{"id":3443,"date":"2023-05-29T12:22:31","date_gmt":"2023-05-29T12:22:31","guid":{"rendered":"https:\/\/www.jopack.in\/blog\/?p=3443"},"modified":"2023-11-24T10:02:35","modified_gmt":"2023-11-24T10:02:35","slug":"image-classification-in-ai-how-it-works","status":"publish","type":"post","link":"https:\/\/www.jopack.in\/blog\/image-classification-in-ai-how-it-works\/","title":{"rendered":"Image Classification in AI: How it works"},"content":{"rendered":"<p><h1>Image recognition AI: from the early days of the technology to endless business applications today<\/h1>\n<\/p>\n<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' 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EC0ZDMqAR4Y2sjL2ttbfja9o0ySKVDEAU4eVeF6bPrmXp6X70MJRpSSQLm979eEOzLSUtKNJYlZZpltP4raQkfVDe5bVei02VnET1UlJV1biAEOvJQSAOIudxcn5Q4cpNys4yH5OZafaVfSttYUk9bEbRTax7nTG66dhcbI6Zoba9ldKduA+UNvm+e\/TSZIISQpTzp23BSEpH++fl5Q5J4GG5x8j2nEku1xDMqNuhUok\/7ojGk\/vNK2Yj\/p3BN21R0atwnhvYWAhy8IZfybTCJ+sS6VKdCVIYI2A43X1PlwHO\/LXYapLc7XGGXWrts3mFeiCLf2iPgDDnBIFrCJddVPJyApbhWHRsb2rxcqjTaGk6G0JQkbAAWEe7X4xr6vWJOiSwm51ZCVK0JAFypR5D5H5RlycyzOyjM5Lr1NPtpcQrqki4hYRfVPQeQSXxfguTqkq7OSsulM0kFRSgCzu3MdfOGSqtHCVqBA2HS0SZUNuMMxiiSQmpTaEJ2S8sf2jDbDJ3NdkKr2O0THRiUDVNa\/TgDwjG+jwpViIVszJAqPhjGRTyp0eHnwixtksLqjSQarUez06jU6ZrlYmES0lJNqefeWqyUITYm\/7bxDTO3tF17Gc663hGQU9JsvGVpcmi5LrttlrtbYDdRuOISDveFx2+s4HcNSNJyroUx3b88kTdQINrpOzaPgAtXr3ZjA7HeUiMQtIxXWWAWErCmUqF78\/hCfGMVNI3s2bn5K88H8PMrHmqm9lug+qw8huy9mnmE8ziPM2rzHsesPCWSdACLW7tKeCUjlYDjDu5sZPY6p8qtzCkizLSqG1NhmXSSCjSRZXC4O1\/MX47xKSkhiRkxLstpQkJCQkCwAjMKA+0W3W0qSbi1uUVT0yZ+oK6MxkMJy5RZcjMZ41q1GqRlJ4uMvJu0tsi3duIPQAedjYXtcWG0JV7HU8CtoTKglXFJPhN+Y+O\/wAYkf268nUUysfdLRZUBM2tx5SEAjxNgKIvvxbCzYc0G26ojbhLLat4pURINlakoBsASdJ3HyFwfhFqwXDZcaZZvLdVniDF6fAjnkNmlKOnZhVEyyVOLLqFEIeQd\/F5jmN779T5xizOJxMOuTEi4QFi606rkHyubKFh8Y8T2XeIcJ1ByTqDC20OJLatYNkKSogKt0uFAwlapKzEm4p+VWGnkq8SBshfLSocU9bja\/nvGVZgE2HS2cNORWOHcR0+KwB8Lg4J\/wDJHP2o4IqzMlPOe0UiaXpmJcK8Cha2pu+yVgcr78L8ollU5Gm1Wnytcoz6JmTnWw+w6g7KSRf4HyjmXI1JS3SttCm9RCVtrt4VdFD7D9hianZGxwqsUiey9qrynFNp9skFKVcgD8I39QV84c0TJOzudbBUnielgJ7eMWvoUuHpbSTcWMY62oU1ap\/s7+ggg8TGmdZtyiex1xcKiPjymxWpcaBiwtu0bJxu3KMR5BHKNoN1ocOixdNoIqoKvwgjKywXhTBZUEK59YvNpEXQj2mV7w++38yIGGyuwA+cYXWwDovbA7p1CrbE7iNvTJQCooQQLBV\/gY1yG+oN431MRrfl3rb30k+cYOPRb4wm07eczNS2VGHaayVpll1ATDyUbd6UoUEoPXcgxApLhmZhuU71IStzW9Y31eVzuQenQeZieX7oG5oyvwooNkD2527gAuCECyR67\/KOfkgubZfDzifDrNjta42AvzSLb9bW9Oa4y0urHEdy7Rwk9rMOA\/5E\/AJykzbbdLToJQpKdS0kjYAbqURw4bJ8oS81R5t3Dkzi6bdXqmpxMpKpPElQKlKt0AAHqY8vuu1CWRS5Zawp9TbIN\/EscVE+oAB\/5Q9OMcDKo8llfhdaVf8Aacy5PuI4WbbKCnb84a9+ghDKRER1KvNM11QCTsE01dX9B076DUNTqUspNjx8JWU\/ErT8UxLfso4KYprK8R1mZZbQ0n2SWUdkkpIC7eZWVm\/QgRErF3ezOPHJeWKXFe0lSNV9lKc1Jv8AAAfGJqZe5G5e0\/Bsn92j89O1JTACnFzy2wzw8LaU7D1tfY+kRp3AxAE2umVMx3bOewXyqRLLDBQFNqSociDeB9jvPCpN+W4iPTuXcnJTbScv8z65T3Gjuy7O980QCdrAAjl1FofXCC6gnDsk1XZ1uaqDLYTMPp2S4Uj3gLD7BEHsmWsCphlkB1CTeYmHm6vQJmnPC6H2lIO\/C4sDEPsE1QZV9pTBNdf\/AIuh2YXRagVeFLrS\/vSSocwEuoG\/Du0mJL5w5i5hUass0\/A+GKfV5R1KA6p57QUq8iVAREPtAS2Yft8vX8X02mS2qbQ82uSUSUXSoFJ3vue73\/NEMMLHYTNcDzSfHQKykdE8Ha3mum1UkDYHWVqSNKyRcqttf48fjGpTK2VsNov5fV37sctsP4puXDUqZLvKXcHx6AF3+I+cZSWdJKSOd46xDJnYHdV87PiLHFp3CxmpYauEbCVZ0kHT8LRVpgE8I2EnLgm9oHuutsTdVlSVMZeOtY4C9gOMO1gphLGHZZCeF3CP65huZJsJA07Hzh0cOI7ugyAtbVLoWQeqhf8AXFfxF1yArngbTlJK2KuBhvsQJExiibVa\/dJbb\/sBX\/FDgmxG8N3rM3VqjMHnNuo+CDoH+7ESk\/uXTDED\/Ssttglj+Nz7vGyG2wfio\/rhXHawhN4LbAl554D3pnSPQIT+smFHwHrGuY3eSpFMLRBJTHKkq9jZURYJddPwAH6439ElzKUaRlSLFmXbR8kgQl8YuF6qBjkmVFvValC39kQtG06UBPQWjx3sBDNZHFVVwhpayPaJ6ccvfU+4fmomHZcUEoKybBIuYadf3xovHi5dR9SYl4f\/AHLpfjJ\/oAd6TkzK73A5x5SyzLgzr6whppJWsngEgXJPwjYuti584TuYk19GYArj6TpWuTXLoP57v3tP9pYiwxXe4DqqRUERMdIeQuuS2fGLJzNrtC1ObdfKxNTvdNIHFlrUEpR5FCEgG3NJMdNMgMPSuF8vqbLCyFLaDhFrHeOWeBJKr4mzjnqjRkyxmjNuzLRmyru0BSlm6tO5sN\/hEwaRnXndhqpylEr6cNT1MWW20OyDbgDaTba5N0nfoR5xTcZD5apzhsF2ThmDs8OYwbnfyU3G6vKtrCSL2PGNjK1Vt5CdCCQdrnrDTsVB6foTFQl3VXdl0uJUDzUL25xGHGuD6tUatNO4qzMrrcjqP3tMyUpA4m4JIA5cIUxOBOVP34e6Rt2qTXaZolKr2C5lExMsInGUh+WC3Eg94iykixNyFW0nqCYjt2YadI0fH1JW422uWceSPEAUraX1HmFXjR4WpORVOm\/o8ByoFxkqW84FupULEBWw0j1\/uhcZbUrD9JrTDmG5ptTEu6Fsd25rRp1KOxN+Gqw5beUdU4FcWx1FOT7TT9Fw\/wDGSP0XD4KgG5a75ai\/dol52ostJaanqwJCVb71BM+1ZHvJuNSR5W0n1vHP\/G8s5T6mdA1d4LKB2BI2I39L7bb+sdbMf0WWr0xhyZmUpUipyi5ZzqUls39fFojmV2ksFv4RxXPSBbtpmFONkX903Fr+oP1Q6pZWV9I2CX2mj5G38KrcPGShnkkj0jLrgdzgHD4FM4204ic7xCiq4PFPL8lXlyB5ekSC7Nj8zT8e0mblCtS0zTKbHjoUoJUk28lGGEoZMy+lLku44m\/ADc78CP8AnEj+zg\/LUPMKj1B6VK5dTyWy24L6SrZKx5pO8MqKhEcDja+h+RWzibEC5mS9r2196l9i2XAnHFbHe14Sj7W5ELrEssXZtSR+Mb3hKzrCQ6Qkb8IrcbtLKFOwk3Wnbltaisjwo968YDqO8cW5ayE7+Ub+ab9mltPFSuNo1E6gNMpaHFZKlDoOQjax11He0DdaZwlSyoKKb72Agi8pI1QRvUXMeivSulp1CyCWn9vT\/pF\/uPY5vSd99uhBi3JIS6Fy6hso3Qfzh\/fGz9nXO03v0p1OyxssgXOnr9n1xpJtupLGaWVJiWCXEqQPCob+sbSgt6tbR4oIWIsyrHtUrsdx9sZ+HmyqpMkiwcV3SweEanHQhSGN9cEbJFdrvBUxmHl3guiNONsS68RD2ybcuUyzAlJha3CAbqsEX0jiQOHGIr9oTs04QwthGh43yon67UGZp5MtNsTzbZVp7tSkvIISgBIKFXTY7quLbx0SxXSqW7lzWZCuz0tJSS5VxCpmacCG2lEEJVc2ANyAPW3OGExZOhFGw5l09QEPrdp\/dTTzqCUJQ2spVoH5etIIVtY78d45txJK+CtaQfVI+O30XdOAKGCrwyW+rw7yFr6fFQkwPQ3JmvUeVmW7J1LKUbDSbpTvbyv9cP1nzVJem514TkFIDiKVhwKDV\/DqWlwBJ9dSR8o0mPsJyGAM5cMUyUlyhl5HeKClXuvWkK3PnqhL9o3EhXnXX5xtZH0fS5eTasbKBSwi5HQ6lmx9Dziuuf28oPcrrHF6LAfH5JJZc0p\/FmZhn0XcaRMmYUtW120KG\/8AW0\/OHvxVVsbYjmn6aw9MylKldbYSqU1GYtoHhUuzf4ylXUQLIUAL2JvdjTLtM+y7iCoSaTrPdtKWn3rG5IvyvsfNMTGGC5VDKEiVbRpHvpFiduF49bOyKUZm3ssZaSSWmyseWl2t\/FRgrWXGHMBUrCeO8AYiQ\/NTiEt1OnNKQVKTYnvUICUrCDa+lVyAoW3SbyFy09vqFMUZ9ruivUlAUNyDwtGcjA1JU+gmWTZJ31m4t6fCN8ESctpEobd1YD4cLRpqJm1Ls1rLOhp30kfZF5cepUNc0nsYTeP3cPOTNQkJdubs4+wooGjvCPfsrT4dJ1aV2BHgWbhLWdp4TGFpmSplNx3MYlo1QkZSbQZwtqmpGYWsFUu6tsBKlJASdgONrc46A4ow7JVOdZqBb0qcFrhX43G9uBPGIt9sbKpcxldPV+SYStVIdRPLKE2UpAWNX2kmJlPVwgtgLRfqlldhtQS6pEpIt7PJSL7I085U8g8PsvLClyrKxwsQnvFAA\/0QD8YdBbVnTDE9hCdnZvJpEvNtqCZNwNsqUbhTam0L24c1Eet+kSFblNThUoHjzjo1BJelY7uXEcQiIrJG\/wDIq3LSpPvCx8o2DSA2NKRFdAZTfa\/SPTCSpVzvvG9xJ1WtjQCAs9tCvZ1FHvlJA9bbQ7bDaWWW2UCyUJCR6AQ2VOaDkxLN2uFPNgi3LUIdAcIr9ebvsrjg7bREqjhCUFSjsNzDdU4WlVPq4uFTivVXiP2wvaq8JemTb5\/zbDivkkwg5e7dNCT+TGFLzK3YgdAErMIslFDaUoWLrrznqC4q31WjcnbfpGDQkhujSSf\/AEEfZGceERnG5JU9gs0BIeqpMziRSBvqm5dofzRpJ\/4oXCbAbGEbJoMzioKtcNzTzqvQJUkfWRCyTbSLGPX8gFjGNyeqwa68ZeizzyfeTLuFPrpNvrhunWyhhKPKF5it1LdEeSSPGpCePLUL\/VCOmGgtoEdInUAtdyU4ucwDVoXUbwis5Gu+y\/nZcPBoOKQpSyLhOg94CQPNAheOt6TuISGZ0gqp4PnZFo+N5p8I8z3S7RYqU2laVSMR\/wBO8dQuLUpV6thvE899CLUmcnUJZbWnYDU4U7nkPEN\/qh9KB++TSVh7FEnJrDcypkvyyZhNwjZRUk6kqTso38J2uDchJSOWGWE7jXFNRbZYLiGFtM+DiCpXeKsRvcaU29Y6KZTZNpcmKd9IyiZnxIXMrmfvqglIAB1LueCQNrbeUJnz4dFJI2qYXE3tY2seq6tSxYq2lhkpJGsAtfNrcdAl9gDB77GU1Edqcu4zNuSCVrbWmykki4Hry+ERoz1wNiKYZWWpFw966pttSRcJWdk3HPa532te\/SJ1TS2HEhnSUtspCADtt09IQOJ8MSlTC7BKkuG6gTsfhwipOayKTNbRWyjq5ACH81zzmOzLUabV3piWxxVCUtFPt0tUUNFpXchWrRYlQ1qNkgi17AixMX8kHK5gbEs5Tq1VV1FhfdPGaWQSl5V1OtkjYkFR\/qnneJzSeXlGbPdoacsTfQSSn5HlCEzhyQpZwRVpyhMts1BDftMulIsFOIuQCRwBuU36GOi4RxfSU\/ZxOhDbaFwvcg6H6rmXFHBFRjENRGakvD\/ZaWgWOpGtzf4JT1HMqQOBMHzz80gOU+sJZdOrfuypAJ\/tX+ERe7clOSKr9JoSLOpSo+aVj3j\/AEgR8oZDFuctVFKRhRc04gJmULCgsggaSFXN+NtHyh5c9awcwMAJragFkUJh8X3utSkqAufzrfWIa4rU0uHzxvpXZgS4\/wDkbhV7grhqsFJPHiHtjKB\/2Nyj4BNL2aMsJfHGLESmJpqclaW343RLaQ84LEgJKgUpJKT4iCBb3TEtqRkzRsNZq0pnDkvUXaM8yJxtc8UrcQU3C2ytKUhRBCbeEbLTxhg8l8WvYBncO4kYpjc2xUpKXVMNLvbuSspWALG5BcSB63iaiqjI\/vhS9GZXZUvLuPIOr\/vl+JsjrZpBH86Cixaplnc1jvVDTpy23XvHOA0dLhjZXNGdzm687X1HksqutBClLCfLfpCSal1TM2V6fAL3hb4pZLKVC26hCbdlzTqbrCfvrnDbeIkbiBrzVckjubDYJPTaUvTClXs2wLq\/OPT9ukJ+bOtRWeJNzCjqqQwymUFtSjrdPO\/SNGqUW94rKA9IlxkAJbMC42C1CveMEbYUnUL6b35wRtzrT2L1rpTZQQq4ubHyhT0wlt9qacSA1MEtvgclefkf74wJ2kOsK1aDqTxA5+cZlEWgky00CEOp0XP4p5H4GNbznFwtsQMclis+XkFyFTckVIOlyymvNJF4VuH8PJTNGaWAlojvComwTbnc8IpTKM7U5Nl51J9qp69C+qkcYZPto51jBWGm8r8NLC6nVGe8qRaUQpqXKbhq9rArG5v+LtzvCbEMQbRQmV3l1VmwfCJMRqm08Y318Ao5dtPtQzOY2IF4MwxNWwlQntQ7o3E46LAvrtxHvaBwA34k2kbkZiCiZz5NULFS5kTNYp8oZCYdStSn5ecSkBQUEnxarJcsRvrNuMc081JFVMVJU9\/d2YR7U+4SCpajfcjlvfbbiOJuYWnZZzxxFk5j2WXJTtqbVFIbnGdigkq8LgH5QOwJHM9Y53WNNcwyv3XasKe3BpBBEPV5\/XxUyczsHTGI8e4cqk9MNLebkfC6xfuyoONe7fexAHwPzihmPKLxFnDX5dorX3tTW0re\/gQoJ3PTYfC\/SJq4\/qjKpai4rW3ZKgtJIPhQUtqUnflcgjzIHOIk5bhGKceVyeSjU+JtLizz++KUs\/qhTS3Y1z+gsrPU5ZnRw9Spt5HUWn0LD0hTmyEd0ylOyQN7bn53+cO+1OJQktrdJTy32hjsJzr9PSyhSSBsBDgoqC1MBYCrWvEFs973TippRuFva3WGqdKLmEqupIK0gbkkDhCWexzh6iyki5ibE9JpC6isBlM5Otsl9w8Eo1EaieguY2kjLLqLgcfQSkJIEJzEmUWD6vONVeeorM1NSiVezuPoSvuQd7JuOHkY2M9Y3UNmRgsd0rJuqspkQ53ySptepu\/A78P26xocfyVOxFg+qU+d0mXnpGYadSbabKQQfthFVCVnpEtyYf7ttlFkNjZKRe\/CED2j8yJvB2TVZXqU1NVRr6JlVJNjrfBSojfiEd4rb8mMo7vmYwbqPUvbHDJIdgE5vYEU5N5UzL6pZxthJlWmVFGlK9LNyodQbj9jEmu5ShJcNhyA5w03ZOwgcHZRUiTW2lsOyUutSUEFIUQorAPEkLKx6BPK0OrNvBxzSDa3IR1WhaRTMYV871UrHyvlHMlWVL1q4GMuVRaxMYqBc8I2MjLrdUACABxUeETHeqFHjuXLc0JvVVpBFti7qPolJV+oQ4w4Q39Gm6fTas27PTKGm22l2WvhqNh9hVCpGK8PgW+mJc247xXKsOdJcBXfDS1kAF9VTF8x7Ph2cte7qUs7fnqCP+KEtYCVsSNwf74z8VV+lVGQalJCfamFLfQpSWzchKbqufiE\/ONYlRtY7i3CN9Iw5SSFExKW0gA6JYYZmkTVElCCdTaO6cHRafCR9UbRW40jaG9pdYdw\/NE6S7KPkd4gbqSobXHwt62+aykq9Sah4pafZUehVpPyO8Q5onRuOiZU1SyZgN9VktyEq0+5NNSzSHnT41pFir1i+b8Ixpiq06VR3kxPS7Y6qWBCfqeM21XlqKgPuHi6oEIHpzJ+qNbWF5sFufKyMXcVj4vqImZtqktKuhg969b8q3hT8iT8o0qnvHp30mPLbS2daniS6s3Uo8SeZi04q8PaaERssVVK+qMzyQvcwylYuneNTUqemak5htVwG5aYWCOIsyr9cbaVdAUG1n3tgenrHipAS8s+rTcKaWg+iklJP13iQxzm6DdLJmMkZc7c1z97I1Hp1LnsWqQNXs1fmpNCib3S2dA4+giTVazcnsthLuMS7Tzc6ruklVveFyB1N9\/2IhmstaD9FzWM6u0x3QZxrV5J5KRYbPqU0q3RSCf7PWNrmmldewqqWaQVvIXqQnUUkncWuOF+vLaKpXwuZVOB57LtHDssNbhzHb20ITk4Y7VWDcXVpvC1amEylTXbQFtKaC7pvpSvdKjsTpvqsCbbGFqmuqdGpsgtEmyrbHeGbyuyipVUAq9fZbdmGwgWQbX2B362h5amxT5ORRKSzSWksoCEpAtYDgIXzDkmhbA2Ts2hY0zW1MjW0Tr+qEZjXFEw\/TXmXFk60FBF9txGZOvkXSFcLiEViZJfZWjUb3vxiMHWTWCnjBBsucmekouj40nky6Slp14vtjoSdSh6alcPO3KHfoeInZ7JCnVt2ZBYp0qht1JF9aWWXhp47\/flNE+kJjtT4cflJ9E8hB++I+tNrEfC\/wA4T2WuKFTOA5TBraCoM1lbrqTuCykIcSm3m8Uk+SD1ixQTSVMbATqq3WQx0VXI0DQ6qauROT1Fo+C6TUcdABElRJefcXMq8MsNGp1Fvd8C0nl0PONngzGH3WZhzeKGklpE7MkyyT\/m2R4WknzCUpv53iJ2a2d+Y877Pgaq1xxmRabacmJdlAb1lXiShekAkAWNjz9IdLJrFrcq9JIW77rTerz4x07hzDPR4ZJJDdzhbwC45xtVuxQMiYLMb81O6r05VU9nfW2dDiA4ojhccfrhIVVAVOqdIHdSwsByKuX7ekLPCmJJKu0pqUC0CYWwlTeo7Fy1lC\/K5hP4jppZCZVF\/CCVm25UYRWcyQsdySN8OWEWSDmGA46p1QJUo73i0mQW+QruzudgOBhQMUhyZXpAPh96CuvMUCR7xwDv3B4GuYB5xIElzkbuoIgsC92yTsw\/IyLpl5gBSxufLyghJzKnpt9b61EqUd7wRKEA5lQu3J2CdRqmS2Iaemfp6QF29wnxDqg9SN7HnGiVSO7mO7U0QFE2IO4jzgzEDtDnkpcGplZAdTyKRwUPMQ7U3h2QrDTdXklIcbfAWSnYHzHTzHWID5TTPyu2KaxQMr487faG6SVTxhTMtcBVTHVfUot0yV9xI8Uw4SEtNjqVKKU+XPaOaeParNYvxFXMV4nrD0wqblpmad7p7S49oWDYG1kgJTZN+FuHWU\/bnx21TE4dy1ZfDTZP0lPEcS4T3bCD5buKItuSjhvEOsevGVkX2ZV1KmTTnUlSALK7x02KfzQAoj+cOd459xFUmoqBE06N+a6\/wVhwpaM1Dx6ztvAfUposw6tMVyo06dcQSHJVOpQGxcClJNt9tgPqhNUh5ImmSAAW1hOwO243hZU7VP0ibkHGUrcVL942SN2jYAkfZ8SecaXBuGJyr45oWHSVMprE\/Ly+oDca3NJ28rGI0JAZlKaVjHdp2h5roBmfWTTuzo9PTaVImA1Khu6iLurKbEEb7HUeh4Ha8MV2bm5eVzJnZI3PttNp08ASfwqmEl0b\/nrMPl2o6WRgmjYTkm1ht91k7niUBSk8OYCFD+lEecBTCqNjbCtblXlH2qisNEkHdYaTqQelnGXU\/wBFMKAMsTm9SrBG\/NPG\/uHxXQGl0CVmGm3wmxAFhbiY30zI93JBpAANrXtGiwJX26rRmJoKSdSAT62hSh1L5AJ2G5hPYEWKsMkpcEzGZuZWeGBJ1DeE8FUqo0txsETB7xx5O5uFIBHTleGexd2vszqZQpqbVRpYzzDgbMumYDSSFGwsktlRtcE3O\/lEwKvJy87KKYWSn8lQtdPxhqqzQKZLT+qZw1LT77Ru3NWSHE+RNrkQzp54mts4KKYWPBJJBTdZE1jMbMVLmJMwJ1aFTSBolG2ghpu\/QbnlzJjS9rmQfqv3CUdl3QxOYil2igJulQOpAJ9PFD7YCwtP1CeVJy6W2HZtanHFEHQw0ASVHf3Ui\/S5PKETnzhr2zN\/JfDLKRon6q5PFog3DTKLNXPU6fLiPybwyw+jMsrqi2g0HeSqZxTjDaTJRQu1N3O7mgc\/EqYOGJAUfCVMpyEaViVZU5p5uFCdXHzEZ6ZPUdSuPMRkSjeqUYLqh+DTcnYcBDW4TqNNzep4zWrONcRYWwpJuz0lLUyTqaJdFSbafKUzjqgkONAhCxpKvDudWxIv81Q2jYAR3Bcmo6J9c\/KNAPJOoxT9R8eyON42FktJ7hpPgG97RqMJyuVuOKTM4mwji16rScoru5gydXcfQ24Ei4UlCiLkEHzvcX4woaZlngGuSbU8iTnHWnbkJVNvoGxIN06hbcHhEJ2Jh36fimzMDewaPC17sq3MW71JI5Ra+jZUbaPqhQN5M5eMPImGqCUuoOpKxNPXBH9OMeryrElOrZYBCAkKsVXt5XjOCqbUHLay11dBJRsD84IWtZkmGla0p8UZWvQBvePEeFLFwImAJZnV\/UlQ8VvSMd2myjp1qSNuVouJWkiKlRB46h5R4Ywd1sbKW7LGTTJRB1AcOkX2nmJc+FafS4vGlxzPz9NwZXajRXD7fK02ZflwBuHUtqKNvUCOYsrnLm1LPrmG8c1AqW4XSHFBd1Hn4rwww\/DG1gJvayVYni81EQGjN77fwV1bUtMyCSReMN0EHdP1RzDa7RWdTJBTi9tdv+8lEH7BGertW5wUiUdn5ytyDrbCCo3kU3HpaGQwAt2kFvApR\/1FLKQOxuT0cPoulJFtlbXis6tU1S5uTUbLWwtKTfc+ExF7st9qKi5jSTzOJqu27ONhDSEtI0HVwK1cxvy34nhEnWnG5uXDravAsceovb9RhdVUjqR4DtRyI2PgpNBjEde+SmLcsjdC07jlfwPJR6wrLStXzDx1hVgJCJtKqmylO2qYTLSO4+LT\/wDXhr81KpUZXB07N0z2j2iX8aEsou4oJvcAdYx8wswKjk5n8w3Jp0uuTK0ArvZ1Hd6kJP5qkpIPOxNoU+Jm5Soy8zUaMtD0nNpW9LlAvYknY+YOxHW8Q+IaAZGVUe1gD9+Cun4cY4+CtOHzmxd6zfdobKK+C88s1plc05RhUpCalXUguGZso8bBSVGx8wQYf\/L\/ADwzvxZNMU6r5dvz6UbTFSllpYaSkcVKDqkgnbgjVeE7T8Zd2+unN4TlEuuO3MxoBIt0Tew9LXh5MDMzzVPRMuN+J4XUSjSBx2APDjFMqjE1m9yV3TsTF68k2foLWSlE0t1oKcPjUm59bRpqlpKVlwXsI2Dy0MrIUoJF+A5Roa1UmGWXF6\/d3ELaenkqH5GjVZekMiGd2gUaO1VIJnKI45LpBdbICLjmSBDC5QywOPXm2ge4S45cHh4bfqIHxiX2J8vJnHNKq1Ymkq9hpkuubN0X1qQboQPVWkfGIsSlCqGBcUOVm5TKrqszTnFBHhUottFQ+BUk\/CL\/ABYBPQUzZn+\/uXO67ieixDFTSQuu5tgffdJjNOrurx9VH31grcmB3d9gQALH5CHEwDi32OalAXlJuwL+ZF\/1mGezSccfxguYIsqbbS6k3uCfd29bExtKbVXZSalglf8AmiUnqAYe0GLdg1V6qw8TvcLaLoxlxmQpVKYUicIWm2k34EjY\/BQiQlPn5XGVKYqjBu48gd4OYV\/zjm\/l\/jd6UprzF7902VoueaUqX+sRKXIDNdmmz1Ops7NpErNk+8q9gpahf01XPpGFTUR1LyWHVLa3B3wQiS2ikDOykhh2muTs0ndIuOWo\/rhnK3OzNfnlTrxVoPDyEONjp2crc0lCdQlWj4LcD6whnpKcqE41RqLKLemHjpSEDhfmegjXSt7MZ37\/ACVMr3GZ\/ZRj1eQ6lJeYmWmHS2wyFJHMi9zBDvSWU+FaXLIl8STBen1DW4UOWSm\/4o9IIyOIU99StH5LVHUkDuum0pqFpWZGbQpC0KKbKBSpBHEEGHfwBU5mjyjzE4siTSgu3O+iw8SvkN42lZwZQsfSbVcp6m5aqIQCtadkvD84dfPj1hgu1bmh+9PlNM0uWmA3Uqu59HJXqt3aCm7lrcTpNvK4iDWV0ZpnPcLWGybYfhc7axkLDcOOhHMHqoIdrLOKdzFzcnq+hYTJNVEMSqL7hho2SPPZIP8AO1GNFiOZ7yhAuoN3JPy5PKVf5E\/txbLEvtNUxQgAHS1dS0pF7KvYg+fHj587wt8bVIpw+2pq3eezIbJPvAWKlH5rSfQ3jnEhLyHu3Juu7UbBE0sZs0ABaCiq9kWzN2Ck7oUCLhSeBuPQ\/ttDxdmjLdGLs8KJU22tcnhlyYqDy1WuAlKQxfrd5aPrPWGrlGEsycoiYbKHFtpJ1J35228xpiW\/YUVTZh+uty6CqaVMB15VvwbQSkNJB\/OUp4kDhoTxuI1SFzWl4K8lZmc2G17ke7qnVzww8apVsOSiLqS7U0oSLA+L2V4JT5AqIvEOqWzNSLbVyhMzh9bswynVupuXfCikJPu\/e3HCq\/qecTyzpke7XhaoIPjl8SSCjYcQpwJI+R+XQ7xHjNLBTWF6vV8SyjX8Up1eQaii2\/sc4wg6gOFk94+gi29084gtdlGVNi0udmCX2CMQqpkpL1CSWp+mzaEPtKHABQvpPSxuPhDlU3GkjMBLiXEgcFXPCGfyelj9Az+FZtWp6iTKmQb7lvexPzt8BCwVh9GrwBbfO4Nt4VSgtkITqMtewFOoxPSU82FNzCFJP5Kt4w6lLU4NFalC99xbeG8TSn0jUiYeQU8wrcmHoyKwjRapQvuoqjTs5OtTrzTXevFSEhNrHRwve+5B5cIYYZROxCYRN0SPHMTiwin9Ikv0Fup6pV4BwVL0zDTqqiyEv1dILoI3DHJs8xcXuPzt4Y6r0t3HfbZkZxolcrgegqUE6fcW4vSD5eJLu\/He3O4k\/VKjIUqmTVbqbmiXkmFvuHohIJJ+QhleybQH66cXZ2YglEMPY1qWqTSAfFIsXQlW\/wCKpYWRyICSNo6OKeOnZHTsGg\/hcSqqt9fNNNIfWeD7r6fK6cfMmoDDGW2IayrUhEpTHg0EbK1FOhAHnqIt6wisa5SUlzs3ymAcU44kcNVhUjJszVTmgBLCcDiHny+CpIs4+V3WTfUrUdR2O+zrqKKvN4Oy+S4oqxViGWZUgGwXLS\/394W52DYVbfZJPAEwnO1T2Zczs5JmhOYJrFHZalXpwzrVVddS3of7rS613aF3cRoeABCfwxspNzEWukL5wDyHzTfBYRHEXdTZImqprvYpyYbfwlVpPEdUxbPMuO1fQTJHU2tSCgajqSEpNjfxlZVYAaYkh2YMeY6zMygpGM8waXLyVTnnHwjuGVNIfl0uKDTwbVukKTwPBQAUPCoRjYbyPmMO4MwDgKVxHMP0jCQUajLzck08mrrNyNZWVFtCVrWoJF9ikXGkGHdlpdEqwhhtISlACQALAAcAPKIITvmrqjYXhvKxMJdqc0obgrKePIbfqhdz80JOTdmTbwIJF+ZtwhuNzcqNySSbw1w1ly56r+OSeq2Ic7lBcJ8PWKBO9zHsMuDdShaAq7vgb3huFXCDzVNBvcRcQS2N\/wC+LXekx7Q4eChtHqyCpMtMTDS2nEApcSUqTb3gRYxybx1hx7CGNq7heYCtVLqExKgqFipKHCEq+KbH4x1mVpXwNrRz07YuGvojO6fnEoKU1mTl51JA4nSW1H5tw4wR+WUs6hIcejzRNkPIpiUlSCCgbwmk4icxBU38MVemS8u05LrKS0tV1qS4W16r8L8QOluMKotW23+EYCsNSjlWRVyPvyUkbAC5I07nja1tvKHNWyZzm5Nr6+CV4fPTxNcZhrb1TzBWyyUnaFhnFbUiMUJfnqe2ZZphpgNlLZcKyFqH4RQKj5gegjqNlpXU4gw2xPJ8RWhDx\/NChuP6yVxyXZwK5LYkRW5CoqZAmBNKQEg3cAsd+VwBHSTsi4qRVMNJpj7upbJU2b\/jA+IfKy41V8LzhhDm2LDp3hLpZo4+JKerY+4lGR3ceXuumG\/dHMLv0edwvmfJslTbbzbUwQbaVNL8IP8AOS4R\/QjPyoqE3OGRklpDtNrKWwFHg1NBsFKx+apA0nzSmJQdpDKKUzYyor2F2AgTD0sp+RKuCJhKSUi\/IK92\/LVeIxdkmSfxFhpmizoU3PUN\/wBiWbbpWyq7Sv6hRfrvC7D5IqqkfFL7NtfcnuNCow6aGpgNnsdpbobfC6dunMYdp7Ljb0nLNvhVnToSFEjqYw65jCgyLICHW0BIIsFCHkxVlXhCr4Dn8QVKjtioS8i8828y6thfepQoouptSSoagLBVx5bmOc2LatN1JcsqXqEwEqaAdZU4dSHASFpI6ggg+kc\/nwrR0jTdoNl3bAuJ2YgWQTMLXlt+76p4sSZtSQWWpGzjlyOO14s4RRU8bVECaWe6K\/cB2IhraBIJmGNrq1WVe19jziSmSWGdHs5SPvjzqUIuOBJFifTjDzAIYoXl7W7c1J4rxA0uHvkJ5J2Bg6kSOEJaizkohTMw25PTjfALYaT4Uk\/nLIP\/AEjmtnRUJUSNRoVMTeWp2IH5tpZ8SllaUAknpZuJw58Z4ytAXNUOlPtATDy5FLh4iWlGlFwj\/wDLdP8ARMQKx2w\/UGJxiTYcmZl+cRobbSVKUUtFa7DnZHiJ5JBJsAYtdV20FA50m8moHd96e5cT4Eom1WJS4g\/2RoOhIvr98yUw1cq30rNyiSd5FYQd7kIskgX6ApP9YxuShbkrJTiFJSQhYVqNgNrgfHeED37krW5hiYUkKdUUEhQIFjqTYjY3tYeRhYMzhm6eiV2sm6Rvw6WiiduW3aV2CBjJAXJz8G1QqWps6UK0lsp1cU2Iv6kD64WdFxtM0ydpT0u945STZC0a9laipf2LTDK4GqS2q68l1zX3hdcT8L2+yNlMVZUtiNpLYOlsJaUCb3CUhAH9mNQqC1wcCmDo2SR5XC66wZQ4qGbOB5A01aVTzaAy\/c+6Rtc9POHQVI0DK+kvOy6xMVOYSO9eIGonoOg8o529lPPaYy1xiGpuZ\/7PnSG5hJPEHYLHmLD5RNnE\/wBIYvLUzR3BMNTCQtt0HwlJ4Eddrw7hk9Mtc2HNcwxiiGCyl0bLl3s93d4pF17Gk1N1N196aVqV+fBG\/bypk0IAqM0wl87qDjhB+QghmJaRosqi6mrXkuPPvVnMTNzDOR+EJit1yqolG0BTZ8RKnXhYdyyOKl77kbI572jlxnfnniTPbFr2IataXpsmrupCSCgUNJJJIvfdR4qVuSbQncxMz8a5n1huqY2rs3PCXa0MF0gol07iyUcACb8PXjCHLjj5CWdbbcqNYAFha97Ktvc\/9YoVfiD60kbBdfwbAGYZaWQ5n9englC+93lUdTMreDrxASQLAp943tyI3877xbrVUem32JZohSUA6AbWO+17cRYWt0G941Uqt2ZnO+1qOwbQrcnUeJ8r8T6xnqppl5sOuvaW2QCL2uEg8+e5ufjClwGYAq2x3DCRzW+enGXptBbBShpACTxBUkKPDl71vh8TPPsX4Hcwnl6apNsaJyqOh93UnfSANH1Wjn3hWv0+k1+SqtVpIqso1OhUxKlWnvGgrx7jgQAbHhum+0dW8rsQ4WxVgmm4hwfONTFNfbGlKQhCmlc0LTx1gmxG5H80XiJWMkaxoA0W2hmilldc69P5WyzDaFRl6JKi6v8AtiUUNOxFlE3\/AG6Qna7hOSxW5jGg1NlLktUZCWl3bbj3HRf1GxHpCir7bhnqQlTY0omw5xPBKFD7VJMX6DdTtTqC0AKnndTabf5tCAhBPW9iryC7RDNiLlMmkA+qmCyBadn56oNL7rvmZJtidbtuHmFFoqHqAFEdXOm8PEqkX2DYPwhGZaYVcoub2MXwEJk5mWYda8W+t03c9N2h8IdGd\/i6S4ohKR9fxjU9gccy3NlLRkCTM9IIl5clZsbH7IQ9HzGxlgSr+04ZpL9WZUp9uepjTymlTbGykltQIKXUeNSSCL6iN7gQq67Uy8yvQSE7iNBTaDUET9OVKrSiamVOKQoAEpAQTqseJIvYdfrwZI6FwdEbEIkp46thimAIO99UgM++0JmHL4Nn2cKTGMpHDdVeakp8YmYlw5JqW0XEy8ssgvruhtwqLil28J1qCgmKYd\/dGcRYd9iw6xlFSU4epjDMoESU260tttCQkBFwu4ASOI58YQvbLr7b1Xw7l60AlNMZcnp1F7q1vkaCr87QFq8+89IjnNzUohpcw8n2Vbdyh0PaVE35W3i54bPO+Bs0rjc9ei5RjtJTR1jqWBoDR068+a6e9lzMBnPzOqrZrTxqDFCpcprochPlP8T1ISytQ03SFKUJm+9yDvwiacvPSk4NUq8hwJ22PARAfskYLqkn2bqpUmKk5TqpWElpiaCQtTaUt+9pVtqS848dPPSL8Yu9mSiZoZFrnKbWcZt1WmqOtlDTjjiXyVqUp9QUkd2tQNlgEhRAVZJKtWmetZGTJMdTr4+CbYbhMksQZAL237ul\/Hqp+AjlwMewQYSGD8cU\/EkohSUFp61ylR3PpCqQsK90\/OJEb2yNDmG4Wp8bonFjxYhanFsz3FNDSeLywn4cTCObUsAJCdowcyMcOymYFGwdKlpaXJb2mYBF1AOL0IPlu2s\/CNgiYShIAA2hzhkjHxuYzcHXyuqxj1PNDOx8ujXNuPC5B+KChd\/EvaBKgi9yFX8otrdWq4B4xQNrVzhmO9Is3RXC42Tcpindax4XBfpaLZZXHrQpPD7Y9sOqMx5hBZeRc6dusRY7cmFRO0rDWLmWz3sm89T3lDYlDidaL+QUhX9aJVpmHE7ExCntvdoBmmYyo+TTLLfczK2XJtwp371fub8tPg4ce8VfgInYY8sqmE7X1S3FIe3o3tZvbT3aqNb0mUm4EWgwsEC0KZ+nnQk6eI3ixK0aanplErKS6nHFqttwA6k8h5xensa0FzuW65zDUGUhrNSdlqmJN1w6UDUfKH+7MuNxg2uTrFR7zu0MKmi2kXUtLYKlhIO19OrnGkoFCwVgKXZxBjZn6UlGHUrmmEOd33iObaCbb8OYva217whn8xcJzObEvVcCUV+lUozQUqRdUD3TarApUQSBfxbAmwPHhED06CpJpwLtI35JjVYLVmD0g6OYQ4DnprqnWx9+6aPyq52Qy9wa0lLPgD9RJdcJUDpUGkFKRwOxUrhzhmMle0nmK3nqisy0vR214xU0iel0NmXlUvpRcPWF9KtllWkeIrUeJFmOzJoD+X+O8R0RalFUlOutNrtbvWxYsq9FIWFehjEwdKzRkp6tyrpRNtoCZBy\/BSCF7eqkgegIhAyKOGUxsbY\/wuhVMTJKESPdfMBbXa+1veuj+evbQwJWqfRct8IT083VZ2eUmqtTLfdFlplCnNIUklKwpSUbpJ2vexMQFzjzIcw3V5WpSiJhft63e9Eu8hsLUjuyFEKbWCbL6DgITsrRKsqSGdNTrElLU6UnEsqYdcWqYcUuzaihIBuBrN972Qs22F01ng6HJKgzbSwpEw5OOoUk6kqSO5RcHmPCY9e6np8OlhjGzr67+P3yWzDqST81iqi4k5bG2guL6Jdyva1l5SWlGJTAa2XWAoOvpqqip8m3iIKNKeHBIA3iTHZi7VkxPJruI8QTiJSTw3R5idlJKYcYPtEz4Wm0pUltCjdbo2JPAnlHNgLAVa5Cb24nhC4wpVS1qIJLMugFQHApSCo7ef6oX4ZUQxuc17dCLfXzT\/GaJ9fB2ZeeXMp1syM46rinHMimZqCtLLzcsN7XUVEuk25qdUb8bxn4qxdXqlg0zQprVIaqM8uWmkS7pUZxpppvT3ijY21lR0iyTZJsSAYje7U5lFZbqevW808HxcXClBQO\/wAREnsf06UXl+mmKCpWepU5JuBK3Abyc1JlxpSACSsKQhC9vFdzhvEmbFTXyl8h0B0C1RYe3DYGQQN05qMGIQ99JrmEA7WJNjx3sT8bRuqdPOtJ1+K5A0oOxCuB+I\/VGxo1Paqc+5OGXKpSTcN2XBZTrljZSxvYA8B5c9zF+t0Z6VZYn1NhAmAVJ6ab7EfIEeRipVUZLnSt2VkoahsZERK90KYEtOM1AGyJdJdX0slIUUn1sR6GNtNrcfK5xuynE2UTzNtx9Y\/tQn6Oot06Ycfb8ASG1XVxKir\/AIQr6o3lJac7psrUbgFCtttQtv8AUIUulsrFEC4AJV0efeUyh5q+poayL7qQTvYdQbn4GJy9kztFrYZl8CYqmQ5KqCRLTAI1ovtcHmDzHHcEcYhFh6nupKdLVrAqISdig8R8D+rrDgYfkp2jTctMySljQoLbsmxB2uD0vfb4xqZiJppLg6KXV4THiVPkeNeXiurbxWHD7NT2lNmxCli6jfmTzgiOmXfaQoMrhSUlMTS86J1gd2SysAKSLWJBOx48Ol+cEPRilMRclc8k4Wrs5t9\/BcvahSVvLalWZUoYQ93SCsWK12HiV57DjwEWJrDnsBmmppl1brqtSSTbShBIvbjvb6zxsIcaiSbK6q226QAwbIJAUAea1X5k6tuJCAeUUrDTmLccml0yR0SjboQ6tRuVq1WQ2TyAGgH8pV08EiKZnc067BdUbFG+O432CRtIwzUJhh2aRLaWmNgQm2viVEnieBH9FXlCfxI4ZRS2WbL1ElW+wAtYfP8AXEgMbqpuF8PuU6noC1sEtN6PdKzstVuexA6eI9TaNNfmS5MFlg3edV4lG508QQOvun6+se0QdO7Odlrxbs6KIRNOvNXKJdK1TChYAlIPU2G5\/blDn5U5x46ygqiqngqppS1MEe2SEyC5LTQHDUjax6KBChc77w2sq2iWZRLoHujdRO5jJQACbkm\/naLK2FjmZXBc5mqnibtI3WIXR7LDtY5Y5orl6bVJ9vC9bdaKTJ1J9KWVKVa4amVBKF35JVpWRwB3h7pdlTxQptxBbtZCm3ErQUnjZSbpPre0cc3nQUeNOoWAPoIVOFc1Mw8GqScJY8rlNYG5YZnF9wo+bRJbVy95J4CFE+CseS6N1lYKXieRjbTtvbmF1Yo9DVJ1OcmgnSZpSVOrOxUpIsB6AbfCMjEEg\/MyaZeTWAhBusA3uI5u07ti9oSmLB+7SVm9JuDM0yUJ26lLaSePOM2b7bfaJnGVNN4skGCr8ZqkyxUn01JUB8ojfkkp0aQp44opb3LTf3fVTnfoCjMIVPziJWTQrU644LDQOt+A6n7IbLOvte5T5fyK8K5aOS+JcUSyrNTTB1ycm9bZa3Nw8RzQi6drFSeEQXxpmjmLj98uYvx3V6qFblhx8hgejKLNp+CRCelkJl2FraTpWsWKjuSI3QYIxjg6Y5rclEreKZJIzHStyg8zulNUcV1qvVup1nEtRcn6nVJlczMzbzl1LKzdVzy5AAWACQALARJ\/s6ZByeM5il4jdp+D8R4Um0kVJqfkpSceaAbUO6PeJU+w7rKQSjQLAKSTcGImYbpi6vV2JFqRn5xcy4ltLEmjW44pSglIB0qCbkgXIIBI2icdL7KOIMlsZUzMjLjH1YcoUnKOOVSjqXom3VabJaJRZqYQblXiAKVAWC+Il107YWGMGxKWYNSPqJu3Lc4B17vrdSuplLlKdQncJ4VlGpKVRqWhoFWlGo32JJNr+cMziirYqy9rKF1uTeMoo3Usi7axfYoVwv5cfKFZg3OGgzswJSfmRLuqIQHVnSm\/Q33Tv1hwqlNSE7LqYqUrLzco+LLaeQFoWLbXuLGK898gi7Ko1H3sVeYmRibtqUZTzHXuISZwjmRI1GQYrFJnkp03spKrbgXIN\/sh+cuszpHFEumVeJbnALC52ctzHQ+UQ+ruAZrD89M4iyvbcmZVCgueoqiSFoBvqYUT7yd7JJ3GwPAQ4mBsVUmpUWVrFFmTqNlp0HSppYO9xxBB5RopKuSllDQfVUnEMNhrYPWbZ3y\/9LWT+OU4ozzxzV5KbCzS6imnyySblAlm0N6bdC4lav6cSOZTcDVsrmOh6RHrBeXVGoGM11Bt6YeFdn\/aXUuNpUoLWoqWC4DuNVreHcE3ItvIZt5CBfQT6mLdwyJH9tKdidFzzjx8Ikpqdu7GWuggcuPpAFqF9jHkzqjwQB8Y8GYdJ22+EWqxVANhqCrpKzvoT8Y9JWkHxGwjFK3FbkwffDyjLKsM5WWpxk\/jfUY5Q\/ug9FxArtIVGpSVOnHkMycrOoUiXWQG0tpBWCBYpBSbngOfCOqelcRa7aWSOBcZysrmFiN+dZm5GUNN1Ss0ppwJUolBQmxQVErUk6huFC3ARuhs126BIGnM4afYUfKO0K3T5WalrJZeZQ6p3ikApBuDz8ou13GGH8DSndM2cec2DYWNbp8\/L6hCBrGZtJwtQZbD+H2nW25VkMJadVrWAkABSiedh8NhyEJfCGB8X5s11xDLy5ZhCwmbnXBcsg2OhA5rIPw26w7rK99R7eