpt+LPKZA2W4daGKZPQDPyKlNCq9VqPaY7Sg5uO/LaX8xoF/GU3K0HN0atFz4PHQcph7pEOWha5NoNGcnFu3bsmHDx9mexiaDCGEeCSlvJXtcWg0msTQc3Rq0XPg8dBymHukQ5bPXFigRqPRaDQajUaj0aQDbVxpNBqNRqPRaDQaTQrQxpVGo9FoNBqNRqPRpIAzWdBCo8kU4TD4/WAyqYcQO88ajUaj0WQCI73+uM8Wi3poNNnkuPIb+9puT+8YIUeNK11N5WxzmqoQLS6C0wlmszK0wmH1A5dyv8GV7OuTHBeLlDvjSuQ5kX1MJmhtzc7fXLMfPadqTtO8elqZnlaLcbFzqcsFc3M776uroaJC7Z+MYmnM+4k+x76WEgoLobs7Nd9TczBra0pvOKl+cNjrvRznHn+cfebnYWMDQiF13dZWsNmSk2NIXpZjn7e34dw5KCo63v8nUXLSuGpvb0dXUzm7CCEmsz2GVBEKQV0dNDTs3m4YWHsnoEReS6nOm+xxxuuVFfUQAjY3YXUVCgqUAWixQE0NlJXtvDeejYfZvHt/43VBgTqnz6cUAk3uoOdUzWmaV08jHo9SPJubdy+ELS9DaSk0Nqq5OhyGlkjb7cMMonifHZeNDaXwa9LP8rK6/xYVHX4/D4WOr0MsL8P6Omxtqf+rcS+vqFDGu9m8c083mXbf4/e+N/QC4/5/2AJwKKQM9PJymJhQMl1aqr53Mkb/SRga2m+spYOcNK40mtOC4aHaixA7E0+mmZ1VE2xdnVoRDQSgqgqCQbWyZLerCTYU2nkYk3ns+0Bgt5FnMqkJd2EBOjoy/700Gs3pQwgxAbiBEBCMLZkshPhzwK8CNVLK5eyMMDVMTiqvRVHRzlxqNiuja3tbzc/BoJp3AwGwWnWYXibJhByGw2rBs7NT/e/TxcSE8hiBMrIaGmBpSclVY+PB9/zY94GAWkg1PjObd8tt7Gvj/eamkttAQHlofT7lEbXbM6cLZar7lP5pas406Z4wpcy9/Cpj0rZa1WqT3Q6VlWqbMdlVVSV3TsObFgzCixfwxhupHbNGoznTfGnvHCyEaAF+CJjKzpBSy+Qk9PQo70GsMhsOg9ervEcrK+p1KKTm797ezI0v1+5jWSKtcuh2K+M6nYYV7Bg7JpO6Xnm5uvcHg+p1ssR60w4zysJh5S3b2FBGHSiZrqtTj9OENq40mjROmLloXJlMauUI1IRXULDzWSh0vBUkIdQqqtMJDseOq1+j0WjSxN8C/jzw29keyEnx+5Wy2d6+3xtls0FJiYoGcDiUJ6u8XHkaNDlByuTQ5crMvdNkUoYO7BhyhvfpOAix46E6jO1tJcNVVep6VVXK0Mp0BE8mdLKEvpIQYkIIMSCE6BdCPIxs+8tCiGeRbd8VQjQmeqwmvUgp+eSTT5iYmMj2UPIZY8I8kRM5V40rI6HUKD5hcJIJFlS4QVvbiYZ3JtBzav7x4sULHjx4kO1hnEUk8F0hxCMhxNcAhBA/CsxKKZ8edqAQ4mtCiIdCiIdLOWyNzM+rUOx4YX5C7IQyGa+DwfR7NzT7SLsculwq3yrdxBbYMu7/e3WBdBBPlkOh0xnemsyf8ktSymsxYVO/KqW8IqW8BvwH4BeTOFaTRrxeL+FwmLW1NWSmAkzzl7ROmLloXBkTK+w3pk4ywQaDKp9L51sljJ5T84jFxUU8Hg9+vz/bQzlrvCulvAH8CPAnhRAfAF/n8N8HAFLKb0gpb0kpb9XU5G6hxLm5/UWPDM6SQprjpFUO/X51D013FTvY8VzF3u+PG7WSDELs6B6nfaHg2H9KKWVsPbBiTrjCr0kdoYhbYmNjgwcPHuDSpdsOI60TZi4aV7EhAXuNqZNMsNPTKncrEzeH04ieU/ODL774gvn5eb1wlSGklHOR50Xg28CHQAfwNJIz2ww8FkLUZ22QJ2RuThUSiMdBxtVpVEhzmXTLYaZCAmEneiX2fn/SqJVEOEsLBYmqUftW9wGEEH9VCDEN/AQHK6Nxj91Lvrjvc53NzU1MJhOlkV9pIBDg6dNDHTBnmnRPmPlmXJ1kgh0fVzkDmoTQc2qe4PP5WF9fp6vr/8/en0dHtuUHmei3Y5QipNA8z0oNOc+Zd743y0NRLmwz2GaywdjNKvwa0w0ND3DXAhsDvTBu2vQDHu3C0IZnFzZgqjEeymXAd8g71M1ZmVJqnhWapZBiHvf748QJhZQhKSTFJMX+1ooVEefEibOPtGOf3/w7l9g2MjJCIBDI46iKAyGEXQhRrr8Gvgg8kFLWSyk7pZSdwDxwU0q5lMehHpvtbe0+oRcV2st+YYFnUSAtVHIxD3OtXBVKWGCxe65SWfeRUn5VStkG/Crwk0c5di+nxX1fqEgpmZqa4uHDhzx8+BCfz4fD4eDy5ctEo1HCegUDRYJcLJixWGEqV3rO1V5P1XEX2EBAS7BW+VZpo9bUU8DGxgafffYZT58+ZW5uDpPJxGuvvQZokQGKrNMA3BdCPAM+B35bSvnNPI8poywsQOMBprtC8FwpJ21256GUuVWuknOu9HmUi7BAg6F4PFdpXVKydV8I8Q3gLvBh0ke+Dvw28NPHOFZxQsLhMB9//DE2m43XXnsNk8mEz+ejvLwcgKamJj7++GPeffddDHt+PdFoFIPBgCg0DSA3NADfiF+7Cfh6pm/cp8FzlXyTPu4COzOjlVK1WDIzxrOOWlMLGyklAwMDbG5ucuXKFaqqqnC73dhsNsxmM+fPn2d4eJjS0lIq9mSgx2IxpJQYz6I5NsdIKSeBa4d8pjM3o8kOi4sHG6WKKU+lUMn2PPT5dlqj5IJkGSCfYYF7FbyzxKHKVdyib5BSupOs+z8rhOiVUo7FP/b9wHC6x2Zu+AqAwcFBAK5fv44lLt0m3/ArKytZXFxkfHycUCiEyWSisrKSmpoaPv74YwCuXbvG8vIyNTU1FIuVOxc37v2aCOeTvQUtMhEWOD0N589nZHhnHrWmFj5LS0tsbm5y6dIlauJN35LX1Lq6OoaHh5mensZsNhOLxSgvL6e1tZXBwUE2Njbo6+sjGo0SCoV2hRQqFDqxmObxf/PN/T+Tytofi51Na3+x4nZrJcpzhR69kiyf5CosMNlQEInkXj4qpCbCKa37QojfEEL0AzFgBvgJgHj54F+SUn55v2MzfxnFyfb2NvPz87hcLpqamhKK1V7Ky8spLy/HbDbjcDgIBAIMD2tyW3NzM5WVlYyNjeHz+XC73UWjXOWC0+C5OmlYoM+n9WhpacnYEM86ak0tUEKhEHNzc8zPzwPsuxYaDAaqq6uxWq04HA4ikQgTExNMTU1hNpu5desWExMTBINB/H4/HR0dmJQ0rNjDygrY7Voj9/0olDyVQruPnSVyrSyn8lzlqlpg8lw+y7mDh17WftZ9KeUP7PN5J/Dlg45VnJxAIMDjx49xOBx0dnbSvF+pIcBms3Hr1q1d26qqqgiHw9TW1gJQX1+P1+vlxYsXWR13sVHoytXeakHHWVwnJzXF6qwukplGramFyyeffAJAe3t7Ym1MhRCCq1ev7tpWW1uLx+OhqqoKk8nE9evXAfj0008Jh8NKuVK8gtN5cL4VFFeFtWIl1xEuydErmWginC6plKt8hATmQiZTP0/A5XIxOTlJT08Ptngd6UK/Eerl1S9evEjJQWavfdibJwBapUGbqqOdUQpZuYrFdi/qx7VcTU9DXI5UKADNA/TixQuam5tpaGggHA7v61kvFHw+HwCdnZ10HqPsZWlpKaWlpbu2hUIhotFowV+7Ij8sLR2+dhaK50qRPQrBc5WPaoH58FwVUljgmWd0dBSfz8fjx48T24xGI9FolLfffrvgFC0pJUNDQzQ1NR1LsUpFLBZjbm6ODlXuLaMUonIF2iK6N975OJar7W2tUuABjlNFEbK1tcX29jbb29uMjIwgpcRsNhMOh7ly5Uoij6mQ0EOl29raMvadc3Nz1NXVqeIWilcIBLRcm6N6rvRKr4WWy6s4PrmWE3TlSjeu6nl8uc65Codz2xczHNYeVmv2z1X0P8+1tTV8Ph+VlZUYDAasVmsint5mszE4OMjs7GxBNeL1er0AtGQoyUVKyejoKFar9ZVQmPX1dWZmZlTDzGNSqMqV0fiq9fM4nqvJSWhrUzd6xQ7hcJjBwUFKSkoSxp/Kykqi0SiNjY2MjY0xPT3NyspKwawrkUiE7e1tOjs7M6YILS8vs7KyQldX167tPp+PiYkJQqFQRs6jOJ0sLkJt7eFrZyFY+xXZJV/KlX7Pz4ViBakNBbmcy5ubUFmZm2st6p+olJJwOEx5eXkiPj4Zv9/P6OgoLpeL2dlZampqaGtro6ysLPeDRRuvlJLx8XEArBlQv2OxWKKYxbVr1xIl2UdGRlhcXEx8rq2trVjLtZ+IQuxzBft7ro666MzMwBtvZHZsitONvk7cvXv3ldYPUkpGRkbY3t5mcXGRubk5Ojs7qa6uztv6Eo1G2djYAMjY2r60tMTk5CRXr15NhAQ6nU6mp6cTSpVesVVRnKSTbwWplas90aeKU04+qgonV+sLh3MTZrq38mWuw1s3NnIXZVOUypWUEiEEH3zwAcC+xSBKS0u5dk3LHY9EIkxPT/Pw4UPefPPNnMTQRyKRRA8qIQSPHz/G7XYDWul08wmbIuiCTjgc5tq1axiNRqSUzM/Ps7i4SG9vL9XV1Tx48CDRD0txNArVc6UvqCcJC1xb0xbH+vrMj09xutDX1JcvX7K8vIzFYkmpLAkhOB+v2S+lZHFxkcHBQXp7e2lqasr6OGOxGLFYDKPRiBCC5eVlXr58CWiRAAcVsUiXpaUlpqamuHbtGna7Hdgx1LW0tNDQ0MD09DSRSOTE51KcXpaW4NKlwz+3N5Qq2dofi8XUffkMkA85QYidc+bLc6UrV7FYjGAw+ErOaiYJBrVHrkreF51ytb29vSu36s6dO4kb4EGYTCa6u7vZ3Nzk0aNH3L59m2g0isfjoaysLGO5TzorKysMDQ0l3l+4cAG3243VaqWrq4uqqqoTn2N9fZ3l5WW6urpYW1ujsrKSlZUVJiYm6O/vTwg7NpuNBw8e8MYbbyjv1REpxD5XkFq5OmpY4NTUwc0vFcVBNBrlo48+QgiBlJL29na6uroOXSuEEDQ3N+Pz+RgdHaWkpASHw4HL5cJisSSaoGcKn8/H559/nnjf2tqa8Fh1dXVlJNcqEokwPDxMW1sbW1tbibDHhw8f0tjYSG9vL6AVFHr58iVlZWVp3X8UZwuXS3uurDz8s3sFUt3L4PF4ePjwIbdv3856NE2BRO+eWfJlhNXPmYsy7Pr5UoW4DgwM4HK5eO+997ImY25uQlVV7v7OZ065klISCAQSeUm1tbVIKfnss8+IxWKEw2FaWlqorq7GbrcfSSkyGAzcuXOHx48fJ5rvlpeX4/f7KSsrw+fzEQqFuHnzJg6H40hjXltbY3Z2FrvdTnNzM0NDQ/T29lJbW7vLuvr6669nbPLpN363283MzAyxuHns3Llzu6zI58+f5+HDh0QikRN7y4qNQvVcpcq5Oqr1anYWvvCFzI9NUXjo/ZqCwSC1tbUYjUbGx8cT/aAArly5gtlsPrJS1NPTg8lk4tmzZ8BOuLPVaiUajeL1eunu7qa9vf1I3+t2u5mdnSUQCHD16lU+//xzysrKuH79Om63O3G+TBYtisarDayvr2M2mxkdHQW01hfnk7pst7W1MTc3h9/vV8pVEbKwAA0N6X12vzwVPQ88VwqWInvkW07IRRl22N9zpcu0H3zwAW+88UZGUl72srGh5YfnijOlXEkpGRsbw+l0YrVaCQaDVFRUUFdXRzAYBDTF4aQWyosXLxIMBikpKcFqtRIKhXA6nVRUVDAzM8PQ0BBdXV0Yjca0wkzm5uaYnJzEbDbjdrtZWloCdgpWtLa2sri4SE9PT0a1+rq6Ou7du5d4Hw6HMRgMuxK6pZRMTEzQ0dGhFKtjkO9Fcz/0Du3HDQtcWgKzGaqrszM+ReGwurrK4OAgFouFUCiEEIK+vj7W19cBcDgcXL58+USh0u3t7ZSXl2O327FarUgpWVlZYWtrC6/Xm1gfjUYjNTU1hxad8Hq9PHr0KPFe79939epVTCYTVVVVNDc3I6XMaDVYq9W6a03VQ//2jnd+fp7S0lKVc1WkLC1ButX+9fuHfi+JRGB1dRZYTnxmZGTklV6WitNDvuWEfIUFBgJBBgaeIGUg8ZmFhQW6u7szet5AQPvd5NL+cGaUK6/Xy7NnzzAYDNy9exebzZYIATSbzbS1tVFSUnJgs910Sa6CBWCxWBJ9UaqqqlhaWmJmZgafz8d7771HLBZL9DqRUhIMBrFarQghWFtbY3Jykvb2drq7u5mfn2d8fJyLFy8mvt9gMPDaa6+deNyHkUp5Wlpawu/3v9IwU5Ee+V409yNVEutRQgOmpuCIjgTFKSMajfL8+XNcLleifHokEuH+/fvMzMwkSoy3tLSc2PBiMBh2KRpCCBobG2lsbKSzs5OZmRnW1tZYX1/nxo0bOByOhIELtH5SRqMRo9FIMBjkwYMHALz33nu43W6ePn1KY2PjLgWwr6/vRGNOh1SKm+5Ru3HjhgqzLkJiMS1f9a230j9mpxCAZGHhIX6/j+bmclpaWqipqWFgYID19XWqqqowGAwEg0Gi0WgihyUT80xN1eyRj8JXyeeLRnPvufJ63czNPeLmzVoqKuqoqqoiEAgwOjpKbW0tZrOZkpISVlZWcDgcCCEScvNR2djIbUggnCHlant7m1AotKvYhMPhyGoMZyoqKyuprKxkYWGBsbGxRNEMg8GA3W5PFKRoamrC5/OxtbWFw+FIKGetra20tLQUxE03GAwyNjbGpUuXCmI8p5FCVq4CAc37pJOu5yoWg7k5+NKXsjc+RWHgcrm4evUq1XEXpclkyvmaarVa6evrw+v1sr6+zvPnzxMeoZqamoQHzWQy0drayvT0NEAiR9ThcPDOO+/kbLyHMTw8THNzs2rYXqSsrIDdDkdJ09Y8VlFGR18SCHi5fPk2nZ07ZniLxcLz589THltVVZUozKUoTPKdc5Vrz5UeDRGLEY960PYHApoH6/nz54TD4VeOv3TpEnV1dUc+7+Zm+p7iTHFmlCs9x2mvpTBfSkFLSwtWqxW3201lZSXr6+uJ5GkgUeY8VeXBQlFkXC6XKhd8AgpVsQJNidprrYrFditb++F0au71I6QVZhyPx4Pdbi+Y38pZRA9l0/OIdPL1N7fb7dy+fZvV1VVKS0sxGAxMT08nQsD1iq7JxXjyPea9hMNh/H4/nZ2dBTMmxdHRq2Meh3RLsCcjBNy//xEGA9hsrTgcu+Obrl+/jpSSkpISxsfHMZlMtLS0sLi4yPLy8j7fqigU8lUtMBaL4vMFicVsOVOu/H4vg4ODVFfX4na375JBSkpKePPNNzGbzUQiEZxOJzU1NVgsFiYmJhLK11Hw+zXZJtepradWuQoEAkQiESwWCxaLJaG4FNINq7a2NpFzpVf3i0ajTE1N4Xa7aW9vz0lJ9+NisVgIBAKq3OsxKWTlKlWfq2g0vc7l09P5DQnUw32Pa8VSpCYcDhMIBBLhGHqeajbL4x6VsrKyXYn79fX1SClZXl5mfn6eurq6nJR0Py56CfhAIKA8V6cUvQekzWbDarVis9no7u5Ou/n00hKkaKt5ID6fCym1FixbW1WvCMLJc6m/vz/x2mw2H6m4liI/5KOqsJQwOfltvN4QHo+mgKyvV3Dt2rWsyXsGAywujmOzQV/fJRYWxCvRMrpMbDab6YiXI45Go2xtbSXqEByFjY385IafGuXK4/FgMpkS8cTJycrV1dVsbGycCku20Wikp6cn38NIi8rKykSFsEISsE4Lp025SicsMBbTKl3dvJnd8R2EXiVrfHycsrIyNTePiZ6XIYSgtLQ0UQEVtBucHgVQ6FXIkvOzCh2DwUBlZSWbm5tKuTqFRKPRRNSJz+fD5/OxubmJx+OhpqaGlpaWA5WsUAjc7qN7rpzOISorNSNturmx29vbzMzMcO3aNaLRKJubm6yurtLT06OKUxUY+ZAVwuEg0WgocX6LxcLW1hafffYZ1dXVdHV1Zbxqn5QxPJ5NLlzoQEqR1jyOxWK8fPmSiooKysvLWV5eZmlpCavVuqsC635sbkKG62OkxalQrqSUPHz48JXt9+7dY21tjZmZGVpaWo5cqldxMHrMazbKYhYD+UhSTZf9lKvDFru5Oa03S77kQj30BTTl4Nvf/rYqQ3xMHj58+Epc+82bNzEYDInqfLko+lBsKGPV6UNvW6L3SdPzDqWU+P1+FhYWcLlczM3NcfHixX37UC4saFb0w9bZWCyGEIJoNMr9+/eJRqG+vjE+lsONYFtbW7x48YL+/n5sNhv3799PtFppbm6moqLiCFevyDa5VK70CIWJiUcIIbh37z3m5/Xqv2HW19dxu918+umnJ44OkVLicrkwm81sbm4yOjqBlFrNAY/n8GuWUvLixQsMBgP9/f1MTU0xOzuLECKx7SCHis+nPedDXjkVyhVosZgdHR3U1taysLCA3W4nEolQXV2dVrlzxdHZ3t6moqJChQQek9PguTpqtcB8VglcW1tLlNQGzYq7vb3N+vq6Uq6OQW1tLbFYjJ6eHlwuV6IheiwWU9VBs0QsFsPj8VCZTvdYRd6JRqP4fL5EtUrQQvN0gU4Igc1mSzSHHh0d5dmzZwlDb3V1NUajMRFqu7QE+0WtRqNRpJRsbGwwNDS0a19VVTPnzvXGP3f4Ov3kyROMRiPr6+uMjo4Si8V47733GBgYYGxsjNu3b6c8Tq/ktvc5HFaNhLNJNmUFvcVOKBRiZWWFqampxL7u7jcAbU6VlGiheHoUgNlsZnBwkIqKCoQQ1NTUEI1Gqa6uPjDUVA/TLi0t3VV8SKej4wYlJSVsbe0UuNg73/TXGxsbrK5uUFJSwre//RCfz8f585eoqqrmk08+Ympqgaam1l3HJj87nVqVwHxwKpQrIQRXrlzhxYsXxGIxKisrmZiYYHh4GLPZzPXr14/UDFiRHpubm0duCKrYIR9x1OmiNxE+SlhgJALLy/D669kfXzJSSgYGBtjc3OTy5csYjUYikQi1tbUsLS0xMjJCTU3NLgUrFospD8Eh9PT0MDQ0xMjICD09PaysrPDJJ58AWuNwZbTKPJubm5SVlSmDVYESjUYZHh5mdXUVm82GzWZLKFVXrlyhoqLiwL5ofX19xGIxlpaWqK6u5vnz54mCMFeuXGFyspzXXrOwvq6tt7GYdp9YWppndnY8IRja7ZXU13cwPv6MpqZzzMy08Xu/p3kXHj6Ec+dAX9pSCZXhcAvhsGBwcI2Skgrq68/x7Jlgba0Cr9eF0ZhaoE0W8PXXQoDLpd0bzp07yV9XsR8TE5qXxWrV/t4Gg/ZI9fqw/fprv9/Dy5dPiUYjCAElJVZCoSBCwNtvv8vAgCAcFoRCWtEHkwm8Xm0+xGJQVdXJ9rYkEolgtdqZmlpme3sLmKaxsZPq6kbM5pLEHNbms2Rg4IOEwiQl9PW9idfrYm5uiPb2t/ngAxPj41q43vIy6GlUyfNNf45GKzAYzhGJGAkEtikr62Jzs47V1RDb22bW18tJrnGx9zuePYM/9Idy8i98hbSUKyHENOAGokBESnlbCPH3gD8CxIAV4M9LKZ0pjv0S8H8CRuCXpJT/8DgDtdvtXL58mSdPnmAymeju7qampgan08mzZ88oLS2lsrKShoYGAoFAoi6+4ni43W6Wl5e5ceNGvodyail0z1WqJsIHyXwzM1pIS67tGC6Xi83NzUSvpWTq6uoYGRlhcHAQIQQWi4XGxkY2NjZYWVmhpaUFl8tFS0tLRnrcZYpCWFONRiOXLl3i8ePHPHjwgNbWVnp7ewkEAjx//pyVlRWklPT19eHxeHA4HGkn7SteJRQKMT09fSpyw4qRQCDAZ599Rnl5OVevXmVgYIBoNEpdXR3nzp1L24CbnAfS399PIBDgxYsXfPbZc6anzTQ0lOH3t7O9vYbDUUksFmZubpz6+iaMRgNra4tcu3YNo1HQ3PwOZrORhQXo74eaGk1gbGsD3e6ZSijt7++Nv+9JbNve3mJra5YvfOFWopnq3mP3Y2IC5ufTunzFMQiH4eJF7d66W1nZeZ1qm/46Gt293e/38vLlQ2pr26iv72J6+jmhUAlWaxkORyPDwwbefx8mJ+GDDzTlubcX6us1Bd5o1B5mcxdGozY+m60Zuz3E5uYM09PTzM5OYzIZqampZ3Nzkba2TtbXF7HZ4ObNu6ysOLFYLLS3WxCinjt36gmHteiXP/2ntXP/t/92WP62CWiLv965fz979pLz56u4eHH/8NaVFe3vma8ggaN4rr4gpVxLev/zUsq/DSCE+J+AvwP8RPIBQggj8M+B7wbmgQdCiN+UUu72eaeJ3W5P9C7RLX9tbW2UlpYSDAZxOp1MT08Ti8W4ceOGiis+Jtvb2wwMDNDT04M91/UrzxCFrlyFw69WCzxMucplr4hgMJjIC9LDEvZiNBrp7OzEYrFgt9tZW1tjeHgYIQR3795lYWGBQCDA8vJyQSlXcfK+phoMBm7dukUsFksoThaLhWvXruFyudje3uaTTz5BSklHRwddXV3HOU3REw6Hefr0KRUVFceqeKXIPnpO0o0bNzAYDNy7d+/E36kXi7lz5w6/9muzxGKTrKxssra2iRAgxAIGA9TXt1Fb243JJGhs7CUU0gVcI5GIXnBA82yUlGiP/Zzy+4X2LS4u0tzcis1mR++usN9n9z4Hg4V7LzsLRKM7f2ujccf7dFyCQRPLy/DWW50YjQbOn3+1z9nIiFZY5Ud+BL75TbhwARoaNOUsGt1R2Ha/tlBd3cvKip2VlVmkNLCwsIiUMDQ0jRAGOjtvs7Rkw2jsSfTE1Oa69h0rKzA2BrOzmqfM7z98/iW/DocjLC+7uHXrbVyu/Y8ZGdGMEPni2GGBUsrtpLd2IFVE7l1gXEo5CSCE+DU0y+yxBAEgpeVUD19pbm7G4/Hw5MkTFhYWMBqNKhfjiKyurjIyMkJ/f78qc31CCl25ikQgGg0TDMawWq0HhgWGQrC6Cm+/nbsxLiwsEA6HuXHjxr6V1YQQiQbcABUVFQkFwGAw0NvbS01NDTMzM7kY8onI15oqhHhlXU0ueR6Lxfjss89wu90sLS0pz8sR8fl8PH/+nKqqKnp7e1VERQERCAQSxVuynVowM9NOb287774LPl+A1dUllpfnqKs7R3l5M263viZrhq9odOf96CiMj2v3lLExzXulizYHhfclPy8ugsViwOdLvf+gY7e2ch+xUExYrZp3UFdA9GJY6YQCRqMhhJBEoyEmJweQMorJZCISgdVVwy5lLfm4QEDzWM3Naff2ri4tNHGvpyz5WZdp6uqaqalpTuzb3FzB59umpqYDKc2Ew9p3xWI7+Xr6Y3MTPvpIK+4SDGqeLNh/Tr46R434fAaWlgKUlNj3nbteL+Szd3a6ypUEviWEkMAvSim/BiCE+AfAnwO2gC+kOK4FmEt6Pw+8luoEQoivAF8Bjl31TwhBWVkZPT09rK2tMTU1hcViSYQLKvZne3ub6elpPB5PIrZccTIKWbnSmwg/fPgxJpP2m5ue3qK8vBKQdHV17RICZ2agrg5y1ZYtEokwOztLfX39kefi3nyWlZUVqvPR6OJgTsWaCtrf88KFC6ytrTE9PY3P58NgMNDe3q5yhw5ADwNcWVmhs7OT1tbWfA9JEefDDz9MeKqSqampycqcjkY1A1VPjyZQWq0ldHV1cu5cZ8p8mr3PLS3a+uv1wu/+Lty4sVMBLd3QvsrKEkKhEMcpALqxoSlYiuzQ3g5Xr+6OHNGVkf1CAfXXn376yS7FuqqqDq/XTXPzuUROVarjQiFN4f6t39JCPq1WzRtqMmkPo3Hntf5eDxnUt+nvKyrqMZnqX9muz+HkuVlRoYUCfvyx5sW6ePFofyspYWXFQFeX2LcKoMej/U3z2eItXeXqLSmlUwhRD/y+EGJYSvmhlPKrwFeFED8F/CTw03uOS/VzT1lzJi5cfA3g9u3bx65LI4SgubmZsrIyXr58SVlZGRMTExgMBioqKgq6aW8+kFIyNTWF0+mkq6uLixcvHpiwq0ifQlauDAZwu5cS1s+ZmVm8Xpid1e6gQggqKyuprKxECMH0dG57RbhcLoC0+lgcxOrqKpubm5xLysSORCKsr69TV1eXT+Xg1KypoFVmdDgcuN1uQqEQwWCQyclJWltbsVqtyhuzh/X1dYaGhmhsbOTWrVuqsMoJOEl+4n5YrVb8fn/CcFNXV0dzc3PW1oPVVait1RQivWGrHpqn57cYDKlfG43aMTYbbG9rHiTdA3EU3G63ikY5AdmYhzqpZIVkz9VBnD/fwerqKnV1dWxsbGC1Su7evXVoLzO/X1PSb92C58+hr08znh4cFvjq+2BQ+6692/VImL3zeX5eq+C3uqopYkfF7/cjpTywT+DmZv6qBOqkdWn6ZJFSrgghvoEWmvJh0ke+Dvw2rwoC8+xkowG0AkeeeMfB4XDw2muaQbeiooKJiQmCwSC9vb3Ki5WE2+1mYWGBGzduqBDKDFPIypUQkkBgi+rqKm7cuEYkInn6NML164LNzU3Gx8dxOp2YTCZaWrpZX6/hC1/IviIipUxU7IJXvVBHYXV1ldHRUa5evYrZbMbn8zE6OppQ3CwWy779aLLNaVxTjUYjN+PZx8FgkKGhIR4/fkxVVRUXLlzIxRBODUNDQ/T09NC0X91txVE5cn7iQdy6dYuBgYFEWfzl5WU2NjYoLy/H4XDgcDgy2mh3aUmz1u+10utehMOE2XBYU7BCIS0v5qhl0T0eDy6XS/WtOzkZnYew8788rqzQ2dlJNBrF6XTS1tZGIBDg888/x2azUV5eTkNDQ8qqz8kl0PViVkLsKEEnRfeS7Z3PTqcW0trcrM3noxCNRhkbGztUht/c5Fge2kxyqHIlhLADBimlO/76i8DPCiF6pZRj8Y99PzCc4vAHQK8QogtYAP4U8GcyM/T00evyP3z4UFlY92A0GjGZTEqxygKF2EQ4GAxiNpu5f/9DfD6oq9N6p0gpsFjMmEyaFbeurg4pJaurq9y//5KSknZMps6Mj0dKidvtxmKxYDQamZycZHFxEYDr168f+3vX1tYYGxvj6tWrlJeXEw6HGRgYIBaL0d/fz9LSEqGjruwZ4iysqVarlRs3bjA0NKTW1BSYTKYDe8EoTkaa+Yn7YjKZuHr1KsFgMNEz0+l04nK5mJmZoa6ujosXL2Zsbi8vawUD9qJ7oA6z4AcCmiU+FNopl50u29vbPH/+nJ6eHqxW69EGrjiQk85D7TtOJicIIejp6aGnp0cfE01NTWxubjI5OYnL5eLatWspjQXJylWmC8Hup6hVVGhVh9fXtXDTdAmHwwwODiaqhe+Hx6P9nvKdI5iO56oB+EZ8kTEBX5dSflMI8RtCiH40d+gMcW1dCNGMVh74y1LKiBDiJ4HfQysb/K+llIPZuJDDCIVChMNhFhcXKS0tVf2b4pSWlhKJRAiHwxm11CkKp8+VlBK/34/RaOTTTz9NbK+oeJ2WFm0FSlWGXQhBfX09UkYwGidYWDATCoWIRqPU19djt9sJBoOUlJQcy8MUjUZ58uQJHo8H0AR2/fv6+vpO1Gj1xYsXWCwW5ubmsNlsrKysAFolsNLSUsLhMC9fvqSysjIfAseZWFNBE9ysVitOp7MQqzHmjbKyMrxer6q2mhmOm594ICaTKRECbzKZaG9vp729nampKebm5hgYGEiEC56ESEQTIk/yNXqz1WhUExzTUa7C4TAzMzMsLS3R19dHfX39sc+vGggDJ5iHB+W/ZjrCRQhBeXk55eXl2Gw2xsfH+fa3v011dTUXLlxIGAyS/6eHtWHJJMlzOZ3rllIyOzvL3NwcDQ0NnDt37kB5oxBCAiEN5SpeleqVmhtSyh/Y5/NO4MtJ738H+J0TjDEj2Gw2rl+/ztbWFs+ePaOkpITKysqE5Xx7e5v6+npWVla4d+8eoVCoKPKzDAYDNpuN7e3tlKWuFccnGNQsljbbyZoBHnXhnZubw+12EwwGOXfuHFJKnjx5Amgd2N98800iEcl/+k+GhMVqvzLsPh9EIs3cuqW540tLS6mtrWVwcJBgMAhAQ0ND2mFhw8PDLC0tAVryuMfj4fXXX8disfDhh1pU3GuvvXZii3FLSwsyfvdYWFigrKyMc+fOJXJfqqurmZuby4vX5aysqaB5Fz0eD6Ojo8zPz2Oz2XA4HKyvr+P3+ykrK2NjY4Nbt25RUlKCyWQqCk9XWVkZW1tbJxJoFQmOm594rKIuXV1dlJWVsb6+zszMDC6Xi7a2tmMbZJ1OzVJ/klTmoypX4XCYBw8eUFVVpXL+Msex5+FB+a/ZTB+ora2ltLQUr9fLwsICn3zyCb29vYl1SQ/dy6URWJ/L6Z53dnaWxcVFbt68eWCeFexUI8x3SCCcoBT7aUTX5hsaGnC73QwMDADQ3d1NMBhMWLcnJiaYmZnBZrNlRNArZKLRKNFoVFX9ygIej/bQb4rpNANM9To5sfUg5SwaDbK0NMnW1iqNje1sb/uZn3+cWLgbG1vo7Oxhc1MQjQqWlrREVqtVCzvZ2NBc9jqxmNYroqoKOjvb6OhoTfwWurq68Pv9zM/Ps7i4yMbGBg6HgytXruz791hdXWVpaYnOzk5cLhfr6+s0NDQkSiDfvXuXUCiUkd9bb29v4vXePAMpJSMjI4n+WIrjU1JSQklJCVVVVYlmqWtra7S1tSGEYCMe97GyssLc3Bw+n4/v/M7vPPPhSeFwWDVczhAnyE88dlEXPTTa7/fz9OlTLBbLsZWr5WUtT+ok6AJpJKIZw9JRrmKxGOfPnz/T8ksuOck8PPh7s5s+YLfbsdvt1NXV8dlnnyWKOYGIyw2FrVyBZog9TLECTd4ym/MfEghFplzpmM1mqqurdzUJbG9vJxwO8/HHH+P3+2lubmZsbAyv13um85Gmp6ex2+0nCsFSpCYW07xWJ42W2q/vxN7Xg4Mv8Xpd3L79JiaThWi0g7W1JcrKqjAYLAhhSFSq2t6GgQFtEbJYtPeBwO4qPyaT1kH9T/5JbRzJN2mDwYDdbqe/v59z584xPDzM2toa77//PgDnzp1jbm6OUChEf38/LpeL5eVlSktL6ezsJBwOs7a2tqt6lc1mS2sBPSmjo6NEIhHVrymDGI1G7HZ7oohQMvfv32dxcZHW1lZevnzJ0tISHR0deRhlbtjc3Ex46xQn44T5iSdGTyFYWFjAYDDgcDgIBAL4/X5AM8waDIYDFZjFRXj99ZON46ieq9LSUmKxGJFIJGPh/sWso2VzHuYqfUAIQWtrK06nk4cPH+J0WohEgrhcPjY2oKfnDhaLJevpIXovr+S5fNDcKi8vZ3p6Oq3vLpSQQChS5Wo/zGYz7733XmKhDAaDZ1658vl8mEwmVldXExYORWbIVEELPTH0MCorzdjtlTQ3694YsW+1srU1rTv7D/yAViJ4agqmp+EL8YhxvarPN74Bly8ffF6TyURfXx8Gg4Ht7W3Ky8uZmJhI7B8ZGQHg0qVLidBTs9mct0pqGxsbXL16VXkWcsRbb72VWFOtVmsix+6s4vP5MJvNrK2tJcIklffg2BwpPzEbXL58GY/Hw8LCAi9evNi1b35+Ho/Hw5e//OWU64nPp5Wprq092RhSCaQHEY1GMRqNKpc6c2RtHuayqnBbWxvNzc2sr28yNTWC1VqKxVKCEFqFQbfbzR/+w384q/dGg0Gbx7oH9rDr39raSivCREqtKXJ/f+bGehKUcrWH5Jugw+FgYWHhTJdu7+npYXFxkZWVFba2tujr61O9MDJELKZVdtI7rx8lzyqd/YGAH6/Xm/D4+Hy+tD0/kYgWDhiJ7LxPvgcbjfDokbZQpZMrYLFYuJhUZzgajSKl5PHjxwB0dHQUzLwyGAyEw+F8D6NoSF5Ta2pqmJiYoK+v78wqt42NjUSjUTY3N5mbm6OiooK+vj6lYB2Do+YnZouysjL6+/t3/R9fvHiByWRiamqK7e3tlG0dFhe15r8n9Uwc1XO1sLBASUkJQgiklGrunZBszsNct2wxGo1UV9fS318bb1AtsViWuXGjko8++giPx5Po/5YNhNBaC+i53ofN5ZWVFcrLy1lZWTkwh1UPCSyUiHOlXO1DMBhkZmbmzAoAOqWlpYmylnrJVovFktUfV7FQWaktHDU1+4fy6T1M0gn7kxI2NpxEozGMxhIWFl4k8rEslhIikQAtLe28fHm4cra8DFtb8Ad/APX1MDenbXc4dj774AH80T96vGvXfzd3797N2N8zU1RUVLC1taVCYfPA8+fPARLFRs4iRqMxUTwhHA7z5MkT5ubm0i6ooChckpWUy3GXvsvlYm1tbV/lKhMO+uScK6v1cIG0pqYGl8vF48ePaW5upqur6+SDUGSFfPTD1POdNC+SoKamEYslhtlsxul0Zl25ikQ0I0E6ytWlS5dYX19ncnKSSCSyb/XOQgoJBKVc7cvo6CgAd+7cyfNIcofD4eDChQu8ePGChoYG2traznzieTYxGDRlJVMyfCAQ4LPPRjEYtAWpqQmuX78BGHA6nVRWVlNVpcWfHFQkQ0rtBt3drVl6AoEdxSoY3PG4lZdrjS/PGn6/X1XGzAMbGxv4/X4uX76cKIF91jGbzVy9epWBgQG2t7dpb29X/a/OEF6vl0AgsK9naHn58LDqdEj2XJnNhwukZWVlXLt2jVAoxOPHj4nFYrS3t6sQwQIk38pVOKw9z83NAdDa2prVc+vKldG4M68PoqysjLKyMurq6nj27Bkul4vu7u5EISwovJBAUMrVvgghcDgcu/6BxUB1dTW3bt1ifn6ehw8fcu3atTOdc5ZNMr1oWiwW7HY7FRUV9Pb24vF42NjYwGQycfHi0cKOzGa4ckW78VdXa/lVsFN848ULeOedzDcWzDexWAyPx6ME3DwQicegFptiW1JSwq1bt1hcXOTFixd0dHTQ0tKS72EpMsD6+jpAooFrMi6X9pwJ45rBoAmkUqZXLVDHYrFw48YNpqenefDgAdevX89J0SBF+uRbuYpEtOetrS2ArPeATQ4LTEe50rHZbNy5c4fZ2VmePn3KrVu3EsaCQgsJBFD1t/dhbW3tzCde70dJSUmi4/fAwAChUCjfQ8oaQohpIcRzIcRTIcTD+La/J4QYiG/7VryJ65HJVEELHYPBwI0bN3C73Tx79izxv1lcXGRychKn05l2LpFeETAW2/1eZ3oazmJBt9XVVUpLS5VHNg844xr8WQ4J3A+j0UhrayvXr19nZmYmIZQrTjcHVTFbXDx5CXado1r7k7FarfT399PW1sbg4CDRaDQzg1JkhHwoV3r5dV25Mhq1tBBtPNldn/Xy78eZyyaTie7ubmpra3n58mVirIUWEghKuTqQYhfAGhoaaGpqYnBw8KwLRF+QUl6XUt6Ov/95KeVVKeV14LeAv3OcL83Gomkymbh8+TJ1dXXcvXuX3t5erl69it/vx+l08ujRI95//31mZmYO/J5YTIt5Tlau9KTr7W2tytVJS8gXGqurq4yNjXHu3Ll8D6Uo0ctXn/G15EBsNhsXL15keHiYQCCQ7+EoTohebj+VITZT+Vabm5vMzo7tUq6OQ2trKzabbZdQmi5F/JPNOoXiudLzo71eb8bOE4lEWFhYSMy3999/n7m5oUTO1VGVK53u7m4CgQATExOJkEClXJ0SLl68iN/vLzivjZQyEV6TCzo7OwGYnJwsGqFISrmd9NYOHOvCs7VoWq1WWlpaEi5xi8XC5cuXuXXrFhcvXqS0tJT19fVEA9dU6JajVMrV9DS0teW2sWC2cTqdjIyMcOXKlZSJ54rso9+8V1dX8zySV8nlmlpZWUlraytDQ0M5Pa8i8+itSzY3N3dtj8VgdfV4ytX29nZcCJ3j/fff59mzZ6ysLLCxsXYsa7+OEILe3l78fj9jY2OqYmqBkG/lKhwGIWRC1s3UvPD5fNy/f5+xsTE++OCDRA9Ml2uFrS3XieaywWDg2rVrbGxs8PjxILGYv6BCAkEpV/uil43eu2jmCilloodG8rYPPviA+/fv50zR0RfktbU1FhcXc3LOHCOBbwkhHgkhvqJvFEL8AyHEHPDD7OO5EkJ8RQjxUAjxMJXAmOtFU88T7Ovrw2KxMDY2xuDgIMvLy698dq/nKrlL++zs2QkJdLlcPHnyhNnZWW7cuKGqYOYRo9GIxWJhZWUlb2NYX19/RbmbnJzk/v37uPQkmRzQ2tqKyWRieHi4aIxWZ41IJJIQGPfmJW9saA3aj5reND8/n2hfofcKNJvNCAEbG8snsvbDTg6WlJLPP/88r79FhUa+lCujcaccut/v5uHDh5jN5ozk2G9vb/P555+/sv369evxa7WcSLkCzch869YtolE7i4uPDjQm5wNV0GIf8t0Xwul0Mj4+TllZGbdv304s4jqPHz/mxo0bGHLgXigrK0tUEQwEArS3t5+lal9vSSmdQoh64PeFEMNSyg+llF8FviqE+CngJ4Gf3nuglPJrwNcAbt++/coSkY9FE6CqqoqysjKGh4dxOByMj48TCoWoqKhIFHLQlSs9/F63ZG1va9UDGxtzP+5MMzMzw9zcHOfOnaOhoSEnvxXFwVRWVubNW+P1ehOl4O/du8f4+Djz8/OJ/YODg1y9ejXrCd2gKZoXL17k2bNnPH/+nN7eXkpLS7N+XkXm0NeTu3fvvlIkwuk82hoaiUS4f/8+oBl2L1y4gMfjobS0FLPZzPvvP2BtbYtAYAu7veJEYXomk4n+/n6ampp49uwZZWVlaRW5UK2yskO+PVeRCJSWaoXb3nzzzRPLvsvLy7x8+RLQIsCSe1PFYjFKS+2MjX1Oefl5hGg80Vw2Go2UlHRy5Yqd0dHRXUUu8o2SNlIwNDTE0NAQkPu8q2g0yvvvv8/Y2BigxXInK1bnzp3j4sWLuN3unFo8HQ4Ht2/fJhDQOnk7nc4zYXGVUjrjzyvAN4C9jZm+DhyrUWC+lCvQrJ1Xrlyhra0tMV+ePHlCLO6q2q+gxfQ0tLScjZBAp9PJhQsXaGpqUopVnllaWuLJkyesrKxgsVhyfv4XL17w4MGDxPv3338/oVjV1dXxxhtvEA6Hc6r4mUymhDf18ePHjI2NqWIDpwifzweQcj4vLx9NudLX5aamJtrb2zEYDDgcjoSgePHiDczmciYmnhAK+TOSA+VwOCgrK9tlYFDknnwrV9EorK0tZPC7tbn8zjvvvNL012AwcP78HUpKqpiaGmZjY/5Ec9nj0YzEDoeVcDicOHchcGbcD5lEd5VfunQpp2FE29vbrK6uIoTg2rVrlJaWsrm5yerqKnV1dTTGV+vx8XEqKytz3uDYYrFw8eJFtre3GR4exufzpSxBe1oQQtgBg5TSHX/9ReBnhRC9Usqx+Me+Hxg+zvfnU7lKpqqqio2NDex2O4FAAJvNRiymlS7dm3M1O3t2eltZrda8e6AVGnqIc09PT2IdywV+vx+3283a2hqXLl3C4XAk3hsMBvr6+gCtOiyQ88bSBoOBjo4OGhsbGR8f58mTJ9y8eVMZA04Bel+giYkJGhsbE7JCJAJra/Dee+l/lx6q2tHRkbL9i9lsor7+EqurH/Lixbe5cOEucLKS6lJK3G43Fy9ePNH3KE5GpqsKp3vOZM8VaMV1PvjgA86dO0dzc/Ox5Uu9EmowGEzpERUC6usv4/V+xOLiONeuHb+vll4l0O12U1FRUVBF6NQKnoLKykouXLhAXV1dzoSzgYEBHj9+zNzcHFJKKisrsVqtNDY2cuXKlV0Cid1uT3Rfz0fBDYfDwY0bN1hcXExY704pDcB9IcQz4HPgt6WU3wT+oRDihRBiAE3h+p+P8+VSFo4HqLa2FqvVypMnT5iYmMDt3sLrXcXpnGJqagqnc4Klpe0zExIIWjir2+3O9zAUaJVH6+vrE7lGuWB5eZlvf/vbiSiEsrIyrFYrtbW1nD9/PqFYAQkh4JNPPslLnq3VauXSpUsYDAaWlpZyfn7F0emIJ6YuLi7y5MkTHjx4QDQaZWUFKirgKA5aXalfWEjtQRACYjED586dB8BkOrn3VwiBzWZTeVd5Jt+eq0gEurp6E/smJib46KOPjh2ZpMuq+3mRtFLsRoTQImwCgeCxzgM7ylVFRQUbGxsFVYBOea72IKVka2srb40u33jjjUMnSFNTEw0NDQwMDPDJJ59w79693AwuCbPZTENDAy9fvkyUoz1tSCkngWspth8rDPDV7ykMzxVoi8+VK1dwuVy4XC7Gxp7EPVdGwuEoa2vg94fx+R7x9GkFN27cOPVeH7PZXFCLbTHjdrsTpdhzhe79uX79OlLKAxvC22w23nvvPZaWlnj27Bl37txJVILLJe3t7bx48YK6urqCyR1QpMZms3H79m1CoRCDg4N4vV6klCwtwZ5oqEPZ3t7GZDIlqvPuRe8NND09jBDw9Ol9Skou0HCCRlrRaJRwOKxy/fJMvvpcmc07ypXFYuLevXtIKRkYGDiRgWlxcZGWlpZ9C2Poc1k7d5hHjz6lrs7BzSOGzOghgWZzlKmpOerr6/MScr4fadnV92m0+vNCiOF4s9VvCCEq0z22kHG5XEgpT7RoHYeNjY2EZTWdhGq9FCXARx99lPNKKVJK1tbW9r0ZKApLudKprKyks7OTixff4datd7hw4R3eeecdTKYS5ueXqK+3Mj8/n3NBONN4vV6cTietrccPOcgmxbSmatb8lYSlP1foa6LD4aCqqupQY4EQgqamJqqrq3nw4AHj4+O5GOYuVldXc+rdU5yMsrIyqqurE55Pk8nE0tLRewRubGwkwgpXV1d3Wf0DgQDRaJhwGG7deoMLF24A8PLly0Ro4lGJRCI8fvwYh8ORN0OyQqMQPFfJEYCbm5uUlZUdy7gqpWR9fR0pJdPT0zx+/JiFhQXcbjc+n4+RkRHC4QCRCHzhC/e4evU9pNxpYHwUXC6orISpqSl8Ph+9vb2HHZJTjrKCf0FKuZb0/veBn5JSRoQQPwf8FPA30zy2YNFDMgYHB6mpqcFms1FbW5vVc+p9BY7a3FQIweuvv85nn33GwMAAb775Zs40d4/HgxCC6urqnJzvNFKIypWOlEasVq06oNFopKrqDtGogS9+UfDs2RO8Xm9aFaQKlWAwiBCCxcVF7HY79fX1heiJK4o1VbeCvnjxgkuXLuH3+2lra8v6/2NxcfFY//eLFy9y//595ufnqaioSLTlyAUbGxvxcsUFN1cVB+B2u3E4HIRCsLV1dM+VnnP10Ucf7dre1NTE4uIiwSBsbNRz7lw9DkctVqsN8NHS0nKs8W5tbSGE4MKFC2qu5Zl8pA+kaiKsjUULBTxuL0jdKOB0OhPb9ipO29uLrKzA06cOQiFtbT2OM2NzE3p6YGlpm7a2toLz9B/bPCal/FbS28+AHzz5cPJPb28v29vbbG1tsbW1BcDNmzcRQmStRK8QgoqKCp49e8aVK1eOZEkqKSmhsbGRSCSS08llt9uJRCKsr69nXfk8rRSycpXc50pKWFoy0tWlVw+K4nQ6cypUZpqqqir6+vrweDzMzs7i8/no6urK97AO5KyuqTU1NTQ3N+N0OhkcHAR21jy73Z61wjwtLS0sLCxgsViOVHjHZDJx6dIlxsbGEq0LcoXD4WBhYWFXPpii8DEajQmvVXW1trYehZ6eHsbHx+nq6qKhoSEhgywsLGC326mpqWJ2dp7R0RUiEQiFoLOz8diFTwwGA7FYLO3jz0Bh4IJFSi1MTi9skQuZYT/lSp8Px823MhqNXL16laGhIV5//XVMJlMiymlkZITz5y+wulqKz7fB+vo46+vblJVBV9d5gsGdeZZ8+r3bpASvV7uG0lIt5cHr9R5rvNkk3SVAb7QqgV+M9/dJ5seBXz/msYDWkBX4Cmhx5/nCZDLR19fH4OAgLS0tzMzMJJr6vfvuu1mp4mQ0GhM38aNaDGKxGEtLSzQ3NyOlzJkVymAw0NjYyMrKilKu9uE0KFf6or6yAt/xHZqXwePx0NTUlO8hngghBLW1tdTW1tLc3Mzjx48xGAy0tbUVSiW2ollThRB0dnYmiotIKRMNUi9dupQ1Jb6mpoaVlRWajxqjBYyNjSGEyLlVv7m5mZcvXyrl6pRhNpuJRCIsL0NDg7b2x2I7xqvDnktKWrl0qZVYTAt3isVKsNnqaW5uxmy24nabWF3tob5+C6fzCRaLA6Oxn3jHlpQC6EHPsZiDmZkAVmsEg8F06DGbm1BWdnaayxcSKyuwuKg1ntYVLIPh1efDth3lGJdLK7hitWqeVo8HgkHt/OGwia0tydpa+vN393M1VVVvMzysvxfEYnXYbHXMzMDLlzA8bOP8eQtO5xCXLr3D+PjOOqsvuQc9z8zseIftdjsLCwsFZzxNV7lK2WgVQAjxVSAC/OpRj03msIasuaSqqoq3334bgNbWVqanp/et4pMJXC4Xc3NzvPnmm0cW/PRqfU6nE6fTidFo5O233866UBAMBnE6ndy9u7ctlELnNChXumIVjWqL1bNn09hsNvr7+/M9xIxhsVi4ceMGIyMjLCws0N/fXwh5BkW1ploslkThm1gsxtbWFs+ePcua1yoWizEwMMCVK1eOFd6qF0L55JNPAHISci2lZGpqiu7u7qyeR5FZpJSEw2G6u7v51V+Frq6dZHuTSctn0Z/3E5xTPRuNUFFhx2DQPFVSwsWLDkpKLhAO11FfL/YVQFNt2/1sxO8vo6xskba2tkOPHRnRBHJF5olENIX8+nXt/V5lJZUCc9A23WB60DGPHoHDAeEw/N7v7Shakcg2GxsRYrEutrZencP6a7P51ffJzyZT6jkthHa9Viv80A/V89FHdTQ2Co6aLjU0BHo6dU1NDcPDwwQCgQOLFuWatJSr5EarQgi90eqHQogfBb4X+E65jx9xv2MzMfhcYDabcblcWK3WrFm8I5FIohP7USkrK+POnTvYbDaGh4dZXl7mgw8+4Pbt2/tWazkp29vbjI2N0d7erioNHUChK1d6n6sXL6C7W1sAvV5vThup5gqr1crVq1fZ3NxkcHCQK1eu5LSH3V6KeU01GAx4PB4ge32l9D/dcUO533jjDYxGI+vr67x8+ZJPPvmEhoYGLly4kMlhJggGg0xOTmI0GnPaB0xxctbW1ohGo1gs9UxNwfd8j7Y9FtME3WhUE2LDYU3wNBq1tVZ/refc6I9Un7HbNQG4p0dgNjcwOamVez8JlZXlbG2t0thYS2lpacqQrOQ+iIV6Lzvt6PPE602tYJvNmf/bj47C229rStDjx/BDP6T930dHl1lZsXD7timhpOlzONXrUCj19uQ8smQPmhAwOQlLSzA/D1tbgtLSHcU9nbDAeLYOesCUyWTCbrczODhIfX09TU1NBVEQ6NARHNBo9UtoydbvSSlTNjva79jMDT/7uN1uvF4vt2/fzto5lpeXE5ZSv9/PwsICDoeD8vLyXUqdFnawTHV19S6lRi8ZfOHCBZaXl4Hjx8wehm4Rbmtry2uo0WmgUJUrKbWHfmMfGYEvflHbdxYVq2Sqqqro7+9naGiI27dv5yUJttjX1FgsxsTEBHV1dVkzWLnid2u93PTKygqBQID29naklAkvlJSS1dVVTCbTruI8ejPKhoYGtra2cDqdWcu5BS0M0WAwJHpdKU4Po6OjhEIhnj6N0dRkoLMzdchUJLKjaOmvI5HkcKydbfrn9O0uFzx7Br/5m1oRolBIM4odNRww+XUk0sH6+hTj448pKSmjtfUqBoN2w9rrudLDAhWZp6REUxjm5g72Th03BHC/sMCFBW2b36+F2RkM8Pz5JE7nBA0Nl7HZHMcKC4Sd+Z48//SHz6cpVy9fanO5rExrup1OOCDA+jqcP7/z9xNCcPPmTTY3NxOVjgshrDod9a4B+EY8zMwEfF1K+U0hxDhgRQtLAfhMSvkTQohm4JeklF/e79gsXEfW0Mv5Zit8RU/2A607NmjK0vz8fOIzpaWl3Lx5k48//hiLxcL09DR1dXU0NTVRUlKCyWRCCJEQjKurq7MmCASDQWKxGO3t7arK0CEUqnIVi+2UXvV4tMVVL1R56dIlBgcHCYVCeesZEY1G8fl8WZvDdXV1bG1tMTQ0xOXLl7P22z6Aol5Tda9VNj2Hz58/B+Db3/42oHmw3G73rtLVd+7cYWJiApfLRSwWo62tDbvdnmgebzAYkFImQq+zVdZfP0dvb29B9WlRpIcQgoGBAaxWG0bj23z++athVHtDqAyGnVCsdMIEXS4YH4d33wW3WxPG9VCqdIXSV0MHLUA/UvZx//59Ll4M7htWtbqq3ScUmaeiQgvJP6jCpK6YHDVEcG+4oL7NaITlZU2xLy/X5haAy2XE748xNBSiomL3fNVDAfX5bLHs3q4/9NDAZA/s3muprITv/m5NobRaj1Zd0+OBvXZ9o9FIbW0tW1tbBWMgPlS5OqDRasryS/GQlS8fdOxpoq2tjampqaw12xNC8NZbb/Hxxx8D0N/fT2NjY6JSodfrZXV1NbH/woULifwqvdyl3W7n3LlzDAwMAGS1n0wgEMBqtea0eMZppZCVK33BW1yEzs4dZUsvTuJyuag/aj3hY+D1ehNKjn5j18sRZ6uADGi/kRcvXjAxMUFvb29O53Kxr6kOhwObzZZQWrLBe++9lzBWVVdXc/Xq1UTIq9vtJhgM8uDBA0BrgeH3+xO5r8PDw4BWwW1zcxOXy5XVfn5SSoLBYMJbpjg9SCkJhUJcu3aN5eU3uHdPExxThVGFwxAI7Fj3U4X/7ffa69Uqo1VVae+DQU0ozQQrKysYjUY1//JEOnKCHlKXqdvh5iZcuaJ5lzwe+K7v0srzm0wmvvjF76O9vfaVUL+DQgT9/v0/oytz+nxeWNDCXJOvP138fu379uvv7vF4CqY9UP4DEwscvcJVNoUvs9nMW2+9lfBAwU4uQmVlZaKCVCQSoaKigqqqqsSi7vV6GRgYSChW3d3dWbUIV1ZWJnImcl2m+LRRqHHqycrV0tJOSGA0Gk18Jhfhcm63m0ePHgFaI8CVlZVd+z/88EPu3buXlXObzWYuXbrE0NAQT5484dy5c3nNwSomdE9NNhu1CyF45513gJ2oAz18Wv8/W61WFhcXqa6uTuwLh8PEYjE+/fTTXU2Es6lcGQwGmpqaWFlZOfF5CtWgc1YJBAIA9PVdZ3PTyJUr6R23V2DdT3DVFTKvd8e6L8TRBNLD0JUqZSzND/lsIqyHG0q5sz7a7XaE2PFEnRTdW6bPbZ9vZ/4edS67XJqBYT8CgUDB9OdUytUh6BPO7/dnNeb+IGFWCMHFixdf2Wa1WrFarXR2djI9Pc358+ezngwthMBsNhMIBNJSrjY3YXo6dey3wQDXruW+gV6uKFRBR19Yt7ehuXknfvnJkyeJkK1sFyrxer0JxQpIKFZWq5Vr164xPT19rK7tR8FisXDt2jWWlpZ48eIFdXV1OfdiFSNCCEpLSxNzLVscFu7Z2tr6Sqifvg7fvn2bhw8f0tTUdOTm7sfBYrGk7clbXga9R2eqdbW3V6sEpsg+paWltLa2MjLipL4+/ZYCeu5LupSVaQUAIPPK1cbGRlYNHYqDybWckKzY6F4lrXqwiQsXLjA2NkZFRUXGDKx6YQ59OS4p0QwG+r6jsLn5akhgMuFwuGA8sEq5OgS90EQhe2mampqQUuasylRlZSVOpzOtsDGXSyuZWVPzasz306eZvUkUGoWuXE1PQ1vbzk2+tLQUi8XClStXsqZgBAIBPvvsM0ATst977z1gpwCLft5YLIaUkvX19ayWTRdC0NTURG1tLQMDAywvL6tqbVlG/98etadfLrHb7XR0dNDS0pKTylOVlZXMzMzQ3d19aN7V5qZW3bO8/NU1dXJSsxArckdXVxeffvoxbW2TQHbK6CdHG2RaubLZbExPT1NdXV3Qv8l8I4SYBtxAFIhIKW8LIX4e+D4gBEwAPyaldB3le3MtJyTPpeSWLEajlo+8vr7O8+fPuXHjRlbkgOPO5UBAC2M8qLBKR0cHz54948qVK3mX2c+ozyBzTE5O0t7eXlD18/ditVpz2kCttbUVl8uVCIk4iO1tLWEzuRSnzllWrKBwlatoVPt/zM/vbgoppcRoNGbVc6N7o1paWnaFQO1t2Nrf309rayvPnz/fVYQgW5jNZjo7OxkeHiYYDGb9fMXM8vIyRqOxoBtVCyHo6urKWYGJ8vJyysrKEsWN9iMa1fIOystTr6lnESHEtBDiuRDiqRDiYXzbzwshhoUQA0KIbwghKvM1Pi1f6TXCYWciVzrTZFO5amhooKOjg6GhoX2rDJ/1e/UR+IKU8rqUUi8f/fvAZSnlVWAU+KmjfmE+latodMdzBVqI8vnz54lGo4yMjBAMBjOeG3vcuexyafmMB9HW1kZlZeWh62guUMrVAYRCIdbW1mhpacn3UAqKWPyXeJhy5fdrP9xiLYBVqMqVnoDq8YDupInFYqytrWW9ua6uuHR2dh5YeMVsNtPW1kZzczMTExMMDQ1ldVyghSpWVlbmpTx7MTE5OUlbW5sKv0xCCEEsFiMYDB7YRsPj0ZK5z2oo9QFkXKjNFNvbYDBYuXatj2fPnvHixQsGBgYS90kpZeL1ccmmcqWH+mfbsHYWkVJ+S0qpl6f7DDhySdF8e66SlSvQFKwrV64QiUT49NNP+fzzzxNG0bW1NZaWlk7U6ica3e1xT/erNjcPzrfSvjvK1tZW3r1WoMICD0TXfgslhrNQsFgs9PT08OLFC+x2O9XV1TQ2Nr7yd3K7NQtrsZLcSK+QiMW0vI2Wlp3x6fkvw8PDbG1tUVFRkZXwuMXFxSPdxHt6evB6vaysrFBbW5vVCoYul4vGxkbVZyiLxGIxwuFwTipRnjZ6e3sZGhpiZWWFmpoaGhoaXsnzLfY1VUdK+a2kt58BP5ivsSwu6qW063E4HLx8+ZKtrS0ePHjAhQsXGB4exufzce7cOZqbm4/V+iG5AEGmlSuA+fn5Qw1rSu9CAt8SQkjgF6WUX9uz/8eBX091oBDiK8BXgFf6g+ZbudLDApMpKSnh0qVLbGxs4Ha7efz4MUajMVH0anZ2lt7eXioqKo58vzyOoSAU0h6H9VpbX19HSpl1I3E6KCniADweD6FQiOnp6XwPpeBobW3lzTffpK2tDZ/Px4sXL16xZqQjCJzlBbuQPVdu9+6QQIfDkVj0FxcXGR4eZnBwMOPu9a6uLqLRKLOzs2l93mAw0NraitVqzXqJ1aqqKmZmZrLWgFuhRQNEIhH++3//7/keSsHhcDh4/fXXOX/+PCaTiWfPnr0SHbC9fXCxijM6dXWh9lFcSN3LjwO/m+pAIcRXhBAPhRAPV1dXszK45WXQ60GUlJRw48YN3n33XWw2G48fP8bn89HV1cXy8jKffvopU1NTRw49jkY1ITgbylUsFsPlchV0mG6B8JaU8ibwPcBfEkK8q+8QQnwViAC/mupAKeXXpJS3pZS36+rq9uwrPOUKNI9mTU0NnZ2dXL16lY6ODi5evMh7771HY2Mjz54948MPP8Tr9R5pPidXUU53LushgYf9nUKhEDabrSA8sMpzdQA9PT383u/9HoODg/zVv/pX8z2cgsNgMFBbW0tNTQ0ffvghoVAo4b2SUhPgD6rscpYpZCFne1uzAjU3797e0dGB0WikrKyMkZERVldX8Xg8id5XmcDr9SaKBaTL4OAgADMzMzQ2NiYqeGYai8WiFKssU1JSwuTkJOvr69y4caMgLIyFRkVFBRUVFbjdbjY3NxNCbySi/W4LpNJwLnlLSukUQtSjNdgellJ+COkJtcDXAG7fvp2VH/fKCly/vnubHlqVTHt7O5OTk8zNzTEzM4PD4aC7uzvRduUg9NyYVNUhT4qe7xpVlVAOJN5vECnlihDiG8Bd4EMhxI8C3wt8pzzGDSTfytXesMBUVFdX7zJutre309TUxNDQUKJfYHt7O93dhxd0OY7nanNzJ4XhIMLh8LE8w9lAea4OYHR0lP7+fr7ru74r30MpaFZXV7FarbuSv30+LdeqWNNXCtVrBbC1tVNkJBmj0UhHRwc1NTW88cYbABkXfhcXF+ns7DzSAqiHJ87NzfHgwQNevnyZ0TGBlj84NTWlSrFnGbfbTU9PD2+99ZaqTHYAPp8Pt9u9K3fA7dbCYopteiYLtYAu1JIk1P7wcYTaTOByaf+PdFI8hBCcO3eO69evU1JSwvb2Nk+fPmVoaOjQnKxk5SrTnqvNzU2EEFltNXPaEULYhRDl+mvgi8ALIcSXgL8JfL+U8liVH/KtXO3nuToMs9nMtWvXuHnzJu3t7czOzvL++++zvb3NxsZGymOk3J0ukc5cDoe1HPHDfmMej4eZmZmC8cAqz9U+BAIBlpaWqKqqesUCpdjN6uoqNTU1u4TSYs8NKNR8K9As32+9dfBnFhYWAI7kYTqMaDRKMBgkGo0Si8VYXV2lvLyckpKSXXHbbrebkpKSRGGJ8+fPc/78eSKRCPfv32d5eZmenp6MFZ7wer08efKE5uZm5UnJMo8ePcJgMPDuu+8e/uEiZmtrC5PJtKshZjGuqXFB1iCldCcJtT+bJNS+d1yhNhMsLu6EBKaLHv4ZiUQYGxtjeXk50efvzTffTFmhMhLJTlhgMBhkYGCAzs5OlWt6MA3AN+Iyjgn4upTym0KIccCK5lEF+ExK+RNH+eLTqlzpOBwOHA4H1dXVPH36lMePHwPwzjvvvGJE3euBhcPnsm4MPuhv5PF4GBgYSLRVKQSUcrUPenz23ua9ildpbGxkampq1za3G+rS76l45ihUz1W6VqDl5WXg4ObWR2VmZgbQimYMDw+/sv/atWs4nU5WV1cpLS2lsbGR5uZmDAYDRqMxcfO32WwZHdf29jYVFRVphTQojo8edpRcgl+Rmrq6OsbGxohEIom5vr0N6fQzLsR15wRkTajNBHphoONgMpk4f/48BoOBxcVFQDPqplKukoXSTOlAoVCITz/9lMbGRvWbPAQp5SRwLcX2npN/d+GHBaZDZWUlb7/9NktLS4yPj6dU1pNzByE9Q8HmJhymLw0NDRGNRunr6yuYyBOlXO1Da2srS0tLbGxsZC3H46wwMTGxa3GWUisZXMyyaqEqVy7X4VYg0PpQDQ8PI6XM2GLV1dWVKGRRXV3N5cuXWVlZIRQK4ff7efbsWeJzLpeLqamphNLe2trK/Pw8oFVVyySBQECVX88BRqOR9vZ2tre3icViylJ+ANPT09TX1yfmZSikCSalpXkeWI7JplCbCVZW4Pbtwz+3H0II+vv76e3t5cMPP8Tv96csI52NghZ6T65z6WjsiqyRb+XqpJ6rZEwmE42NjYyPj7O8vPxKxeFoVEsVSVe5ikbB6z3cqFRZWcn6+jp+v3+Xtz+fKOVqH4QQnD9/nqdPn1JTU1Mw/7BCJBqNUpZUI9Pj0YSAAskrzAuFqlxtbmplgw9DL82eSYQQvPfee0SjUUwmbelJXnyrq6tZXFyksbGRjo4OYrFYopmhrlg1NjZmPFenqakpEcqgyC7t7e08ffqUxcVF1T/wAPauqcUYEljobGxoguJh5aHTQTc0jIyM0JAizjAbOVfV1dWUl5fz7Nkzbp9EQ1SciEJqIpwJ9Ht7Khlib1jgYde9tbXTMP0gzp07RyAQwOl00tNTEHYXVdDiIMrLy6mpqWFsbOzQhrnFTElJCYuLi4TDYSB9QeAsF2YrROUqEtEKjaSTfJ2tPkRCiMTiu5e6ujquXr2aqDhpMBgwm8309/cDmsfq/PnzGR+T2WwmFoup33gOMJlMtLa2MjMzg8vlyvdwCpaSkhLW19fxer2AUq4KEb2/VSZJVdhCLwKQac+V0WjkypUreDyexL17P87yvTrfnCXPVTKpWh8cNSxwc1MrwX4YRqMRu92eFaPwcVHK1SH09fVRWlqalQplZ4Xz588TDAZ5/Pgx0WhUCQIUpnLlcmmKVTrRWLOzszQ1NRVE/LLZbObOnTtZqwJkNBqpqKhIFPFQZJeGhga6u7sZGBg4VKgrVtra2igvL+fp06e43W61phYgy8vplYc+KdGotmbrgmgmC1qYzWaMRiPb29uZ+ULFkTmrylWq3ldHUa70fpwVFemdr6WlBY/Hk/HenMdFKVeHYDKZ6Onpwe/3J5L8FbspLS3l4sWLGI1GlpZW8PkyEypxmilE5WpzE9KJqAsGg6ytrRVUkrPdbs9qjo7D4Sgoq9dZRghBY2MjtbW1TExM5Hs4BYnBYKC7u5umpiYmJ2eREkpK8j0qhU4sBqurkCl7z0GV5HWBNFkQzZSCJYTgwoULDA8P71s+e+ezJz+f4lXOknIlpUyE8KcqBpdc9RIOnsfb21pl430CXV6hpKSEK1eu8OLFi0Pnci5IS1oRQkwLIZ4LIZ4KIR7Gt/28EGJYCDEghPiGEKJyn2O/JIQYEUKMCyH+VgbHnjP0hoAjIyO8ePGCaDSaSJ5T7OD3+xHCjs2WfkWjs7pg6wtGNJodq9BR0RND07ECra+vI4RIhOcVA7W1tWxvbzMwMIDT6cy6R6XY11SA/v5+tra2ePjwIV6vF7fbnUiyV2ho9xh72l4rFb6VGzY2NGU3E6nYfr+f58+fY7PZUuY+6XkqewXRTP2va2tr6ejoSFnBVZF9zpJyNTAwwNzcHHfv3k2ZWnAUz1W6xuBkKioqaGxsLIiQ86MUtPiClDLZ3/b7wE9JKSNCiJ8Dfgqt70QCIYQR+OfAdwPzwAMhxG9KKYdOOO6cU15ezptvvsnw8DCffvopkUiEmpqaXT2wpJRsbW1RVla2b17JWcXtdhONRgmHbSp8Be1mGInA8+fawqUvoAbDTohH8vNh2056jMuVXmIoaJXKvF4v6+vrRdP3yW6388Ybb7C2tsba2hoLCwvcunUr2xXtinpNNRqN3Llzh4WFhURIMcC777676+/u9XoxGo2UFJnrJhqNsrW1RWlpfVp5korcoVddzQTz8/NsbGxw69atXUVMdJKLAGTac6VTV1fH+Ph4RqvDKtKjEJSrTKUbl5aWsrm5ydDQELdu3XplLqVbLVBKrZhFa+vRzq+3rgiFQse8gsxxbA1ASvmtpLefAT+Y4mN3gfF4OVWEEL8G/BHg1AkCoIUIXrp0CafTicFgYG5ujvv373P9+nVsNhsjIyMsLy9jNBrp6emhoaGhaMoNj4yM0NbWht9voro636PJP1YrXL26e5uuZCU/H7Zt7+tw+GjHJD/39aU39r6+Pn7lV36F2dlZfuInct46Jm/oZWQbGhq4f/8+wWCQ0hzWvi7GNdVgMNDW1pZIRvZ6vXz44Yf09fXR3NzM6uoqg4ODADQ3N9PV1VU0ZfNnZmYwm80IUasMVgWG15u5svgtLS0sLCzw6NEjbty4QcUerU1XrqLR9KuspYMeihiNRhPhuaFQqKgiFgqBQlCuMuW56u7uxul04vF48Hg8lO9ZuPR2EocpV2635hlOZ6n3eDw4nU7a29t58uQJwWCwINoLpKtcSeBbQggJ/KKU8mt79v848OspjmsB5pLezwOvpTqBEOIrwFdAK9dbqAghEiWEGxsbGR4e5uHDh4n9ejWz2dlZJiYmuHLlSqJvxVm1CEUiEYLBIFVVtczMqHyr/dAXtEIvUT86Osrly5e5efNmvoeSF5aWlrBYLNn2lKg1NYnq6mqq41aZ6upqXr58ycLCAl6vl7a2Nurr6xkfH+fjjz+mp6eH1tbWM29l9/l8lJfXEokIUvSVVeQJKbWqq5lqf2mz2Xj77be5f/8+MzMzXN1jlUsul50Jz5XL5WJ1dZWFhQXsdjsVFRWsrKzQ2tqqFKs8cJaUK5PJlJjLL1++5O7du7v263MZDi7O4nLtVAnc3t7G7/djNptxOByYTCZWV1cTETY6TqcT0HpitrW1ZeaCTkC6ytVbUkqnEKIerSP6sJTyQwAhxFeBCPCrKY5LNWVSLglx4eJrALdv3z4VkeN6A8D29nZCoRClpaUJgayxsZHJyUmePHkCaKWtUyX4nQW0cMAwUtqx289uHlUxoDf17evrSwi7xYZeLj7LgrtaU/ehvr4eh8NBKBTCYDAkrJ83btzA5XLx9OlTFhYW8Pv9vPfee2dWwfL5fDgcDUf2Wp3RP0fB4PNpVvVMBqWYTCa6u7uZnJwkHA7v8s7qAmkkkr5ytb6+zuDgIDabDSkl586dY3Nzk7m5HbtMXV0dq6ureL1e2tvb6e7uztwFKdLmLClXoM3lN954g08//ZRgMLhLYddzrgyGnfm7n3LV16flI+7Xg9Jut9Pf3095eTlWqzVhFE3VJy4fpKVcSSmd8ecVIcQ30EJTPhRC/CjwvcB3ytTlbuaBZBWyFXCebMiFhcFgwG63Y09hxurq6qKurg6/38/Q0BAlJSVsb29TX19fMGWuM4HZbMZkMrG0tF20AvlZQRdki/n/GA6Hs54zqdbU/RFCUFpamjIks7Kykrt37xKNRnny5Anj4+N4vV4qKipobm4+U5Z3u93O6uoWly7V5XsoiiTcbq2lRZLRPCO0t7czOTnJysrKrgbbqQpaHKRchcNhnj9/jsFgoKqqiqWlJQYGBgDo6OigsbExp+HOiv3JR1VhXbnS50+mmwgDifzZvX3b9s7lVPPY69XH5OPBgwc4HA6uXLmCyWQiGo3y7W9/m66uLpqbm3cdVwjeqmQOlSCEEHbAIKV0x19/EfhZIcSX0JKt35NS+vY5/AHQK4ToAhaAPwX8mcwMvfARQlBeXo7NZqO5uZnZ2VlKS0sZHR0FeGVynFa2trbiuWWVKjfglFNaWkpnZyeDg4PcvXv3zBgAjsLGxsYu4SbTqDX1ZNjiJdq6u7sZHx8HtFCn9fX1lNXWTiNSStbW1igpuaXW1ALD7Ybqau05k+gCqXFP3HgkAhZLespVIBDgs88+A7TCMADnzp3D7/eztbVFYy4acynSJp/Klf6sv84kerVdi8VCLCaJRKLMzMzi93cSiRjwerVWBqGQVnlT74Iipdacu6ICFhcXkVLuyrM1mUy89dZbmR1slkjHPNsAfCMuZJmAr0spvymEGAesaCEtAJ9JKX9CCNEM/JKU8svxqlc/CfweYAT+tZRyMCtXUsAYjUb6+vroi1cUGB4eZnR0lNHR0UT+wGklEokwMTFBdXUdgYDhSHHoqmxwYdLZ2YnT6WRubo62traiU7DMZjObm5tUVVW9IuhkCLWmZoDW1tbE2rm5ucmzZ894//33KS8v5+bNm6d23kopGRsbw2gsoaysLK2kbkVukFKzrHd2Hk0g3a/IUPJzJAJ+P3g8JhYXw8zMjLO2tgw00tHRz/KyIBbTqr5OTmrWfZttd3hVOCzY3ITW1j4mJ5P3lQKljI3tfDbV83771ta0stinWFQpSPKpXOnNqQ0GrTLf+vrhczTd55WVTVZX4dGjKNPT3yYaDSEErK/PEgjc4MGDCvS2sQsLUFe383d49gy+4ztgZUVry1F11HrsBcKhylW8KtW1FNt79vm8E/hy0vvfAX7nBGM8c/T09NDW1saDBw8YHx8nGAwyNzd3KuOeh4aG4mXpO3G5VLz/WeHy5csMDw9jNptpylSnzFNCd3c3Y2NjPHnyJGU52ZOi1tTMU1lZyZ07dxgYGMDtdrO4uMjo6Ch2u507d+7ke3hHYnFxEafTSUvLNc5QlOOZwOfTvEhmsyYU6sbEwwTOvS0zUj2HQgH8flhd9cQrZGrazdbWEn7/EgbDHcrL7VRUaFVjjcad8wsB0WiE5eUlSkqgu7sx8b36fp2929J5Dga1hyKz5FO5ikR2cq9mZjTFOdW8NJvTm7/Jz93djTx4MI3X+wn19ZrBVgjBJ59MEQw+oaqqnXfeaaSkpJRvfUtw/rxW9W9+3kUgIJicXMDn8xVcqN9RKK5mTAWCyWTCZDLR2dnJzMxMIsl0cXHx1ChXUkpevnzJ1tYWr732GsvL5lMZviKEmAbcQBSISClvCyF+Hvg+IARMAD8mpXTlbZB5wOFwcO7cOUZGRnA4HClzCs8qJSUlXL58mfv37+NyuU6t5ayYEEJgt9u5dOkST58+TYRee71e/H7/qckxmZ+fZ3JyksuXL+NyVZ3KNfUs43aT+J94PFBbq7Xd2Ctg7hU208NOVVUvY2NjVFTA22+/jdFo5PHjTdbWBlhefoDZbKO+vhubLYLVWsbW1vKuIhUATU2V1NRktgWMyaR5OhSZRe9dtrmZfi/Lkypje8MC9aa+nZ2ZuZZYDKzWEq5fv8OjRw/o779EdXUdkQi0tnZQVjbG06ez/Nf/OosQWhjg7/yOdqxuoPfFg+K7urpONqg8opSrPNLZ2UlnfEZ/8MEHpyoeemJigpWVFV5//XUsFgtuN3R0HP17CsTTdeRmrsVATU0Nra2tPHr0iI6ODgKBAFVVVSk7r581otEo0Wg00UZBcTpwOByJXJORkZF43tLpaD7s8XgYHx+ns7OTmppa5uePt6YqsofbrYUwgeY5Ki3VQvN0dAHzuOFURmMLnZ21RKMxFhdNccG7mqamN5mdfcLkpI/V1UHW1iTB4O5eW42N5/B4NrFYrjA0tDOeg57T+YweFlgEy37OMRq1cMvNzfT7X0q5v+KVzraVFXjxQvNEBgKaQhMIwNDQjpdKfxxl/urj2jmXnaame7jdWihtJKKdq6mpl6amTsrLg5hMMXy+AEJM0t19mYUFO1evCmprtcl3WkO7QSlXBUNtbS1zc3MF0fwsHYLBIPX19ZSUlBCJaImJyTeZ00yazVyLgvb2durq6njy5AmhUAiXywVoZXwBXr58idVqpa2tDcsZasYzOztLeXl50TQBP4vU1tayuLhIJBI5FY2H3W43RqORjo4O/H5N0DnqsFUea3bZ3tY8OBsb2uP3f1+77yULpCaTJjQnP+uPVF6IvdssFuuu91Yr1NVZeO2114hGNeVuagq6uiI4HAYMBkNSCF9b/HlnzMcJA9x77PKy8lxlA4Ph6AaUVMr7QcrY3m1NTZpiFQ5rhVnW1zVv7MrKThVBPZ9wv3lsMmlrk9G486x/zmDQnpNfGwzaOYWAnh4IBs10d5uxWOD5cwfXr9cTDmufqa093UqVjlKuCoSenh5WV1fZ2tp6pUN7IdLU1MTAwAAGg4H6+n7KykSheKGOynGbuZ6qJq0nobS0lNdffx0pJSsrKwwNDdHc3Jxo2mez2VhaWqK5uZmOjo5Tr5Do16nHiStOJzU1NYDmZdebuxcytbW1iVy/urpLlJerhKtC48IFTSiNxeDiRWhu1pSfZOt9NKq9j0Z3XuuC416BUxdCpdxprprscdCLVtTVad9lNkNDg+YJqKw0UVaW37+HIvckK+THIVUKtdcL58/zSrPyVHN5v/kdCOy/PxrV5rgu2qYqxe5yaS0OzsotVylXBYJu9V9bWzsVylV1dTW3b9/m2bNnxGLb1NQU/pj34bjNXE9tk9bjoCtMTU1NmEwm3G43tbW19Pf3Yzab2dra4uXLl6ytrWE0Grl48eKpCcfaSyQSIRAIFHWvr7PE0tLSqVCuzGYzr7/+Oi9fvmR2dpGLFzvzPSTFHpKjM+rqNOUq3YgN3SNwkJCqv45Edl7X1R2tz5VCcVT2K8euK/+ZcPwnz9fk+ZusXNXWnvw8hYJSrgoEb7wjYTb762QarUywmdXVLTo7T6dydYJmrkVLXV1dIixQp6KigqtXr7K5ucnMzAyjo6OEw2EaGhpobm4+Vd4sveCM2+1OeD8Up5fTlMtqsViw2ezMzLhUMYsC56j9gYTYEVaPg1KuFNkiualwttgbbprsuYpGNe/ZKcmKSYvTI/GccfTGmHsr/xQ6FouNYDByKvOthBB2IUS5/hqtmeuLpGau339AM1fFHmw2Gy0tLfT19bGxsYHb7WZ8fJypqSlOk37q8XiQUlJZWZnvoSgywNLSUr6HcCQMBhtChDEd0/R5VsJqCp1sNF89CKVcKbJFvuayvlZtbUFZ2fFDHQuRM3Qppxvdsr+wsJDnkRwNh6OZQGAx0ZH7lNEA3BdCPAM+B35bSvlN4J8B5Whhgk+FEP9XPgd52qitreXevXvcu3ePjo4O5ubm+OCDD1hdXSUcDhOJRPI9xH0Jh8MMDg5SW1ubrQbCihyie630yIDTgNVahxBBNjc38z0UxQEo5UpxVsjHXE5+vbkJZ82WqcICCwTdsn/a8lSMxmqamxt48uQJV65cOTX9ZODozVwVR6erq4uOjg4+/PDDeGNMjbfffhvTcU3zWUJKydjYGGazmd7e3nwPR5EBdK+V9RR14/X7zVy6dJ6hoSH6+/upPUuJCGeIfCpXkFvlSilyZ5t8z+WtLThrNcGU56oACIfDiaaXN27cyPNojobbDRcvnqO6upqHDx8Sy+UvVHEqMBgM3LhxY1eD7EKbJ1JK7t+/z/r6OpcuXSo4xU9xNKSUiSiAixcvnpr/p5Rac9r29louXrzIixcv2NrayvewFClQnqviQggxLYR4Ho9meRjf9kNCiEEhREwIcTvfYzwu+ZzLPp9WcfMUdMs4Ekq5yjPLy8s8ePAAIQRvv/32qbKwhkJaIqLNJuju7sZisbC2tnb4gagbQ7FRUVFBe3s7ly9fBig4YTcYDBKNRrl8+fKp8x4rduPxeHj8+DErKyvcuXPnVDW99nqhpERvLlpFc3Mzi4uL+R5WXilUoVaI/CpXirzwBSnldSmlPudeAH8c+DCPYzox+VSu3O6zFxIIKiwwr0QiEV6+fMmlS5deqb52GnC7SVS0MhgMlJSUnKrCBYrco1ffm52dpbOzM7+DScJisWC1Wpmbm8Nut5+phsjFxujoKGazmStXrpy6PmXJaypoPeY8Hk/+BlQ4fEFKmWy504XaX8zTeJTnSoGU8iWc/qa3SrnKPMpzlUdMJhONjY0MDg7y/vvvEz1lLdD3CgJWqxWfTxXXU+yPfhOamZnJ80h2o4cuRqPRRHNkxemkvb2djY0NPvjgg1MXUrd3TbVYLEdaU4tF4JZSvpRSjuRzDMWmXJ1y/SETSOBbQohHQoiv5HswmSRfXtiVFc1Tb7fn7ty5QilXeeZcUmH/jz766FQpWLog4Ha7efnyJcFgsKArwSkKh6qqqnwP4RVKSkooKytTVdpOOckFIJ48eYLb7c7jaNJHSi0ssKwMotEoL1++xOVyqTX1BEKtEOIrQoiHQoiHq6urGR1UsSlXCt6SUt4Evgf4S0KId9M9MJvzMBPkay7PzmqNuM8iSrnKM2azmXv37nHz5k2Agg+rk1IyPT3NJ598jtfroqREKx+/vLxMIBCgq6sr7e9SlrDiZWNjoyDnekVFBaFQqCDHpkife/fu8e67muwTCoXyPJrDWV9f5+OPH+D1zmE0gt/vZ3l5mcXFRS5dupTv4eWbYwu1UsqvSSlvSylvZzr0PheNV5NRylV+kVI6488rwDeAu0c4NmvzMBPkS7laWDh7VQJ10sq5EkJMA24gCkSklLeFED8E/AxwAbgrpXyY7rEnH/bZQ+8TNTQ0xNWrV3N6binloTHDo6OjrK+vJwRPo7GS5eWnvHzZwMrKCvX19Vy4cOHUxx4rso/JZCISiRCNRguusEVtbS2zs7NMT0/T2dmZtfms1tTso0cBPH/+nDfffDOneXTprKmLi4s4nc6EZy0ctuH3TzAy4mNjYwOTycSbb76Z6IFYrCQLtUIIXajNewGBfJevVspV7hBC2AGDlNIdf/1F4GfzPKyMYTBALh3kem+rcBhOUb2hI3EUyeYkCaV7j1Xsoaamhtu3b/Pw4UNCoVDOBIHFxUVGRkYoKysjFAphNptpa2ujrq4uUZ5a59y5cwQCAVpaWlhashKNPiEUClFfX09fX59SrBSHooeOlpeXF5xiBVru1eXLlxkYGCAYDHL+/Plsnk6tqVnEbDbz1ltv8fnnn7O5uUlDQ0NOzuvz+fj8888pLS0lFoshhKC5uZmGhgYsFgsPHz5MNDWur6+nrKyMuro6Vler8PvHCAYDWCwWLly4cCzF6iwtw4Us1KqwwKKiAfhGXMYxAV+XUn5TCPHHgH8K1AG/LYR4KqX8Q3kc57HIhxd2bg5aWnJ3zlxzbOnmrFRJKSTKysqorq5mdnaWnp7s97F1uVyMjGg5wT09PWxubjIzM8PCwgLDw8OAlofS399PZWXlrv+11wtvvHGbU1Q5XpFHpJQ4nU6mp6dpb28vqEqBeykpKeHy5ct8/vnntLe3Y7PZcnJetaZmHrPZTHd3N5OTkzlRriKRCJ9//jkA/f39BINBRkZGWFpaYnp6OtHfrb+/n/r6egwGA0IIYjGYmYGrV/swGrM+zNNEwQq1uVauQJVizxdSykngWort30ALETzV5MNQsLkJfX25O2euSVe50hNKJfCLUsqvHeEcJzm2qIjFYmxsbOQkDCQSiTA6OkpHR0ci/KmysjKRMzU+Ps78/DyvvfbaK8JeMKgt8kqxUqTL6uoqY2Nj3LlzB/spKA1ks9koKSlJhOtmAbWm5gin00kwGMzJuSYmJnA4HFy/fj2xjutK3fb2No8fP04Zouj1QmkpSrHaQyELtcpzpTgr5Hou+/2aHHlWi1lA+srVW1JKpxCiHvh9IcSwlDLdmOe0jo1XAfoKaKV0ixE98bqtrS2r53G5XLx48YJIJEJ9fX1KS3lPT8++3rO95YIVisPQ+1s9ePCA3t5eWk5BPEBJSQl+v5+KiopsfL1aU3OE2+2msbExq+eIRCI8evQIv99PW1tbSgOZw+Hg3r17+4xRramnjWJSrpQid7bJ9VxeXdWqop7ldNK0Lu2EVVLSOrbQq6nkAqPRiMViSVndanl5GZfLlZHz6AUF2trajhXylAlBQC3WxYXRaKS3txeAsbExNjY28jyi3YTD4UTJa7fbzfvvv4/L5cqaF1mtqbmjtrY25f/R4/GwsLCQkXMIIfD7/ZSUlBxLkVXK1emjmJQrxdkm13O5vh7eeit358sHh3quTpJQWsjJqIVIKBQiFArtCkX68MMPE3H6AK2trXR3d59I6NPLTNfU1Bwrv8PtPtvuXEV2aGlpobGxkY8++gifz0d1dXVexxOJRPD5fLhcLiYnJwF44403WFxcBLQCLtlQStSamjtisRhra2tYLBb64gH+Y2Nju5Squbk5bt68eaIiQvp6XFtbi9lsPuIYwefTLLmK00O+Gq/ufa1QnJRcKlfRKHg8cISuPaeSdMICj5RQKoRoBn5JSvnl/Y7NxoWcBfS8AN2CPjExkVCsSktL8fv9zM/PMz8/z1tvvXXkm7jO8vIyAJWVlUc+NhDQFnaVb6U4DgaDgYaGBsbHx6mrq8OapYmk92OzWCwYDAaqqqoSr7e2tlhcXGRpaSnx+ebmZrxeL59++ikA58+fz2YomVpTc4Rejl1fR1dXV1/xVgUCAT755BNu376N3W4/lsHJ7/cD0NTUdORjPR6w2TITIqME7txhMkEoBGNjYLdryrHdnr28OVWKXZEtcmko2N7O7u+kUDhUuTpqQmk8ZOXLBx2rSE11dTUXLlxgZGQkYUl//fXXKSkpATSBcXl5meHhYT7++GPefvttotHovgKqlBIpJQaDAa/Xy/T0NCaTicXFRTo6Oo41RhW+ojgJQgguXLhAJBLB6XQeqen0URgfH2dhYYHa2lrW1rSK5SaTCavVitfrxWq10tXVtSs/JhKJEA6HsVgsGLO48qs1NXeYzWbefPNNPvvsM95//30Auru7E6F7Ukr8fj9Pnz7l4cOHXL58mfLyciwWy75KVjQaxWg0EgqFmJubIxKJsLi4iBAib2HWitxjNsOVK1oxEo8Hlpa01waD9v+srtaeM7WU5NtzpSoUnl1y6bna2oJj2PVPHYXXaKbIqaurIxqNMjo6Snd3d0KxAk0wbWxspLGxkffffz/Rg6qurg6bzYbb7aa7uzvR7HevhdZut+P1erHb7cdOcHe74aj5/fpNIPlmEI2qxbqY2draSngVMo3L5cLpdNLf309jYyNCCKLRKD6fj0ePHtHS0pLI/0rGZDIVZO8txcmwWCxcuXKFZ8+eUVZWtqtgkK4Qvfnmm4yOjvLixYvEMR0dHSwtLdHZ2Uk0GmVzcxO3243H40kcX1lZmciFTVVZNR3c7uP1e9m7ripPRu4xmbT7oX5PlFJTtLxeLWl/agpKSjQlq7xc824dV9lKnlrq3qnIJLlSrqTUlKtiSCtRkkSBYTAYaG5upvmQ2Xf37l2cTidmsxmXy4Xb7U6U+tVDYNra2qisrGR6eppLly5hMplYXl6msrLy2JZ5r1frTzA/r70/6Aaf/Fq/GSQ/56hPsqLAkFISiUQSFQQzyfz8POPj45hMpl0hWkajkfLyct55552seqUUhUlVVdW+lfp0enp6iEajVFdXs7KywsbGBn6/n9HR0UTIdnNzM+fOnWN6eprW1lZqa2tZXV3FaDTuMoQdBa8XJiZ21sZUa2iq9TXVmiqEJvAr8oMQO4pUY6P2//J6NQV6aUlTvEpLNWVMV7bSDQfNt+dKcXbJlXLl9Woe32KQ/dQyfEqx2WyJUunJIX5SSmKxGEKIRLhTshB70hLYly696nVKdZNPflYo9lJWVpYorKKzvr7O6uoq58+fP/H3X79+PeV2pVgp9sNgMHDhwgWAVxoOSymJRqMJz2ZVVVViX319/YnOe/36jmBz2Fqq1tTThRCaAlVWBk1NO8rW9jYsLmqFTGw2TdGy28Hh2P9/rJQrRbYwGHIzn4olJBCUcnXmEEJkVYA0GM52bwJF9gkGg3g8HkpLS4Edb5PO0tISV69ePVY1wfX1dYBT0ahYcXoQQmQtZNRoPPvJ3QqNZGULNKXa44H1ddjY0AyX5eWaZ8vh0Kz8yccq5UqRDXLluXK5oLMz++cpBJRypVAocope5TISifDw4UM8Hg8Oh4PKykr8fj+rq6sMDAzQ3t5Od3d3Wt+p58Fsbm7S0NBwrNwXhUKhyCUGg6ZEORza+1BI82ptbcHcnBY+VVoKtbVa7pZSrhTZQlewsmU8DwY140Gx2D2VcqVQKHKK0WjkjTfe4PPPPycajeJwOLh582ZifzQaxel0MjExwdraGpWVlbS3t+N2u6mpqSEUCiUUMz38Nbk4RqpiFQqFQlHoWCyaIlVbqylPPp/m1ZqbA79fy3UuKdE8X0q5UmSS4yhXUu48YrGDn7e2jl4M7TSjlCuFQpFzrFYr77zzDl6vNxEeqGM0GmltbWVzc5ONjQ18Ph9OpzPl90gpKS0tpaenh5GREfr7+1XFP4VCceoRQrPy65b+SASqqmB2FpxO7XUkoilk+xU+SafgVDqfjUS0nDHF2SUS0QrrGI3pK0xSasqYEOk9F9McKkgp5NGjR2tCiJkcnrIWWMvh+fJNoV/v8ZpwKU4d++VGCSG4evXqrm1SSnw+H+vr69TV1b2ilL322mtZG+dpR62pWec0XK9aV08xJhN0d2sPPVcrEtH2pSp4km5xlHSPSc7/Upw9Ll/WPKXpKErJrxWpKUjlSkpZl8vzCSEeSilv5/Kc+aTYrldxNhBCYLfbVbGKY6DW1OxSbNeryC96rpZCkSmsVu2hyAyq7ptCoVAoFAqFQqFQZAClXCkUCoVCoVAoFApFBlDKlcbX8j2AHFNs16tQKHJLsa0xxXa9CoVCodgHpVwBUsqiujEW2/UqFIrcUmxrTLFdr0KhUCj2R0jVLEGhODFCiFUgl9XYMsVpqHJ2FHJ1PR25LhKhUCiOTx7W6LOwth50DWoNPAYFJisU8hzN5dgyPpeVcqVQFDFnrcrZWbsehUJxOjkLa9FZuAbF/hTy/7eQx5YORRUWKIT410KIFSHEi6RtPy+EGBZCDAghviGEqMzjEDNOqmtO2vfXhRBSCFGbj7EpFIrTT7Gtq2pNVSgUCsVBFJVyBfwy8KU9234fuCylvAqMAj+V60FlmV/m1WtGCNEGfDcwm+sBKRSKM8UvU1zr6i+j1lSFQqFQ7ENRKVdSyg+BjT3bviWljPc55zOgNecDyyKprjnOLwB/A1BxocXNWUvEP2vXU/AU27qq1lRFmpyFtegsXINifwr5/1vIYzuUolKu0uDHgd/N9yCyjRDi+4EFKeWzfI9FkV/OWpWzs3Y9Z4Qzv66qNVWxl7OwFp2Fa1DsTyH/fwt5bOlgyvcACgUhxFeBCPCr+R5LNhFC2ICvAl/M91gUCsXZphjWVbWmKhQKhSIZ5bkChBA/Cnwv8MPy7JdPPAd0Ac+EENNo4TqPhRCNeR2VQqE4UxTRuqrWVIVCoVAkKHrlSgjxJeBvAt8vpfTlezzZRkr5XEpZL6XslFJ2AvPATSnlUp6HpsgiZ7Gim6raVrgU07qq1tTi4iRrqRBiWgjxXAjxVAjxMGeDfnUcqa7hZ4QQC/GxPRVCfHmfY78khBgRQowLIf5W7katOAmFLAOcxXt5USlXQoh/B3wK9Ash5oUQ/wPwz4By4PfjC8r/lddBZph9rllRfPwyZ6+i2y+jqrblnWJbV9WaWvT8MidbS78gpbye5x4+v0yKtRP4hfjYrkspf2fvTiGEEfjnwPcAF4E/LYS4mNWRKjLFL1O4MsAvc8bu5UWVcyWl/NMpNv+rnA8kh+xzzcn7O3M0FEUekVJ+KITo3LPtW0lvPwN+MKeDOiGprimOXrXtP+d2RMVJsa2rak0tbs7CWnrA2nkYd4FxKeUkgBDi14A/AgxlcHiKLFDI8/Ys3suLynOlUCj25UxUdFNV2xQKRZ45aC2VwLeEEI+EEF/J4ZjS5SfjIWL/WghRlWJ/CzCX9H4+vk1x+ikoGeC038uVcqVQFDlnpaJbUtW2v5PvsSgUiuIjjbX0LSnlTbSwur8khHg3Z4M7nH+BVpzlOrAI/OMUnxEptp3lYjVFQaHJAGfhXq6UK4WiiDljFd1U1TaFQpEX0llLpZTO+PMK8A20MLuCQEq5LKWMSiljwL8k9djmgbak962AMxfjU2SHApUBTv29vKhyrhQKxQ5JFd3eOwsV3aSUz4F6/X18Ub4tpVzL26AUCsWZJ521VAhhBwxSSnf89ReBn83hMA9ECNEkpVyMv/1jwCuV24AHQK8QogtYAP4U8GdyNERFhilUGeAs3MuV50qhKALOYkU3VbVNoVDkmqOspUKIZiGEXnWvAbgvhHgGfA78tpTym3m4hP2u4R/Fy8QPAF8A/mr8s4lrkFJGgJ8Efg94Cfx7KeVgPq5BcTQKWQY4i/dyUTheQIVCoVAoFAqFQqE4vSjPlUKhUCgUCoVCoVBkAKVcKRQKhUKhUCgUCkUGUMqVQqFQKBQKhUKhUGQApVwpFAqFQqFQKBQKRQZQypVCoVAoFAqFQqFQZAClXCkUCoVCoVAoFApFBlDKlUKhUCgUCoVCoVBkAKVcKRQKhUKhUCgUCkUGUMqVQqFQKBQKhUKhUGQApVwdASHEzwghfuWA/YNCiHu5G5FCoVCcXtSaqjgtqLmqOA2oeVoYFK1yJYT480KI50IInxBiSQjxL4QQlSf5TinlJSnl+/HvP3CCpxjP50KIXiFEtxDicdJ2qxDiXwkhZoQQbiHEEyHE9yTt7xRCSCGEJ+nxt5P2Vwoh/o0QYiX++Jk9570uhPhICLElhJgXQvydPfv/shBiSgixLYR4KIR4++h/GYVCcdY5K2tq/DM2IcT/VwixFl8bP0zaJ4QQPyeEWI8//pEQQqQ4/3vxtfnvJ227J4SI7Vmvf/SIfxbFCVFzNbFf3f8LmCKap18QQvxBfPt0ivP+gRBiNT4Pnwkh/kjSviYhxG8KIZzx9bbzSH+QLFGUypUQ4q8BPwf8v4EK4HWgA/h9IYRln2NMWRyPOX7+ceAW8DhptwmYA96Lj/VvA/8+xQSqlFKWxR9/L2n7LwA2oBO4C/xZIcSPJe3/OvAhUB0/x/9LCPH98XG9BvxD4Afj5/5XwDeEEMaTXrNCoTg7nME19Wtoa+KF+PNfTdr3FeCPAteAq8D3An8xxfn/T+DbKYbnTFqry6SU/+Z4V6k4Dmqu7pqr6v5foBTZPPUC/xrtWlPxPwNNUkoH2pz+FSFEU3xfDPgm8APHvbasIKUsqgfgADzAn9izvQxYAX48/v5ngP8I/AqwDfyFpG2/DrjRJte1pO+YBr4L+BIQAsLxcz07ZEw3gD+Iv/454H885PMDwA/EX3cCEjDt89k14E7S+/8V+CjpvQ+4mPT+PwA/FX/9J4HPk/bZ4+dqyvf/UT3UQz0K43EG19T++Pgc+3z2E+ArSe//B+CzPZ/5W8A/An4Z+PtJ2+8B8/n+nxXrQ83V3XNV3f8L81Fs8zTpmO8Cpg/5zF0gANzds90Un5+d+f7/SSmL0nP1JlAC/KfkjVJKD/C7wHcnbf4jaJO0EvjVpG3/AU3z/jrw/8Q1+uTv+ibwvwG/LjXL5LVUAxFC/JgQwgV8DLwRf/3XgJ8TQriEEF0pjmkA+oDBPbtm4m79/1sIUbv3sD2vLye9/yfAnxNCmIUQ/cAbwH+N7/tdwCiEeC1urfpx4CmwlOp6FApFUXLW1tTXgBng78ZDWJ4LIZKtopeAZ0nvn8W36d/XgbZW/myqMQL1QojleLjVLwgh7Pt8TpF51FxNmquo+3+hUmzz9FCEEL8lhAigRQO8Dzw8yvG5phiVq1pgTUoZSbFvMb5f51Mp5f8jpYxJKf3xbY+klP9RShkG/g+0H8DrxxmIlPL/llJWAo/i33EVeIGm3VdKKaeSPx//cfwq8G+klMPxzWvAHTR37S2gnJ0fGGju0r8lhCgXQvSgLZC2pP2/heb29wPDwL+SUj6I73MDvwHcB4LAT6NZweRxrleRO4RKalXkjrO2praiGaC2gGbgJ4F/I4S4EN9fFt+nswWUCZHIZfn/AH87LgjtZRi4DjQB34G2Zv8fx7lWxbFQc3X3XFX3/8Kk2OZpOuP4XjT59svA70kpY8e5nlxRjMrVGlC7T2xqU3y/zlyKzyS2xf+582iT5UgIIarjWv8WmpXifWAEzX26KYT4K3s+bwD+f2hu3J9MGoNHSvlQShmRUi7H931RCOGIf+R/Qls4x4D/DPy7+JgRQlSjKV8/i/bjawP+kBDif4wf+xfQlLFLgAX4EeC3hBBHvl7F8RHFk9QqxMHJ151CS2z1CSGGhRDflbTvDwsh7sd/U0tCiH8phCg/5p9HcTTO1JqKtl6G0cL5QlLKD4A/AL4Y3+9BC9vRcQAeKaUUQnwfUC6l/PVUY5RSLkkph+KC0BTwN9CEW0VuUHN1Z66q+3/hUmzzNC2klGEp5e+izdPvP+r15JJiVK4+RbPC/PHkjUILzfge4L8lbU5loWlLOsaAppE7U3zuQOuOlHIjbg34i8AvxV9/E/i+uDXgnySdR6AlkzagxbCGD/pq/bCk8/ywlLJRSnkJ7X/+efwz3UBUSvlv48rZPPBraJYB0JJg/4uUcjQuDHwTzWry5kHXpsgcoriSWg9Lvv53wBOgBvgq8B+FEHXxfRXA30e7gVxA+13+/EmuVZE2Z21NHTjoPGihLskhNNfYCX/5TuB2XMFfQstb+StCiP+837DZHbatyC5qru7MVXX/L1yKbZ4eFRNwLsPfmVGKTrmSUm4Bfxf4p0KILwkt1rgTLT51Hk3rPohbQog/Hhdg/wraD+CzFJ9bBjrjE/vA72NHQL2B5nrdy79AExi/L8ntC2gVfYQQ/UIIgxCiBi0k5f34dSKEOCeEqBFCGONehK+gCaEAo9pHxJ+JH9+IJgzoMdoPgD8c91AIIcR3o8XRvjjkmhQZIO59/LvAX5ZSfjNutZkG/gSagvMj8c/9jBDiPwohfkUIsQ38+fhXlAghfj3uRXoshLiW9N3TQojvEkJ8Ca3IyZ8UWlno5Pj8VFwGhuKhIbdJUq6klF4p5c9IKafjN+PfAqbQ5jhCi+n/frTQklUpZVRKmTzffxT4x1LKeSnlAvCP9WsRQvQBN4GfllL6pZS/ATwnXiFISvn1+N/IJ6XcBP4l8Fa6f2vF8Tlraypa9bRZ4KeEECYhxFtohSh+L77/3wL/ixCiJW7F/2tohStAMyj0oYX+XQd+E20u/hgkSrG3x9fTNrRqbPspXooMo+bqrrmq7v8FSrHN0/j8KwHM2ltRohuPhRDnhRDfI4Qojf8dfgR4F/hA//L4sdb4W2v8fX6RBVBVIx8PtKo5L9DclcvALwJVSft/BviVPcf8DLursDwBbibtnwa+K/66Bi1WeRN4fMA4/jtazlQNMJFifweadSGA5uLXHz8c3/+n0QRYL5pV6d8CjUnH/wk0i4UPLRn1D+35/u9AW0S30BJV/yVgi+8TaCEDs/HrfQn82Xz/74rlgVbNJ0KKSpDAvwH+XdK8DKN5fQxAadK2H0RbsP56fJ6YU8zVV+Z6ivP9GOCKz6NA/HUkPi9cQFeKYxrinz0ff//n0BSiX0ALa3hOvJpQfP8W8FrS+9uAO/76jwEv93z/PwP+6T7j/SfAr+X7f1hMD87Imhr/zCU067EXGAL+WNI+gVYJcCP++EeA2Gcsv8zuaoH/C7AQ/x3NAf8ULYww7/+/YnqouZrYr+7/Bfwoonl6L3588uP9+L4LaEUsdFnjQfKx8c/sPVbm+38n4gNTKBQFRtxC879LKRtT7PuHwC0p5XcLrTH0d0gp303a/zPAl6SUr8ffG9CEuj8hpfxIaI36/oKU8r/GP9sjpfyRNMb0EfCX0W7UvwnckCkWkXj44O+iLcR/Mb7tfwX+AZpF7n9Dq0z122itAl4KIaLAJRlPghVC9KJZVw1oXrq/pF9PfP8/AFqklH9+z7m/G/j3aIra6GHXpFAoFAqFQpEpii4sUKE4RRRbUuu+ydcp9un73XvO/Tpa6dkfVIqVQqFQKBSKXKOUK4WicCm2pNaDkq8HgW6xuwJg8n6EEDfQvGk/LqVM/tsoFAqFQqFQ5ASlXCkUBYossqRWDki+jnuhngI/HU92/WNoFQV/A0AIcRlN4fvLUsr/csh1KBQKhUKhUGQFpVwpFAWMlPIfoVXz+9+BbbTEzjngO6WUwUMO/89o1Z82gT8L/HGZuoz/f4g/r4ukvlUpuAU8FlpVyqjUqvIlEEJ0oHm3rgNL8eqDHiHED8evJYzWOf7LaAnU/xL4c3Kn0eAvAv8FrdDFC7R8rF9MOsWfQitysYlWZe0HpZSr8X1/DagD/lXSeQdRKBQKhUKhyCEFXdCitrZWdnZ25nsYihzx6NGjNSll3eGfVCgUhYBaozOLWgOPhpp/p4OzPq/VPCwu0pnPWWs2mgk6Ozt5+PBhvoehyBFCiJl8j0GhUKSPWqMzi1oDj4aaf6eDsz6v1TwsLtKZzyosUKFQKBQKhUKhUCgygFKuFAqFQqFQKBQKhSIDKOVKoVAoFAqFQqFQKDJAQedc7UcsBjPxiEchwGDQHpl4XShIqT1isd3PVqs2VoVCoVAcTiwGgcCra+n6OkSj2nuzGRwObTsc//mox9jt0NiYuWtVvEogAJFI6vt98nMhkkoGSH7WX7vdO3M8FoOqqh155qRz+qhzvbYWKioyc/2nHZcLNjYyL6cW0nxNNScNBrBY8j2y/HIqlatQSFtMWltTLzThcOrtB73Wn486wfVtUmo/JNh5LcTOZ6xWKC3V9uvb9huDrljtPV8oBN3dUFmZpz+8YheqQpDirFfBOgvMzWn3C5NpZ00Nh2FiQltLpYRgEPr6tM/rgstBz/oj3c+neg6FNMFLKVfZZWxMU54htQyg3/ePcr9P9drt1pS4YFBTdITQ5lxpqfacPG8OUpT2yiMHnV9/npzUzmGxgNerzW9dwTnKvDzpnHa5wONRypXO9jYYjVBW9ur/WTfsHEVOPUg+TPd1IAA+n/YdoZA2X4xG7TNGI9hs2rOunO83X/fKzMkOikgEbtzI39+9EDiVypWU2kJSXZ357z6uUub1wuKiZjEKhWB2FsrLtR+Qrux1dmrP+nmMRu06zGbttdmsPUwm7X3yIxaDqSntOxWFgaoQpDjNVbCEENOAG4gCESnl7aR9fx34eaBOSrmWnxFmhsVF6OnRvES60BCLaev0tWuaMDw2Bu3tuR2Xz6cpV4rsEQhoz+fPH/y5dBSdg15Ho9ocqqiAlRXw+7X7eCCgbauq2hGKdSHWZHr1kSwL6NsMht2yQPJ7XamJRqG5WZMPJiagpiY/Rljde6bQ0L3TNTWZ/97jKGWxGKytaWtfSQksL2tz1WzW9vl82lgrKnY+r8+35Plpsex+nzwnXS41B+AUK1fZcovqmrfReLTjgkFtYl6+vLOgXr6s7fN6NWXrwoXdx+iWi2h055H8Xn+tK2u6QqZQKBQZ4gt7lSchRBvw3cBsfoaUOTY2YH5eEzRXVnbW1lBIs/aDtq7Ozu4Yt7q6Civs5iySK8V+a0sL9zx8PCe/t66uavf8+XlNyamp0bymFgs0NOx8Ltlrkeq+r7/XvWAHfRa0cc/NaddaUQELC5oXrapKe6Rz/YrsoHt2Mk2yR/OohMNaJFV9vbbulZZCXTz2YmpKm0PJjgt9vh4mr4bDmuw7OAjXr2fkMk81WVGusr1wZlO5Oi4Gw85it1cJ2k8p0jV9PWThIAYH4eLFzIxVoVAoDuAXgL8B/Od8D+SkOJ3Q0vKq50Jfky9e1ATYUEiz/I+OaspVLkjOXSlSsq7Yb2/vCI7ZRo8wiUZ3hN5U9349XDAT6IKvHslTXq4JuGVl2naXSylXB1GssmpyBFWygrb3PezM13TmrM+nzb+WlsyN97SSzRIOX5BSXt8zWTOycBbihNUXVkhvwh4Fj0ezRLW1nWyMCkWhEYvFWFhYIKbiCPKBBL4lhHgkhPgKgBDi+4EFKeWz/A4tMywuakrTXnTLr9mshceUlGjhO4WWLF6E6Ir9iVXPWEy7d+YqlD45jzpZucpmoSxd8NVzusvKNM9DZeVOrleuOYW/n6zKqoVUKA12K1fJhgD9/Uk8uFNTmmKVj3lXaOT6356RhbMQlavDJuxJfmCTk9qELbQfaSEihJgWQjwXQjwVQjyMb/t7QoiB+LZvCSFSiFupj1Vkl6WlJcbGxnDp1WAUueQtKeVN4HuAvySEeBf4KvB3DjpICPEVIcRDIcTD1dXVXIzzWEQiWn5BU9Or+4TY8RzpryMRFXadQ46t2Kc7/zyeneT8XJCsXOnnPOm9/yjnVvM5o5xpWfWgKKuTzNeZGa22gCJ7ylVWF85CnLCQ2nIFJ8+Vmp7OXajKGWGvJernpZRXpZTXgd/iYOHxFSuWInt4vV4ARkdHCejZ54qcIKV0xp9XgG8A7wFdwLN4uEwr8FgI0bjnuK9JKW9LKW/X5Srm6hg4nZoFf7+SwLoQqj/r4VW5pBDvYzniWIo9pD//0s23yhS60LrXc5ULBSeVsSAf8/kUUnSy6kFhgScxBmxva2GBqSIFipFs/fTeklI6hRD1wO8LIYbRFs4vHnaglPJrwNcAbt++ndJqkK0kwZOSynIFJ7MGuFw7+QCK4yGl3E56aycDISeKzGC1WgEIBAJ89tlnXLp0iUIW2M8KQgg7YJBSuuOvvwj8rJSyPukz08Dt01otcHExtddKZ69ypSz9uSNZsRdC7FXsYUexvyulXDrOOba3c2tF11MDchkWqKM8sccmq7JqISpXh6WwHHfOTE5qqSsqwkojK3+G41pE0//+wpuwkNpyBSezBkxOQkdHZsZXJLxiiQIQQvwDIcQc8MPsbx1NeWwypyUkqtBZXFzk29/+NqFQKLGturqalZWVPI6qqGgA7gshngGfA78tpfxmnseUUZaWtF6I+1EInqtiRAhhF0KU66/RBNkHUsp6KWWnlLITmAduHlexCoU05cJmy9iwD0U3ribf73MVFrif50opVwdTjLLqQSksJzEGzMyoCKtkMn4ryYVFtBCTBCG15QpOZg2YmYF33snM+IqEVyxRUsoPpZRfBb4qhPgp4CeBn0732OQPpGOtUuyPlJLJyUmcTidVVVUEAgHq6+vp6elhZWWFyclJtre3cagSV1lFSjkJXDvkM525GU3m8Xi0KoC1tft/Zq9AGg4rYTRHNADfiHuoTMDXM63Yb29rIYG5FGxTRa6osMDCJVeyaiEqV8k5V5lwBKytad9VX3/4Z4uFbPz0sr5wFuKEhdSWK9C2pVNufS8rK9r3HCQgKHaTItzkLpCsIH0d+G1SKFdpHKs4Iffv3ycajfLGG28kQgJ1WltbWVpaYnx8nAsXLhAMBikrK8NkMhEKhZiamqKpqYny8nJ8Ph92uz1PV6EodBYWoPEQW7MQOxZcITRPhxJGs08uFPvtba1qXi7ZL+cqV56r5Lmcr7DAU9ZeoChl1b05V/oc0f93x5mvU1OqmvVeMn4rycXCWYgTFnZbrpJv0se1BkxNqZDAo7CfJUoI0SulHIt/7PuB4XSPzdXYiwGv10s0GuXSpUuvKFY6FouFjY0NHj9+jNFoJBAIUFlZSSgUIhQKsbKygtVqxefzceXKFWpqanJ8FYrTwOLi4b1WUnmujmMEUxQe29u5F/aMxh2PgC6f5DssUBkL9icXsmoh1gfYL+fqJIaA2Vn4whcyM76zwqn86RWycqVbrtJpInwQsZjWdf27viuzYzzjpLRECSF+QwjRD8SAGeAnAOIl2X9JSvnl/Y7NwzWcOVwuF0+fPgVACHGgQnThwgX8fn8iLNDj8TA0NITFYuHWrVuEw2E8Hg/Ly8v4fD6lXCleIRaD5WW4e/fgz+0tXx2JaL2BcsUps/KfGmIx7W+ba0XZYNDmkC6gnsQTcFT2KleRSP7SJwpRNssXhSir6k6A5PkCx1eulpa031p1debGeBZQylUGOSjn6qiTdmlJa2xZWZnRIZ5p9rNESSl/YJ/PO4EvH3RsoRGJRJBSYj5FJvbl5WUA3nvvPcQhP1yz2bzr2srKyribJCUbjUZKSkrY3NxEKulUkYK1NU1JOqyYQSqBVOVcnX7yJR8YDJr3M9chgfq5985l5bXKP4VYH2C/9JXjFkCZmlK9rVJRYP/29ChU5eqgSXvUH5iasIpU3L9/n48//hiv18vAwAAbGxssLCywubmZ76GlxOfzsbi4SFNT06GKVbrEYjFWV1eV10qREqfz4BLsOqqgxdmkGJUrZSgoTApRVt2vqvVx5qseYaVk1Vc5lbaNQpywkLkmwrGYlpB9reD9KIpc4nQ6E68fPHgAwMbGBqB5fF5//XWMBXZH1ZW+3t7ejH3nxMQEDofjlYIW0WgUIQSGQjMVKnLK4iJcuXL45/YKpKqJ8Nkgn8pVsvU/l6XQC0W5CoVA1RnaoRBl1Uz2Y3U6oawst826TwunUrkqxCRB2D/n6qieq/l5KC/XJq1CoTM7O0ttbS3nz5/H4/FQXl7O6uoqdXV1PHnyhI8++giAjo4O2traMBVAXMjYmFZHJFMKz8zMDJubm9y4cQPQSru73W6Wl5dZWFigqamJ/v7+jJxLcfoIhbTG64dVCgTluTqr5EugNRo1pUav1ZNvz1Uu8wdBu16X6/BCMsVEISpXQryaHwjHMwZMT6uia/uRf+nrGBRiHCsc7Lk6yninp5WbVbFDLBZjdHSUQCBAR0cHJpOJyngyXmNcirxx4waB/z97fx4eWZfdZaLvjkmKUGgMzUNqSClTQw7KTH35zUNRrupyYZe7MVwM5mJseApzMdA0zeCuhjYG7sX4XuimoWlXG7fptn0x4Fu0MaZcZeCbv5wzJaWUmmcpNCsUikEx7vvHiRMZUoakkBSTpP0+j56IOHFOnB3S1jlr7bXWb+3uEo1GmZ2d5f79+zQ3N9N4WBfVDDIxMRGPoqXD2dH7Y21ubnLz5s14XZbT6WRsbAyTyURJSQkRXa5LcSFxOrXWFamsKyQzSPNgPUJxSnIZuUp0anLtXGV7ocDt1uocz1A5cMbJR+cKXk1hhePP13BYy7C6fTv94zsPnMlbSb46V/rKVbI+V6le6MJhzUA4SulKcf5xu924XC6mpqYALSJVeUDTM6PRGE+T6+npYXZ2lunpaUpKSjLekNfr9TIxMYHNZqOoqIiqqioWFhYAaGpqoi6VApgjWFpaYnNzk1u3bsUjcouLi4yPj9Pe3k5jYyPb29sMDg7i8/mwHaVmoDiXpFpvBcn7XBmNMDQ0RF1dHRVK/upMkqvMlv0Ga67TArO9ULC5CeXl2T1nvpPPztX+yNVxnavFRU1wTd1qk3Nmnat8nbDJIlfHSQucndUkLQsLMzNGRX4TCoXY2NigoKCA/v5+QOv91NramrKTIoSgqamJSCTCs2fPaGxsZGNjAyEEtbW1VFRUsLOzg8ViofwEd8NIJEIgEKCwsBCXy8XAwACVlZXs7u6yuLjIwsICFouFN998M20iFtPT04TDYT777DOsVislJSUsLy9z9erVePSuuLgYi8XC5OQk11MpulGcO5aXIdVAaaJBql+zpdTEUtxuN3fu3MFisWRusIqMkKvF1/01V9mOXCVbKNje3ubp06cpKbWehmhUi1xdupSxU5xJ8tlW3Z8GfdzFACW6djjKuUojyQoF9VW0VMc7O6sm7EVhcXGRjY0N3G43paWldHV14Xa7GRnRehwXFhby+uuvn+imaDQaaW1txe124/V6qayspLy8nIWFBSYmJuL7vfPOO8eqzZqcnGR+fh6AsrIyXC4XoEXLhBBMTEywsLBAb29vWm/m165dw+fzUVFRwczMDEII2traqKmpiZ9HCIHZbFYRhwuK260ZCKn++RPlq7W+LyEWFpwABAIB7t27x3vvvZeh0SoyRa5rrhIjV7lMCzSZXgoeDQwM0NPTk7E6XJdLqxFXabUvyVc7FV6dq3C8xYBgUOsl+MYbmRnfeeBM/ivk66RNJnF5nJTAYBDW1uCddzI3RkXuCQaDzM/Ps7S0xKVLl6ipqeHFixd8+umn8X0aGxtpb28/1XkMBkNc+EGnrKyMcDhMKBTi/v37fP7555hMJurr62k5wqt3u93Mz89TU1NDc3MzDx48ALR6L93BaWtro6mpiQK9qjtNlJWVxevMOjs7k+7jdGqGcW0qagaKc8fiYmpCFjqJBqnf72Vx8TnBoB+AmpoaVlZW2NzcVM76GSPXaoEnufeflmTO1eamk1DIA2iqrWNjY3R3d2fk/FtbKiVwP/kqvAavRlnheM7V/LxW26oyrA5GOVdpxGjUJiycrOv19DRUVYHKRDnfPH/+HLfbzd27d+O1QcXFxbhcLmpqajAYDBlN4TCZTJhMJt5//31CoRBffPEF29vb9Pf34/P56OrqYnd3l5WVFcxmM+3t7aysrDA5OQnAlStXMBqN3Lp1C5/PR2lpafyzDQZD2h2rVNjY2GBycpLOzs68k6NXZAen83jKVbpBKqVkcvIhJpNlT/pUOBxmYGAAh8NBQUEBJpOJubk5GhsbiUajdHR0nOr/VPXAzgwXsc9VYhQWJCsrLwgEVikshKKiIhwOB3Nzc7S2tmJNs4xgJAI7OyrjZj/5aqfCy7maKD4SibxUujwKJbp2NMq5SiMHyVumeoGdm4NTBisUZwAhBNXV1XtEF2w2W9ZFGIQQWCwWrl69ytjYGNFoFJvNxrNnz/bs53K5CAaDtLa2Ul9fH3deSktL9zhWuWRjY4NLly5RVVWV66EockA0qkX9j5OmIgQ4nQsMDk4gJbS2vrbHWbp06RJWqxW73c7U1BTBYJDLly+zvb3N+vo67e3tGV0EUZyMXKsFJva5ykVa4MzMODs7q/zAD7xBZaUWWpBSMjc3x/379ykvL6eoqIhQKMTKygoNDQ1Eo9ETq7q6XFrrGLWmtZd8tVNBm5eBwMkiV7u7sL4O776bufGdB86kc5Wv4daDFFhSuej4fJraTlNT5sZ3FKOjo9jtdhpUo4qMYrFYCIfDuR5GnNra2j2pdNvb2xQUFDA+Ps7GxgbBYJCrV6+mRfUvU+zu7p5InEORP3zxxRc0NDRgMpkoKiqioKCAwhTzTtbXNQns461PSGZnJ6istHL58mtYLHsti8TFg9raWqSU8YURvdZQkX/kyqhNdHBAu/dnS5Zc69MW5MMPPycYhIICB0VFhQnvCzo6OohEIhQUFPDixQtAS7FeW1tjY2ODK1eunGixYHNTSxFT7CVfVa3h1RRWSN25mp2FmprcZVjt7u7y/Plzrl+/npMsmVQ5k85Vvq4I6KHWRHvgOBO2ri53BaHRaBSn04nVaqW+vl6tyKaJjY0NpqenMRqNVFVV0dDQwNraGpcvX8710A5ENyivX79OIBDAbDanrQlwpigvL2dpaUlFrs4oKysrBAKBeNsBgIKCAjo6OigvLz8y1fM4Euw6fv8OADdv3qS/33DkdVoIgZSSiYkJamtrMRgMSClZX1+nrKws3nvtOKjLbPrJpX0gBMzOjuFySYLBKhyOIvz+aNpT8ZKdd3t7HYDXXnuLjz4yv2JLJC6a1tTUxBcLysrK2N7ePtF5w2HweiGPb2c5I1/tVEguaJGqWuDMDBxQ9pwVVlZW8Hg8bG9vU11dnbuBHMGZda7y0dbTJ+x+ectUxjozAz09GRvakejOlN/v54svvuDatWsZ7490HgmFQnz22WfY7XZMJlN8hbuhoYGJiYm4Ul8+XxQSyeeVoUQKCgrUgsAZJRgM8uLFC0pLS+no6Ig7UqOjo4yNjSGEoKWl5dDIqdMJx1HfX19fZ3JyBCk1Vc5UMgyklLx48YJQKERXVxdLS0uMjY0B0NHRoSL+eUIuM1tCIS+rq0v4fLC15WRhQYuo9vb2xu8JmUAIWFwco7m5iIICS0qGsr5YMDk5SW1tbfz66fF4KCwsTGmsW1tQUpKf9liuyWfn6qR9rnw+LQ00l5e6SEzYYHh4GJfLRXt7e14u/p5Z5yofJ+1BodajLnIej1YQ2tiY2fEdxNLSEm63m/Lycra2tgiFQkxPT3Pz5s3cDOgMo0vfmkwmorHGI5cvX6apqYnLly+zu7uL1WpVjkCa2draUosBZ4xoNMrAwEB8AeLy5cvY7fb4+729vYCmAjk6OkpBQUE8iqo3zAZNZdXlOlwpUErJ8+fP2dnZobKykqWlJSIR6OzUzpHKItjExASrq6t0dnayurrK2NgYjY2NSClZWlpSEf88IVf2gZSS7e1JKio0BdWpqQjl5ZJAYJ1nz55hNBppbm6moaEhraI74XCYzU0XUkJLS0s8NfGo+SylZGxsjEAgQGdnJxsbGwwPDxOJRGhubqa1tfXIc29twRlZJ8w6+WqnwqviK5CaczU9rTlWuciwCofDjI+P76lNX1paoqamJm9qvxNRzlUaOelqwMyMNmGz7Xzrq1aLi4uYTCaMRmO8SHt8fByPx7PH2FEcjcPhwGazYbVauXLlCuFwmLW1NUZHR6mrq1MOQIbQe2Ap8pNAIMDCwgJ+v5+GhgaGhobidYfNzc3U1dUdWF9VV1dHJBJhYGAA0GoWg8EgoDlgLlcpZWUCKbUibSm16244HOHJkwcEAgGEMMaMxg4mJsaREqqq3md6WrCzAy9eaE6a7rPpBmri4+JigO1twb17WsSrrq4Ng+ESHo+L+flFSksjGAwvb6nJPiPx0eMBvx+uXEnDL1gRJxeZLTMzM8zMzBAIQEvLFUpLSykqAocDiosdXL16lZ2dHZ49e4bX66Wzs5NIJHLiSNbGxgZzc3PxdGivN4jNVkZlZSU7O6nZR1NTU2xtbXH79m08Hg+Dg4OUlpZitVrZ3Nykubn50IhAKKRFMtQtLTn5aqdCcin2VKKds7Nw7Vpmx5YMr9fL8PAwwWCQra0t7HY7PT099Pf3Mz8/T3Fxcd5Fr5RzlWFSWRGdm4MbN7IznkQ+/fRTIpEIb7755p70LyklCwsLDA0NcfnyZaSU2O12zGYzo6OjVFdXU1JSgs/nUyIC+zCZTNy+fZv+/n5GRkbY2tqK3WiLGBwc5Nq1a4TDYcrLy/PuYnBW8fl8eDwe5VzlKS6Xi+fPn2O32wmFQvT39wNao+u33347pf+DhoYGqqqqsFgsSCnZ3Nzk+fPnPHv2jLExA0VFt+jvN2EymYlEdikstDE5+ZBgMIDVWkQg4KW2tgWbrYGGBgsWi4WFBYHXqxVn7+5qjpleNqXfXxIfr127FhMt0Lwjg0EQiURwOqfp6Gihutp04LHJHldXIZZVqEgjeh2Qx6Pdew0G7Xe+//lJCIVCbG1tEQgEaGxsZHh4mLW1NQDsdjsORxtVVdp1aP+9v7i4mN7eXh4/fszKygqgqcSGw2GKiooOzRSRUjIzM8Pa2joORxUzMzNUV9cwMTETU7q8xuysg8VFwdaWFsnVNVcOcu5HR7Vm8N///ucAlJdXUV/fTSCwy8TEfcrKvBQVFR/4GbqIjLqNJSdfhdfgZE2EPR7tJ9sZVh6Ph0ePHuFwOOjr69uTHXDz5k3u37+P0+nEZDJRUFBAcXExm5ubbGxs0NbWFg8SWLKswKGcqwxzVFqg261N2Pr67I0pGAzG0mIidHZ2vlJXI4SguLiY1dVVFhcXiUQiuN1uAMxmM9vb2/GV43fffTev+goJIWaAHSAChKWUfUKIvwP8CBAFVoE/JaVcSnLs14D/CTACvyyl/PsnGYPJZKKnp4fFxUWuX79OcbF2gyoqKmJoaAgpJSUlJUgpsVqtdHR0nOQ0CrQVrf7+fpqbm/NqHipeMjs7SzgcjhuPPp8Pm812rBQ6IUT8OiWEoLKykg8++IDNzU0+/HCA5ubHzM1p9wXdeBYCurquUl1dSyjkp6jIitEINTVVGI2aM1VaCr29MDKi9RisqUlpNPFny8trmM0huroaj50qc0bKGc8cGxtaQ2m991M0qv3sf57M4Up8vn/b7q6H2dkhotEw4XCI/v7J+Hzr6blDSUkxAwNaFHRjQ0uhMps1gSt9LFIWU1Nzm0gkQmFhCS7XOltbszidWywuPsZur6Ky8tKe8UoJa2tzrK3NIgRMTXkxmUxUV3dht1ezs7OGy1XJwIC2v9utnXtjQ/t9JP6bJTr4nZ3vYTAIQqEgkUiIwkIbwaBgZWWVoqIyLBb7K3079UeDQcu42dejXpFAPtupJ8mymprKfobV9vY2Q0NDgL64tfcXqi/MLSwsUFhYyNbWVvy9oqIivvjiC6SU1NfXcyXLKQLKucowRzlXMzOa/Hq2JmwkEuHzzz/HZDJRWVlJzQHWRFdXF52dnfHJu7S0xO7uLi2xznGRSIRHjx4RDAYzroR0Ar4kpVxPeP2LUsq/CSCE+IvA3wJ+OvEAIYQR+KfAV4AF4KEQ4rellMMnGUBhYeErioBVVVVUVVXFVrudrK6u4vF48Pv9+fg7zHv0VJaWlhbqs7k6oTgSr9fLzs4OZWVlSCkpLy+P3xgT66VOSzBYgcv1Bn/6TxvZ3naxvr7K5uYa4TB0dLxDKGRibg7CYRvhsGZQRCLa4/S0ZoQ/ewbPn2vSwmVle+W0j0rtW10NEAyWMDpqOnS/ZNt2dlRvoEwgJZSXH61olszhOmhbNApDQ4+wWAq5fv0tgsEgm5tr2O1lGI2FRKMmtra0ubS1BRUVMDm5tzGrwaD9vU2mEkwmLbpmMtXQ2FhDOOzF6RxmfX2Kzc0prFYroZAfg4FYdsgWPT1VdHV1sba2jMNREVMldgAOfD7NlvjKVzTlzKWlVBT8dKOjIPYDOzs7TE/PcudOLyUlBxtZHo+2OJGrOvGzQD7bqQf1ZD3sejQ3B7dvZ35sOvPz80xOTlJeXk5bW1vSxbiCggLeffddDAYDQoh4+nlpaSmVlZWEQiE2Nzfj0eVsopyrDOD1bvP550P09PSwvS0pLy8mHJYYjcZXJsjMDPT1ZW9sevG4rl50EEKIPWPdb7xGIhHC4XDWQ60nQUrpTnhZBMgku90FJqSUUwBCiH+JFu06kXN1GEajkcbGxnia5cOHD3ntNa2Baap9fS4ykUiElZUVpqamuHz5cl7337pISCl5+PAhoVCIUCi0571MRWcnJ6G2thCvFyyWKhoaqmhqejX6kCwycemSltpUVwcrK9DaqkWv4OiUPv15SYmdubk12tpSTwfUH3d2tPMq0ks0qtUD6bVHR6UGpurg2u2Cy5cbqa8XQAEtLa96Fg4HfPWrmnLlb/6m9ly/pEejmgGrP+59XkRNTS9O5zzRqMDj2cHn8xONgs+3RXPzbaQsZmBAEI3Ws7CwN0obCMD4OHzyidZMe2tL6z8FRy8QJD5fWXFjMlXi9Zbg9R58zPx8burEzxL5qmoNL52r8fEXRKNBurt78Pu9QAnh8Ku1gC6Xljp9mGhQOpFSMj09TWFh4ZHCaokZKwUFBXsWtc1mM36/Pyd21Zl0rvI5l1VrTDlIaWmYp0+f4nJpK6I2G7S3t9OYsNTjcmlF1NmasACDg4MUFxefWqhCy/muzsdULAl8TwghgV+SUn4bQAjx94A/CWwDX0pyXAMwn/B6AXh9/05CiG8C3wS4dOnSqQZaU1NDdXU1z5494/Hjx4BWvJ/PPbByzfr6OuPj41itVm7cuKEEQvIIn8+Hz+eLv25vb8dqtWKxWOKpselmeVkThAgENCPZaHwZIdCNTyFefc9o1Izeqipt9b2sTFM9O67o1Pq6l/JyOycJPOuGviK9FBZqjpXTeXREKpnzHQ4HCAR2MJvNTE09RQiw2YrY3ZW43cXMzx/ssPl8WoqpJoCi/ZhML+fh/rHsfTRjs7UhpVbL5HBIvF43RqMFg8GKlNpnvUwx1L6vvt1u11IBl5Y0w9nlOr7DX1BgZ3FxNv7ZiWmAOkJoDmFXV0b+fOeGfA4CGI0QDO6ytraCwQCffPIpq6vw0Ufa+/vLPbKdYeVyuYhGo1w7pXqGXgJzIweiBmfSucrnFYFQyE8kEqa1tZXt7W2s1gqEcNPSUsnw8DALCwtUVFTQ0tLCzIwlqxPW6/UC0NTUdKrPWVhYYHNzk9uxGLGWIrHJzMwMdXV1NDc3n3qsp+BtKeWSEKIa+L4QYkRK+bGU8lvAt4QQPwv8DPA/7Dsu2WXwlQhXzFn7NkBfX1+yCNixEELQ1dWFz+ejuLiYhw8f4vf7KS4u5tKlS0raOQGn08nY2BjXrl3D4XDkejhnntPUJyajqKiI9vZ25ue1NQqn00kkEqGpqQmLxYLBYDhRo93DiETga1/TjNHkEYGXrwOBve9tbGhGuM+nHX/cfzW9gbBKSc0v7HYoLk6tqXQyh+uzz+4TiUSRUvusy5e7WF5eoq6umcrKkrhjo8+jxM8oL9cc/t1dTQlydvblZ+tOUOKPlib48sds1n601wKTqRSz+eWCQOICQSLRqHbcrVvw6JEWxWprO/7vbmMjjMdTcGgNeCCg/X6VftDh5LNzZTCAyzWGw6Etgq2vu5CyiPZ2M2tra3z22WcUFRVx6dIlKisrmZsT3L2bvfFNT08DnCoIEAqFGBgYoL6+HrvdjpQSr9fL4uIiGxsb3L59O6MRrTPrXOXjpPX5fKyuPqewkLiDMT7+ckVUlxDe3NzkwYMHzM5e4stfPl30IxWklAwNDbG7uwtAWVnZiT9rdnaW5eVlbt68idlsJhwO8/nnn8ffT1y5zgW6ISilXBVCfAct3e/jhF1+A/j3vOpcLQCJXmcjkJJReVoKCwvj/+S3b99mY2ODiYkJqqurVS1WAh6Ph+bmZuVYpZdj1ycehp7uWlBQQFlZGYuLi6yurjI+Pg7AW2+9lbZU4s1NzaA8afDS4YDtbU1MyOXamyZ1FNFolOHhYYQQZ6YheD6Rbsc+kWg09T48iVFNnWvXrjIxMcHVq1dxOp24XPNcu9Z+5H0zEoE7d6CnRxNGGRzUxFJ0Eh2ygxYCEp8Hg4fvl+ho6QITJSVaqulJ/8XcbveR2QBbW5oTmY82WD6Rr3YqgNO5QCCwSVtbK42NjVRWNjI5qUXx6+rq2NjYIBwOMz09zfDwLH5/N7W1tqM/+JS43W4mJiZwu92nUv8NBoM8e/YMh8MRt8Xn5uaYnp7GbDYTCoXizYgzhXKu0sDW1haLi4usr68TCkFn5/X4e4mCFvrFubq6mhcvFhkYGMdsLgIchEIhTCZTWiIV0WiUp0+fIqXEZrNRX1/P+rpmP/X29p7YuFlbW2NxcTGuMOjz+Xjw4AF2u52+vj62trYYHBzk0qVLaS1aTxUhRBFgkFLuxJ5/Ffh5IUSHlHI8tts3gJEkhz8EOoQQrcAi8GPAH8/GuBMpLCwkEAhQUlISb0Ks0CgsLMy5837eSbE+8VASRXIaGhpoaGiIy+k+evSItrY2KisrT9zjR2dp6XQp1Xqall7Inapztb29zeTkJCaTiRs3bqiWCicnrY69zmntg5qaGqLRKKOjozQ0NFBdXc3z588RQlBXV4fZbE6a/aE7dXoUa/+0SObInYb9TtfqqrZg0NDwUinwOLjdbhYXF49ModraUkIWqZBvdirA6Ogofr+ftTUXBQU18XrlxPlqNBrjC0a1tbV85zuPMJleEA7fxGAwEI1GT33t1tnc3GRsbAyz2UxdXR1jsd4UZWVlXL9+/YijD2ZoaIji4mIaGxsRQsQdq+7ubqqrqxkYGGB6epqenp6MZQedSedKD8VnEykloVAIn8+H3W7HZDIxMjISV8UqKiqitraWaLSFkpKXocaD5C19vnra26MMDg4ihEBKSUFBAeXl5fECvM7OzpT+8FJKNjY2WFpaoqOjg/v37yOE4PLlyywtLfHs2TOqq6vp7u4+1e9gc3OTYDDI8PBwvAFoUVERd+7cAaC0tBSTycTKygptJ8lJOD01wHdivzMT8BtSyu8KIX5LCHEVbUV0ltgNWwhRjya5/nUpZVgI8TPA76FJsf+KlHIoF1/C4XDgdrt5+vQpzc3NFBcXU1paitfrJRAIYLPZCAQCRKPRC9Xbqbi4ON4fRpEWTlSfeJK6Q7vdzrvvvsvjx49ZWFjA6XTGVkwrT3xzczpP14A30bkymVK7p0xMTLC6ukpzczP19fUqbTeNpMOx1z7n9EZtXV3dHqGc0tJSdnZ2mJycZHd3l6KioleuvfpCqu7sZNrn3u+oFRdrGTJ2uxaRPc7vYWtri+HhYa5cuXJo5CoQ0MRCTlmyfSHQU0Gz7WRFIhECgQDhcJiSkhJ2dnYYHh4mGo0SCASorq6mra2dra3GeITzoPlqMBiQ8iYOxyCffvopoJUyVFRUYDQacbvddHZ2ppwNFQwGmZubQwhBeXk5AwMDXLp0iUgkEnes3njjjVOl60kp2d7eZnt7e4+90NnZGXcam5qa6O/vJxQKZUyU7Uw6V4mNF49ShEq1h8XhikJRXrwYxOXaihemtrW1sry8DGgpgK2trYC2epSIPmkT87SlhOlpwbvvNhIKCaxWKyUlJfj9fubn59nZ2WF7ezvuxB0lHPHixQtWYye+f/8+oKXfmM1mioqKeP78eVpEEq5cucLly5cxGo14PB7C4TB2uz1uYPh8PqLRaM5qEGJKf69Iy0gpf/SA/ZeArye8/l3gdzM2wBQpLS2lt7cXt9uN0+lkeno6aRTL4XAgpcTj8VyI+qyioiK8Xi9SynP/XbPEieoTT1p3aDQauXv3LtFolMnJSYaGhl5pYJ4q0aiWFngaociTOFdOp5ObN28qIZXTc1LhoSOd+0wYs3rqdklJCePj4zx//pyioiI6Ojric+GoyFWmSRaJPer34Pf7mZycZHt7m66uriMX6zY3VUpgqqyva2qmm5t7lR0zabPu7GwzOPg0/vcpLS3Bai3E7/cDWuZSWVkZfj/ENLSAvRlWiXbq6ioYDAW89lonbreboqIi7HY7TqeT9fV1dnd36e/vp6OjA5vNdqiTtb+ERK/N1RfiA4EARqPx1HVQQgjefffdeNBie3sbs9m8p35rbW2N6urqjKpdn0nnSs9thsP7UqTSwyIUOvw4v9/D+PgjrNZiGhvfAYxMTHzB5uYqdvslCgoKcbvrGRzUJvfHH2tKPTU12uulJa3I1GJ5WbTqdms9A2pqBFppj4bZbKanpycuQ+l2u1lbW8Nms8VzUC0WC16vF6PRSFFREZOTk6yurtLT00NpaSn9/f2UlJTEC8fLy8t599130/J7F0LEw8H71b+CwSBjY2M0NjYqOfE0UVJSQklJCa2traytrVFRUYHVamV7e5vBwUE2NjbY2NjA7/czMzPD+++/n+shZ5Tp6WmqqqqUY5UmTlGfeCoMBgNVVVUsLi4yPT1NfX09BQUFeL3eeGr0UeqCy8vaSv1p7o1CaNf4cDj1tECbzZbxXP0LwkmFh4507jMZKSgoKKC7u5uFhQWEEAwMDFBaWkp3dzeRiDEeuTqqv2UmOG6aayQS4eHDhzQ0NNDV1ZWS8u/WltbCQHE04TBUVmq26kEqkak+19M/D9t3aWmC9fUFamuvUlJSi8ezxdjYAKWlRZjNLZSWVjE3V8TCgmaD/sf/qMn2G42a+IoQ0NHxMiJqMsHoKLS0aJkHic5JY2MjjY2NeL1e5ufnmZiYwGq10tHRgc/no7a2lkAggNfrpbS0lHA4HF/4f//991leXmZycnKPzPpplQETSZzL+xcM1tfXcTqdvP3222k7XzLOnHO1X4b9uL0qjsv6+i7b2/Dee7fiufW3br0FJJ/oVqt28XntNe3197+v9bHSV7QiEfh3/+5lP5VkCCFoa2tjd3eX9fV1nj59CsDk5OSe/cxmM5FIhNbW1nh6zWuvvZaZX8QRrK2tIYTYIzWvSA8Wi4WGhob469LSUm7evInH46Gqqiqe0nGeCQaDLC8v8+abb+Z6KOeCU9YnnpqysjLeeOMN5ubmePLkySvvh0Ihenp6DoyCLy9rQkGn4SSRK4vFgt/vjzV2PR3ZTm3PJzLp2Gc6DctgMMQjZhaLhRcvXhAMBolGrXkRuQqHU5vPQgii0Sitra0p1Q3u7mqfrVICUyNxDuj1dplke3uDysoKbtzQw/kVwAevZE1Fo1qLALtd68NmNmtiKB6PZqsmOnS//dvwB/7AwecsKiqis7MzvtD/7NkzgHiKn76P1+vFZrNx7dq1eO1irvpTTk5OcuXKlbTVjR3EmXWuvN7Dw6XpwmY7WCElWYGqyaSFzVtatNdFRZoaVeKYpqfhz/yZo89dWFjI22+/Hc/xXl5eRgjByIhm74RCobSqb50Gn89HRUVFxiesQqO4uDi+ul9ZWYnRaMTv959bdUE9rP/FF19gs9moqqrKteT/WedY9YmZoLCwkCtXrtDW1kY4HKagoIDx8XGcTicGg4Hx8fFDnatEJbaTcFznSk/Xvnr16ulOfMHJtGOfzRoXfUW/v7+fwkIHbrcVt9uH07kDlNLWpjku2Yi2H3c+GwwGbDYbOzs7lKbQ4E1XCVSkhu6keL0Hp/ilc1pYLJakrS4SUxJ19L5oNTWawqTXqwUGErSIGBrStqVS19rU1BS3Q6SULC0tEQgEWF5exuv1UlJSEm/dk0ui0Sh+vz8rCq9n0hK227UO4YeFWU+ay7q9vc78/BhGo4Hq6nq2t9fx+WB725DSZ+krR+GwJqUaiWhFoPq4XrzQJnaq92eTyRQPx+qefk1NTVxEI1+a+JaUlDA/P68M3hygF68uLi7S3t6e6+FkBCEEt2/fJhQK4ff7GR4exmKx5Gz166xz3PrETGIymeKLMleuXOHKlSvs7u5y7949IpHIK9e4YFAr2M925MpsNmOxWPjiiy+or6+nvb1dpaiejIw69tl0roqKiujr62NjY4PR0QXW1hYxGg1YrVECgR0+/niecDjMD/zAD2R8ruhprno/rVTSAqWUyBRDqCol8Hjozazn5pLbqXqg4KT1V5OT/QSDfkwmE62tV3E6t2lpqYo3jz7s+HBYi1jpAiU+n7bN53s5xi++gONk6iUu7OoaBG1tbYRCoUODFNnEYDBQXFzM2toataeRmk2BM+dcSQnNzdDZefh+x6m/evDg43jTQP06U1bWyMzMFFJCQ0MHW1upfdb6Onz3u9Dfr21bX9fkUfUc1qdP4bQOvBAi7wqqzWazkiTOEXoIPtMXi3zAbDZjNpu5ceMGz549IxKJ0NDQoIzcc4aeAh2NRl9xrpxOrYHpaYPkx02jKiws5O7du4RCIZ4+fcr09DSXLl06VbT+Ik7bTDv2UmY/Jc/hcHDligOHQ5tPZWUBxsfHaWsriavrpruB9n6EeFk/qM/tw9BFsEwm05EiQSol8PgUF0NZ2eHtIhJT9o6yWQOBEE+efLZHhbCiooadHTf9/Y8xGi2YzbVsbBz9WfPzWmrgP/knWnaV262JA7lc2vwxmzXhuD/35073O7BYLHmRWZVItmzVM+lcpXJDOk4tVmWl5lU7HA4WFxfp6uqitLQUo1FT2DuO4eZ2a/9Mra3aKsDYmNZUUC9IdDrhy19O+ePODC6XK+8cvouAlJLNzU26u7tP1c38rGGz2ejt7WVsbIy5uTmuXLlCZWVlroelSBNra2s0NTUlNUiXl0+nEqiTGLkymzXjMRXMZjO9vb2Mj4/z4MEDbty4caH+9/KdXPUX0tUCg0EwmQpob79GQ4NkamqK9fX1jEfZhdDOnaj6dhjl5eVsbm4yNDS0px4mGSol8PikMg+TpewdhMcTwGbTUvBCoRAej4ebN9sxGo0IIY5lpzY0aM5fb68WYZue1lIAKyu16+HSkqYbEAtAnRuklLhcLq6cpodHipy5UEMmLpw9PT1Eo1EMBgNNTU2Mjo7y+eefs7i4eKwJq1/MhNBUrAoKtFWBoiItrzUY1PpQnMfWRNvb28q5yiG61OpFQnewuru7GR0dZXNzM9dDUqQBPU3poCbay8taHetpOYmghY7FYqGnp4e2tjaeP39OKBQ6/YAUaSHXzlWioMXi4iJwvAXak6JHrkym1CJXhYWF9PT08NprrxGJRHjx4gW7u7tJ91XO1fFJ9zy02+20t7ezsrJCbW0tZrOZe/fu8eDBAwKBwLE+S1ezFEJzrmw2LSppt2s2qtutKQeeNzweDyaT6UTtP45LRiJXQogZYAeIAGEpZZ8Q4u8AP4KWT70K/CldMeg4ZOLCabVauX79Ov39/djtdm7evInRaOTp06csLCxQVFQUV+M7LPUqGtVWQHWbYL9i0PQ0JGnsfuaZn5/H7/fjcDhyPZQLh57aUZNYiXrBKCsro7u7mxcvXnD79m3VCuCMI4SIS7Pvx+fTUpROu0AlpWRhYY5o9BLhsDi2c6VTW1sbb9J5/fp1lRqdB+SDc6U77GtrG9hstqykbCemBerpX6lgMBi4fv06MzMzPHr0iK6urj338vOcEnjWbNXGxsa4I9zU1ERPTw9Op5MnT57ElR/D4TDV1dWHilslzlX9tX7pika1tMEf+IH0jj3X6O2CstX8PZNpgV+SUq4nvP5FKeXfBBBC/EXgb3GCgtVMXTitVitvvPHGnm19fX14vV7W1taYnp5GSonD4TgwdzqxQ3via53zNmGllMzPz7O4uEhvb2/eiGtcJPRUOD017qJSXl5OY2Mjw8PD3Lp1S9VgnXEcDgdLS6/aM06n1sbiuD6MlJKPPvoIs9lMd3c3/f39sVTtEDU17Sd2rkAr3h4YGGBsbIyOjg51HcwxuXSu9MVV3Vjd2trK2vkTnatw+Hjz2Wg0cvnyZRwOB0NDQ9y6dSsuQnABolZnylZtbm7eIxzW1NREeXk5u7u7LC0tsbm5GW/Rc9B9UHf+dVs1Enl5TV1d1TKvDukHfOYIBAIMDg5SWlqaNdG1rC2zSSndCS+L0Dq0n+BzsnfhNJvNlJWV0dHRwdWrVwmHw9y7dw+fz5c0DHtY5Gp5+XxNWL/fz8jICMvLy9y8eTNv1GAuGkajkfr6+qSGaC6JRqM8fvyYhYWFrJ2zqamJaDTK8PBwygpYivxjdnaWpaWlpIXQTufx662i0SgfffQRoLWv6O/vB7T7yMbGQrzm6qRTxmQycf36daSU3L9/n5WVlZN9kCIt5Mq50g1UXY3NaCTeDyvT16PV1VWCQd+xBC2SUVZWRnNzM0NDQ/FU1wvgXO3hLNqqdrudyspKbty4QUVFBXNzc0xOTrKzs5M0vTpZIEC3VaenX7YSOutIKVlfX+fJkyeUl5dnVeE1U86VBL4nhHgshPimvlEI8feEEPPAj6OtBryCEOKbQohHQohHa2trr35wji6cDoeDd999l4KCAh4/fszDhw/Z3t7es89hE3Z29nzImEajUaanp3n8+DEmk4nbt28rxyrHZKNnw2EsLCzw4Ycfxv8fXC4XU1NT7OzsMDExkbV6MCEEvb29eL1eZmdnlYN1RlldXcVoNHLnzp1X3ltZOZ5zNTc3x8cfa71pX3/9dXp6emhpaeGDDz6gubkFKcHj2cJoPF1TX7PZTFdXFz09PUxMTOB2u48+SJERchm5SnSuDAZoiVmp6a7Je/HiBR9++CGhUIj79+8zPDzM+PgDdndD8Zqrk9LQ0IDVauXFixfs7ITObUpgjHNnq16/fp1r166xsLDA4OAg/f39r9wL9UBAJPLytW67Li6eD+fK5/Px5MkTZmZmaG9v5/Lly1nNaMmUc/W2lPI28IPAnxdCvAcgpfyWlLIJ+HXgZ5IdKKX8tpSyT0rZV1VVleT93MnXGgwGent7uXv3LlevXqW/v5/79+/j8XiAV/NY9ZUsPYf1PEzYhYUFlpeX6evro6OjQzUNziFSSvx+/4FFyJkmFAqxuLjIxMQEoMlnf/jhhzx79oyFhQWsVisGg4EXL15kbUwmk4mbN2+yvb3No0eP2NjYUE7WGUMIQX19/StFxy6Xdv0/TvR/amoKgMuXL2O1WqmqqoobvJcuNVFR0criYj8ej/tUzpVOaWkplZWVcSn5w1DTMjPk0rkyGl86V16vm88//xwgbamiUkqePHkSj45+9tln+P3+uNHo9XpPFbkC7f+vu7sbm83Gp58+IBRaOM/X0HNnqwohcDgc9PX18cYbbyCE4LPPPttzHz4oELC8rAlcnHVtMv3/pLy8nDt37pDs75NpMuJc6cV/UspV4DvA3X27/AZwop4WuehhkYjFYqGgoICqqiru3r1LOBwmGAwCBxcJnqcc1mg0SlVVlRINyAN2dna4f/8+IyMjORG0GB8fZ3x8nPLyckpKSvas1t+5c4fXX3+daDSadYn0goICbty4QUtLC+Pj4wwPDxPRl+gUeU0kEsHj8bC5uYnT6dxj1Dmdh/eMOYi6ujqakigJmUxGSkqaqapqYmDgCWtr86cZehyPx5P0fIrskA+Rq1AIPB4X4XCY69evp8W5Wl9f56OPPsLtdnPz5k26u7spKSnhrbfe4rXXXkMI8PsDp3auQFtIbm9vp6amF7/fidPpPPX485FM26q5CgQIIbDb7RgMBm7evElTUxM7Ozvx9w+yVc9LhpW+2JAt8YpkpD3sIIQoAgxSyp3Y868CPy+E6JBSjsd2+wYwcpLPz+WE3U8kEiESiTA9PU1BQQHhsA2jUcS6ngvC4ShSRpidNZ+LCQtabq8uL6vILXo65ltvvZW1Rn1SShYXF1lbW2N7e5srV65Qf4Autm4Yh0Ihdnd3s+qQCyGoqqqioqKC4eFhFhYWslbIqjg5BoOBwsJCvF4vo6OjjI6Ocv36dRwOBysrWn+W436e0+nkypUrr9xkhdCyC+rq2lhamqewsDgt36GgoACXy6X6ruWIaDT3zlU4DMXFZoxGY9pUdPXIQ21tLaWlpRgMhnhKuMVioanpChMTLygoWKeioufUkdHdXTCZiujqamNwcJCqqqqMN0LOJhfFVhVCEAgECIfDTE5O0tzcTDRqwmSSsbRAQSAQREoz8/OCr30t1yNOD3a7Ha/Xm7NAQCZyumqA78RuZCbgN6SU3xVC/JYQ4iqavOUsJ1BfgfyZsABFRUXcvXuX1dVVnj17htsdIhg04vdH2N4GrxcslkI2N7t57z0DcPYTl+12u6onyBN02edsrszs7u4yMTGB0WikrKzs0LRQvQZqaWmJe/fu0d3dnfX6MKPRSEtLCwMDA5SWllJ2HsLH5xghBH19fczPzyOlZG5ujtnZWRwOB6urcHf/uvIhRCIRotEoPT09B/6PRKPgcmmLRTMzzygrq6ejo+NU/1PRaDTlSEW+3MvOE/kQuYpEYG5uEojgdrspLi4+9XU6EongcDjo7OxM+n5lZT1ut5GtrRcsLHzIl770PnDyc+pCFh6Ph8rKyvNYApBRWzVXTn4y2tvbqaurY3Jyks8++4yNDQNGYwQpNQELpxMKC28CAYqLazjNvMkXdFs1Vy2C0v7fIqWcAm4m2X6i0Oqrn5M/Exa0RnyXLl3i0qVLvHjhZHFxhdraNqqrtxkYmGRra5ednSc8ebKDwdCX8S7tmWZ1dZXi4vSs8GaCA/pW/CLww0AQmAR+UkrpSuXYLA37RCwtLWGz2bIq/Ww2mxFC0NjYSGsK7dvLysooKyvD7/czOztLWVlZ1qJsOvpqq0oNPBuYTCZaW1sJhULMzc1RX1/P+rrWlP042jm6omtFRUV8BdNgMCCEll0QCoWIRi1UVtZjMETY3XWxtLTEysoK77777rHHLaVkZGQEv99Pd3f3sY9XpId8cK7CYa3+bnt7gydPnmC1Wmlrazt17cfGxgbRaDRpPzUhoKioBikX8flOX0O4taWliK2vywMbep9lLpKtajAYKC4upre3l0gkwve+N0RlpR2brRqLxcnS0iJPnvRjNkf57d++zze+8Y0z3c4kHA6zsbHB5cuXczaGM7cUkU8Tdj8ORx12ex3b21BXV0Iw6ODp01Xu3KkjGh3A7XafeedqZmaGGzduIKXM53++/X0rvg/8rJQyLIT4BeBngb+e4rF5iy4koRuO2UjZWFxcREp5YCrgQXR3dzM0NMTnn39Oe3s7jY2NGRrhq6ytrVFRUaGaXJ8xdBn/mpoahobguEHPZ8+eAfDJJ5/s2d7c3Mz8/DzRaJTV1RrKy2u4erWRra1KvN6HccGL4xIMBlldXeWtt946j6v8Z4ZcO1dGoxa50hqbDxIIBPD7/QwNDfHBBx+c6LOllJSVlcVFgpIhhFbrFQhomSVzc1OUl7ed6D6tNw4uKoLdXVUKcBLy1VY1Go00Nd2guhrcbmhr62B+3s7iopGvfKWMR4/+M36//0yrQK+urmI2mynPYQ+BM9dOPl8nLOxdudIKBm3s7rbQ0VHAlStXzoVyWV1dHUNDQ3z66afMz6enADzTSCm/J6UMx17eA7Jn2WcQPcVuZWWFzz77LCs3QP1GPTs7e6zjrFYrt27dArLbWBO0NC09WqE4O1RUVADa38/phGP689xNyCF866236OzspLGxkdnZWaLRKM3NzXg8K0xPD/D5558wOfkQ0KSoT4KeDniQ8avIDvnQ5yoUArPZSG9vL6+//vqpBYfC4TAul4v29vYD99GbCNfUVCMELC3N89FHH50oYu9yaQJcHs8Ok5OTWZexPg/ks62a2EQ4GoVwuI7y8mocDgu1tbVZv0enm7KyMqLRKJ999hn379/PiaLymVtey+cJu9+5Wll5KWs5NrZCMBg8Vj5+PtLR0UFHRwd+v5+nT59SUFCQ8z5L+9D7Vkjgl6SU3973/k8Bv3nCY/OKK1eusLq6Gl/hHx8fZ2Jigubm5hOvvh9FQ0MDbrcbp9N57NoUPU2rp6cnI2M7iOrqap4+fYrL5crpSpbieOjRn3A4yuamEd0+lVL7iUaPejRx8+YHRKPaCq3BUEtxMbS2NhEIBDCbS/D7WwmHQ8zOfsb2Nty40cfsrCGeUnW8RysbG2b6+317xDEOOkZvk5jDzJVzSa4jV0Ls7XEZiURYWVk5VdaKvnC2uroaj7oWFxdTX19POBxmbm4Om+0y4XAJ1651U1LSzdDQh/HzH9fm2NqCxkYYHR2luro6J2q0Z518t1V15yoS0STYe3u1muqtrS0ikciJF5nyAZvNRl9fH1JK5ufnGRwcpLe3N6uCLMq5SiN6YzbduVpY0HKWA4EAS0tLtLW1nWnHKhGr1cqNGzcYGBhgc3OT5uZmrFZrrocFWt+KJSFENfB9IcSIlPJjACHEt4AwWu+KYx2rE2s0+E2ASzmWgDSZTLz55puEw2EKCwsZHR1ldXUVp9OZMedqbW0Nl8sV759xHMbGxgAYGBjA4XBQX1+flf+HYDCIlDJf5qciRba3tzGZTMzPm5ifhydPtO1Go/ZjNmv3At2gTfXRbC7AYinAYNBEhyoqzFy6dJ0nT6zU1mqpMPrUTvVRfx4IlCLEEi0tV488Zn5ekz5WpA/dcc22jaA7/LpDtXdeaC/29207Dvp1cnR0lPr6enZ2dlhbWyOxee3CwjM2NuCTTwyYzfVICZWVlceucQ0EIBiEoiKJ1+s9VBBGcTD5bquaTJpjFQ7D2prWh3VkRBNGzPYCaKYQQtDU1EQoFOLx48c0NTVlTZ5dOVdpJDHnOhTSbp5f+tJLSerzJs1rt9t57bXXWFhY4MmTJ9y4cSPnYheJfSuEEHrfio+FED8B/BDwZXlAfthBx+7b59vAtwH6+vpynmdWUFAQv2l3dXWxurqa0dqi9fV1mpqaTmQoVFdX43K5KC4uZnJyksnJybjMdqaIRqNMTU3R1NSkerOdMSYnJ+no6ODDDwWFhVBa+jIqpRsFum+u9/bRr796M9ejntts0NYGjY0Oxschlol4Yiori2Pp0j6sVs1ROyhyla/3sbOMlNq8CAZfzgfdqc4kiZGq/ehpoqdZSGpqasJoNFJeXr5nkWhlZZX5+QU6O7uZnTURDLrxegdwuxewWKCt7Rpe78vPSSUCu7qq/a8ZDIKKigrcbrdamDoBue7JehCJdmo0CnNzUFysZVgZjUZKSkpOtRCQbwghuHz5MpWVlUxNTbG1tUV3d3fG07eVc5VGEnOuJye1G3dVFTx9qvWnyLZKWjYwm820trZitVoZGhri9u3bOfueh/St+BqagMX7UkrfcY7N1tjTgb6KmYqK30nx+Xx7/r4HKVcBr4ie1NfXx4UwysvLGRgYYHBw8MRF3kehp67a7XbV1PWMEY1GCQQC7OzsMDZWy1e+Au3te9P+IhHtJxTa+6gb1+Hwq9v3Pw4MaEZGQwMsLsLwsHb+k6UFQjRay9aWl9/5naeYTIU0NfViMBiTRq/cbi36pkgfkcjLe+/+NNHECGayqOZR2w57PxLR0jw3N7VHl0v70cYkCQQMbGyEKShIJZ31oEdNNTNxuxDVGI3VTE7C4CBMTlbQ3X2LxcVB2trejEdGj4q4Jj4ODsKbb2rPi4qK2NzcVGmBJyBfbdX95SvDw3DlivbexsbGuY1SlpaWxrOtZmdnM2onwRl0rvKpd8B+Eift8DBcvaptb2lpob+/H7fbHS/SPm/U1tbi8XgYGRnh+vXrufoHPahvxQRQgJbqB3BPSvnTQoh64JellF8/6NhcfImTMhyzDDOVV+x2u/H5fDQ2NrK6usrc3Bwej4fy8nKklFRWVsajs6Ojo2xtbfHGG29QUFDwynzQa5+Oqzp4HFwuF6WlpXR3d5/bG8Z5RQjB2NgY/f0DrK//N7jd8OCB5giZTNpP4nOT6eW1t7Aw9TTBFy/gtde0lJiSEtDvt6kYockfjQhxBSk7ePz4EZcvbx94zd/a0oxxRfqIRLR5cf36q+/pxfv7HZejtunPQ6GD39/ZgadPNYf5xQuYmXkZTQ2HN9jaimIwNONyHTyH9VRXs/nlNrP55XY96po4hxPnp9cLViv86I+W8vDhOxQUQFfX8X5/Ho+Wfltbq712OBw8e/aMzs5OdQ09JvnuXOkZVpOT8N572ntWq5VQKJTbAWYQo9FIT08Pjx49orS0NKP2+JlzrvJ1wsLLSSulJmbxB/+gtr28vByTycTCwkLWnKtgMBjvSQRaxOHBgwf09fVht2emmXFbWxsPHjxgcnLyUFWjTHFI34qkg4mlAX79sGPPErW1tSwvL2fs8/VUAb12qqurC4PBwOzsLB6PB5fLxdTUVNzRrqys5N69ewDxYu4rV64QjUa5f/8+kFnnamtrKy3NOxXZZ2lpiatXr1JaepWREejufhmp0ouw9ed+/8usgVTSARO3CQF1dVBZqTlXumN2WjweD16vl5KSkkP3U1MzvejtmPz+5BGmTCnkb25qkc9vfAMcDm1u/Zf/pTaeoaFV/P4Srl0zvDJ3k83nUEiTQt+/XY++JabA6g6WEFp618aGltbndmuO1s6ONr5UI6/T05oqp56MYLPZMJlMPH/+nKqqKqqrq5UaZorkq62aKLyyuqpd9/T2a7rjEQgEspIaGI1GCYfDe7Jhnj9/jt/v57XXXsvIOS0WCx0dHQwNDXHr1q2M2cPKuUoj+qSdm9MaXib2CywvL8+aHOTu7i737t2jsLCQ1157bU+fl9HRUW7cuJGR6IbBYODOnTs8evQIIQQtLS3nRsDjLJDpm15BQQFvvvkmX3zxBZ2dnfFUkaqqqngK4NDQULy5cWdnJ1JKnE4nu7u7LC0t4XQ6MZvNhEIhbt++nbELG2j/cysrKzkXHlEcn4WFhdi1o5HubkglqzMVwzUS0VIG9ed2u+ZQgXZfSdf9xWKxKPn/HGAwaE7F9HTyCJPuiKQrHVB/3NzUHKLlZS0t0O3WRAKEgImJOZaX56mvv47RaE4pBTCxLk93phIdr0R1dX3/rS0tYvbokfa8ogKczpefo3NY5NXlgkQtA7PZzGuvvcbGxgYLCwv4/f6Mp1OdF/LVVk10rpaXX2ZYAfH7cTAYzIpzNTw8zPr6Ordu3WJ3d5cXL17E31tYWMhYP8yqqiqCwSDPnz/n6tWrGVERPpPOVb4unESj2oUwGIRYSx8CgQDPnz9nZ2cnK4IWk5OT8f5Tu7u7exyrq1evMjo6yu7ubsZSx8xmM3fu3GFiYoL79+/T1tZGrZ5joMg42XCwktVI6dGh7u5ufD4fBQUFcSlt3blpbGzkwYMHhEIhHA5HxsVPSktLU+7HJaVmDOlGy/4VXbtdK/JWZIebN2/y6NEj5ua2eeut1H7xutF7nEtbZeXLaIbuXKWDra0tKioqsir9q9D+hq2tWqQzGYky/sdJDUzcpjvqidu3trS0vKdPNQXIcFhLY9VUg3fZ2fHy7NkuRUXmpCmtiT+JaYCJKYL6z/50wMTvVlcHX/+65lRFo1otYaqEQppjuL+8ymKxUFdXh8/nIxwOJz9Y8Qr57lxFo9o974d+SNs+NzeHK1YomOm6+XA4zOeff040Fmp++vRp/D2Hw4HX62V2djZjzhVobWV0leWioiI6OjrSKnp1Jp2rfJyw8DIlweWCr35Ve+7z+djZ2eHSpUsZnSjBYJCVlRXm5+dpaWmhsrKSra0tlpeXuXr1KiUlJXHBg0wr/1gsFrq7u9ne3mZkZIRgMKiiB1nA4XCwtLT0ipBENhFCUFRUlPQ9m81GaWkpJpOJ68mKItJMYWEh4XAYr9d74Jh0vF4tlbeiYu9KrhDaSvHamnKusklhYSG1tU0MDAxjt98EbGk/R2IkA9LrXFmtVtxuN6urq/nWB/Bcc5R9kBi5SieVlVBeromuzM7CxAR8+cuauqrdXkZb2x+htrY4aSQ12XOfL/n2xNTA/SmvTqem+qZ/z+PicmnXuIOO3djYUPfxY5CvtqruXC0va1FK/fI0NTUFaAukmXSuNjc3473aent7kVKytraGz+ejt7cXgMePH1NaWppxW8bhcFBeXs7s7CyPHz+mr68vbRE75VylkWhUy2G1WLQ8ViBu1LW2tmZskkSjUT7//PP46/Lycux2+ysqacXFxdjtdj799FPa29sz6uyBFjno6emhv7+fioqKjKaAKbSLY3t7e17XGOkXz2xgMBhwOBzMz8/T2dl56L47O5pxlGyl1+WC9fXMjDGXCCFmgB0gAoSllH1CiF8EfhgIApPAT0opXbkYn9ncTGVlkJmZqYxI5+riB4kpWOlyrvRr37NnzygrKzuXSrH5SK4bCO9HSw+Furoq0jEFdJXMZI5ZXZ2WEgknm8tbWy8N7VfPqxm5Ks0/dfLVVtXrU2dntT6sOrW1tVgslowuBs3OzjI9PQ1ofTrLysoAXknLq6mpYXp6ms8//zytDk8yDAYDra2tBAIBJicn6erqSosNlacJdgeT72mBeuNgnc3NzYzn3usTob6+nvfff5/SA5bYCwsL6evro62tjYmJCQKBQMbGpGOz2RBCxMPNisywubmJz+fL+67qQoisOn8lJSX4fEnV9/fgdr9cELlgfElK2Sul7Iu9/j5wTUp5AxgDfjZXA1tehitX2ggGgzx8+JBnz56xuroaf19PKTkpkYiWZpUJ5wpeqnaaMqWioHiFfHOuSkpKaGhoiDdnPS26KIfFojlSdrt23Sov1x4TmxgfZy6Hw1q07KBroJRaQ+Hz1qszU+SrYwUvI/bz85pKKmh/39XV1YzXWdlsWgbCW2+9xdtvv33gfo2NjbzzzjuEQiGmpqZOfa1PhYqKCtbX14kkFjSegjx1Uw4mnydtJAJLSy8nLGgdr/ULU6YELTY2NgAthzQVw7WpqYnKykq++OKLuPJbpnC5XFgslrw3+s86a2trWes8fpYoKSnB6/UyOTmJ1+tNusihp+EcFli9KL9WKeX3pJR6YcU9ILPh7UNYWYHGRiO3bt2irq4Ol8vFixcvmJmZYXZ2lo8//pinT5/iTeySegz2R64gvc6Vrg6r1NWyR745V6DVnHq9XiYmJrI2huM6V9vbe52z/QghKCsr48mTJwSDwdMP9pyTz3ZqNKplYthsL53p7e1totFoXOU0U87M9PQ0JpMpLvhzGEIIbt68ycrKCh9//HHGBeGWl5e5cuVK2hbDztxVP18nrZRa3UZhIcQinQBxp+Lx48fcu3cPn8+X9omr37yHhoZS2l8IQU9MEijTalZCCCKRSNpWAxTJcTqdLC4u5noYeUdxcTE3btxASsng4CD3799/xRj3eLQbzQW0gSXwPSHEYyHEN5O8/1PAf9i/UQjxTSHEIyHEI72OM934fJqctlYDJ7h06RIffPABPT09zM/PMz09TXV1NTabjYcPHzI0NMTKysqxzpHpyJXL5VLNVw9ACDEjhBgUQjwTQjyKbftFIcSIEGJACPEdIUTZcT83H5yr/XOooKCA27dvs7y8HF8IzdQYTlo/uLW1127Zj27omkwmlpaWTjXOi0C+2qnwUsgiMcNKj1g5nc749TQajabdPjQYDITDYdZTzLMvLy+Pp/RnQ0wlnQsHZ86cyNdJK6WWWrS/3rOtrW2PYtSDBw/4+OOP0zppy8rKKC8vP7JoPxF9EmU6oqQXJWbKCFNoBAIBBgYG+Pjjj3M9lLyjtLSU9vZ2Xn/9dWpra+OFuzoXOCXwbSnlbeAHgT8vhHhPf0MI8S0gDPz6/oOklN+WUvZJKfuqEvtNpBGnU2tlsd/hrays5N133+WDDz6gu7ubq1evcuPGDYLBIC9evODDDz+M5/QfRaadKyHEoQtpSqU9/Smp+eBcJaOgoIDOzk5GRkZ4/PgxX3zxRXxuSCnTkqJ/0shVJKItMB0l2COEIBQKpVVR7bySr3YqaH/vnZ29GVZWqzW+4F5YWMjGxgYff/zxHmn0dHDlyhWAY6UfLi8vU1BQkHEhtrq6upTVhVPhzCWD5+ukTTZhQesIreeWBoNBBgYG8Hg8aT330tISPp+P119/PeVjdLn2R48eAWSsubDL5UJKSaaMMIVGRUUFQgh29K6RilcQQmCxWF4pyt7ZSa2P0nkj1kQbKeWqEOI7wF3gYyHETwA/BHxZ5qhR0/Lyq5LQB1FRUUFZWRnDw8P4/X5mZ2eZnZ3lzp07h8r9JxO0SBderxefz5e1pvHnASnl9xJe3gP+8PE/I3fO1VFaD5WVlZSUlDA+Po7X6+XTTz+ls7OTiYkJgsEgdXV1NDc3n9h50YUK4HjO1fa2lhJ91Pi3trbwer04HI4Tje8ika92KmgLV0bjqwuKVVVV8TYr29vbPH36NO31ogMDA3R0dByrDYter//JJ58ghOC9995Le/mDlJKlpaU9AnCnRTlXacLvh9raw0PrFosFKSVWqzWtkyMUClFcXHys3P7Lly/Ha3Tu37/Po0ePqKys5Nq1a2kb18rKChMTE2nNY1W8SjAYxOv18o1vfIPm5uZcDydvCYfDTExMcOPGjYRtEAjAMYK+5wIhRBFgkFLuxJ5/Ffh5IcTXgL8OvC+lPFoJJEOsrkJXV+r7GwyG+LVrdXWV4eFhHj9+DEBzc3PSxqeZilyFw2GePHlCbW1tVhpxnlH0lFQJ/JKU8tv73v8p4DeTHRhLYf0m8Io0eC6dKz1BRR9DsrFYLBZ6enqQUjIxMcHw8DAA165dY3V1lXv37lFfX09VVdWxG5smpgXq40gFl+twu0Vne3tb9W5LkXy1U0HrZ3aUmaDba+nuURqJRI7d3/Ktt97CYDAwPz/P7OwsH330Ee+//37abOhwOMzY2BjBYDCtCtpnzuLN10nrdkMs4nkgOzs7eL1ebt++nbbzRqNRZmdnKSwsZGtri4WFBTY2Nrh8+TImkyneV0hPhdLzV4UQceWW5uZmZmdn097DYnx8nM7OTqUwlGF0I7Kuri7HI8lvjEYjJSUl+P3+uASsx6M5Vvl4TckwNcB3YjcoE/AbUsrvCiEmgALg+7H37kkpfzqbA/N4NAPgpEGf6upqTCYTCwsLbG5uHpgpEA6nX4o9Go3y6aefUlxczNWrV4/c/wLOO523pZRLQohqtLk2IqX8GA5PSQUtLRX4NkBfX5/c+17u0wKjUc1pPyyaJYSgo6ODjo6O+LbKykrKy8uZm5tjZWWFSCRCR0dHyqn7J0kLjEaTlzMkw2AwqNrpFNnv6OYTNtvRtuqTJ08ATRAqXSwvLyOlxGg0Mjc3x9zcHBUVFRQWFlJSUoLD4WBzc5PZ2VlaW1vjiwt6G4vW1ta0pu3prK+vs7u7y40bN9IaBFDOVZrY2tIaCB6G7mmnszBP/8zd3V36+/tpaWnB7/czOTkZ36e0tBSfz0coFGJ5eRmj0UhVVRUtLS1IKeMTNp3/SLr8tUqLyTxVVVUsLCyoXjpHEIlE2N3d3RNNuKj1VlLKKeBmku1HXMUyj9N5cL+dVKmoqKCiooInT54cKCKQiciVXjuT7/3mck2mUlLzxbkyGlNLFdxPXV0dDoeD58+fEwwGGR8fZ2lpiZ6envhi6EHnP0lDbLdbM7aPsimllGxsbKiUwBTJVzvV49H+1kdlnjocjj1tL9KBbvc+fPgQ0OTWl5aW4rWHxXiYhIQAAIcLSURBVMXFeL1ebDYb/f39gLZQZrfbaWxsZG5uDkj/tdXtdlNeXp72LAPlXKUBr1e7sB5Vb6fnUqfbuXr//ff56KOP4qtcLbHCr2g0yszMTHyFoKOjg93dXVZXV9nc3GR5eTn+OW+88UbaxgRawaLRaMTn86nmwRmmra2NjY0NZmZm4n97xau43W4sFsseh39nB44KrCrhgeyyspJ6vdVR1NXV4Xa7401QE8mEc2W1Wqmvr6e/v5+3335bNV1NQiZTUvPFudIjVyfBYrHEs1sWFhaYmJjgwYMHgJYG2dbW9soxJ53LqaYEjo+P4/F44qIHisPJRzsVtL93KtmmmbhuNTY2sr6+jsvl4u7du9hsNtrb24lGo0QiEe7du0c0GqWjowOTycTa2hq7u7tMTU3tEaFKtwhbSUnJHls4XSjnKg1sbaU2YXXSPXGFEPFCxEQMBgNtbW00NTVhMpkQQmC1WikvLycSifDJJ58AWv1VuhWAjEYjNpsNv9+vnKsMo9ebPHnyhIaGBpUTfwAmk4lwOBw3tEMhLf0swyJEimOysgLpKv3UZfeTrXQmE7RIhyN95coVlpaW4iuiilfIWEqqlLlpqXBQ5Oq0NDY2YjKZmJubw+fzsbW1lXS/k4izSKmJWdTXH77f8+fPWV9f5+7duyo7IkXy0U6F1DKsgIwp8/X29r6yzWAwYDAYeOeddwiHw3H7RVe/rq6uZmBgAKvVyvXr19OeEVBcXMz09HTSBbjToJyrNOByQZLFpAPJdrpIMmPbaDRy5coVotFoWov4EtFXBJRSYOax2WxUVlby4MEDbty4ceyi0YuA3W7HZDLx8OFDurq6CIWKKS7Ov+vJRcbt1q7xqaymp4LD4WBhYYH19fVXaj8zKcVeXl6Oy+VSzlUSMpmSeh4iV/upra2ltraW/v7+Q50rs/l4c3lnBwoK4Ch/aX19ncbGxkPTEhV7yUc7NdUMK51si/EIIZLaqqWlpTgcDq5cuZKRMdlsNsLhMNvb2/Fa7HSg+lydklhpEalcd6ampnA4HHlTh1RfX58xxwq0lJyNjY2sNH+76Agh6Orqor6+nsXFxYw3hz6LGAwGbt26RVNTEy9evMDtlinXW+XTNec8k456q0R0MYtkK7H7nStIn3PV0dGB0+mM1wkoskM+OFd6FCldzpWOLjiVrHfaSRYKUk0JbG5uZmFhQbX5OAb5ZqdC6imBkUiEqakpuru7Mz6mVDAajVy/fj1jzp4Qgtra2mM3oT+KM+dc5ZsKS6opgVJKnE7nhZLKFkIghGBlZeXQZpppPueMEGJQCPFMCPEotu0XhRAjQogBIcR3hBBlBxz7NSHEqBBiQgjxN7Iy4DTT0NCA2+1mcnIyrd3Gzwu6Subu7i7b21FUgC+/SFe9VSQSYWxsjPn5ebq7u5M2WM9k5Mpms3Ht2jWmpqYIhULp+VDFkeSDc5XuyJXOYdfzk6S4pupctba2ZkTg4DyTj87V1lZqf+/19XWsViulR3WVPkeYzWbcbjc7OztpW5g+c2mBoK1ums3axUwI7THxearb9OenYWsLkrRQeYVQKISU8kKF1gsKCujp6WFpaYnJyUkqKiro6urKRpH3l6SU6wmvvw/8rJQyLIT4BeBn0Qqn4wghjMA/Bb4CLAAPhRC/LaUczvRg04neR2Vqaopnz55RU1PD/Pw8t2/fvlBz7zB8Ph+FhXaEMB6pmqTILi4XpGPBdHd3l6WlJex2+4FpybpzpatLp9O5Ai0t2mAw7KkjSEQFl9PPeXau9Hqn7e3tV9JN9bms+/FHzeVUVeN0bDZbvH5RcTRSwu4uzM2dzCZNtu008/o4GVaLi4v4/f6Tn+wMcunSJSKRCM+fP0dKSVtb26l7fJ055+rSJW3SSqldvKJR7cISCu3dpj9Ptm3/+yd1zIJB7SeVBqQGg4G5uTl++Zd/mW9+85vHavh7lqmsrKSyspJwOMzQ0BCLi4tp76d1FFLK7yW8vAf84SS73QUmYvUACCH+JfAjwJlyrkArBL127Rrz8/NMTU1hNBqZnJyksbExflNeXFxkdXWV1tZWSktLL4xsdDgcZm5uDru9MaUbjSJ77O5qq+/p0GPRI1Uej4eBgQFu3txb4iPly9V+PWs5Hf8CkUgk3stlcHCQaDRKIBDIWIG4Yi+5dq6k1H4y6Vx5vd4DnatUI1epRq10mpqaePToEXNzczQ1NV2Y+8VJsds1oZD9NmcodLR9epDNqjtYJwkmbGxAqir60WiU58+fs7u7y9e+9rXM/qLyBIPBwOXLl7l8+TJut5tnz55RWVl5qr5XZ865Ki4m7ak8x53k+nOTCVJVhQyHw1gsFgKBwIW8MBmNxgMLFtOMBL4nhJDAL8UaTibyU8BvJjmuAZhPeL0AvL5/JyHEN4FvAll3Eo+DEIJLly7R1NRENBplbm6O/v5+Ojs7cTqdbG9vU1FRwbNnz6ioqODSpUtpLebMV3w+H36/n6qqepUSmGfs7GjX9nQZpe+//368T1AwGNyjdKYruukGMZwucrWxscH6+jpOpxPQVN42Nzepr6+/UOk1uSbXzpX+qD9PF263m5GREUpLS5PWSYfDx6sfPK4Il8Vi4datWzx48ACr1apEqo7AaDy6xcdx2W+XHsdmra9P3bkqLi7GaDRe2Lpt3VY9bYbVmXOuMoEeRMpkttrAwAC1tbX82I/9WOZOksd4PB42Nzfp7OzM9KnellIuCSGq0SR9R6SUHwMIIb4FhIFfT3JcslvyK1eXmLP2bYC+vr68v/roF4nWWO7qxsYGwWCQjo4O6uvrCYfDLC4u8uzZM9ra2ohGo9TX159byd3NzU3Ky8vxeETKCyOK7JBu50pfYFhaWnql3lWPWiU6VEenUnl49OhRXNK/paWFcDjMwsJCfJ/6+np8Ph8LCws0NzfH/+8OHuOpvqJiH7l2rkKh9DtXOzs7PHnyhM7OTmoOKEg8jlqg36+9d9zIvdVqpba2Fo/Ho5yrHCBEZm1U0JqgO51O3nnnHa5fv57Zk+Upc3NzVFZWnjoIopyrLOHz+S5EZOAg7HY7hYWF+P3+jBruUsql2OOqEOI7aOl+HwshfgL4IeDLMvmSzALQlPC6EVjK2EBzQDJDz2w209LSgtlsZmNjA5fLhdFopL6+HinlqcLi+YjdbmdhYYXSUk2GWJE/pNu5Aq1xe3V1ddzZ0TmucxWNRhkcHASgq6uLhYUFNjc3cbvdNDU10dzcfO7+V84iuehzlazHVTqdKz3FdWRkBCBpLUgkoklspzKXj9uXUycYDGIwGNjd3T3+wYozwdKSZvJcuXIlxyPJHZWVlWlReVV3gyxx+fJlVlZWCIfDF/ImvLa2htlspiRV7esTIIQoAgxSyp3Y868CPy+E+BqagMX7UkrfAYc/BDqEEK3AIvBjwB/P2GDzjIaGBhoaGpifn2dycpLJyUlAc0bu3LlzblJZPR4PkYj5WCmBFzQ7Iqv4/ZpRWliY/loVl8u1R61USkkwKDEaDSk5V1JKPv74YwDeffddjEYjDocDKSVra2tUp1M7XnEqchG52u9cpTtyZTAYuHHjBgMDA4yMjBzoXKVac+VyabXrqbC+vs76+jrt7e18/vnnwMU2vM87LS0tOJ1ONjY2qD+qu/Q5ZX5+Pi0tii6elZ8jGhoa2NjYYGlpKa9rdTKFlBKLxZJpI70G+E7sHCbgN6SU3xVCTAAFaGmCAPeklD8thKgHfllK+fWYkuDPAL8HGIFfkVIOZXKw+UhjYyNlZWW4XC5KS0t58uQJo6OjVFRUUFlZeeaFWNbX1ykqakq5v5UiO+hRq4OMUl0oIFl9wVGPm5tBjEYTS0swMvKMnR0Xu7tQVnabra0SxsdhchLW1qCqCpqbXxqm2qNgbQ1KS6sZHTXu2Q7V6ArVe485+tHl0qINLS3p+i0q8sm5Smd7x4qKCrq7uxkeHmZlZeWV9EDdudI5yLkKBLTUxaIiLRq7srKCxWLBZrNRGJMOXFxcZGpqas+CxPLyMqAtEl9Uo/siIITg+vXrPHnyhJqammwoO+cdUsq09NRSzlWWMBgM8ealQgiampqOPugcUVpaysTEBMPDw1y9ejUj/7Qxpb+bSba3H7D/EvD1hNe/C/xu2gd2hhBCUFxcTHEstNPY2Mjq6irLy8t0dnZSXl7O9vY2VVVVZyqaJaWkv78fv99PUZFDiVnkGTs7WqrS2hrMz2uPiQ5SolLWcR/BSDgcpr//UyKRMCaTZohubj5BiAZstg66urT9i4qgru6lgR4I7OJ2uygthRs3GigpefneUY9H7TM+Dqp1UHrJJ+cq3RHY6upqdnd3WVhYONC50p2qg34HukqgEDA4+JzNzc14DaHBYIg7VJWVldTV1VFUVEQ0GmVjYwOr1UplulUaFHlHcXExDoeDhw8fcvPmzQundFpZWcnw8DAdHR2nqi1UzlUWcTgc9Pb20t/fT3V1dcY6TucjhYWF3L17lxcvXjA/P0+LWq49E7S3t9PY2Mi9e/fiOf8AHR0dNJwRRQgpJUtLS3g8Hnp6XsPpNB1b7vsM+ZFnEo9HS1VyOrVCe93ZSUePl9raN/jss8+AMLdu3aK0tJSVFcns7BxO5zQu1yJudzVaKYmN2VkP6+vrez7DYoHa2r2qfwdFpJJt0w3txO3pjGwoNM6zcwXEG53uZ38N4UGRK5cLamokc3PzbG5ucuPGDSoqKohEImxvbzMwMMDbb7/9iqqv6pF4sejp6WF0dJSFhQU6OjpyPZysoisnDwwMUFpaemKNgIw4V0KIGWAHiABhKWWfEOIXgR8GgsAk8JNSSlcmzp/P2O12amtr6e/v5/Lly5SUlBCJROIh+fOM2WzGZDIR0bt2Ks4EhYWF9PX14fF48Pl8zM3Nnal0gf7+flwuF729vQQChSpqlWfo9VZm88v+QLpxmNi/8OSPZi5d+oBQKMTqqpmVFVheFkSjzQhhYH19mc8+C7C97cZqlayvg81Whs/norn5Dh7POqWlDTx5stdgTTVCddCjy6VEVdLNeXeuTCbTHkcnHA7jcrmIRCrjSnL6/0ww+NKB1/+XfD6wWHaZmpqioKCAiooKQJOfrqio4IMPPkj/oPMYZasmRwhBa2srT548IRKJcPnyZUKhEAUFBWfq3n8ShBBYrdZT26mZjFx9SUqZuPz3feBnY7UtvwD8LJrIwIWjtbWVoqIiXrx4QTQaJRqNxgulQbtg+ny+jIo/5IJoNIrb7T5SnliRf9jtdux2e7wJ71lZDJBS4nK5aG5upqysjImJ1Pt9KLKD36/Vgjx/DuvrMDysKZoZjZqzlezRbNYMWLP55Xb9Rwjt8dUUQXP8tZRaNKqoqImmpiauXIGVFe2zGhr2O07FsUf2PJ6WjQ0tHVKRPnLtXEUiL52r3V1tbp9uYWDv4/Pny0gJRUWSoaGP4rWIa2sQDL7Dhx+aeP5cm/8zM9oc138fa2uaYIzRqA322rVr2f1F5S/KVk1CQUEBvb29TE9Pc//+fcLhMA0NDXsiWR6PB4vFcu5at2xvb2MymU71vbKWFiil/F7Cy3vAH87WufMNg8FAbW0txcXFLC8vEwgE+OSTT+ju7qaoqCi+WmC327ly5cq5cbKcTidSSqWudYYxmUxYrVZGR0d5/fVXeiznJRaLBSkloVAYj8ekBATyjIqKlxLsFRXaT3OzZqhGo9pj4vP924LBvUaswfBSDjvxMfG5x6Odo7BQS0MsKtIe9wsDZBKlQpl+cu1c6c/9fhgbO359oL5gkOx9ISAYbGJpaZ6lpY9i/zd2dneDRKNBvN5PaWrq44d/2IbdbuDXfg16e/VxRfn+96NYLMt88cUEQLyuVrEXZau+xGq10tXVhdPpJBgMsrS0xPr6Oq+//joLCwtMTU0BWsCgvr7+lXTSs8rk5OSe1h0nIVO3EQl8TwghgV+KNV5N5KeA30x2oBDim8A3gXOvqldUVMTly5cBTfBheHg4/t5rr72G0+mkv7+f2tpaqqurKSwsPNN1Wm63Oy3N2RS5pampibGxMaLRaN6rBwoh6OrqYnx8nM1NLzbb9awZz4rU0e/JRUXg9UJp6eH7H4S+wn+UQ9bQoEUwfb7Umwgr8h/975/o8GSaZM6VHl3t7k7vuXp62jCbwzidTnp7eykrKyMYhBcvIng899nYeMRHH0F5uZ3t7QJ+//c34uMaH9dqGY1G6OzsTO/Azi7KVj0CIURcIbK5uZl79+7FW1O0t7dTVFTE7Owsc3Nz9PT0IISgrKzszNp5gUCAQCBwavGWTJkZb0spl4QQ1Wjy1yNSyo8BhBDfAsLAryc7MDa5vw3Q19d3YW51DQ0N1NfXE4lEMBqNCCFob2+npqaGgYEBFhcXqa6ujl8U892oTYbBYDiz/3CKlwSDwVwP4ViUl5dz/fp1/tN/esD16xJNQluRj5y2VkWIl1GqVPdXztX5wWLR1Cbn5l7W7u2PDKV7m8ejRarcbm1hoKBAm39+v/ZeOtMCpRREo1dxOK4yO6ul/vl8sLhopKXlLuHwGktLQVZW/Hg8EdbXoaSkEpOpjtbWXd5/vwaPx0NZWVmu/1T5grJVj4EQgjfffJNoNIqUMl7KUl5ezsTEBENDQ0QiEfr6+igsLDyTPV112/q0tmpGvnlM4hop5aoQ4jvAXeBjIcRPAD8EfFlKdRvbjxDilclYXFzM22+/jcvl4tmzZ6zGtHtra2vP3OpTIBCId5tXnF22t7eBs+XgG41GdnclJpMPUHMwX8mUEMBB5Nq5UmtN6aWpSfvRSYxk7XdUUtkWiRy9v8dDrIeaVjt46ZL2d11agv/0n/bWCyarIUx8rtcSWix76wgPSyX0eLQo7NWrJmy2Oi5f1tJdnz6Fmze1faamoKRE+yzlWL1E2aonI9m9v729nfb2dp4/f86jR4/i219//fUzJeceDodJx5887c6VEKIIMEgpd2LPvwr8vBDia2hFge9LKX3pPu95p6ysjNdee42trS2MRiOjo6O43W4uX76M4wxU6O/u7rK1tXXhZD3PI42NjWxtbSVtZpmvmExmpCzAaDy+c6VurdnjojlXisxy3EhmuggGtQjWtWsHp6Ym2xYKJX//qPpBve4+2XyORrWo2jnOXDsRylbNDN3d3aysrGC323n69Cn379+noqKCrq6uM1GT5XQ6qaioOLVoVyYiVzXAd2IhNRPwG1LK7wohJoACtNArwD0p5U9n4PznlqKiIoqKipBSEg6HmZycZHBwkMbGRtbX17l+/XpeRobC4TD37t2jsrLyTK1gKJKjpwJsbGycGefK5xM0NXUwNTWO3W7Ly/8TxUslv2yx36FSzpUiHegOULpKpA9zyOx2rQE3JHeuPB6wWrMn1HKGULZqBjAYDNTV1QHQ29vLysoKi4uLTE1N4fV64yIZ+cjS0hJzc3PcunXr1J+V9n83KeUUcDPJ9vZ0n+uiIoSgqakJo9HI2NgYCwsLAKysrNDW1pbj0e0lEAjw7NkzysvL6enpyfVwFKdESonT6QTI2wtkMnZ2oKGhEqMxxNOnT+nu7o73eFHkDypypTgPpHse687aUQv/yeazywUqE/BVlK2aeUpKSrDb7ayursbtBrfbTXt7e95FsXT1w+vXr1N6UkWlBM5O0YTiFerr6/nggw946623APLSWBwcHMTv93P9+nUlZnHG8fv9DA4O4vF4uHPnzpn6e+7saHLfdXV11NfXMzExcay86jP0VVNGCDEjhBgUQjwTQjyKbfsjQoghIURUCNGX7THl2rlSKNKBPpdyUcOXOJ+jUeVcKXKLwWDg7bff5oMPPoirKuab0EUgEGBiYoL6+vq0ldko5+ocoDc6Gxsby/FIXsVkMp2Z1DHFwWxsbHD//n3Kysq4c+fOmeqREo1qKl52u/a6oaEBn8+XlqLVc8CXpJS9UkrdkXoO/CHg41wMJtfOlZoSinSR7bkMr85hj0eLdp3hDi6Kc4TuuAQCgRyPZC/hcBjQhOLShXKuzgltbW15aTC2traytbW1p4eX4uyhO/BWq/XMSbF7vVrNgV7Ubsx2dfsZQkr5Qko5mqvzZ3vFXzlXikyRa+dKCBW1UuQXerrdixcvcjySvRQVFdHY2MijR49wuVxp+UzlXJ0TQqFQroeQlNLSUnp7e1lfX887x0+ROsXFxZSUlDA0NMS9e/fY2dnJ9ZBSRk8JhJc9ugoKCuKS8hcYvYHm41hDzJQQQnxTCPFICPFobW0t7YPS05mygXKuFJlCOVcKRXLsehpJHtHe3k59fT3r6+tp+TzlXJ0T3G53rodwIHrUI99CwYrjcf36da5cuUJBQUHerTwdxM7ODisr7rhz9fDhQz799FMMBsOZSm3MEG9LKW8DPwj8eSHEe6kcJKX8tpSyT0rZV1VVlfZBZdMozaVzdZEduXys90s32VwkSDynPq8CAe38Nlt2x6BQHEUmFuXSgZQSny896vvKuTonXLlyBYD5+fkcj+RVjEYjJSUlrKys5HooilNgNpupr6/HarUSjUbz0lmWUrKzs8PGxgYvXrzg0aPHjIw8IRTaIhwOEwqFMBqN3L59O++KarNNYgNNQG+gmXNy5VzBxXZ4ckBe1fulm1xHrjweSIPomUKRdoLBYF5mMtXV1eF2u9Ni21xs6+Icsbm5CeRn93UhBJ2dnTx79iwuI58ppTkhxAywA0SAsJSyTwjxR4CfA7qAu1LKR6kem5FBnnGampoYHBxkZmaGq1evZu28a2trBAIBCgoKKCws3BN5ikajLCws4HK54v8LAM3NXQjhZXCwH9CiqG+++eaZUjrMBAc10MzxsIDcGKVSqrTAXCOlfAGcm//NXDtXLhdk8fKsUByLfPw/LykpoaGhgWfPnnHt2rVT9cNUztUZR0rJ2toaMzMzNDY2UlJSkushJcVms3Hr1i3u37+P1WolE+lECXxJSpmYOKuviP7SCY5V7MPhcNDX10d/fz9tbW1Z6VfhdrsZGhrCYrFgs9niRaelpaVUVFQwPT0NaGo/165do7KyEoClJbh8OUp5eTW2WH7McS/q59TgPqiB5n8F/M9AFfDvhRDPpJT/RTYHlqtGwrm41+ehfZEt9Ho/CfySlPLbqR4Yqw/8JhCXds5Hsj2PdfTGwbu7kNnbrEKROqFQiKmpKQwGQ1qa9GaK1tZWIpEIAwMDvPHGGyd2ApVzdYaJRqMMDAwQCoW4ceNGWhqfZRKr1UpjYyObm5uZdq72cN5WRPMBu91OKBTC6/VmPFoqpWR0dJTy8nIuX74cP7fP58Pv9zMyMoLJZOKtt97CYNib6byzA3V1hrwsoM0lhzTQ/A5aimDOyJUcu4pcZZW3pZRLQohq4PtCiBEpZUrpgDFH7NsAfX19efsXy2Xkan4e6uu1MSgUucblcjE4OEhtbS1vvfVW3qfkX758mYWFBXw+34mjV/n9DRWHIoTA4/HkZSrgQVgslrQVDB7AiVdEUzn2rKyaZpqFhQWAU4XNU8Hj8TA5OYnX6+XOnTtx58lsNlNaWkppaSnRaBSHw/GKYxWNgs/3sr+V4myQC+dKf1TOVXZIrPcTQuj1fuei1konl87VwgLEyrAVipwTjUaJRCJZyXJJB0IILBbLqerC1LrGGUYIwZUrV1hfX+fp06csLy/nekiHsrGxgZQSj8eTydOcSAEt1WMzrZR2VgiFQpSUlCRdgYpEImk7z9jYGFtbW9TW1r7iPOnU19dTkKRLpsejKWWlY/VWBT2zh4pcnW+EEEVCiGL9OVq93/Pcjir95Mq5CgRgcxMaGrJ7boXiICoqKgCYmZnh888/jzftzUeCwSBra2tYLJZT2arKuTrjVFdXc/fuXYqLi3E6nbkezh5WV1cZHh4mEAggpWRwcJDp6emMRnxOo4CWr+pp+UhZWRlutzt+kYxEIrhcLlZWVvjkk0/S5ujX1dUBnEg4I7G/leLsoJyrc08N8KkQoh94APx7vd5PCLEAvIlW7/d7OR3lKTEaYW4OnE6t/ikbCKGlBFZWQp5nXikuGO+88w6vvfYa0Wg0r/pkhkIhJiYmmJubAzTF7aGhIcLhMA6H48Sfq/79zgE2mw2LxcLGxgZbW1uUl5dn7FzRmNWTLIogpWRzc5Pp6em4x28wGFhbW4vXg926dStjtWGnUUDLZ/W0fKS/X1Pf0+vYpqen46mCACMjI4yMjPD222+fKhVgampqz3mOw86OWr09i+TKuQLlXGWDfK73SycNDZoU+tYWjI1pzk5FBZSXQ5JAe1oQAlZXobMzM5+vUJwUk8kUz2p58eJFxlV7w+Fw0swaPdVvdHSUra2tPbLra2tr7OzsUFRUxK1bt05VG6acq3PCtWvXGBgYYHl5OWPOVTQa5dNPP407WAA1NTU0Njayvb3NxMQEoMlZ1tbWUl9fj8ViYWhoCCkl169fz7ToxrEU0IQQ9cAvSym/ftCxmRzsWebOnTs8fvyY9fV1xsfHiUQitLe3U1ZWhhCC58+f4/f7+eyzz7h69Wo8ApUK+spWIBAgFArR1dV17PFFo+D3Q4ZLwhQZINvNV1XkSpEJhNAi58XF0NSkpSlvbcHoqPZeVZXmbFks6TunlOD1audTKPKNgoIC3njjDe7du4fH49nTTiWdbG1t0d/fj9FoJBKJYDKZaGlpobKyknv37sX3a2xsjPfvXF5eZn19HYfDQVdX16lFN5RzdU7Qe0l98cUXdHZ2ZmRFYHZ2lmg0ytWrVykuLmZqaopoNMrjx48BaGtro6GhAaPRuOe4O3fupH0syTjuimgsDfDrhx2rSE5xcTEdHR2MjIwAWhPr+vr6+Puvv/464XCY8fHx+AqR3W7n0qVLBINBTCYTBoMBKSVSSp48eYLRaMRgMLC7u4vf749/Vk1NzbHH5/FojpVSyzp75CpypeaKIlPsd7Tcbq0P1YsXUFgIDgeUlZ0+lW9lRYuKxbpOKBR5R2FhIQ6HA6fTmRHnKhqNxjNrXnvtNVwuF0tLS2xsbMQDAHfu3MFut++xk5uammhK46qEcq7OEWNjYxn53Gg0ytLSErOzs9y+fTveS+vGjRvAy+aujY2NGTm/Ij9paGigvr6ezc3NeMFqIiaTiY6ODlZWVlhdXWV1dTWe5geacmQwGHzluI6ODgKBAHNzc7z55psnGpvLpUWuVle11/vTvo56THzu92cujUfxKhel5kpFyS4mQmjpgqWlcOkSbG9rAhQLC5qyqc0GtbUnc/aLiyF2W1Yo8hIpJRsbG1RXV6f9s71eL0NDQ5hMJt555x1A631ZW1uLlJIXL17Q3t6OJZ3h4gNQztU5wmw2x9OyEvH5fFit1hNHs3Z2duIefzLp7YusmnfREUIcWvRpMpl47733EEIQCoWIRCIIIdjd3cXtdjM9Pc2dO3ew2Wyv1PG1tbWdeFw1NRCJaMpZ2jj3Pu7fpv8k27ewUMm5ZxODAbIpJqXSAhW5QggtYlVWpl2vlpe11MHVVa02y+E43rUnEFAS7Ir8Rq+72h8likQihEIhCgsLT/zZk5OT+Hy+pLaDEILu7u4Tf/ZxUc7VOcLr9e5RYRkZGcHtduPz+SgtLeXmzZsHylkfhu5Q9fT0vJLyp1AchT7nEleLCgsLKSsry5hyZEEBtLZm5KMVGcZgyK6To5wrRT5gNGoiGA0NEAxq0ay5Oc3pcji0+qzD7E6vV/uMU9imCkXG0Rf5Nzc3KS4uxuv1Mjo6itvtBuD69esnVukrKipic3MzL3qQqizzc0SiY7W0tMTy8nK8Ye/29jYff/wxXq/32J+7vr4OcCpZSoVCoUiFi5IWqJ9bodiPxaKlBnZ3w+XL2v/DyAg8fw5ra5rDtZ/tbS0CplDkM7oNGo1GCQaDPH36NO5YAQwODvLJJ58cu1+mlJL5+flTRb7SiYpcnSPee+89vvjiCz788EMAent7KSsrQ0rJzs4OT5484eHDh1y7do2CgoKkxYSBQIBwOIzZbGZxcZGtrS3cbjclJSUninopFArFcci1FHsqdXgnqd3b/5igAKxQHIjNpv00NLysz1pc1BypysqXaYMul1bDpVDkMyUlJXR2djIyMsLs7CwA7777LkajkVAoxMzMDIuLi3zxxRf09vZSUFCQtJ2L2+3GZrPh9XqZnZ3F5XIBcPNmfuiSKefqHGEwGOjt7WVgYICamhrKYstYQghKSkr44IMPeP78Oc+fPwegvLycra0tampq2NjYeKVrdnFxcTwadkNVySoUiixgMGgiIj6f5mRJ+fIx8Xm6HhcX4eFD7bnJ9DKKBUc/prLPYceoclVFqiTWZ4XDsLEBMduUkhKtUbFqPaE4C+hiFiMjI7z++uvxchOz2UxHRwctLS189tlnPHr0CIDKykrW19dpaGhgcXGRwsJCdhM6c9vtdqLRKE1NTVit1ux/oSQo5+qcUVRUdKjCWnd3NxsbGwgh8Hg82Gw2wuFw3LHq6emhtLQUn89HWVkZu7u7SClPrfmvUCgUqVBUpBmPs7OaQWkwJH/cv81kOnjfwx6vXdPOq8pJFWcFk0kT7amp0dpOLC9rUSuVZqo4CxgMhriKXzLMZjN9fX2Ew2F2dnaIRCIYDIa4urDdbufatWuEw2FsNhtms5mdnR3seaQ8pSzmC4bBYIir+1VWVsa372/UqosP5Ev+aj7y+PHjdSHEbBZPWQmsZ/F8+UC+f+fmXA/gvGE2KzlphSJV7HZob8/1KBSK9KI7SmUpFhLqLYLyBeVcKRQnREqZ1aQeIcQjKWVfNs+Zay7id1YoFAqFQnF2UQoFCoVCoVAoFAqFQpEGlHOlUCgUCoVCoVAoFGlAOVcKxdnh27keQA64iN9ZoVAoFArFGUXIPG5JL4RYA7IpGJAu8r0I/7hk6/s0Z7uOSaFQnJwcXKPPw7X1sO+groHHIE9thLMwR7M9xnM9r/N0Hh7FWZinxyVvbNW8dq7OKuetCP+8fR+FQnE2OQ/XovPwHRQHcxb+vmdhjIrMch7nQD59J5UWqFDkIUKIXxFCrAohnids+0UhxIgQYkAI8R0hRFkOh5hWkn3fhPf+WyGEFEJUJjtWoVAoFAqFIl9QzpVCkZ/8KvC1fdu+D1yTUt4AxoCfzfagMsiv8ur3RQjRBHwFmMv2gBQKhUKhUCiOi3KuMsN5K8I/b98n75FSfgxs7tv2PSllOPbyHtCY9YFliGTfN8Y/Av4aoPKXFXA+rkXn4TsoDuYs/H3PwhgVmeU8zoG8+U6q5kqhyFOEEC3A70gpryV5798Bvyml/LWsDyxD7P++QohvAF+WUv4lIcQM0CelPG8FuAqFQqFQKM4RplwPQKFQHA8hxLeAMPDruR5LphBC2IBvAV/N9VgUCoVCoVAoUkWlBSoUZwghxE8APwT8uDzfYefLQCvQH4taNQJPhBC1OR2VQqFQKBQKxSEo5+qUnDdVN6Xalr8IIb4G/HXgG1JKX67Hk0mklINSymopZYuUsgVYAG5LKZdzPDRFBjjNdVQIMSOEGBRCPBNCPMraoF8dR7Lv8HNCiMXY2J4JIb5+wLFfE0KMCiEmhBB/I3ujVpyUs3DvV/dzBZyNuXpc8n1uK+fq9Pwq50vV7VdRqm05Rwjx/wW+AK4KIRaEEH8a+CdAMfD9mKH2v+Z0kGnkgO+ruDj8Kqe7jn5JStmb4x4nv0qSayfwj2Jj65VS/u7+N4UQRuCfAj8IdAN/TAjRndGRKtLBr5L/9/5fRd3PFWdjrh6XXyWP57Zyrk7JeVN1U6pt+YGU8o9JKeuklGYpZaOU8p9LKdullE0JhtpP53qc6SLZ9933fosSszi/nIfr6CHXzqO4C0xIKaeklEHgXwI/ktbBKdLOWZiz6n6ugLMxV49Lvs9t5Vxlnp8C/kOuB3EaYqpti1LK/lyPRaFQXEgOu45K4HtCiMdCiG9mcUyp8jOx1JtfEUKUJ3m/AZhPeL0Q26Y42+TlvV/dzxVJyMu5elzyaW4r5yqDnAdVtwTVtr+V67EoFIqLRwrX0bellLfR0ur+vBDivawN7mj+GZo4Sy/gBP4/SfYRSbapiMIZJl/v/ep+rthPvs7V45Jvc1s5VxniHKm6KdU2hUKRE1K5jkopl2KPq8B30NLs8gIp5YqUMiKljAL/G8nHtgA0JbxuBJayMT5F+snze7+6nyvi5PlcPS55NbdVn6sMkKDq9v5ZV3WTUg4C1fpr1cxVoVBkg1Suo0KIIsAgpdyJPf8q8PNZHOahCCHqpJTO2Mv/CnhF2Qp4CHQIIVqBReDHgD+epSEq0ki+3/vV/Vyhk+9z9bjk29xWkatTct5U3ZRqm0KhyDbHuY4KIeqFELrqXg3wqRCiH3gA/Hsp5Xdz8BUO+g7/ICYTPwB8CfjLsX3j3yFWVP4zwO8BL4B/JaUcysV3UKTOWbj3q/u5As7GXD0u+T63xdmPBCoUCoVCoVAoFApF7lGRK4VCoVAoFAqFQqFIA8q5UigUCoVCoVAoFIo0oJwrhUKhUCgUCoVCoUgDyrlSKBQKhUKhUCgUijSgnCuFQqFQKBQKhUKhSAPKuVIoFAqFQqFQKBSKNKCcK4VCoVAoFAqFQqFIA8q5UigUCoVCoVAoFIo0oJwrhUKhUCgUCoVCoUgDyrlSKM4hQoifE0L82iHvDwkhPsjeiBSKV1HzVKFQKBTnDeVcKRR5jhDiTwkhBoUQPiHEshDinwkhyk7zmVLKHinlh7HPP9TATTKeB0KIDiFEmxDiScL2AiHEPxdCzAohdoQQT4UQP7jvWJsQ4n8RQqwLIbaFEB8nvPclIcR/jm2fSXLeXiHEJ7H3F4QQf2vf+39BCDEthHALIR4JId5J/TeiOC0XaJ7+VSHE89ix00KIv7rv2P8shFiLzcN+IcSPJLxXJ4T4bSHEkhBCCiFajv9bUSgUCkU+o5wrhSKPEUL8FeAXgL8KlAJvAM3A94UQlgOOMWVwPObY+SeAO8CThLdNwDzwfmysfxP4V/sMyG8DFUBX7PEvJ7znBX4F7bsm4zeAj2PHvQ/8OSHEN2Ljeh34+8Afjp37nwPfEUIYT/hVFcfggs1TAfxJoBz4GvAzQogfS3j/LwF1UsoS4JvArwkh6mLvRYHvAj96+m+pUCgUinxESClzPQaFQpEEIUQJsAT8lJTyXyVstwNTwN+QUv6KEOLngGvALvAN4L8BGmPbIsDXgXHgJ6WU/bHPmAH+DJqh+dtoBmMAmJRS3jxkTLeAfyil/JIQ4heAWSnl/3LI/gPA35ZS/pYQ4irwEGiUUroPOeYHgF+WUrbs2+4D+qSUw7HX/xp4IqX8fwkh/ijwV6SUd2PvFQEeoF5K6TzoXIrTc1HnacKx/xjtXvoXkrx3F21B4D0p5YOE7SYgBLRKKWeOOodCoVAozg4qcqVQ5C9vAYXA/y9xo5TSA/wH4CsJm38E+DdAGfDrCdv+NdrK+28A/za2op/4Wd8F/p/Ab0op7QcZrEKInxRCuIDPgDdjz/8K8AtCCJcQojXJMTXAFWAotul1YBb427F0q0EhxHFW8P9H4E8KIcwxA/hN4Pdj7/0HwCiEeD0Wrfop4BmwfIzPV5yMCztPhRACeDfhWH377wghdoH7wIfAo2THKxQKheL8oZwrhSJ/qQTWpZThJO85Y+/rfCGl/LdSyqiU0h/b9lhK+W+klCHgH6IZwG+cZCBSyv9dSlkGPI59xg3gOVAipSyTUk4n7h8zjn8d+BdSypHYZj1KsQ3UAz8D/AshRFeKw/gdtLQ/PzAC/HMp5cPYezvAbwGfokU2/gfgm1KF5rPBRZ6nP4d2H/3f943jh4BitGjc70kpoyf5PgqFQqE4eyjn6hgcVVAtlLKVIr2sA5UH1KbUxd7XmU+yT3xbzLhbQDMWj4UQoiK26r+NFqX4EBgFrgJbQoj/et/+BuD/BIJohqmOHy0V6u9KKYNSyo+A/wx8NZUxoNWq/Dya8d0E/BdCiP9HbJc/gxat6gEswJ8AfkcIcezvqzg2F3KeCiF+Bq326g9KKQP7xyOlDEkp/wPaPP3Gcb+PQqFQKM4mF9a5EhdH2epL4hAFtoT93heaetXfTdj2gRAiKoTwJPz8RKrfSXFqvkCLwvyhxI2xeqIfBP5jwuZkEZqmhGMMaCvyS0n2OzS6I6XcjEUD/ixaLVQZmqPzw7FowP+YcB6BJiZRA/xoLBqhM3DYeY6gDYhIKf8PKWVYSrkA/Eu0yADATeDfSSnHYlGR76JFTd46xTkVqXHh5qkQ4qeAvwF8OTYXD8MEXD7qMxUKhUJxPriQzpW4WMpWRymw6ef/n9DqA/azFKtx0H/+xfG+neKkSCm3gb8N/M9CiK/Fao1a0OpTFtBW3Q/jjhDiD8Xm7n+NZgDfS7LfCtASM2wP/Txezs1baKlX+/lnaPPwhxPSvnQ+BuaAnxVCmIQQbwMfAL8HmmEthCgEzNpLUZjw/zgW2/bHY/vVAn8U6I+9/xD4g7HFCSGE+ApaHc3zI76T4pRcwHn642j1X1+RUk4lHiiE6BRC/KAQwhr7PfwJ4D3go4R9CoGC2MuC2GuFQqFQnBMunHMlNGWrvw38BSnld2OpGzPA/w3NwfkTsf1+Tgjxb4QQvyaEcAN/KvYRhUKI34xFkZ4IIW4mfPaMEOIHhBBfA/474I/Goj39HM41YDhWH9JHgnMlpfRKKX9OSjkTW5H/HWAazYBAaIX930CrL1mTUkaklI8Tjn8gpfw/0VS7DuKvAN9Dq2NR5BFSyn+ANpf+34AbzQGeR1sxfyUVaR//F5oDsgX834E/tG+FXudfxx43EqOmSbgDPBFCONCiSFuJbwohmtGiBr3AckK088dj3yWEJl7wdbR6lv8N+JMJtS7voaVk/S5wKfb8e7Fj3WiRkb8c+z7P0Bynvxc79v9Ai2R9iPZ7+sfAn034bEUGuWDz9O8CDuBhwrH/q/7xaHVYq8Aamiz7H5VSJo7Xj6ZkCdo1d79zp1AoFIozzIWTYo85Pr8DFO4vwBZC/AvAIqX8Y0KTDf4W8EfQJIALgL8e2/bH0AyCvwT8eeCKlDIUS7v7M1LK348d3y6l/BOHjOUngX+EViNiQJMotqPdbCPArSQF2DVoSla9UsoRIcSfRItK/T6aYeIEfk5K+Vv7jjtI3roZ+D5wG/gnwIKU8r+PvfcBmnG7BfiAfwv891JK70HfSaFQKBQKhUKhuKhcuMgVF1vZKhn/GPibMdnk/Yygre7WAX8AbUX4H6b8BRUKhUKhUCgUigvERXSuLqSy1QFj+GGgWEr5m8nel1IuSymHY87lNPDX0KSwFQqFQqFQKBQKxT4yJtKQxyQqW/0rfWOCstV/l7BvRpWtgDIhxI8BX5JS/lkhxHeAfyql/P3EffcpW309jQpsXwb6hBB6o9VSICKEuC6l/JFkw0arKVAoFAqFQqFQKBT7uHCRqwuobHWYAtvfRFNU6439/DZa8fZPxo79QAhxKaa+1gT8fbRaM4VCoVAoFAqFQrGPixi5Qkr5D4QQG2jKVpfR1K3+LfDjx1C2+hdo0umHKVv9CTRlq2kp5e0DPu8OmrT6UcpWATRlK/2tPyul/PWYkMaPAL+M1ndlllcV2P5zwkf60WSBP5BS7gA7CefyA95YVA00kYtfB8qBDbTfUWJkT5EhKisrZUtLS66HcS54/PjxupSyKtfjOGuoOZifqPmsUCgU+c2FUwtUKM4CfX198tGjR7kexrlACPFYStmX63GcNdQczE/UfFYoFIr85sKlBSoUCoVCoVAoFApFJlDOlUKhUCgUCoVCoVCkAeVcKRQKhUKhUCgUCkUauJCCFgqFIn/Qyz7T9SgEWK2ZG69CcRDpnstGIxQUZG68CoVCoUg/eelcKZWqi41Sw8p/IhGYnYVwWDMEo1HtcWEB3O6Xr1tbwWI52HgEzRlKfEy27TiPfj90d0NhYfq+ryI5q6uwuQkGg/a7NxhSe36cfQ2x/AopX841fX4d9pjKPoftOzkJwaD23GiEy5dfjiPZIxx/vh71XigEN2+e7m+kUCgUiuySl85VS0sLSqXq4iKEmM31GBSHs72tGX51dXuN4WhUMwZLSmBiAi5dArtdO+YwIzKdDA1l5nMVr7K2BrW1mgN9kLOiPw+FDn//oOeTkxAIgMsFOztgNms/dXVQVAQmk+b8mM3ao8n0cpv+PHEfi+VgZy/xcWcHrl3TjhschOvXte98mGOUTsJheP48/Z+rUCgUisySl86VQnFWEULMoPUOiwDhRMlkIcR/C/wiUCWlXM/NCNPDxIRm/BkMmvFpNGrPXS4tjcloBK8XPB7tuc32MgKhyDzZmIfBoDYHKioy5yiD5hh1dGhRUZsNiothelo7b3Gx5oRFIi9/kr0OBve+B3vnrf488fXOzktnzuvVfoxGzaFTKBQKheIglHOlUKSfL+03WoUQTcBXgLncDCm9zM7C229rhmaiMSuEZsjqjtXaGmxsQH09VFbmetQXjozOQ7dbi1Bm0rGCl065EC+dq8JCKC3Vnp8EPTJ2kFMWjWr77e5qUbOdHVhe1uZ1Z2f2avoy/btVKBQKRfpRzpVCkR3+EfDXgP8r1wM5LZubWjShvv7V97xeKC/XfgIBLWVsfV1FrfKItM1Dt1tzcDKNwfDS4dHnUeLzk36mwaDN44OoqYHGRi1ytbUF7e1ayqnRePLzKhQKheL8k9LtSQgxI4QYFEI8E0I8im37O0KIgdi27wkhkphayY9VZBYpJR9++CFTU1O5HspFRALfE0I8FkJ8E0AI8Q1gUUrZf9iBQohvCiEeCSEera2tZWOsJ2JhQXOakiHEXtU+KTXD+DAjVpERTjQPU52DUr6MXGUag+FlVEl3qBKfZ4pkczkcVs6VQqFQKA7nOCbP/hSTX5RS/k0AIcRfBP4W8NMpHqvIIF6vF4Dt7W2klAiVW5JN3pZSLgkhqoHvCyFGgG8BXz3qQCnlt4FvA/T19ckjds8ZTid0dSV/7yDnKpsGqczb31xWOdE8THUO+nyaMITZnM4hJ8dofJnGlxi5yvSc2j+XdYEN5VwpFAqF4jBOvPYnpXQnvCxCWylV5AHRWMHA9vY29+7dw+Vy5XZAFwgp5VLscRX4DvA+0Ar0x0QGGoEnQogDYj/5TTispQUmSwmEvQapwaBW+3NFpufh9nZ2olbwMnKV6FCdNi0wFfY7V2oeKxQKhSIVUr09vZJiAiCE+HtCiHngx9EiVykfu5+zkhKV72xtbQFQXl4OaCmCAwMDuRzShUEIUSSEKNafo0UJHkopq6WULVLKFmABuC2lXM7hUE/M0pKm0nZQml++pAVe5GBtNuZhtuqtIHnNVS7SAkMh5VwpFAqF4mhSNXleSTGRUn4spfwW8C0hxM8CPwP8D6keu3+ns5ISla9IKZmcnGRhYQEAg8FARUUFLS0tPHnyhGAwiMViyfEozz01wHdiaZgm4DeklN/N7ZDSi9Op9Rc6iHxIC1Rkdh5GIpqKnt6/LNPsr7lKjIxmEj0VUH8eDmd3kUCltyoUCsXZJKVbRWKKiRDiO8BdINFB+g3g35PEuUrhWMUpCQaDfP755xQVFfHGG29gNpvx+XzYY9ZPQ0MDn3/+Oe+99x6GfRZJKBTCYDBgVNbvqZFSTgE3j9inJTujyQzLy5oE+0EkS6XSm7IqskOm56HbrTlW2fqb7q+5ykZKIKjIlUKhUChOxpHOVSytxCCl3ElIMfl5IUSHlHI8tts3gJFUj03f8BUAQ0NDANy6dQtTbGm1OKEBjP58bGyMQCCA2WymtLSUyspKvvjiCwCuXbvGysoKlZWV1NTUZPkbKM4CHo8mr35Yv6pkq/3KID1fZEslUMdg0OaREC/nVzacq8QoWS4iVwqFQqE4m6Ryq0iaYiKE+C0hxFUgCswSUwqMSbL/spTy6wcdm/6vcTHZ2NhgaWmJ7e1tGhoa4o7VfkpLSykrK8Nms1FRUcHu7i7j4+OMj4/T1NREWVkZMzMz7Ozs4PP5lHOlSMri4sES7Dr7DVK12n/+8Puz2xDaYNDSEPV5lK0003yIXKmIr0KhUJw9jnSuDkoxkVL+6AH7LwFfP+xYxenZ3d1lcHCQsrIy2traqDukEMZqtdLb27tnW0VFBaFQKC584XA48Hq9PH/+PJPDVpxhnE5oaDh8n/2RK9Xj6vyRrciRjh65SlcD4VTZ71xFIpr8vEKhUCgUh6HMHmBzc5OJiQmuXr2K1WpFCIHZbM7rHlG6vHpnZyeFhYXHPt6epBp9Z2eHoqKi0w5NcQ6JRmFlBe7ePXy/ZKv92eiFpMgeUmY3omI05odzFQplT8RDoVAoFGcX5Vyh1SLt7u7y9OnTV957++23MeeZdSilZGRkhIaGhhM5VsmIRqPMz8/T2tqals9TnC/W18FqBZvt8P2SCVpYrZkfXyJKZS2zZNu50iNXegQ0l2mB2YzCqpRahUKhOJtkMbkjP1lbW2N3d5fKykoKCgooKiqioKCA2tpaiouLef78OTMzM/H+UfmAx+MBODQV8DjozprNZsPhcOx5b3V1lampKaSyWC80S0uHS7DrqMar559cOVfZbCAMua+52tqCsrLsnU+hUCgU6eFCR66klASDQUpKSrh27dor7wcCAcbHx/F6vSwuLlJWVkZTUxMl2ZTKSkBKSTgcZnJyEoCCgoJTf2Y0GmVkZIRgMMj169fjaZDDw8Osrq7G92tpacnbFElF5nE64fr1o/dL5lypmqvzRa6cq1ykBe6vH8ymc7W5Ce3t2TufQqFQKNLDhTR7otEoBoOBjz76CIDGxsak+xUUFMSdrkgkwuzsLE+ePOHNN99Mi2NzFHoPKiEEBoOBhw8f4vP5AOjt7T11uqKUkhcvXiCl5Pr16xiNRqSUzM7Osrq6SldXF2VlZTx48IBIJPJKjyzFxSAYBJfraKVAODhyFQ6HCQaD2I7KK0wTah0gc+TaucpVWqC+ULC7u4vBYMhoU3avV/u+2U6pVSgUCsXpuXDOlcvl4tmzZ/HXb7zxRkp1S0ajkZaWFlwuF48ePeLu3buEw2HcbjclJSVY03wXdDqdjI6Oxl9fvXoVn89HUVERLS0tlKUhX2RjY4O1tTVaWlpYWVmhoqKClZUVZmZm6Orqikuy22w27t27xzvvvKOiVxcQp1OT3k4lApWsz5XJBI8fP8bv9/P++++rOXTGuSiCFsn6XBmN8Pnn9ygtLeXWrVsZO/fmJlRUZOzjFQqFQpFBzp1zJaXE6/Xi8/mQUlJdXQ3AZ599RiQSQUrJpUuXqKiowGazHWv10WAwcPv2bZ4+fcpnn30GaD2kJiYmKCwsxOfzEYlEuHXrFqWlpSl/bjQaZXl5mcXFRWw2Gw0NDYyOjtLZ2YnD4WBlZYXR0VEMBgN9fX1pM071z/H5fCwuLjI2NgZAe3v7nl5XV69e5fHjx4TD4bwT91BknlTrreDgyJXeg+3TTz/l9ddfz+iqvyKzRKMXs+YqMcV1e3ubkZERrl69mvbFAim1eqsrV9L6sQqFQqHIEufKuZJSMjo6yvLyMlarFb/fz+zsLDU1NYTDYUBzFE4rBNHT00MgEMBqtWIymQiHwywtLSGEYHJykqGhIVpbWzEajXHn7jDm5+eZnp6msLCQtbU11tbWAKiN5WHV19ezvLxMW1tbWm/kDoeDDz74IP5aT/1LPIeUkvHxcZqbm5VjdUFZXoarV1Pbd/9qv9/v59GjRxgMEUCbY06nk+bm5gyNVpFp8iEtMAtZ2XucKynB49ng448H4+8vLy/T0tKSNsVWHY9Hc+LS/LEKhUKhyBLnxrnyeDw8fvwYq9XK66+/jtVqxePx8OjRI3w+Hy0tLRQUFKRFYc9isexZeTeZTFy6dAmAsrIynE4nCwsLeL1eqqqqCIfDRKNRCgoKkFLi9/spLCzEYDCwsrLC9PQ0zc3NtLa2srS0xNjY2B6BDT1ilWmM+woZpJQsLi4SCASUMXxBcbs1YzbVFKVEg9Tl2mBxcZDXX6+ltNRGaWkpOzs7TExMUF5ejtFoxGq14nQ6KS8vR0qJzWZTaYN5TKLjnC0MBm0O5rLP1fz8OOvri1y92oDVasXhcDA0NMSzZ8/o7u7GYrFgMplwOp3U1tYSDAZP3DNwa0ulBCoUCsVZ5tw4Vzs7O0gpuX37djwFyW6374nMZIPi4mKKi4vjTpIumiGEwGq1xgUpamtr8Xq97Ozs4HA44s5LfX099fX1WR3zQQQCAaanp7l27ZoyeC8oi4upCVno6Abp4uIi4+PjRKPQ1dUZT6fS/zeHh4fZ3d195fgbN25QoSzLvEXK7Dg2iSTW8cFeRyvz55WMjY2zvr5EcXEVHR0d8ff19O0XL17g9/vj23U115P0SNRTAjs70/MdFAqFQpF9zo1zpdc45YuiXX19PVarlZ2dHSoqKlhdXd3TK2t5eRnIzybFOtvb25SWllJeXp7roShOSCgUIhAIYLfbT3S80wlNTanvLwTs7GyxtDROVVUtPl/THmW3oqIi3n33XYxGI8FgkJWVFSorKzGZTIyPjyd1uI6LasmWObKdEqgjBOzu+tndFUSjhVlTC5yfn2B3d4mKigZMpr0N1mtra6mursZoNOLxeNja2qKhoYFwOMyTJ08IBoPHvrbv7Ggpj9lIe1QoFApFZjiTzpUuWhEOhyksLIzXKgF5FWEpLy+POya6cRuNRpmfn2d7e5umpqa8daxAk6L3+/1x6XrF2UMXXtEpLi7m9u3bKf2fRKOwtgZvvJH6+YSApaVxiouhpaUTp/NVY1xPP7VYLDTFPLdQKITL5aKlpSX1kymyTq6cq/9/e3ceG9mWH/b9e2pjFYvFfd+X5tLdr5fX3a/n9XvzpntkWRkNJI2lyIBsA1GgAA8GLAQIEEQWBnEMBQGSCIERxHassSLMP5rIMYLnGNZ4NCPIb+t+/fr1xiZ7YXNp7vtSZBVZC6vq5I/LW1y6SFaRtZH8fQDiFm/VrXuqeZq8v3t+53e01jx//jVjY7C0BEVF0N7esGskKd2Ugrm5KXp66ohGO1lb2/u8ivfloqKi+O/4YDBILBY70rIDKysg97KEEOJkOzHBlc/nA8ButxMOh3n8+HH8udLSUrxeL0VFRXkVXCVisVhOzPylkpISgsEg4XA47ZO2ReaZKagmt9uNz+fj7t27lJeX097efuDPdXHRWGcnlWvEaDRCMLjBtWudxGLJrUcUjUZ5/vw51dXVuFwuJicnmZubo6ioiO5kK2mIrMhVcOX3T+JyGWmlsViEkpJipqamWFxcpKamhubm5njKafrO6QWgpaWFoaHkUhEDgQDPnz/n3LlzRCIRJicn44UvDpvvq7Wxntz588dvuxBCiNw5EcGV1ppHjx69tf/OnTssLy8zNjZGU1NTvKiESI9wOAyQlQWTRfqEQiG8Xi8vX76koKCAW7duxZ8zR4hWV1e5f/8+77zzDpWVlQnfJ5kS7LFYjKWlJRwOBwsLC7x5M4nWUFVVxdLS4Rfi0WiU3t5e3G43HR0d8WqfSilCoRBa6yPdMMnzeywnVraDq/X19a2R/lmam+t4//1unj+Hjg7QOoDP52Nubo4vv/zy2CnWoVAIn8+Hy+Xi8ePHrK1F0dr4/ZdMEY1AIMCTJ09obW2loqKCR48exW9wrKysHBpcra0ZFQJllQIhhDjZTkRwBeByuWhsbKS2tpa5uTmcTifhcDjjizmeZWtra5SUlOT9aOBZprUmGAzicDgIBoNMT08zNTUVf/69997b9Xq73U5VVRVVVVXYbDb6+/spKirCYrFQXl5OJBKhurqa4uJiZmbg0qW3zxmLxZiamsLj8exakBvAarXQ3n4Dq9VBKGRcjEeju0ta79zOzy+yvLyG3x9kbu4+4XCIixevUFTk4f79LxkdnaW6ui7hsftttwa5RQZkMriKxWIEg0FcLhfLy8vMz88zNzcHgM3morm5a+t1RqDjcLhwuVxUVVXx7Nkz7t69S2FhIQUFBZSWlhIOh2lpaTlwTbXNzU0mJiaoqKjgyZMnu54rLS2jpuYi0agiFDL2HdSXX79+w8ZGmOHhMQYGhonFYrz77k02Nzd59uwJ1dUtuFzuhMdqDRMTkMTKHUIIIfLciQiulFJcunSJ58+fx8s1Dw8PEwqFsFqtXL16FZfLletmnjorKysUFxfnuhliH6urq7suCM0111wuFzdv3jw0KG5tbUVvXd0VFhYyOzvLysoKk5OT1NQ0MTTUSFdXAW/eGBd/sZhRPe3Zs88BY5/W0N39EaurC0xPv6Kh4SP++q8Vr18bc2OWl8Esfmk2Z+c2Gq2goKALpSyEQn48nnJWVsqYmwvg89nweovjF7Y7P06i9zK3k5Pw7ruQx9MZT6xQCF6+hHDY+Le2WLa3yTxOvE+zsDDD2NjrXT9HpaC+3phX5fXC+rrx5ffDxobRllgMtFbU1V1kc3MEu70Au72A4eFJ1tf9DA7OU1XVQFVVM2CJ92OtjQIZr159vRXgjKM19PTcZmpqgFBoHZvtCl9/bVTLfPMGKiqMPrVfP9zcbMHlqiAcDqAUlJZWMTtbyNraIuvrBczNbRfi2Ntvo1F49gx+67cy/zMUQgiRWUkFV0qpUcAHRIGI1vqGUup/BH4AxIB54L/UWk8nOPZ7wP8OWIE/1Vr/z0dpaGFhIRcvXuTJkyfYbDY6OjooLy9ndnaW3t5enE4nJSUl1NbWEggEKCsrkxGXY1hdXWVubo7r16/nuikigbW1NZ48ecK5c+doaGigv7+fwsJC3G43NTU1Sff9trbtCmg1NTWEw2EmJyd58GCc9fUJ+vsVpaUV+HyLNDQ0sbAwhccDN29+wOzsBC5XIfX1VpSqxWKpJRCAuTn47d+GFy/g66/h6tWDWmAD3l564OHD51y6VENnZ+prBe0ZgBBpFA4blezefXdnwH344737otHtxzMzE0xPj9DefhWHw83ISC8lJTXY7YVABQMD8Nd/DQ8fgsdjVLC8fdsIdKxWY8Fdq9WG3d5FKGTsLy2tpbBwjdXVScbGRpmYGMXlKsThsBEIrNHQ0MTc3ATFxfDeex8wMTFCbW0dpaWKCxd6UArGxozCGXfuwH/8j8Z5Du7L7q2vbaFQiG++ecUHH3RRXb3/BMSxMSN4k6mtQghx8qUycvVdrfXiju//WGv93wMopf5r4J8A/3DnAUopK/AvgL8NTALfKKX+vdb6xVEaW1hYyK1bt1BKxS8e6+vr4ymC09PTTE5OEo1Geffdd+Pl2UVqvF4v/f39dHd3H6nilcg8s3pjQ0NDfGQ3HRwOB+3t7fzVXzkpLJzGZlPMzy+iNQwMTGC1FtDUdJWxMQdWawcbGzA8vD3SsLkJ4+PQ32/c7TdHG5JN6QOj2trycoC2tussLyd/rLmNRtPyTyESiMWMn/POkSubbfvnfxSbm5to7eTKlVIAzp9/e8H06mr4jd+Ay5fhJz+BX/914+dsfsViiR4XU1PTw9RUAT6fl83NTfz+NWIxoy97PDVUVHQyPm7Dau1hYYH4PEGLxVjjbWQEKiuN0dCamtT6stawtLSKxVKMzVbN0tL259n72oEBkCnDQghxOhw5LVBrvbMwrRtItLrMTWBIaz0CoJT6C4zRriMFV5B4HStz0dHa2lr8fj+PHz9mfHyclpYWSWtL0ezsLENDQ/T09Oxb6EBkVygUIhKJEA6H6e3t3fVcpkZnR0fruX27no4O42J1bW2JjQ0fFRXNxGIWIhEIBrfnoJgXiZubRsrWo0fG3XiLxZhLYrQ1ua3WDjY2NIuLIRwOZ9LpgOa2shLSXDhObDEDqcHBt0ekzADroFRAI93Oitc7x+zsG+x2G9FoBLe7iNnZ/dMKg0GjPxUUGIUfFheN/WbfSzRKZmwt1NZ2UF1tjphplpdnicVilJY2EI0agaIZmO3syz6fsRTBo0fGKKzNZvTlvX1u5+O922DQxdKSj9XV/V9ntrW9PXM/NyGEENmT7CWIBn6ulNLAn2itfwSglPqfgP8CWAW+m+C4BmBix/eTwLcSnUAp9THwMXCsqn9ut5uuri4WFxcZHR3FbrdTWlp6aKWms87r9TI6OkowGOTKlSt4PJ5cN0ls+eqrr3Z9X11dTSAQoL7+7XS6dFhdheJioyJbQYGRelVWVoHNVoHNZqRd2WxmOtbuY2MxY52ed9+Fv/kbI9Dq6Unt/NGoZmZG0dZmOVLltMVFqRaYKXY7dHUZX3vtF+SYjzc3o3z99TfxAMbptG4VeFDU1bXvShXcm1ZYUGDM9ZqcNEaXHj82nrNYtlMDzf5o9tGd+83n7HZFRUVdfJ/5Orv97WqAa2tGWfTOTuO5y5dT78urqzHW123syL59y8qKEVhJUVYhhDgdkg2uPtRaTyulqoFfKKVeaa0/11r/EPihUuoPgd8H/oc9xyW6xEk0wsVWwPYjgBs3biR8TTKUUtTW1uJ2uxkYGKC0tJTR0VEsFgslJSWyXtMeWmuGhoaYn5+nvb2d6urq+MKYInXHmZ+4n+bm5vh6PktLS0SjUa5cuZL2dX1Ms7PGRaTbbdzN39w0igckSsEC4+LUvMi1WIwRhpIS4yL4KDH6+vo6drv9wCpv4mCZ6IdwcLVApQ5e10xrC7W1pdjtdqxWK4FAgKKiIs6dO3fgCGwsZixkfekSlJfD0BC88872c/unBb79fShkBPyJjjFHyqxW4ysQMPqwzWaMnB2lQMra2tqh2ROycLAQQpwuSV2dmX+AtdbzSqlPMNL9Pt/xkp8Af8nbwdUk0LTj+0YgpT/mR+XxeLhx40b88cjICENDQ3R0dFBbW5uNJpwIPp+P2dlZrl+/LvOr0ifl+YkHaWtrIxaLMTMzQ3NzM36/n6+++gq3243b7aahoYGioqK0NX5uDi5cgMbGw19rFifYebE6Nwelpckdv9fm5iaDg4PU1NSkfrDYK639EI5Xil0pxeXLl+nt7UVrTXNzMxMTE3z55ZeUl5djt9tpa2t7a62qWMwIcMzRrJ0BnJk2mA57A7XVVeNxSYnRl1MdWfL7/UxMTNBzwHCXkXIr862EEOI0OTS4Ukq5AYvW2rf1+FeAP1JKdWqtB7de9hvAqwSHfwN0KqXagCngd4C/n56mJ6+srIzLly/z8OFDGZXZw2azYbPZJLDKoCTnJ+5LKcW5c+c4d+6c+X40NDSwvLzM8PAwfr8/rSNZ8/OHVUXb2bbttCuTx2PciXe7jbv/yQoGg/T39+PxeGhtbU2lySIJx+2HxnscL+XSYrHsWpewvLwcv9/P/Pw8k5OTaK3p6uraNZJlBlRmcJWuYOrttu1+b62NAKu0FFyu1D631+vlxYsXtLa2xucEJ36dUZFQ5ggKIcTpkcyv9Brgk60/djbgJ1rrnyml/l+lVDdGiskYW3dAlVL1GCXXv6+1jiilfh/4K4xS7H+mtX6eiQ9ymM3NTSKRCJOTkzgcDqkkuMXpdBKJRNjc3HzrjrE4kqPOT0x63qFSKj5qVVhYyODgIF999RUVFRWcP3/+WEUulpeNC9nj1IFRantEK5kL4VgsxsjICDMzMzQ1NdHS0nLsQh0y5+po/fCwPpjuRYQtFgvFxcV4PB5cLheDg4MsLS3R1NREU5OR9BCLGSl5mQ6u9jKLTUSjxv8JnUQoGgqFGBwcZHV1la6uLqqqqg58vaQECiHE6XNocLVV6e9Kgv3/+T6vnwa+v+P7nwI/PUYb06KwsJDr16/j9Xp59uwZDoeD0tJStNb4/X78fj9lZWWsrKxw584dgsHgmZifZbFYcLvdrK6uSnXA9Djq/MQjzTusqKjA6XQSDAYZHx/nyy+/pKen59CLuv3MzBhlr49jZ3CVzIX4mzdvWFlZ4ebNmxTIrP50OVI/PKwPpju4MimlaGhooLCwEK01r169YmJigqtXrwKFWK3b6afZDK7Mfmy3JxdcvXjxgoKCAt5///1DsySiUaMioQzSCiHE6ZKlP1P5obCwkPr6ej744AN6enqYmZlhYWGBuro6ioqKWFlZAWBwcJB79+5x9+5ddDJ/UU+waDTK5uZmxoojnDU75ycC5vzEnX4CJLwxcVRut5uKigquXr2KxWJheXn5yP12dhaOW4TQvCg1q7kd/npFRUWFBFZplKl+mKngylRWVkZ5eTlXr14lHA7j8/kOnHOVSTuDK5stueBKKUVNTU1S6eerq0ZKoGSqCyHE6XImr6itVislJSXcuXMnvq+hoYHNzU3u3r1LJBKhubmZV69e4ff7T3VZ8jdv3lBcXCxpkmlwzPmJ6Tg/zc3NTE9P8+DBA2w2G8FgkM3NTQCuXbuGy+XaN/0zFjPKmH/44XHbAZFI8heNHo+H6ems1Lk5EzLZDzMdXJmcTieNjY0MDQ0Ri42zsAAWSxi7fZOioiqKi+soKyvL2DpvsB1cmX05meCqqKgIn89HRUXFoa+VlEAhhDidzmRwtR+73c7t27fjf7A3NjbY2Ng41cFVIBDAYrEwNzeH2+0+1Z81C1Kan5gJTU1N1NfXs7q6ysDAAB6Ph2AwyMbGBo8ePWJtbY1f//VfT7gY9/y8UYTiuNmwZnBlsxll3A/j9XrPRApuFmWsH2YruLJYLJw7d46WlhaGhowFh4uKKgiH51ldXeDp0zmCwSDf//73D3+zI0p15EprzerqalLrz0lKoBBCnF4SXO2x806ox+NhcnLyVJeF7uzsZHZ2luXlZUZGRujo6DjVnzeTUp2fmClWq5Xy8nJu3bplnp/FxUWKi4v54osvWF9fTxhEz85COn70qQZXi4uLlJSUMDc3J30vDTLZD7MVXJnsdjvV1Y1cutRINAoeTyd+/yr19TYePnyI1jpjo1epBlehUAifz8fGxgZer5fS0tJ9X2tWCZSUQCGEOH3O1JyrVASDQcbGxgikUkv6BHI6nbS2tnLhwgUuXbrE0NBQfO6ZOB2UUlRVVWG1WrHZbMzMzCR83cwM1NWl43xGUGW1bl+gHuTSpUt4PB7evHmTlvTAUz5NMqeyHVzB7lLsFoud8vJK7HY7NpuNpaWljJ031eDK6XRy+fJlbDYbz58/Z21tbd/XrqwYCyILIYQ4fWTkah8DAwMAvPfeezluSfZ4PB4uXrzI8+fPqaqqorm5WdK1TpE3b94A0Jhgdd9IxLibno71tc3gymbbvkA96IK8qKiIoqIiKioq6O3tZWVlhY6ODul7eShXwdXeghb9/f0AB64hdVwWy+45V8mMwpaXl1NeXo7b7aavr4/a2lpaW1t3FbiIRsHvh7a2jDVdCCFEDsnI1T5sNhsej+fMVTArLS3lvffew2Yz0m4OuvsqThav1wuQcMHo6WnjTno6ikbuLGiRzMiVqbCwkPfeew+Xy0Vvb2+8EIfIH7FYboKrvetcBQIBSkpKEs4dTJejlGI3VVZWcv36dTY2Nnj58uWu6p1er7HQtqQECiHE6STB1T4WFhZYX1/PdTNywuFw0N7eTnd3N319fYRCoVw3SaTBxsbGvs/NzaVnvhUcPbgC46ZGe3s75eXlvHr16sgl5WUR4czIh5ErM54Kh8MZPe9RSrHv5HQ6uXjxIuFwmImJifh+qRIohBCnmwRXBzhro1Z7VVVV0djYyPPnz4nFYrlujjimb33rWwAJg+W5uaOlBIbDYcbGxtBao7Xm008/ZWrq5ZGDK1NHRwcbGxuMjIykfrDImFwFVxaL8bW5aWzb29vTPh/W5/PF5yOGQiE+/fRT1tcX48VZjtKPLRYL58+fZ3R0lIWFhXhKoKx8IYQQp5fMudqHOfcoFArlVZCltSYcDmetTc3NzXi9XoaHhzl37lxG15URmROLxQgGg4CxcPROwSCsr0N1dWrv6fP5ePToEbA9nwvA652jpKSB0tLiIwdXFouFq1ev0tvbSyAQoL29PWE6o8iuXAdXkQjEYuG0L+6+vLzMs2fPgO35tgBTU/2UlX0Hm+3o9yFdLheXL1/m+fPnFBau4XI1Y7UmXmtOCCHEyScjV/uorKwEtuepZJvWmrGxMXw+3659n332GV999VXaLy72o5Ti3LlzrKysMDU1lZVzivRbXl7m6dOnFBYWvhWYz8xAZeV2ulUyVlZW4oHVTu++++7WI8exRq7AGDm+fv06Ho+Hx48fs7y8fLQ3EmmTD8HVmzeDvHnzhro0lLbUWjM1NRUPrHbq6elBKYhGVcpzrvYqLS3lxo0brK5uMjn5MH6jQwghxOkjI1f7yPUIzeTkJG/evGFhYYHr16/z2Wef7Xr+wYMHvPfeexmd0G1yu92cP3+e/v5+AoEAra2t2O1y5/UkcblcgFH9cm/fTnV9q+npaV6/fg3AlStXKNsxgSQajVJYWMTg4H1KSy+gVPWxLkqtVistLS04nU5ev37NjRs3sKWj6oY4klwEV9HodnAVDkNhoRObrZzu7u5jv/ezZ8/iS098+9vf3tW3/H4/NpuDFy8+o63tFlofL1vAZiugtLQHp/M1Q0NDvPPOO8d6PyGEEPlJRq4SePbsGX19fUD2511Fo1E+/fRThoeHAeMP/M7Aqru7mwsXLmR9/S2Px8ONGzeIxWI8ePCAycnJrI2eieObnJzc97nZWaivT/69zCp+t2/f3hVYgREMdXffwOEoZnj4BcvLk2lZd8put8u8vzygdWojnOmwd87VzMxk2ipJmiNId+7ceStoLyoqorPzFlrDo0dfsb7uPda5VleNhYMdDpv0ZSGEOMXkFnACZvrRlStXKMnizGOv18vCwgI2m40rV67gdDpZXV1lYWGB6upqKioqABgcHKS0tDQro1Y72e12uru7aWho4NWrV2xsbNDV1ZXVNoijiUQiAHz22Wd0dHRQV1eHzWbD7zcuWFNZLshMlQ0Gg/ERsZ2UgpqaKwQCXzA7O4TWb6+rlSq/309xcXFSo1YS82dOLtMCrVZjFAs0Pp+PTz/9lCtXrlBcXLxrHalUmDepotFowvfQWtHW9gGh0D3m5oaAG0f+HGaVwJmZjbduSgghhDg9ZOQqgbKyMs6fP09ZWVnW0gOfPn3K06dPmZqaIhKJ4PF4sNvtVFZWcv78+XhgBVBcXIzX6+Wbb77J+ggWGHd0r1y5wtzcHH6/P+vnF6nbGQQPDw/z5ZdfAjA1lXqVwJpDcgiNeVZWLBZwOArY2Dh+Hy0pKWFxcTEeJIrcyIc5VzduXI8/19vby/3794/83rW1tdhstn1/z2tNvJhFYWHZkUfMolHw+aC01Pj9PTc3d9QmCyGEyHMSXO0Ri8VYWVnJ+gKm5ijUhx9+yM2bNw98bU1NDbdv38bpdPL1119no3lvsdvt1NTU7KqsJfKX3W7nzp073L59m+Li4vj+o6xvNTs7S0tLS8JRKzAuvjc3zW2Ix4+/5uHDh0dueyQSYXx8nIaGBplvlWO5Cq52FkcpLvZw584dvvOd7wDs2w8Po7VmdnaWq1ev7psFYGTvRVEKlpYmuHv3LkNDQymfy0wJDIcDzMzM0NTUdKQ2CyGEyH9JBVdKqVGlVJ9S6qlS6uHWvj9WSr1SSj1TSn2ilCpN9th8ZqY8mdUCs2V5eZmSkhLsdntSJaeVUvEJ0Z9++ilLS0uZbuIuWmsWFhZob2/P6nnF8WitWVtbi4+Ezs9DKkXXtNZ4vV5isRhDQ0N88803jI2Nsba2hs/n48WLF4TDQWIxzS/90h3eeec2WnOsEc6hoSFisZj0tTyQy5Grvcz5Uh0dHUd6X3PUPxAI8Pz5c/r6+hgfHycQCDA/P8/AwACRSIyCggLu3LlDV9dHaH3w/MX9eL3GqNWzZ8+orKykOtV1D4QQQpwYqdwG/q7WenHH978A/lBrHVFK/S/AHwJ/kOSxectM13j58iWlpaW43e6M/yE0R8mam5tTOk4pxQcffMC9e/fo6+vjgw8+wOFwZKKJb/H7/VgsFkpLS7NyPpEeZhGS4uJilpeNC+UdA1mHMtfImpiYwGq1opTizZs3u9a5WlmZx+uFb75xEwgYQVyqfXuntbU1Ojo6UppXI8uxZUY+BVdmXz5q5dLV1VUAnj9/TnFxMX6/n6WlpV0LV09OzlBQYCUWK2JuroDCQrh69WrK7V9bg7q6TYLBIM3NzTmvRiuEECJzjpxjo7X++Y5v7wO/ffzm5F5XVxd+v5/V1dX4H18zJ7+0tDQjfxSVUlRUVNDX18elS5d2za86jMPhoLa2Fq11Vsuju91uIpFIvNiGOBnMAEUpxcxM6vOtbDYbly9fZmpqiosXL2KxWOKjmMPDI/T0XGB83MHr1yssLQ2wvLxOcTHU1bUTCGwXmzhsu/Ox3V7G7Kwfi6UiqWNztDTdmRCJGCmfkYgR8CiV+WDLDK72FioxU0SPWrW0rq6O9fV1CgoK4ml6WmtGR0eZn1/g8uWrhMNhtF5ibu4Ni4vQ1uakoKA0pb68sgJOJzidNtxuN+vr63JTSgghTrFkgysN/FwppYE/0Vr/aM/zvwf8myMeC4BS6mPgYzjeXe7jslqtdHV18eLFCxoaGhgZGYkvMPnRRx8duSrVYed0Op2UlZWlXEUqFosxOztLbW0tsVgsI+1LxGKxUFNTw9LSkgRXJ4jWGqUU0WiUkRFj8eCZGeMCVuuDt9uPy4Fy+vrM7xVaV1NQUM3YGDx9CuPjdZw7p5iaekNl5fvsGNiKX4wnuw2HC1lYmMflatm1f79jzM+T7ZLhZ8HYmBG8FhZu9wkzwDKLTpiPE+1L9XmljOBkacnYer3GFiASsbKxAXNzEdzuw/tv4u05AgFYXjb3KbRuw+FoY2AAnj51UFBQREnJBjMzinfe6Y735cP6obkdGICuLuOGhtvtZnl5WYIrIYQ4xZINrj7UWk8rpaqBXyilXmmtPwdQSv0QiAB/nuqxO20FXT8CuHHjRk6LKZeUlHDr1i0A6uvrGR0dZXJyMmOpHF6vl6mpKT788MOUy6ub8wZmZ2eZnZ0FjPWHMp12EgwGmZmZ4Vvf+lZGzyPSa3l5Ga01DQ0t/Mt/Cb/8y/DmDdhsRtEAu924sLXbjX12+/Z+c2uzGV97L4ZNa2tGyekf/KCWv/mbWtraoK3t6G1uaqrkq68GaWraTGp0VjKuMicWg44O2Hk/Zf8gPLl90ej+z4dC8OQJBALQ329UtzR/vn7/G2KxEkZGSrBad/dh87HZV82vRP3Y7Ms7gzrTixdGYHTjxnn+7b+F8+eNwDJZkQg8fgzm/cLy8nJGR0dl/qAQQpxiSQVXWuvpre28UuoT4CbwuVLqd4FfA/6W3ic3Y79j09H4bLDZbCwvL+N0OjO2rlQ0GsXpdB6pEprb7ebWrVsUFBQwODjI1NQUn332GdeuXdtVFS6dvF4vg4ODtLa24nQ6M3IOkRmzs7O4XC4GBy04HPDBB8bFrXmBu/dxJALhMPj92/vN1LCdIxbmY6VgeNgIsMxRjpUVMJeLOyj9b79tNGonEnHz+ee9lJVVU1nZgNVq3fc9ZJ2rzInFjEDH50s80mQGLukKcDc2oLUVfu3XwO2GZ8/gBz8wfsb/6T9N0dzcSkND4r6793EkYgRrO/dvbpprZ21XJNzZr0dHjZS+ykrj/8DSEmzV0UgqLXB+3ihkYf6aLC4uJhwO8+zZM6qrq6mpqZH5V0IIccocejWvlHIDFq21b+vxrwB/pJT6HkYBi9ta641Ujk1f8zNvbW2NjY0N3nvvvYydY2JiIl7UYn19ncnJSUpKSvB4PPGgTilFOBxmdnaWiooK3G53/PiCggIAOjs7mZqaAshYIBiLxejr66OtrY2GhoaMnENkzsTEBENDQ1RVXaa83MXiYurpVEoZF9BglqrevkDV2riIXVoygqxQyPjyelNPB9x+bKGn5xo+n5f5+QkikTDNzef2Pba+XlICM6WoyAicg8GDR6W0Ti0dcL8UQZ/P+BocNNI9FxbArDcxPr7E8+ev+cEPPj5COuB2cQ6HY7sfm8+ZjyMR47wjI8Zr19a2byzA4Vu/3xj5MrlcLm7dusXi4iKjo6NYrVaqqqoy9wMTQgiRdckMldQAn2zdXbMBP9Fa/0wpNQQUYKT6AdzXWv9DpVQ98Kda6+/vd2wGPkfGmKXZMxWsaK3jhTM+++wzADweDzMzM/HXOBwObty4wb1793A6nYyPj1NeXk5jYyMFBQU4HI548AVGGfmioqKMtDcUCgHQ0NAgd1xPoEgkgsViYX09Rl0djI/vTo/amQK4N51qZ6qV1Wpc/Jrbnf891teN8u6/9EvGnX+PB1Ko0bIPK1CBUgvY7erAQhwZGrAVQFWVkRZ42IC1OYJ4WIrgQc+bo0oFBUaAEw4bI6Dj4xCLafx+TSgEAwMaq1Ul7Lf79WezT5t9eGd/3vlrbWAALl82vvr7k/vsO/8NlpagsXH3fpvNRnV1NRMTE/I7VAghTqFDgyut9QhwJcH+c/u8fhr4/kHHniSNjY2MjIywubl55MUqD6KU4qOPPuKLL74A4Pz581RXV+Pz+VBKsb6+zsLCAvfu3QOgp6cnPr9qfn4eMEauOjs76e/vBzJbECQUCuFwOOKFEcTJsbCwQFFREX/n7/wWn33m5jd/07iYTCalKhg8+HnYvkCdmdmek2Mu/JougUAgY+mu4nDJlmLfmVp3HOvrxjl7eqChASYn4fZtePVqAIulko8++k2sVnVg3zQfm9tA4ODXmu22Wo2RKnN1i1R/3a2tgcu1Pcq7UywWIxAIJLWmoRBCiJPlyKXYzwqfzwdkbuQKjGqBH330UTz9D4hfQHo8Hmpqanj9+jWRSITi4mJKS0vp7u4mGo3i9/t5+vRpPLDq7OzM6MVnSUkJFosFv9+f8nkSzbeR9K3sMSuU+f0FlJQkfwc+GWZhgmjUSIXaylRNa3CltWZjY2NXSqzIrmyvc7Vf1ceqqipmZ2eJRCJYrdb46FM6VqPYGYyNjRlzvSD1vmwuHJxIKBTCarVmdfkMIYQQ2SHB1SHM9Dq/35+xVDvYXn8oEaUU3d3db+2z2WyUlpbS2trK6OgoFy9ezHj+vlIKh8OR9AjC2BgsLprH7t5qDVevSoCVLXa7ne7ubu7efU1T0zUgfRd2Sm2nWzkc2z/TdI9cRSKRIxV+EemR6+DKPHdFRQW1tbUMDg5y4cKFtN782pnmao7GmudOti9rbQRXPT2Jn49Go1lbNkMIIUR2yWXtIYJbpaFSXX8qm+rr62lvb8/axOiSkhKmp6eTeq3XC5cuwfXrcO2a8fXuu8ZXooVBTzql1KhSqk8p9VQp9XBr3x8rpV4ppZ4ppT5RSpXmqn01NTWEQh7W1/uPvPjqYXZeEKczuFJK0d7eztOnT+MjyiKxTPXDXAZXeytBtra2EgqFGB0dzcr5U+nLfr9xk8Ecwd3L4/FQWlrKw4cPiUQi6WmsEEKIvCDB1SGGh4dpbm6OV+TLRw6HI6sLLzc1NbG6uhoPPPcTCBh3fs05C3udtsBqh+9qra9qrW9sff8L4B2t9WXgNfCHuWpYLGZBqR4KCzd59eoVgUCA9fX1NJ9j92hDOn/OTU1NFBUVsWKuJLsPmQ4IZKAf5nrkaien08n58+eZnp5mfHycjY2NeMGddDGrHkJqwdXKirHW236UUvT09LC5uZn2/39CCCFyS4KrA4RCIZaXl2ncW+7pjItuVTDY2Ng4cPTD5zMqxZ11Wuufa63N29P3gZx1qNlZKCuzcPXqZaLRKF9//TXffPNNvGLlzMwM09PTxMx61EeQqZErgM3NTdbW1qSoxRGkox9mO7iKRg9OGy4sLOTKlSvMzc3x4MEDnjx5Ev+99ObNG5aXl9N27lT68kHzrUyrq6vEYrGMppsLIYTIPpm8cICFhQXAGBkS2xwOB11dXbx69QqHw0F5eTn19fVvLSi8tpaOEtwnjgZ+rpTSwJ9orX+05/nfA/5NogOVUh8DH0PmKj7Ozhpl0p1OJxcvXmRlZQW/38+TJ09QSsWD5YmJCbq6uvB4PCnPcTIrrkH6g6uFhQUcDke8OIfY15H64WF9MJ9Grkwej4dr167h9XqZmZnhwYMHu54vLS2lq6uLgoKClOY5RaPGHMJEi1UfZH3dGLE/rGDM9PQ0tbW1MvdKCCFOGQmuDhAIBAgEAgwMDLxVUOKsq6+vp66uDq/Xy/z8PH19fVy/fj0+sVxrY95Ba+vB73MK07c+1FpPK6WqMdaAe6W1/hxAKfVDIAL8eaIDty6AfwRw48aNjCRNzs7Cja0kMaUU5eXllJeX4/F44pX4SkpKmJiYoLe3F4Dr169jtVqTLhu9d+TqGINgb4lEIhlZEuEUOlI/PKwP5mNwBUZBoIqKCsrLy1lYWCAYDFJdXY3NZuP169c8ePAAq9XKtWvXsNvtSd0w2xtcJXuj4LCUQJNZ/VUIIcTpImmBB+jo6GBoaIif/vSnuW5KXlJKUVZWRldXFxsbG2xubsaf29gw5lqdtcJuW+u8obWeBz4BbgIopX4X+DXgH+hMVZI4RDhspGqaa1DtVFZWRkNDA6WlpSilaG5u5qOPPqKkpIRHjx7x4MEDRkZGDi2CYS4Eu7cyZLqEQiGpFpiETPTDbAdW8HZBi53bRJRSVFdX09zcjNPpxGazcf78eT788EOi0SjffPMN9+7dY21t7dBzR6PGCFSqwVUyKYEgfVkIIU4r+c1+gFevXtHT00PrYcMvZ9zc3BxOp3PX3eC1tbM330op5QYsWmvf1uNfAf5IKfU94A+A21rrjVy1b2YGKiuTL31vtVp59913WV9fZ3Z2lvHxccbHx7l06RJaayorK986JhY72t3+ZHi9Xqamprhy5eB1yU9xoZSkZKof5jq4MkeSYjEj6EmWUgq73c7t27cJBAL09/fz+PFjXC4XLS0tFBYWJhxBOsrI1cbWv+phg7wTExP4/X5qamqS/yBCCCFOBBm52sfGxgbz8/NUVFTQ2dmZ6+bkteXlZcrLy+MLIIMxQnIGM15qgC+VUr3AA+AvtdY/A/454MFIz3qqlPpXuWjc7Cwc5VrO7XbT0dHB1atXAejr66O/P3Ep96OmUh1mZWWFvr4+Wlpa8npZhDyRkX6Y6+DKDKqOmmaqlKKwsJCbN2/S0tJCIBDg1atX9PX1JXx9or58mGRGraamphgeHubSpUsyciWEEKeQ/Gbfh1nquWe/VSBFXHV1NWNjY/HvYzFjUvdZK4KltR4B3hpW0Vqfy0Fz3jI3B++/f/TjS0tL+c53vsPExARv3rzZFUybIpGjpVId5uXLlzgcDhlFTkKm+mE+BFfmyNVxtbW10dTURH9/P16vN+FrjpIW6PVCS8v+z2utGRwcpLm5mYozWO1HCCHOAhm52kdDQwMejydeMVDsb3h4mJYdVxTr6+BypZa6IzIrGDTWHUuQyZcSi8VCXV0dQML/G5kauSovLycWix26tprInNMUXAHYbLb4MhvpGIUNBo2bC273wed1Op2sra0da7kDIYQQ+UuCqwN0d3czMTHBxkbOpsmcCLFYbFclubM43yrfpTrf6iB2ux0g4YKtmQquOjs7KSwsZGZmJqnXn8IqlDl32oIrIL58RCQSeeu5VEdhk0kJVEpx7do11tfXD10IWwghxMkkwdUBioqKqKioYGBgQAKsA7hcLqampgiHw0Dy863OeuGBbDrqfKuDzM3NvbUvGgW7Pf3BldVqxeVysb6+fvw3E0dyGoOrnQuiv/1cajcKkq0S6HA4KCgokL4shBCnlARXh+jq6qK4uJhXr17luil5q6enh1gsxuPHjwmHowQCh6fGiOyan4fa2vS8lznXyufzvfXc3nkqkL4guqmpidXVVRYXF9PzhiIluQyuzD50nIIWiZgj7vvdKEg2uAqHIRRKfsS+tbWVyclJCbCEEOIUkuDqEFarlba2NkKhUNIpSWeN0+mku7sbm83G2Ng8bnd60s9EemxsGBd+x51vBUYK6OjoKEC8euBOmUoLBGOE9NKlSwcWIRCZk8vgytyaj9MhHA4zMDAAkLAibCp92euFkpLk/30qKytpamri4cOHCVMShRBCnFxJXQIrpUaVUn1b5Xsfbu37Y6XUK6XUM6XUJ0qp0n2O/Z5SakApNaSU+sdpbHvWWCwWLl++zODgIL29vUSjURYWFiRVcI9AIEAsVpTSfCuZG5N5s7PpCawAHj58yOLiIu+//z6lCXKgMhlcAZSUlFBVVcXq6mr63lQk5TQFV5ubm9y7dw+n08lHH32UsPLl3r4MBwdXyaQE7tTY2IjD4cDv96d2oBBCiLyWyvjCd7XWV7XWN7a+/wXwjtb6MvAa+MO9ByilrMC/AH4VuAD8PaXUhWO2OSfcbjcffvghDoeDu3fv8vz5c4aGhnZVmdJas7S0dCbvRK6urhKNRtncdEkxizyTzgIjxcXF+P1+nj9/nnSFtXQKh8PYbLaExTREZuVDcJWutEBzfanJyUmmp6cTvibZGwWRiDE6nOq6fsFgEIfDIX1ZCCFOmSMnb2mtf661NqOI+0BjgpfdBIa01iNa6zDwF8APjnrOXLNarfT09NDZ2cn58+fZ3Nzk888/x+fzEY1GefHiBX19fdy9e5fJycn4ZOmz4PXr1zQ0NBOJ2GS+VZ5ZX4cdxRyP5dw5Y6kkn8+XsCx6JkauvF4vL1++JBQK8dVXXzEzM0PxGVyhOtfyIbhK18iVUorr168DxlISiSTbl1dXjZsXyaRCz8zM8Pr1a7TWfP311/h8PtzyC1MIIU6VZBcR1sDPlVIa+BOt9Y/2PP97wL9JcFwDMLHj+0ngW4lOoJT6GPgYoLm5OclmZZ9SKr7OT01NDQMDAzx69Cj+/MWLFwEYGxvjzZs3XLp0iZKSkvixp9Hm5iahUIiCgkqUklS/fBIOGxeEDkd63s9ms/HBBx9w7949Xr58ybVr13Y9H4mkHlytrKwQDAax2WwUFxdTUFDA9PQ0o6Oj8QqUsF10oKOjg9p0VecQSct2cKW18ZWpOVcej4crV67Q29vL1NQUDQ0Nu55PNrjamRI4OzsLGMsVlJSUYLVaGRkZYWJiYtcx5mjZjRs3KDprq60LIcQpl2xw9aHWelopVQ38Qin1Smv9OYBS6odABPjzBMcl+lOc8FJrK2D7EcCNGzdOTJHurq4uWlpaCIfDOJ1OHFtXsVVVVYyOjvL06VPAmMD8zjvv5LClmROLxYhEIkQikhKYb8yy+OmssOZwOHj//fe5f/8+4XA43uch9ZErv99Pb28vSqm30gxLS0vp6emhsLAQq9XK4uIiBQUFlJeXp+/DiKTlIrgyR4Oi0e3gKp0JAWVlZXR3dzM6OroruDIDu73rXO39fxSLGf/HWluN4P/Vq1c4nc63RnVra2tpbGykoKCAUCjE2toapaWlu9YHFEIIcTokFVxprae3tvNKqU8w0v0+V0r9LvBrwN/SiSZgGCNVTTu+bwQSJ7ifUEopnE5nfDHKnVpaWqiqqiIYDNLX18fAwAB+v5/q6moaGxtPzUiW3W7HZrOxsOCjtlYufPOJGVwFAul9X3NEaW8fNoMr00HBlc/n49GjR5SXl3Px4kWsVivRaJQHDx7Q2dlJ5Z4qHOaI8UFk7bTMyXZwtXeNKzO42txM73kWFxffmvdkLimws/8m6surq8ayE0tL87x8+ZJz587R0NCAUopAIMDXX3/NrVu3KCgoiB9jt9tltEoIIU6xQ4MrpZQbsGitfVuPfwX4I6XU94A/AG5rrfcrm/cN0KmUagOmgN8B/n56mp7/lFK43W5cLhdNTU1MTExQVFTE8PAwFovlrTSUk8qo3GbF4SjD5cp1a8ROPh80NhrzrtLJLNpisViJRDShUJixsTE2NjoJhxVrazAzY0z0X1w0imrA7ovT4eFpgkEoL29jbc269ZyVrq5bgHHc3mPMx/ttYzFYXk7vZxWGXAdXVmt60wJNhYWFW5VOIRqNsbq6xtKSj0ikiWDQ6IezszA3Z3x+c7qf1jAxYawfZ5Z0r62tjd9wcLlc3LlzJ72NFUIIkfeSGbmqAT7Z+oNhA36itf6ZUmoIKMBIEwS4r7X+h0qpeuBPtdbf11pHlFK/D/wVYAX+TGv9PCOfJI9ZLBY6Ojro6OgAjOIPg4ODDA4O0t7entdzzA6zubnJ4OAgbncVxcUqpYsvGWXILHO+VWEhrKzAwoJxYar18bfT0/N4vfD4cYyhoS/jc+0WF6fR+hqPHxezvm7MwZqdherq7Qtzczs9vUI4DOGwh3D47ed3Pk52C8aCySL9ch1cmYsJLy6Cy5Vafz3ouZcvJ7Z+F4UZGbkHGCNXfv8wGxsf8eiRFZ/P+D9ktRK/gaQ19PdDZydEo1EqKiriVQiFEEKcXYf+JdBajwBXEuw/t8/rp4Hv7/j+p8BPj9HGU8cMqO7fv8/IyAiBQICZmRkaGxvj1dhOiufPjVi5uLhV5lvlGZ8PioqMi8jJSWhuNi6OLRZja7UaKXzm96lsu7paefBglvX1L6mrg+7ubiKRKF9+OUQg8JjS0ka+/e06YrFCvvhC0dVlFK5YXl7GYrEwOTlJUVGUzs5O0jmAm+5RDbEtH4KrjQ1jBKmqand/PGo/VgoaGy/R39/HxsY96ustXLhwgbGxBUZH5/D7v6Cmpptf/uVKhodtLC0pOjuNqn8TEwEgytdfTwGcuN/dQgghMkNus+WAzWbDZrPR0dHB+Pg4MzMzgDEh+qT8gY7FYvT397O+vs7NmzcZGLBRX5/rVomdfD6jRLQ5Kf84A6Q77/Qb81GcXLp0k2fPHtPTc5miomJCIWhqasTlGsDrneRnP5skGjVGkv7Df3j7PQsKXChVj7nM0GEpf8mkB0pwlTlaQygES0vb85/2Biv7BTBHkSi4Ugrs9uP15Z0jV7EYFBVV0Nl5iZcv+7lx4wMsFhuVlZUodZ6JiS+YmRng3/27AXw+Y77XyorxPouL4HYbf0Kbm5txSU60EEIIJLjKqaamJpqajHofn3/++YkqLz08PMzy8jK3bt1CazvRKEeab3VKanrkJZ/PuBBdWzMev3jBrlL55oVrMmlV5nG7L5oLqa39NqurxvuHw8a2vr6bxsZzVFSEUUqj9QZO5zjt7RdxOAq2CgPorXZsp5LubNtR0gHNggMnOMs2r7nd4Pcb/WlncLJfv9mZkpdKMGY+Xl+HqSmjGMviojG3yWYz5vK9fLm7D5gpg8n25bfPW0FDw+34vCqv1zjvuXMf4vfHqK4O43JpwuFVPJ5lWlvP8/q1lVu3wO3Wp6Y4kRBCiOOT4CpPVFRUMDExEZ+Xle/C4TA1NTUUFBSwtISkBOahqipjpCEUgpIS44IR3p6LYrdvpwjabMbjgoLt/ebWYtm93fs4EDCOb2+H9XUr3d1GtD0wUMilS5V7WpeZi1GtkUWsM8TphJaW1I9LFPQcFIyZW6vVGCmKRIwiEoWFRlqgy2X05b3Hm+mBifqy2Y/N9MGD+rHFYgRzm5tQXW0hGrVw+bKN5WXwet20t9ezvm4EmkbRPwmshBBCbJPgKk90dXWxsLDAysoKZWVluW7Ooerr6+nt7UVrjct1Ho9HLjDyzc6B0LU1uHTJuHjcybwwjUaNL/Nxon3h8MHPR6NQUWG8rzmKZI4oiLNr56hnqvbOxwsEjPfaWqt9FzNl9bB+HIkYffmgfhyLGYUq9ivFvnPhYCGEEGInCa7yhFll6qQEV2VlZXzrW9/iyZMn+Hxr1NWV5LpJ4gBmCeu9wZVZ2GLv/uMyL0QPW0RYiFQcFKwrtT1ilS6RyO7gyuT1GgsHCyGEEHsd4V6iyIT1rYWI6k9QVQiXy4XWVtbXvSRYQ1nkkUysD3QQCa5EJuSqH+98HAwao1uSfiqEECIRCa7yRGFhIQBjY2M5bklqLJYiCgqiuW6GOIQEV+I0yIfgSlIChRBCHESCqzxh2ZqQYJZlPync7nr8/mnC4XCumyIOkMuL0mwGVxLInW4SXAkhhMh3ElzlCb31F9x94nJNymhtbeDJkyfx1EaRf5SSkStx8pnznrLVp/aW+g+HjbRAqY4qhBBiPxJc5YFwOMyrV69QSnH58uVcNydpwaBxwdHd3UZ1dTWPHz8mGj3bKYJKqVGlVJ9S6qlS6uHWvr+rlHqulIoppW7kol25TAsU2Zev/TAdcjl6tbZmLGsg/VoIIcR+JLjKIa01MzMzfPPNN9jtdr797W9TUFCQ62YlzefbvoPb2tqKw+FgaWkpqWNP+WjGd7XWV7XW5gVsP/BbwOe5alC2S6LvV8I6W+cWQB72w3TI5Sjs6qqkBAohhDiYlGLPoWg0ysDAAO+88w6VlXsXWc1/Pp9xFxdAKYXT6YynN4ptWuuXYPwb5Uq27/bD28GVBD25lQ/9MB1yNXIVixnrbBUXZ+/cQgghTh4Zucohm81GXV0d/f39fPrppycupW7nyBVAQUGBzLsCDfxcKfVIKfVxKgcqpT5WSj1USj1cWFhIa6NymUoFp36kMh8dqR9msg+mS65GYefnjZtJ6V4TTgghxOkiwVWOdXR0xB9/8cUXJybACgSMiwyHA9bW1ujr6yMQCBDL9vBI/vlQa30N+FXgHymlvpPsgVrrH2mtb2itb1RVVaW1UflQZU1k1ZH6YSb7YLrkqi9PTEBjY/bOK4QQ4mSS4CrHbDYbd+7c4dq1awB5n1antWZkZIS7d78CVgCYmppiaWmJaDRKW1tb0u91wrOTEtJaT29t54FPgJu5bZEh18GVyK587YfpkIu+HI3C3Bw0NWXvvEIIIU6mpOZcKaVGAR8QBSJa6xtKqb8L/FPgPHBTa/0w2WOP3+zTJxKJANDX18e7776b1XPHYrH4OluJaK158eIFS0tLO0amypmY6AUqWVpaora2lp6enqy0N18ppdyARWvt23r8K8Af5bhZQO6Dqzy/Z3Cq5HM/TIdc9OWpKWOu1dZa70IIIcS+Uilo8V2t9eKO783KU39yhGPFHuXl5dy8eZMHDx4QCoWyVjVwamqKwcFBXC4X4XAYm81GS0sL1dXVaK25e/du/LXd3d0EAgHq6+t5+dJBNNqLUoq6ujrOnTuXlfbmuRrgk62CATbgJ1rrnymlfhP4P4Aq4C+VUk+11v9ZNhtmscDmZvbOJ8FVTuVtP0yHXBRnGR+XUSshhBDJOXK1wNNSeSqfFBYWUlFRwfj4OJ2dnRk/38rKCoODg1gsFs6fP8/q6irDw8PMz8/z+vVrADweD52dnXg8nvjPOhAAu52sj7DlO631CHAlwf5PMFKzckZGrs6OfO6H6ZCLvjw3B9evZ++cQgghTq5kgyuz8pQG/kRr/aMUznGcY8+UWCzG0tJSVsqyRyIRBgYGaGtro7m5GaUUxcXFNG3dnh0dHWV6eprrCa4o9lYJFPkvV2sD7X2caRLEnX7ZDq5WVoxzSgl2IYQQyUg2uPpQaz2tlKoGfqGUeqW1TnYhyqSO3SoX/DFAc3Nzkm99uoTDYQBaWloyep6VlRV6e3sBqKqqSjj62NraSmtra8LjfT4oK8tkC0W6yciVOC2y3Zd9Pqiry975hBBCnGxJVQs8TuWpZI89CSWAM81ms1FQUEAgEHjruenpaZaXl9NyHofDARhBnMvlSvl4v//4I1dysZ1dss6VOC2y3ZcdDujqyt75hBBCnGyHjlwdp/LUaa9alW7BYJBQKBSvHAjw6aef7npNVVUVPT09WI+xkqX5/mVlZSnPmTPXt7Lbj3x6kQO5WHg10eNsn1ucPtlMcQ0GoaoKamqycz4hhBAnXzIjVzXAl0qpXuAB8Jdm5Sml1CRwC6Py1F8BKKXqlVI/PejY9H+M02Fzq5xbJBJBax0vKmGxWPBsDRUtLCzwxRdfEAwGj3ye+fl5AEpLS1M+VuZbnUySFihOi2z25dVVOMKvSSGEEGfYoSNXqVae2koD/P5Bx4rEysrKuHDhAi9fvmRkZASAW7du7SrLvrCwwODgIPfv3+eDDz4gGo3um9oXi8WIxWJYrVZ8Ph+jo6PYbDbm5+f3nU91GJlvdTJJcCVOi2yOwnq9UFubnXMJIYQ4HY5cil1kRlVVFVprXr58SVdX11vrXVVVVVFVVcWnn37KvXv3AGONrMLCQnw+H+3t7czOzhKLxZibm9t1rMfjYXl5meLi4iMXDfH54LBDzQufg7axmKRvZVMugivzfBJciXTKVl+ORIw0aBmpF0IIkQoJrvKMUoqamhpqDknyf//995mZmcFut7OyskIwGCQYDNLX1xefU9XS0kJFRQVv3rzh/PnzWK1WFhYWKC4uxmJJqpbJLtGo8fX8+f6Bk/EZdm8T7VMKnM6UmyCOSEauxGmRrb68umoEVkf4VSmEEOIMk+DqhHI6nbS1tQHQ2Ni467lYLIZSKl6s4sqV7czM2mPkuFit8O67uy+aE21F/pHgSpwW2QyuZL6VEEKIVMk9uVPIYrGkXAUw+fc2giyr1XhssRgXzxJY5TcpxS5Oi2z0Za1hbQ1KSjJ7HiGEEKePBFdCnAHZLF9tnm/vCKcQ6ZCN4MrnM9KWbZLbIYQQIkXyp0OIM8AcXdQ6+WDHLDxy0Ha/55aWYHzc2Hq9xnpBfv/u9z7K9rDXpPL5xMl0lOAq2X5rbldWZNRKCCHE0UhwJcQZoTW8fr0dZB12wWkGZGbqZypbjwfq6oz3qayE4mJjFGC/eXqHFT9J5RgZbTjdrFbY2IChocODf3ObqJ8e1IdtNqPfCiGEEKnKy8uQR48eLSqlxrJ4ykpgMYvny7V8/7wtuW7AafTOO8YIUjIBUjrm0e2psyJEWhQUwPnzsLmZfMAkhBBCZEteBlda66psnk8p9VBrfSOb58yls/Z5haGgwPgS4qQrLMx1C4QQQojE5J6eEEIIIYQQQqSBBFdCCCGEEEIIkQYSXBl+lOsGZNlZ+7xCCCGEEEJknARXgNb6TAUbZ+3zCiGEEEIIkQ1K71xARgiRF5RSC4BUzEzNfp+hJdtFck6DHPTBw+RzH81m26Q/CyFEHpPgSghxKipInobPIPaXzz/ffG6bEEKI7DpTaYFKqT9TSs0rpfp37PtjpdQrpdQzpdQnSqnSHDYx7RJ95h3P/bdKKa2UkuUyhRBCCCGEOKYzFVwBPwa+t2ffL4B3tNaXgdfAH2a7URn2Y97+zCilmoC/DYxnu0FCCCGEEEKcRmcquNJafw4s79n3c611ZOvb+0Bj1huWQYk+85Z/Bvx3gOSFCjgdFSRPw2cQ+8vnn28+t00IIUQWnangKgm/B/zHXDci05RSvwFMaa17c90WkR9OQwXJ0/AZxP7y+eebz20TQgiRXbZcNyBfKKV+CESAP891WzJJKVUI/BD4lVy3RQghhBBCiNNERq4ApdTvAr8G/AN9+ssndgBtQK9SahQjDfKxUqo2p60SQgghhBDihDvzwZVS6nvAHwC/obXeyHV7Mk1r3ae1rtZat2qtW4FJ4JrWejbHTRMZcJwKmUqpUaVUn1LqqVLqYdYa/XY7En2Gf6qUmtpq21Ol1Pf3OfZ7SqkBpdSQUuofZ6/V4qjyvaqrVGAVQghxkDMVXCml/m/gK6BbKTWplPqvgH8OeIBfbF2k/aucNjLN9vnM4uz4McerkPldrfXVHK/h82MSVLwE/tlW265qrX+690mllBX4F8CvAheAv6eUupDRlop0+DH5XdX1x0gFViGEEPs4U3OutNZ/L8Hu/yvrDcmifT7zzudbs9QUkQNa68+VUq179v18x7f3gd/OaqNSlOgzJOkmMKS1HgFQSv0F8APgRRqbJ9Is3/vsAf3RrMD6/2W3RUIIIfLJmRq5EkK85aAKmRr4uVLqkVLq4yy2KVm/v5Um9mdKqbIEzzcAEzu+n9zaJ062vKvqKhVYhRBCmCS4EuKMSqJC5oda62sYaXX/SCn1naw17nD/J0ZxlqvADPC/JXiNSrDvtBesOdXysarrjgqs/yTXbRFCCJF7ElwJcQYlUyFTaz29tZ0HPsFIs8sLWus5rXVUax0D/jWJ2zYJNO34vhGYzkb7RPrlcVVXqcAqhBAiToIrIc6YZCpkKqXcSimP+RhjXbS3qqPlilKqbse3v0nitn0DdCql2pRSDuB3gH+fjfaJ9Mrnqq5SgVUIIcROElwJcYqlUiFTKVWvlDKr7tUAXyqleoEHwF9qrX+Wg4+w32f4X7fKxD8Dvgv8N1uvjX8GrXUE+H3gr4CXwP+jtX6ei88gkpfvVV2lAqsQQoiDqPzKrhBCCCGEEEKIk0lGroQQQgghhBAiDSS4EkIIIYQQQog0kOBKCCGEEEIIIdJAgishhBBCCCGESAMJroQQQgghhBAiDSS4EkIIIYQQQog0kOBKCCGEEEIIIdLg/wdDIndoDl+uCAAAAABJRU5ErkJggg==\n", - "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "import math\n", - "\n", - "orbits = products['orbitnumber'].unique()\n", - "\n", - "ncols = 5\n", - "fig, axs = plt.subplots(nrows=math.ceil(len(orbits) / ncols), ncols=ncols, figsize=(12, 12))\n", - "fig.tight_layout(h_pad=2) # h_pad=2 works better if we have titles in our subplots\n", - "axs = axs.flatten() # lets us address a subplot with a 1d index\n", - "\n", - "for ax, orbit in zip(axs, sorted(orbits)):\n", - " ax.set_title('Orbit #{}'.format(orbit))\n", - " per_orbit = products[products['orbitnumber'] == orbit]\n", - " per_orbit.plot(ax=ax, color='None', edgecolor='blue', alpha=0.2)\n", - " brandenburg.plot(ax=ax, color='None', edgecolor='gray', alpha=0.5)\n", - " \n", - "# hide empty subplots\n", - "for ax in axs[len(orbits):]:\n", - " ax.axis('off')" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We can nicely see a repeating pattern. The covered area shifts slightly to the left in each pass before re-appearing on the right. The exact same area is covered every 143 orbits, which is one repeat cycle.\n", - "\n", - "The oribt numbers are counted per Sentinel-2 satellite. There are currently two satellites in the Sentinel-2 program, S2A and S2B. These can be identified using the product `title`:" - ] - }, - { - "cell_type": "code", - "execution_count": 30, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "array(['S2A', 'S2B'], dtype=object)" - ] - }, - "execution_count": 30, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products['title'].apply(lambda t: t.split('_')[0]).unique()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "S2A has been launched earlier, which is why the orbit numbers are higher:" - ] - }, - { - "cell_type": "code", - "execution_count": 13, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "array([26231, 26188, 26145, 26131, 26088, 26045, 26002, 25988, 25945,\n", - " 25902, 25859, 25845])" - ] - }, - "execution_count": 13, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products[products['title'].str.startswith('S2A')]['orbitnumber'].unique()" - ] - }, - { - "cell_type": "code", - "execution_count": 14, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "array([17308, 17294, 17251, 17208, 17165, 17151, 17108, 17065, 17022,\n", - " 17008, 16965])" - ] - }, - "execution_count": 14, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products[products['title'].str.startswith('S2B')]['orbitnumber'].unique()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "## Ensuring Complete Coverage\n", - "\n", - "What is the minimum time span in those four weeks to ensure a coverage of all of Brandenburg?\n", - "To find out we iterate through the returned products, for each iteration $i$ unifying the associated product's geometry $P_i$ with all products we already iterated through:\n", - "\n", - "\\begin{align}\n", - "P &= \\{P_1, P_2, \\cdots, P_n\\} \\\\\n", - "U_1 &= \\{\\} \\\\\n", - "U_{n+1} &= U_{n} \\cup P_n\n", - "\\end{align}\n", - "\n", - "Given the shape of Brandenburg $B$ the condition for termination is when $B$ is contained entirely in the unified shape $U_n$:\n", - "\n", - "$$\n", - "B = B \\cap U_n\n", - "$$" - ] - }, - { - "cell_type": "code", - "execution_count": 15, - "metadata": {}, - "outputs": [], - "source": [ - "brandenburg_geometry = brandenburg.iloc[0].geometry" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Before we continue we do a sanity check: Is the total area covered by the returned products big enough to cover the entirety of Brandenburg?" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Are the products sorted in the order of their capture or do we need to sort them?" - ] - }, - { - "cell_type": "code", - "execution_count": 35, - "metadata": {}, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - "CPU times: user 42.1 ms, sys: 3.37 ms, total: 45.5 ms\n", - "Wall time: 44.1 ms\n" - ] - }, - { - "data": { - "text/plain": [ - "True" - ] - }, - "execution_count": 35, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "%time products['geometry'].unary_union.contains(brandenburg_geometry)" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "It is!\n", - "The `unary_union` operation is also sufficiently small for the algorithm to terminate in a reasonable amount of time." - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "### Coverage Algorithm" - ] - }, - { - "cell_type": "code", - "execution_count": 32, - "metadata": {}, - "outputs": [], - "source": [ - "import numpy as np\n", - "import pandas as pd\n", - "import geopandas as gpd\n", - "\n", - "# we use tqdm to display progress bars\n", - "from tqdm.notebook import tqdm" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We would like " - ] - }, - { - "cell_type": "code", - "execution_count": 17, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "True" - ] - }, - "execution_count": 17, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "pd.Series(np.unique(products['beginposition'].values)).is_monotonic" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "No need to sort.\n", - "If we iterate through them in the order they are returned from the API we can get a set of products covering our area of interest that is…\n", - "\n", - "1. …as close to the start of our observation time span as possible\n", - "2. …captured over a time span that is as small as possible\n", - "\n", - "The code for the algorithm is very short thanks to the `shapely` geometry operators:" - ] - }, - { - "cell_type": "code", - "execution_count": 20, - "metadata": {}, - "outputs": [ - { - "data": { - "application/vnd.jupyter.widget-view+json": { - "model_id": "a2b7752b986d486f88994d75860a28e5", - "version_major": 2, - "version_minor": 0 - }, - "text/plain": [ - "HBox(children=(HTML(value=''), FloatProgress(value=0.0, max=181.0), HTML(value='')))" - ] - }, - "metadata": {}, - "output_type": "display_data" - }, - { - "name": "stdout", - "output_type": "stream", - "text": [ - "\n" - ] - } - ], - "source": [ - "for idx, product in tqdm(products.iterrows(), total=len(products)):\n", - " union = products.loc[:idx].unary_union\n", - " if union.contains(brandenburg_geometry):\n", - " break" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "The blue line represents the outline of the area we selected to cover the geometry shown in pink." - ] - }, - { - "cell_type": "code", - "execution_count": 22, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "" - ] - }, - "execution_count": 22, - "metadata": {}, - "output_type": "execute_result" - }, - { - "data": { - "image/png": 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\n", - "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "ax = gpd.GeoSeries(union).plot(color='None', edgecolor='b', alpha=0.2)\n", - "brandenburg.plot(ax=ax, color='None', edgecolor='gray')" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We can see that our algorithm worked.\n", - "\n", - "What is the delta between the capture date of the first and the last product contained in our union?" - ] - }, - { - "cell_type": "code", - "execution_count": 23, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "Timedelta('3 days 00:10:00')" - ] - }, - "execution_count": 23, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products_in_union = products.loc[:idx]\n", - "products_in_union.iloc[0]['beginposition'] - products_in_union.iloc[-1]['beginposition']" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "This small delta suggests that only few orbits were needed to capture the entire area:" - ] - }, - { - "cell_type": "code", - "execution_count": 33, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "array([26231, 17308, 17294, 26188])" - ] - }, - "execution_count": 33, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products_in_union['orbitnumber'].unique()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "## Considering Cloud Coverage\n", - "\n", - "For the union above we did not consider cloud coverage at all.\n", - "A plot of the cloud coverage can give us an estimate of how useful the combined image would be without plotting it:" - ] - }, - { - "cell_type": "code", - "execution_count": 34, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "" - ] - }, - "execution_count": 34, - "metadata": {}, - "output_type": "execute_result" - }, - { - "data": { - "image/png": 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- "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "products_in_union['cloudcoverpercentage'].plot.hist()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Not good.\n", - "A cloud coverage of 100% is not of much use for us because it amounts to an image that does not contain any of the surface features we are interested in.\n", - "\n", - "We might have to make a compromise between recency and cloud coverage in some cases." - ] - }, - { - "cell_type": "code", - "execution_count": 25, - "metadata": {}, - "outputs": [ - { - "data": { - "text/plain": [ - "(Timestamp('2020-06-30 10:20:31.024000'),\n", - " Timestamp('2020-06-27 10:10:31.024000'))" - ] - }, - "execution_count": 25, - "metadata": {}, - "output_type": "execute_result" - } - ], - "source": [ - "products_in_union.iloc[0]['beginposition'], products_in_union.iloc[-1]['beginposition']" - ] - }, - { - "cell_type": "code", - "execution_count": 26, - "metadata": {}, - "outputs": [ - { - "data": { - "application/vnd.jupyter.widget-view+json": { - "model_id": "8cc92fa09d2e46cf865326b9af4df694", - "version_major": 2, - "version_minor": 0 - }, - "text/plain": [ - "HBox(children=(HTML(value=''), FloatProgress(value=0.0, max=76.0), HTML(value='')))" - ] - }, - "metadata": {}, - "output_type": "display_data" - }, - { - "name": "stdout", - "output_type": "stream", - "text": [ - "\n" - ] - } - ], - "source": [ - "less_cloudy_products = products[products['cloudcoverpercentage'] < 50]\n", - "for idx, product in tqdm(less_cloudy_products.iterrows(), total=len(less_cloudy_products)):\n", - " union = less_cloudy_products.loc[:idx].unary_union\n", - " if union.contains(brandenburg_geometry):\n", - " break" - ] - }, - { - "cell_type": "code", - "execution_count": 27, - "metadata": {}, - "outputs": [ - { - "name": "stderr", - "output_type": "stream", - "text": [ - "/opt/conda/lib/python3.8/site-packages/geopandas/plotting.py:146: MatplotlibDeprecationWarning: Using a string of single character colors as a color sequence is deprecated since 3.2 and will be removed two minor releases later. Use an explicit list instead.\n", - " collection = PatchCollection([PolygonPatch(poly) for poly in geoms], **kwargs)\n" - ] - }, - { - "ename": "ValueError", - "evalue": "Expected 2-dimensional array, got 1", - "output_type": "error", - "traceback": [ - "\u001b[0;31m\u001b[0m", - "\u001b[0;31mValueError\u001b[0mTraceback (most recent call last)", - "\u001b[0;32m\u001b[0m in \u001b[0;36m\u001b[0;34m\u001b[0m\n\u001b[0;32m----> 1\u001b[0;31m \u001b[0max\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mgpd\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mGeoSeries\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0munion\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mplot\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mcolor\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;34m''\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0medgecolor\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;34m'b'\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m 2\u001b[0m \u001b[0mbrandenburg\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mplot\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0max\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0max\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0mcolor\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;34m''\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0medgecolor\u001b[0m\u001b[0;34m=\u001b[0m\u001b[0;34m'pink'\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n", - "\u001b[0;32m/opt/conda/lib/python3.8/site-packages/geopandas/geoseries.py\u001b[0m in \u001b[0;36mplot\u001b[0;34m(self, *args, **kwargs)\u001b[0m\n\u001b[1;32m 440\u001b[0m \u001b[0mthere\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 441\u001b[0m \"\"\"\n\u001b[0;32m--> 442\u001b[0;31m \u001b[0;32mreturn\u001b[0m \u001b[0mplot_series\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0mself\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0;34m*\u001b[0m\u001b[0margs\u001b[0m\u001b[0;34m,\u001b[0m \u001b[0;34m**\u001b[0m\u001b[0mkwargs\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m 443\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 444\u001b[0m \u001b[0mplot\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0m__doc__\u001b[0m \u001b[0;34m=\u001b[0m \u001b[0mplot_series\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0m__doc__\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n", - "\u001b[0;32m/opt/conda/lib/python3.8/site-packages/geopandas/plotting.py\u001b[0m in \u001b[0;36mplot_series\u001b[0;34m(s, cmap, color, ax, figsize, aspect, **style_kwds)\u001b[0m\n\u001b[1;32m 431\u001b[0m )\n\u001b[1;32m 432\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0;32m--> 433\u001b[0;31m \u001b[0mplt\u001b[0m\u001b[0;34m.\u001b[0m\u001b[0mdraw\u001b[0m\u001b[0;34m(\u001b[0m\u001b[0;34m)\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[0m\u001b[1;32m 434\u001b[0m \u001b[0;32mreturn\u001b[0m \u001b[0max\u001b[0m\u001b[0;34m\u001b[0m\u001b[0;34m\u001b[0m\u001b[0m\n\u001b[1;32m 435\u001b[0m \u001b[0;34m\u001b[0m\u001b[0m\n", - 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"\u001b[0;31mValueError\u001b[0m: Expected 2-dimensional array, got 1" - ] - }, - { - "data": { - "text/plain": [ - "
" - ] - }, - "metadata": { - "needs_background": "light" - }, - "output_type": "display_data" - } - ], - "source": [ - "ax = gpd.GeoSeries(union).plot(color='', edgecolor='b')\n", - "brandenburg.plot(ax=ax, color='', edgecolor='pink')" - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [ - "products_in_union = less_cloudy_products.loc[:idx]\n", - "products_in_union.iloc[0]['beginposition'] - products_in_union.iloc[-1]['beginposition']" - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [ - "products_in_union['cloudcoverpercentage'].plot.hist()" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "We can find less cloudy products if we increase the timespan to 15 days." - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [ - "products_in_union.iloc[0]['beginposition'], products_in_union.iloc[-1]['beginposition']" - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [ - "products_in_union" - ] - }, - { - "cell_type": "markdown", - "metadata": {}, - "source": [ - "Let's try to further reduce the amount of products we need to download by dropping identical geometries, keeping the one with the smallest cloud cover:" - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [ - "deduplicated = products_in_union.sort_values(by='cloudcoverpercentage').drop_duplicates(subset=['geometry'])\n", - "deduplicated" - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [ - "deduplicated['cloudcoverpercentage'].plot.hist()" - ] - }, - { - "cell_type": "code", - "execution_count": null, - "metadata": {}, - "outputs": [], - "source": [] - } - ], - "metadata": { - "kernelspec": { - "display_name": "Python 3", - "language": "python", - "name": "python3" - }, - "language_info": { - "codemirror_mode": { - "name": "ipython", - "version": 3 - }, - "file_extension": ".py", - "mimetype": "text/x-python", - "name": "python", - "nbconvert_exporter": "python", - "pygments_lexer": "ipython3", - "version": "3.8.6" - } - }, - "nbformat": 4, - "nbformat_minor": 4 -} diff --git a/true-color-image/01c Coverage Analysis.ipynb b/true-color-image/01c Coverage Analysis.ipynb new file mode 100644 index 0000000..03edf7d --- /dev/null +++ b/true-color-image/01c Coverage Analysis.ipynb @@ -0,0 +1,4968 @@ +{ + "cells": [ + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "# When is Brandenburg Covered in its Entirety?\n", + "\n", + "When trying to generate mosaics covering the entire federal state of Brandenburg it was discovered that even over relatively long time frames (i.e. four weeks) uncovered areas could be detected.\n", + "This discovery stands in contrast with the claim that the revisit time in that given latitude would be approximately one week.\n", + "This notebook contains the research that was undertaken to find out over which time frame exactly an image of the entire federal state can be generated." + ] + }, + { + "cell_type": "code", + "execution_count": 1, + "metadata": {}, + "outputs": [], + "source": [ + "import sentinel_helpers" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We first fetch the geometry of the area we are interested in" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 2, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "brandenburg = sentinel_helpers.search_osm('Brandenburg, Germany')[:1]\n", + "brandenburg.plot()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Now we fetch all available Sentinel-2 level 2a products on SciHub in the last year:" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "metadata": {}, + "outputs": [], + "source": [ + "import os\n", + "from sentinelsat import SentinelAPI\n", + "\n", + "api = SentinelAPI(os.getenv('SCIHUB_USERNAME'), os.getenv('SCIHUB_PASSWORD'))" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We simplify the geometry and convert it to wkt we can run intersection queries against the api:" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "metadata": {}, + "outputs": [], + "source": [ + "footprint = brandenburg.convex_hull[0].wkt" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The time frame we are interested in spans 4 weeks (i.e. approximately one month in the Gregorian calendar):" + ] + }, + { + "cell_type": "code", + "execution_count": 5, + "metadata": { + "scrolled": true + }, + "outputs": [], + "source": [ + "from datetime import date\n", + "import datetime\n", + "\n", + "end_date = date(2020, 7, 1)\n", + "start_date = end_date - datetime.timedelta(weeks=4)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "## Which Area Exactly is Covered by the Products?" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "metadata": {}, + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "Querying products: 100%|██████████| 181/181 [00:01<00:00, 60.42 products/s]\n", + "/opt/conda/lib/python3.8/site-packages/pyproj/crs/crs.py:53: FutureWarning: '+init=:' syntax is deprecated. ':' is the preferred initialization method. When making the change, be mindful of axis order changes: https://pyproj4.github.io/pyproj/stable/gotchas.html#axis-order-changes-in-proj-6\n", + " return _prepare_from_string(\" \".join(pjargs))\n" + ] + } + ], + "source": [ + "products = api.query(footprint,\n", + " platformname='Sentinel-2',\n", + " processinglevel='Level-2A',\n", + " date=(start_date, end_date))\n", + "products = api.to_geodataframe(products)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Let's verify visually that we have enough products to cover the area we are interested in:" + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "metadata": {}, + "outputs": [], + "source": [ + "import matplotlib.pyplot as plt\n", + "%matplotlib inline" + ] + }, + { + "cell_type": "code", + "execution_count": 8, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 8, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + 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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "# let's get an overview of all products\n", + "ax = products.plot(color='None', edgecolor='blue', alpha=0.1, figsize=(16, 9))\n", + "brandenburg.plot(ax=ax, color='None', edgecolor='red')" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "In order to be able to conviently reference the products by UTM tile we extract that information from the product identifier and save it in a separate column." + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 T33UUS\n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 T33UUT\n", + "f07d56ae-df3c-4402-a63d-e3879e4e671d T33UVV\n", + "6c1721a4-3628-49dd-a312-788111bf2ce9 T33UVU\n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 T33UVT\n", + "Name: tile, dtype: object" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products['tile'] = products['identifier'].map(lambda s: s.split('_')[5])\n", + "products['tile'].head()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Some UTM tiles start with `T32` while others start with `T33`:" + ] + }, + { + "cell_type": "code", + "execution_count": 10, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(75, 106)" + ] + }, + "execution_count": 10, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products['tile'].str.startswith('T32').sum(), products['tile'].str.startswith('T33').sum()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Which tile exactly a product is covering depends on the exact position of the satellite. It also determines the angle of the cutoff of the pixel image. In the plot below `T32…` tiles are plotted in blue and `T33…` tiles are plotted in green:" + ] + }, + { + "cell_type": "code", + "execution_count": 11, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 11, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "ax = products[products['tile'].str.startswith('T32')].plot(color='None', edgecolor='blue', alpha=0.1, figsize=(16, 9))\n", + "products[products['tile'].str.startswith('T33')].plot(ax=ax, color='None', edgecolor='green', alpha=0.1)\n", + "brandenburg.plot(ax=ax, color='None', edgecolor='red')" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We can see that because the satellites are crossing the area more frequently than their repeat frequency, the area covered per orbit is slightly different. This can be made more complicated when dealing with hardware failures. \n", + "\n", + "Each orbit gets a designated `orbitnumber` which allows us to plot all products in our area per orbit." + ] + }, + { + "cell_type": "code", + "execution_count": 12, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "import math\n", + "\n", + "orbits = products['orbitnumber'].unique()\n", + "\n", + "ncols = 5\n", + "fig, axs = plt.subplots(nrows=math.ceil(len(orbits) / ncols), ncols=ncols, figsize=(12, 12))\n", + "fig.tight_layout(h_pad=2) # h_pad=2 works better if we have titles in our subplots\n", + "axs = axs.flatten() # lets us address a subplot with a 1d index\n", + "\n", + "for ax, orbit in zip(axs, sorted(orbits)):\n", + " ax.set_title('Orbit #{}'.format(orbit))\n", + " per_orbit = products[products['orbitnumber'] == orbit]\n", + " per_orbit.plot(ax=ax, color='None', edgecolor='blue', alpha=0.2)\n", + " brandenburg.plot(ax=ax, color='None', edgecolor='red', alpha=0.5)\n", + " \n", + "# hide empty subplots\n", + "for ax in axs[len(orbits):]:\n", + " ax.axis('off')" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We can nicely see a repeating pattern. The covered area shifts slightly to the left in each pass before re-appearing on the right. The exact same area is covered every 143 orbits, which is one repeat cycle.\n", + "\n", + "The oribt numbers are counted per Sentinel-2 satellite. There are currently two satellites in the Sentinel-2 program, S2A and S2B. These can be identified using the product `title`:" + ] + }, + { + "cell_type": "code", + "execution_count": 13, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "array(['S2A', 'S2B'], dtype=object)" + ] + }, + "execution_count": 13, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products['title'].apply(lambda t: t.split('_')[0]).unique()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "S2A has been launched earlier, which is why the orbit numbers are higher:" + ] + }, + { + "cell_type": "code", + "execution_count": 14, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "array([26231, 26188, 26145, 26131, 26088, 26045, 26002, 25988, 25945,\n", + " 25902, 25859, 25845])" + ] + }, + "execution_count": 14, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products[products['title'].str.startswith('S2A')]['orbitnumber'].unique()" + ] + }, + { + "cell_type": "code", + "execution_count": 15, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "array([17308, 17294, 17251, 17208, 17165, 17151, 17108, 17065, 17022,\n", + " 17008, 16965])" + ] + }, + "execution_count": 15, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products[products['title'].str.startswith('S2B')]['orbitnumber'].unique()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "## Ensuring Complete Coverage\n", + "\n", + "What is the minimum time span in those four weeks to ensure a coverage of all of Brandenburg?\n", + "To find out we iterate through the returned products, for each iteration $i$ unifying the associated product's geometry $P_i$ with all products we already iterated through:\n", + "\n", + "\\begin{align}\n", + "P &= \\{P_1, P_2, \\cdots, P_n\\} \\\\\n", + "U_1 &= \\{\\} \\\\\n", + "U_{n+1} &= U_{n} \\cup P_n\n", + "\\end{align}\n", + "\n", + "Given the shape of Brandenburg $B$ the condition for termination is when $B$ is contained entirely in the unified shape $U_n$:\n", + "\n", + "$$\n", + "B = B \\cap U_n\n", + "$$" + ] + }, + { + "cell_type": "code", + "execution_count": 16, + "metadata": {}, + "outputs": [], + "source": [ + "brandenburg_geometry = brandenburg.iloc[0].geometry" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Before we continue we do a sanity check: Is the total area covered by the returned products big enough to cover the entirety of Brandenburg?" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Are the products sorted in the order of their capture or do we need to sort them?" + ] + }, + { + "cell_type": "code", + "execution_count": 17, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "CPU times: user 45 ms, sys: 313 µs, total: 45.3 ms\n", + "Wall time: 44.6 ms\n" + ] + }, + { + "data": { + "text/plain": [ + "True" + ] + }, + "execution_count": 17, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "%time products['geometry'].unary_union.contains(brandenburg_geometry)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "It is!\n", + "The `unary_union` operation is also sufficiently small for the algorithm to terminate in a reasonable amount of time." + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "### Coverage Algorithm" + ] + }, + { + "cell_type": "code", + "execution_count": 18, + "metadata": {}, + "outputs": [], + "source": [ + "import numpy as np\n", + "import pandas as pd\n", + "import geopandas as gpd\n", + "\n", + "# we use tqdm to display progress bars\n", + "from tqdm.notebook import tqdm" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We would like " + ] + }, + { + "cell_type": "code", + "execution_count": 19, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "True" + ] + }, + "execution_count": 19, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "pd.Series(np.unique(products['beginposition'].values)).is_monotonic" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "No need to sort.\n", + "If we iterate through them in the order they are returned from the API we can get a set of products covering our area of interest that is…\n", + "\n", + "1. …as close to the start of our observation time span as possible\n", + "2. …captured over a time span that is as small as possible\n", + "\n", + "The code for the algorithm is very short thanks to the `shapely` geometry operators:" + ] + }, + { + "cell_type": "code", + "execution_count": 20, + "metadata": {}, + "outputs": [ + { + "data": { + "application/vnd.jupyter.widget-view+json": { + "model_id": "03b8dc7b2b1d496fad4f79aaa07daa5d", + "version_major": 2, + "version_minor": 0 + }, + "text/plain": [ + "HBox(children=(HTML(value=''), FloatProgress(value=0.0, max=181.0), HTML(value='')))" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "\n" + ] + } + ], + "source": [ + "for idx, product in tqdm(products.iterrows(), total=len(products)):\n", + " union = products.loc[:idx].unary_union\n", + " if union.contains(brandenburg_geometry):\n", + " break" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The blue line represents the outline of the area we selected to cover the geometry shown in pink." + ] + }, + { + "cell_type": "code", + "execution_count": 21, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 21, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "ax = gpd.GeoSeries(union).plot(color='None', edgecolor='b', alpha=0.2)\n", + "brandenburg.plot(ax=ax, color='None', edgecolor='gray')" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We can see that our algorithm worked.\n", + "\n", + "What is the delta between the capture date of the first and the last product contained in our union?" + ] + }, + { + "cell_type": "code", + "execution_count": 22, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "Timedelta('3 days 00:10:00')" + ] + }, + "execution_count": 22, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products_in_union = products.loc[:idx]\n", + "products_in_union.iloc[0]['beginposition'] - products_in_union.iloc[-1]['beginposition']" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "This small delta suggests that only few orbits were needed to capture the entire area:" + ] + }, + { + "cell_type": "code", + "execution_count": 23, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "array([26231, 17308, 17294, 26188])" + ] + }, + "execution_count": 23, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products_in_union['orbitnumber'].unique()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "## Considering Cloud Coverage\n", + "\n", + "For the union above we did not consider cloud coverage at all.\n", + "A plot of the cloud coverage can give us an estimate of how useful the combined image would be without plotting it:" + ] + }, + { + "cell_type": "code", + "execution_count": 24, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 24, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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CYII=\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "products_in_union['cloudcoverpercentage'].plot.hist()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Not good.\n", + "A cloud coverage of 100% is not of much use for us because it amounts to an image that does not contain any of the surface features we are interested in.\n", + "\n", + "We might have to make a compromise between recency and cloud coverage in some cases." + ] + }, + { + "cell_type": "code", + "execution_count": 25, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(Timestamp('2020-06-30 10:20:31.024000'),\n", + " Timestamp('2020-06-27 10:10:31.024000'))" + ] + }, + "execution_count": 25, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products_in_union.iloc[0]['beginposition'], products_in_union.iloc[-1]['beginposition']" + ] + }, + { + "cell_type": "code", + "execution_count": 26, + "metadata": {}, + "outputs": [ + { + "data": { + "application/vnd.jupyter.widget-view+json": { + "model_id": "2e7fc76b19734bab876fa3a31fdb68e6", + "version_major": 2, + "version_minor": 0 + }, + "text/plain": [ + "HBox(children=(HTML(value=''), FloatProgress(value=0.0, max=76.0), HTML(value='')))" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "\n" + ] + } + ], + "source": [ + "less_cloudy_products = products[products['cloudcoverpercentage'] < 50]\n", + "for idx, product in tqdm(less_cloudy_products.iterrows(), total=len(less_cloudy_products)):\n", + " union = less_cloudy_products.loc[:idx].unary_union\n", + " if union.contains(brandenburg_geometry):\n", + " break" + ] + }, + { + "cell_type": "code", + "execution_count": 27, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 27, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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\n", + "text/plain": [ + "
" + ] + }, + "metadata": { + "needs_background": "light" + }, + "output_type": "display_data" + } + ], + "source": [ + "ax = gpd.GeoSeries(union).plot(facecolor='none', edgecolor='b')\n", + "brandenburg.plot(ax=ax, facecolor='none', edgecolor='red')" + ] + }, + { + "cell_type": "code", + "execution_count": 28, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "Timedelta('15 days 00:04:32')" + ] + }, + "execution_count": 28, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products_in_union = less_cloudy_products.loc[:idx]\n", + "products_in_union.iloc[0]['beginposition'] - products_in_union.iloc[-1]['beginposition']" + ] + }, + { + "cell_type": "code", + "execution_count": 29, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 29, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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26d5cf3d-e238-4ecb-a60f-89a74f08c291S2A_MSIL2A_20200623T103031_N0214_R108_T33UUV_2...https://scihub.copernicus.eu/apihub/odata/v1/P...https://scihub.copernicus.eu/apihub/odata/v1/P...https://scihub.copernicus.eu/apihub/odata/v1/P...Date: 2020-06-23T10:30:31.024Z, Instrument: MS...false2020-06-23 10:30:31.0242020-06-23 10:30:31.0242020-06-23 21:04:56.16826131...GS2A_20200623T103031_026131_N02.14S2MSI2A2015-028ADESCENDINGSentinel-2ALevel-2AS2A_MSIL2A_20200623T103031_N0214_R108_T33UUV_2...26d5cf3d-e238-4ecb-a60f-89a74f08c291MULTIPOLYGON (((12.01091 53.12365, 12.31702 53...T33UUV
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51 rows × 37 columns

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GS2A_20200617T101031_026045_N02.14 \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea ... GS2A_20200617T101031_026045_N02.14 \n", + "958ef7fc-815e-47c6-b323-219de6a91339 ... GS2A_20200617T101031_026045_N02.14 \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac ... GS2A_20200617T101031_026045_N02.14 \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f ... GS2B_20200615T101559_017108_N02.14 \n", + "2bf82914-7a10-46f3-82ab-9519bae23bd5 ... GS2B_20200615T101559_017108_N02.14 \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 ... GS2B_20200615T101559_017108_N02.14 \n", + "\n", + " producttype platformidentifier \\\n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 S2MSI2A 2015-028A \n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 S2MSI2A 2015-028A \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 S2MSI2A 2015-028A \n", + "7b322eaf-f037-4b4e-a918-d477d0a052ad S2MSI2A 2015-028A \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 S2MSI2A 2015-028A \n", + "04351869-2843-4f17-a706-eff4b1caab2b S2MSI2A 2015-028A \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 S2MSI2A 2015-028A \n", + "0eb59969-087b-4a49-949a-30828e05fe28 S2MSI2A 2015-028A \n", + "e289a164-5948-4b74-9d3b-04247eff57e3 S2MSI2A 2015-028A \n", + "e815c1e9-f708-4363-9f39-32a54db24285 S2MSI2A 2015-028A \n", + "a7447c20-7312-4117-8b91-c939f1b80676 S2MSI2A 2015-028A \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 S2MSI2A 2015-028A \n", + "92afe58b-2b21-4518-9684-d70384225ff2 S2MSI2A 2015-028A \n", + "00b8ac0c-6325-4982-9561-9e8d3d680b4b S2MSI2A 2015-028A \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 S2MSI2A 2015-028A \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 S2MSI2A 2015-028A \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 S2MSI2A 2017-013A \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 S2MSI2A 2017-013A \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 S2MSI2A 2017-013A \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd S2MSI2A 2017-013A \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 S2MSI2A 2017-013A \n", + "e712440f-e364-4bdf-832b-d74982f121b3 S2MSI2A 2017-013A \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f S2MSI2A 2017-013A \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 S2MSI2A 2017-013A \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 S2MSI2A 2015-028A \n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 S2MSI2A 2015-028A \n", + "ae2ff382-160d-449c-8856-d450fe861207 S2MSI2A 2015-028A \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 S2MSI2A 2015-028A \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b S2MSI2A 2015-028A \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 S2MSI2A 2015-028A \n", + "075a119f-2ec2-4fb3-95b3-031512d72273 S2MSI2A 2017-013A \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 S2MSI2A 2017-013A \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c S2MSI2A 2017-013A \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 S2MSI2A 2017-013A \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e S2MSI2A 2017-013A \n", + "34d3c763-e331-4921-94b8-9a495c2eb45f S2MSI2A 2017-013A \n", + "f1cb4919-58a0-4001-932e-573cb847800a S2MSI2A 2017-013A \n", + "825d1b8e-0255-4322-b498-aab182840180 S2MSI2A 2017-013A \n", + "4c941426-e910-49ca-8106-4efe8e945021 S2MSI2A 2017-013A \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 S2MSI2A 2017-013A \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac S2MSI2A 2017-013A \n", + "bb229b94-a038-4803-bb87-a1486696353d S2MSI2A 2015-028A \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 S2MSI2A 2015-028A \n", + "014861d8-7c98-4c05-9dd8-1ce33b43e339 S2MSI2A 2015-028A \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed S2MSI2A 2015-028A \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea S2MSI2A 2015-028A \n", + "958ef7fc-815e-47c6-b323-219de6a91339 S2MSI2A 2015-028A \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac S2MSI2A 2015-028A \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f S2MSI2A 2017-013A \n", + "2bf82914-7a10-46f3-82ab-9519bae23bd5 S2MSI2A 2017-013A \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 S2MSI2A 2017-013A \n", + "\n", + " orbitdirection \\\n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 DESCENDING \n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 DESCENDING \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 DESCENDING \n", + "7b322eaf-f037-4b4e-a918-d477d0a052ad DESCENDING \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 DESCENDING \n", + "04351869-2843-4f17-a706-eff4b1caab2b DESCENDING \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 DESCENDING \n", + "0eb59969-087b-4a49-949a-30828e05fe28 DESCENDING \n", + "e289a164-5948-4b74-9d3b-04247eff57e3 DESCENDING \n", + "e815c1e9-f708-4363-9f39-32a54db24285 DESCENDING \n", + "a7447c20-7312-4117-8b91-c939f1b80676 DESCENDING \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 DESCENDING \n", + "92afe58b-2b21-4518-9684-d70384225ff2 DESCENDING \n", + "00b8ac0c-6325-4982-9561-9e8d3d680b4b DESCENDING \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 DESCENDING \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 DESCENDING \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 DESCENDING \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 DESCENDING \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 DESCENDING \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd DESCENDING \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 DESCENDING \n", + "e712440f-e364-4bdf-832b-d74982f121b3 DESCENDING \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f DESCENDING \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 DESCENDING \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 DESCENDING \n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 DESCENDING \n", + "ae2ff382-160d-449c-8856-d450fe861207 DESCENDING \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 DESCENDING \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b DESCENDING \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 DESCENDING \n", + "075a119f-2ec2-4fb3-95b3-031512d72273 DESCENDING \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 DESCENDING \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c DESCENDING \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 DESCENDING \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e DESCENDING \n", + "34d3c763-e331-4921-94b8-9a495c2eb45f DESCENDING \n", + "f1cb4919-58a0-4001-932e-573cb847800a DESCENDING \n", + "825d1b8e-0255-4322-b498-aab182840180 DESCENDING \n", + "4c941426-e910-49ca-8106-4efe8e945021 DESCENDING \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 DESCENDING \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac DESCENDING \n", + "bb229b94-a038-4803-bb87-a1486696353d DESCENDING \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 DESCENDING \n", + "014861d8-7c98-4c05-9dd8-1ce33b43e339 DESCENDING \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed DESCENDING \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea DESCENDING \n", + "958ef7fc-815e-47c6-b323-219de6a91339 DESCENDING \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac DESCENDING \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f DESCENDING \n", + "2bf82914-7a10-46f3-82ab-9519bae23bd5 DESCENDING \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 DESCENDING \n", + "\n", + " platformserialidentifier \\\n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 Sentinel-2A \n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 Sentinel-2A \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 Sentinel-2A \n", + "7b322eaf-f037-4b4e-a918-d477d0a052ad Sentinel-2A \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 Sentinel-2A \n", + "04351869-2843-4f17-a706-eff4b1caab2b Sentinel-2A \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 Sentinel-2A \n", + "0eb59969-087b-4a49-949a-30828e05fe28 Sentinel-2A \n", + "e289a164-5948-4b74-9d3b-04247eff57e3 Sentinel-2A \n", + "e815c1e9-f708-4363-9f39-32a54db24285 Sentinel-2A \n", + "a7447c20-7312-4117-8b91-c939f1b80676 Sentinel-2A \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 Sentinel-2A \n", + "92afe58b-2b21-4518-9684-d70384225ff2 Sentinel-2A \n", + "00b8ac0c-6325-4982-9561-9e8d3d680b4b Sentinel-2A \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 Sentinel-2A \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 Sentinel-2A \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 Sentinel-2B \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 Sentinel-2B \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 Sentinel-2B \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd Sentinel-2B \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 Sentinel-2B \n", + "e712440f-e364-4bdf-832b-d74982f121b3 Sentinel-2B \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f Sentinel-2B \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 Sentinel-2B \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 Sentinel-2A \n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 Sentinel-2A \n", + "ae2ff382-160d-449c-8856-d450fe861207 Sentinel-2A \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 Sentinel-2A \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b Sentinel-2A \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 Sentinel-2A \n", + "075a119f-2ec2-4fb3-95b3-031512d72273 Sentinel-2B \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 Sentinel-2B \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c Sentinel-2B \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 Sentinel-2B \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e Sentinel-2B \n", + "34d3c763-e331-4921-94b8-9a495c2eb45f Sentinel-2B \n", + "f1cb4919-58a0-4001-932e-573cb847800a Sentinel-2B \n", + "825d1b8e-0255-4322-b498-aab182840180 Sentinel-2B \n", + "4c941426-e910-49ca-8106-4efe8e945021 Sentinel-2B \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 Sentinel-2B \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac Sentinel-2B \n", + "bb229b94-a038-4803-bb87-a1486696353d Sentinel-2A \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 Sentinel-2A \n", + "014861d8-7c98-4c05-9dd8-1ce33b43e339 Sentinel-2A \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed Sentinel-2A \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea Sentinel-2A \n", + "958ef7fc-815e-47c6-b323-219de6a91339 Sentinel-2A \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac Sentinel-2A \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f Sentinel-2B \n", + "2bf82914-7a10-46f3-82ab-9519bae23bd5 Sentinel-2B \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 Sentinel-2B \n", + "\n", + " processinglevel \\\n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 Level-2A \n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 Level-2A \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 Level-2A \n", + "7b322eaf-f037-4b4e-a918-d477d0a052ad Level-2A \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 Level-2A \n", + "04351869-2843-4f17-a706-eff4b1caab2b Level-2A \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 Level-2A \n", + "0eb59969-087b-4a49-949a-30828e05fe28 Level-2A \n", + "e289a164-5948-4b74-9d3b-04247eff57e3 Level-2A \n", + "e815c1e9-f708-4363-9f39-32a54db24285 Level-2A \n", + "a7447c20-7312-4117-8b91-c939f1b80676 Level-2A \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 Level-2A \n", + "92afe58b-2b21-4518-9684-d70384225ff2 Level-2A \n", + "00b8ac0c-6325-4982-9561-9e8d3d680b4b Level-2A \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 Level-2A \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 Level-2A \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 Level-2A \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 Level-2A \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 Level-2A \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd Level-2A \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 Level-2A \n", + "e712440f-e364-4bdf-832b-d74982f121b3 Level-2A \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f Level-2A \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 Level-2A \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 Level-2A \n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 Level-2A \n", + "ae2ff382-160d-449c-8856-d450fe861207 Level-2A \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 Level-2A \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b Level-2A \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 Level-2A \n", + "075a119f-2ec2-4fb3-95b3-031512d72273 Level-2A \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 Level-2A \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c Level-2A \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 Level-2A \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e Level-2A \n", + "34d3c763-e331-4921-94b8-9a495c2eb45f Level-2A \n", + "f1cb4919-58a0-4001-932e-573cb847800a Level-2A \n", + "825d1b8e-0255-4322-b498-aab182840180 Level-2A \n", + "4c941426-e910-49ca-8106-4efe8e945021 Level-2A \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 Level-2A \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac Level-2A \n", + "bb229b94-a038-4803-bb87-a1486696353d Level-2A \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 Level-2A \n", + "014861d8-7c98-4c05-9dd8-1ce33b43e339 Level-2A \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed Level-2A \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea Level-2A \n", + "958ef7fc-815e-47c6-b323-219de6a91339 Level-2A \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac Level-2A \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f Level-2A \n", + "2bf82914-7a10-46f3-82ab-9519bae23bd5 Level-2A \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 Level-2A \n", + "\n", + " identifier \\\n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 S2A_MSIL2A_20200630T102031_N0214_R065_T33UUS_2... \n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 S2A_MSIL2A_20200630T102031_N0214_R065_T33UUT_2... \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 S2A_MSIL2A_20200630T102031_N0214_R065_T33UVT_2... \n", + "7b322eaf-f037-4b4e-a918-d477d0a052ad S2A_MSIL2A_20200630T102031_N0214_R065_T32UQC_2... \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 S2A_MSIL2A_20200630T102031_N0214_R065_T33UVS_2... \n", + "04351869-2843-4f17-a706-eff4b1caab2b S2A_MSIL2A_20200627T101031_N0214_R022_T33UVV_2... \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 S2A_MSIL2A_20200627T101031_N0214_R022_T33UUU_2... \n", + "0eb59969-087b-4a49-949a-30828e05fe28 S2A_MSIL2A_20200627T101031_N0214_R022_T33UVS_2... \n", + "e289a164-5948-4b74-9d3b-04247eff57e3 S2A_MSIL2A_20200627T101031_N0214_R022_T33UVU_2... \n", + "e815c1e9-f708-4363-9f39-32a54db24285 S2A_MSIL2A_20200627T101031_N0214_R022_T33UUT_2... \n", + "a7447c20-7312-4117-8b91-c939f1b80676 S2A_MSIL2A_20200627T101031_N0214_R022_T32UQE_2... \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 S2A_MSIL2A_20200627T101031_N0214_R022_T33UUV_2... \n", + "92afe58b-2b21-4518-9684-d70384225ff2 S2A_MSIL2A_20200627T101031_N0214_R022_T32UQC_2... \n", + "00b8ac0c-6325-4982-9561-9e8d3d680b4b S2A_MSIL2A_20200627T101031_N0214_R022_T33UVT_2... \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 S2A_MSIL2A_20200627T101031_N0214_R022_T33UUS_2... \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 S2A_MSIL2A_20200627T101031_N0214_R022_T32UQD_2... \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 S2B_MSIL2A_20200625T101559_N0214_R065_T33UUT_2... \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 S2B_MSIL2A_20200625T101559_N0214_R065_T32UPE_2... \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 S2B_MSIL2A_20200625T101559_N0214_R065_T33UUV_2... \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd S2B_MSIL2A_20200625T101559_N0214_R065_T32UQC_2... \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 S2B_MSIL2A_20200625T101559_N0214_R065_T33UUS_2... \n", + "e712440f-e364-4bdf-832b-d74982f121b3 S2B_MSIL2A_20200625T101559_N0214_R065_T32UQE_2... \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f S2B_MSIL2A_20200625T101559_N0214_R065_T33UVT_2... \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 S2B_MSIL2A_20200625T101559_N0214_R065_T33UVS_2... \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 S2A_MSIL2A_20200623T103031_N0214_R108_T33UUV_2... \n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 S2A_MSIL2A_20200623T103031_N0214_R108_T33UUU_2... \n", + "ae2ff382-160d-449c-8856-d450fe861207 S2A_MSIL2A_20200623T103031_N0214_R108_T32UPE_2... \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 S2A_MSIL2A_20200623T103031_N0214_R108_T32UPD_2... \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b S2A_MSIL2A_20200623T103031_N0214_R108_T32UQE_2... \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 S2A_MSIL2A_20200623T103031_N0214_R108_T32UQD_2... \n", + "075a119f-2ec2-4fb3-95b3-031512d72273 S2B_MSIL2A_20200622T100559_N0214_R022_T33UVV_2... \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 S2B_MSIL2A_20200622T100559_N0214_R022_T33UVU_2... \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c S2B_MSIL2A_20200622T100559_N0214_R022_T33UVT_2... \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 S2B_MSIL2A_20200622T100559_N0214_R022_T33UVS_2... \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e S2B_MSIL2A_20200622T100559_N0214_R022_T33UUV_2... \n", + "34d3c763-e331-4921-94b8-9a495c2eb45f S2B_MSIL2A_20200622T100559_N0214_R022_T33UUS_2... \n", + "f1cb4919-58a0-4001-932e-573cb847800a S2B_MSIL2A_20200622T100559_N0214_R022_T33UUT_2... \n", + "825d1b8e-0255-4322-b498-aab182840180 S2B_MSIL2A_20200622T100559_N0214_R022_T33UUU_2... \n", + "4c941426-e910-49ca-8106-4efe8e945021 S2B_MSIL2A_20200622T100559_N0214_R022_T32UQC_2... \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 S2B_MSIL2A_20200622T100559_N0214_R022_T32UQD_2... \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac S2B_MSIL2A_20200622T100559_N0214_R022_T32UQE_2... \n", + "bb229b94-a038-4803-bb87-a1486696353d S2A_MSIL2A_20200620T102031_N0214_R065_T32UPC_2... \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 S2A_MSIL2A_20200617T101031_N0214_R022_T33UVV_2... \n", + "014861d8-7c98-4c05-9dd8-1ce33b43e339 S2A_MSIL2A_20200617T101031_N0214_R022_T33UVU_2... \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed S2A_MSIL2A_20200617T101031_N0214_R022_T33UUV_2... \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea S2A_MSIL2A_20200617T101031_N0214_R022_T32UQD_2... \n", + "958ef7fc-815e-47c6-b323-219de6a91339 S2A_MSIL2A_20200617T101031_N0214_R022_T33UUU_2... \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac S2A_MSIL2A_20200617T101031_N0214_R022_T32UQE_2... \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f S2B_MSIL2A_20200615T101559_N0214_R065_T33UVV_2... \n", + "2bf82914-7a10-46f3-82ab-9519bae23bd5 S2B_MSIL2A_20200615T101559_N0214_R065_T33UUT_2... \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 S2B_MSIL2A_20200615T101559_N0214_R065_T33UUU_2... \n", + "\n", + " uuid \\\n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 \n", + "a87c7ff5-8664-4002-9258-7b1508a1de78 a87c7ff5-8664-4002-9258-7b1508a1de78 \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 \n", + "7b322eaf-f037-4b4e-a918-d477d0a052ad 7b322eaf-f037-4b4e-a918-d477d0a052ad \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 \n", + "04351869-2843-4f17-a706-eff4b1caab2b 04351869-2843-4f17-a706-eff4b1caab2b \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 8ff98302-bc88-4fb4-9f53-c6959af6fa36 \n", + "0eb59969-087b-4a49-949a-30828e05fe28 0eb59969-087b-4a49-949a-30828e05fe28 \n", + "e289a164-5948-4b74-9d3b-04247eff57e3 e289a164-5948-4b74-9d3b-04247eff57e3 \n", + "e815c1e9-f708-4363-9f39-32a54db24285 e815c1e9-f708-4363-9f39-32a54db24285 \n", + "a7447c20-7312-4117-8b91-c939f1b80676 a7447c20-7312-4117-8b91-c939f1b80676 \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 9387c7f1-fa0f-4ce1-9a93-b65992447380 \n", + "92afe58b-2b21-4518-9684-d70384225ff2 92afe58b-2b21-4518-9684-d70384225ff2 \n", + "00b8ac0c-6325-4982-9561-9e8d3d680b4b 00b8ac0c-6325-4982-9561-9e8d3d680b4b \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 a9d28ab1-4245-41a3-9491-303bd7414628 \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 dcd0ca96-811c-4c6b-b387-43ae712e65f0 \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 10d92f80-60fe-498d-b407-6c059b6ab077 \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 520f1839-a2d3-480e-bacb-3509210dbf55 \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd 0ebace35-7d8e-4564-bec6-f9597525d2fd \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 1168e7e0-1f15-40ab-b910-0f20b6536bf8 \n", + "e712440f-e364-4bdf-832b-d74982f121b3 e712440f-e364-4bdf-832b-d74982f121b3 \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f 1e36f0ba-85a9-4015-8e2a-922080a69a5f \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 6361db44-8ba8-472b-aaf6-a1df7c49aee0 \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 26d5cf3d-e238-4ecb-a60f-89a74f08c291 \n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 4c841fe7-7fa2-4d1e-9893-962dc4301a94 \n", + "ae2ff382-160d-449c-8856-d450fe861207 ae2ff382-160d-449c-8856-d450fe861207 \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 52c652ac-186f-4fd5-ba3d-e937299f7f73 \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b feb890a1-b3b1-41e8-8c61-283ab92d0f8b \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 93e7901a-94cb-41d2-b23f-780f2a6061a7 \n", + "075a119f-2ec2-4fb3-95b3-031512d72273 075a119f-2ec2-4fb3-95b3-031512d72273 \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 333f9a2b-145a-450f-97e7-629ad0c9bd07 \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c 9660b897-8a74-46ae-87f7-cb73dd5b718c \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e c833476b-3fa8-4577-b597-cbc656a9cc8e \n", + 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31, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "products_in_union" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Let's try to further reduce the amount of products we need to download by dropping identical geometries, keeping the one with the smallest cloud cover:" + ] + }, + { + "cell_type": "code", + "execution_count": 32, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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GS2B_20200625T101559_017251_N02.14 \n", + "\n", + " producttype platformidentifier \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 S2MSI2A 2015-028A \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 S2MSI2A 2015-028A \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 S2MSI2A 2015-028A \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b S2MSI2A 2015-028A \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 S2MSI2A 2015-028A \n", + "ae2ff382-160d-449c-8856-d450fe861207 S2MSI2A 2015-028A \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 S2MSI2A 2017-013A \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 S2MSI2A 2015-028A \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 S2MSI2A 2015-028A \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 S2MSI2A 2015-028A \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f S2MSI2A 2017-013A \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 S2MSI2A 2017-013A \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c S2MSI2A 2017-013A \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 S2MSI2A 2015-028A \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 S2MSI2A 2017-013A \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 S2MSI2A 2015-028A \n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 S2MSI2A 2015-028A \n", + "92afe58b-2b21-4518-9684-d70384225ff2 S2MSI2A 2015-028A \n", + "e815c1e9-f708-4363-9f39-32a54db24285 S2MSI2A 2015-028A \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 S2MSI2A 2017-013A \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 S2MSI2A 2015-028A \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac S2MSI2A 2015-028A \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed S2MSI2A 2015-028A \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 S2MSI2A 2017-013A \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 S2MSI2A 2017-013A \n", + "825d1b8e-0255-4322-b498-aab182840180 S2MSI2A 2017-013A \n", + "a7447c20-7312-4117-8b91-c939f1b80676 S2MSI2A 2015-028A \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 S2MSI2A 2015-028A \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f S2MSI2A 2017-013A \n", + "f1cb4919-58a0-4001-932e-573cb847800a S2MSI2A 2017-013A \n", + "4c941426-e910-49ca-8106-4efe8e945021 S2MSI2A 2017-013A \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea S2MSI2A 2015-028A \n", + "958ef7fc-815e-47c6-b323-219de6a91339 S2MSI2A 2015-028A \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 S2MSI2A 2017-013A \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 S2MSI2A 2017-013A \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac S2MSI2A 2017-013A \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd S2MSI2A 2017-013A \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e S2MSI2A 2017-013A \n", + "bb229b94-a038-4803-bb87-a1486696353d S2MSI2A 2015-028A \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 S2MSI2A 2017-013A \n", + "e712440f-e364-4bdf-832b-d74982f121b3 S2MSI2A 2017-013A \n", + "\n", + " orbitdirection \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 DESCENDING \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 DESCENDING \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 DESCENDING \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b DESCENDING \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 DESCENDING \n", + "ae2ff382-160d-449c-8856-d450fe861207 DESCENDING \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 DESCENDING \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 DESCENDING \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 DESCENDING \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 DESCENDING \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f DESCENDING \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 DESCENDING \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c DESCENDING \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 DESCENDING \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 DESCENDING \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 DESCENDING \n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 DESCENDING \n", + "92afe58b-2b21-4518-9684-d70384225ff2 DESCENDING \n", + "e815c1e9-f708-4363-9f39-32a54db24285 DESCENDING \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 DESCENDING \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 DESCENDING \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac DESCENDING \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed DESCENDING \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 DESCENDING \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 DESCENDING \n", + "825d1b8e-0255-4322-b498-aab182840180 DESCENDING \n", + "a7447c20-7312-4117-8b91-c939f1b80676 DESCENDING \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 DESCENDING \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f DESCENDING \n", + "f1cb4919-58a0-4001-932e-573cb847800a DESCENDING \n", + "4c941426-e910-49ca-8106-4efe8e945021 DESCENDING \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea DESCENDING \n", + "958ef7fc-815e-47c6-b323-219de6a91339 DESCENDING \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 DESCENDING \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 DESCENDING \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac DESCENDING \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd DESCENDING \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e DESCENDING \n", + "bb229b94-a038-4803-bb87-a1486696353d DESCENDING \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 DESCENDING \n", + "e712440f-e364-4bdf-832b-d74982f121b3 DESCENDING \n", + "\n", + " platformserialidentifier \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 Sentinel-2A \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 Sentinel-2A \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 Sentinel-2A \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b Sentinel-2A \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 Sentinel-2A \n", + "ae2ff382-160d-449c-8856-d450fe861207 Sentinel-2A \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 Sentinel-2B \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 Sentinel-2A \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 Sentinel-2A \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 Sentinel-2A \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f Sentinel-2B \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 Sentinel-2B \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c Sentinel-2B \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 Sentinel-2A \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 Sentinel-2B \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 Sentinel-2A \n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 Sentinel-2A \n", + "92afe58b-2b21-4518-9684-d70384225ff2 Sentinel-2A \n", + "e815c1e9-f708-4363-9f39-32a54db24285 Sentinel-2A \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 Sentinel-2B \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 Sentinel-2A \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac Sentinel-2A \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed Sentinel-2A \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 Sentinel-2B \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 Sentinel-2B \n", + "825d1b8e-0255-4322-b498-aab182840180 Sentinel-2B \n", + "a7447c20-7312-4117-8b91-c939f1b80676 Sentinel-2A \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 Sentinel-2A \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f Sentinel-2B \n", + "f1cb4919-58a0-4001-932e-573cb847800a Sentinel-2B \n", + "4c941426-e910-49ca-8106-4efe8e945021 Sentinel-2B \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea Sentinel-2A \n", + "958ef7fc-815e-47c6-b323-219de6a91339 Sentinel-2A \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 Sentinel-2B \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 Sentinel-2B \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac Sentinel-2B \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd Sentinel-2B \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e Sentinel-2B \n", + "bb229b94-a038-4803-bb87-a1486696353d Sentinel-2A \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 Sentinel-2B \n", + "e712440f-e364-4bdf-832b-d74982f121b3 Sentinel-2B \n", + "\n", + " processinglevel \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 Level-2A \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 Level-2A \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 Level-2A \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b Level-2A \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 Level-2A \n", + "ae2ff382-160d-449c-8856-d450fe861207 Level-2A \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 Level-2A \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 Level-2A \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 Level-2A \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 Level-2A \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f Level-2A \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 Level-2A \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c Level-2A \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 Level-2A \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 Level-2A \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 Level-2A \n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 Level-2A \n", + "92afe58b-2b21-4518-9684-d70384225ff2 Level-2A \n", + "e815c1e9-f708-4363-9f39-32a54db24285 Level-2A \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 Level-2A \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 Level-2A \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac Level-2A \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed Level-2A \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 Level-2A \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 Level-2A \n", + "825d1b8e-0255-4322-b498-aab182840180 Level-2A \n", + "a7447c20-7312-4117-8b91-c939f1b80676 Level-2A \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 Level-2A \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f Level-2A \n", + "f1cb4919-58a0-4001-932e-573cb847800a Level-2A \n", + "4c941426-e910-49ca-8106-4efe8e945021 Level-2A \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea Level-2A \n", + "958ef7fc-815e-47c6-b323-219de6a91339 Level-2A \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 Level-2A \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 Level-2A \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac Level-2A \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd Level-2A \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e Level-2A \n", + "bb229b94-a038-4803-bb87-a1486696353d Level-2A \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 Level-2A \n", + "e712440f-e364-4bdf-832b-d74982f121b3 Level-2A \n", + "\n", + " identifier \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 S2A_MSIL2A_20200623T103031_N0214_R108_T33UUU_2... \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 S2A_MSIL2A_20200623T103031_N0214_R108_T32UQD_2... \n", + 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S2B_MSIL2A_20200622T100559_N0214_R022_T33UVT_2... \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 S2A_MSIL2A_20200630T102031_N0214_R065_T33UVS_2... \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 S2B_MSIL2A_20200622T100559_N0214_R022_T33UVS_2... \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 S2A_MSIL2A_20200627T101031_N0214_R022_T33UUS_2... \n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 S2A_MSIL2A_20200630T102031_N0214_R065_T33UUS_2... \n", + "92afe58b-2b21-4518-9684-d70384225ff2 S2A_MSIL2A_20200627T101031_N0214_R022_T32UQC_2... \n", + "e815c1e9-f708-4363-9f39-32a54db24285 S2A_MSIL2A_20200627T101031_N0214_R022_T33UUT_2... \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 S2B_MSIL2A_20200625T101559_N0214_R065_T32UPE_2... \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 S2A_MSIL2A_20200630T102031_N0214_R065_T33UVT_2... \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac S2A_MSIL2A_20200617T101031_N0214_R022_T32UQE_2... \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed S2A_MSIL2A_20200617T101031_N0214_R022_T33UUV_2... 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S2B_MSIL2A_20200625T101559_N0214_R065_T33UUT_2... \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 S2B_MSIL2A_20200625T101559_N0214_R065_T33UUS_2... \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac S2B_MSIL2A_20200622T100559_N0214_R022_T32UQE_2... \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd S2B_MSIL2A_20200625T101559_N0214_R065_T32UQC_2... \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e S2B_MSIL2A_20200622T100559_N0214_R022_T33UUV_2... \n", + "bb229b94-a038-4803-bb87-a1486696353d S2A_MSIL2A_20200620T102031_N0214_R065_T32UPC_2... \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 S2B_MSIL2A_20200625T101559_N0214_R065_T33UUV_2... \n", + "e712440f-e364-4bdf-832b-d74982f121b3 S2B_MSIL2A_20200625T101559_N0214_R065_T32UQE_2... \n", + "\n", + " uuid \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 4c841fe7-7fa2-4d1e-9893-962dc4301a94 \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 93e7901a-94cb-41d2-b23f-780f2a6061a7 \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 52c652ac-186f-4fd5-ba3d-e937299f7f73 \n", + 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"f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 \n", + "e712440f-e364-4bdf-832b-d74982f121b3 e712440f-e364-4bdf-832b-d74982f121b3 \n", + "\n", + " geometry \\\n", + "4c841fe7-7fa2-4d1e-9893-962dc4301a94 MULTIPOLYGON (((12.04401 52.63310, 12.05737 52... \n", + "93e7901a-94cb-41d2-b23f-780f2a6061a7 MULTIPOLYGON (((11.94274 52.44626, 11.97922 52... \n", + "52c652ac-186f-4fd5-ba3d-e937299f7f73 MULTIPOLYGON (((11.82522 52.22730, 11.90169 52... \n", + "feb890a1-b3b1-41e8-8c61-283ab92d0f8b MULTIPOLYGON (((12.30821 53.11342, 12.37451 53... \n", + "26d5cf3d-e238-4ecb-a60f-89a74f08c291 MULTIPOLYGON (((12.01091 53.12365, 12.31702 53... \n", + "ae2ff382-160d-449c-8856-d450fe861207 MULTIPOLYGON (((12.13532 53.11988, 12.20926 54... \n", + "b64d4450-d999-41dc-9ecb-6d263f322dd3 MULTIPOLYGON (((12.07160 52.22621, 13.67854 52... \n", + "13da546e-c03b-4c5f-91e4-b0f8b7d78817 MULTIPOLYGON (((13.50402 53.15178, 15.14598 53... \n", + "dcd0ca96-811c-4c6b-b387-43ae712e65f0 MULTIPOLYGON (((13.53103 52.17548, 13.63418 53... \n", + "8ff98302-bc88-4fb4-9f53-c6959af6fa36 MULTIPOLYGON (((12.35583 52.23133, 13.67854 52... \n", + "f23f248d-014b-484f-bd8e-40ca23d86e9f MULTIPOLYGON (((13.50402 53.15178, 14.85839 53... \n", + "333f9a2b-145a-450f-97e7-629ad0c9bd07 MULTIPOLYGON (((13.53443 52.25345, 15.14301 52... \n", + "9660b897-8a74-46ae-87f7-cb73dd5b718c MULTIPOLYGON (((13.56331 51.35443, 15.14019 51... \n", + "5c6ef9e1-8828-4d6d-8df4-7274e3b10e14 MULTIPOLYGON (((13.58157 50.75469, 13.63555 50... \n", + "24fb4b41-cd54-4c4e-8dc4-a0f14dea54c6 MULTIPOLYGON (((13.59072 50.45527, 15.13751 50... \n", + "a9d28ab1-4245-41a3-9491-303bd7414628 MULTIPOLYGON (((12.18393 50.42971, 13.72930 50... \n", + "eb1fec8e-d933-48c3-99f2-c2b3731dc5a1 MULTIPOLYGON (((12.18393 50.42971, 13.43099 50... \n", + "92afe58b-2b21-4518-9684-d70384225ff2 MULTIPOLYGON (((13.44210 51.27893, 13.53998 52... \n", + "e815c1e9-f708-4363-9f39-32a54db24285 MULTIPOLYGON (((12.12921 51.32805, 13.70458 51... \n", + "520f1839-a2d3-480e-bacb-3509210dbf55 MULTIPOLYGON (((12.13532 53.11988, 12.20926 54... \n", + "8c3b2e01-7c8b-43d4-b3e0-1a6a376cdd65 MULTIPOLYGON (((13.56331 51.35443, 13.89039 51... \n", + "f1e2f2d4-2326-4941-80f1-0d36757a86ac MULTIPOLYGON (((13.62469 53.07126, 13.73349 54... \n", + "07388c80-e0f5-4bf0-b2fc-a438495f40ed MULTIPOLYGON (((12.74386 53.13700, 13.65112 53... \n", + "0c003a15-58d6-4415-8077-f868cbc39ce9 MULTIPOLYGON (((13.53103 52.17548, 13.63418 53... \n", + "6361db44-8ba8-472b-aaf6-a1df7c49aee0 MULTIPOLYGON (((13.58186 50.74516, 13.60377 50... \n", + "825d1b8e-0255-4322-b498-aab182840180 MULTIPOLYGON (((12.36045 52.23141, 13.67854 52... \n", + "a7447c20-7312-4117-8b91-c939f1b80676 MULTIPOLYGON (((13.62469 53.07126, 13.73349 54... \n", + "9387c7f1-fa0f-4ce1-9a93-b65992447380 MULTIPOLYGON (((12.74704 53.13706, 13.65112 53... \n", + "1e36f0ba-85a9-4015-8e2a-922080a69a5f MULTIPOLYGON (((13.56331 51.35443, 13.89451 51... \n", + "f1cb4919-58a0-4001-932e-573cb847800a MULTIPOLYGON (((12.12921 51.32805, 13.70458 51... \n", + "4c941426-e910-49ca-8106-4efe8e945021 MULTIPOLYGON (((13.44210 51.27893, 13.53998 52... \n", + "d692a650-1806-4e9b-88d1-e824f976c3ea MULTIPOLYGON (((13.53103 52.17548, 13.63418 53... \n", + "958ef7fc-815e-47c6-b323-219de6a91339 MULTIPOLYGON (((12.35251 52.23127, 13.67854 52... \n", + "10d92f80-60fe-498d-b407-6c059b6ab077 MULTIPOLYGON (((12.12921 51.32805, 13.70458 51... \n", + "1168e7e0-1f15-40ab-b910-0f20b6536bf8 MULTIPOLYGON (((12.18393 50.42971, 13.43645 50... \n", + "55be82cc-1f3a-44d2-bd64-f8d743535fac MULTIPOLYGON (((13.62469 53.07126, 13.73349 54... \n", + "0ebace35-7d8e-4564-bec6-f9597525d2fd MULTIPOLYGON (((13.44210 51.27893, 13.53998 52... \n", + "c833476b-3fa8-4577-b597-cbc656a9cc8e MULTIPOLYGON (((12.75244 53.13716, 13.65112 53... \n", + "bb229b94-a038-4803-bb87-a1486696353d MULTIPOLYGON (((12.01125 51.32452, 12.07776 52... \n", + "f6e7a49f-c3e3-4f26-93a8-1d2a067866c6 MULTIPOLYGON (((12.01091 53.12365, 13.65112 53... 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\n", + "text/plain": [ + "
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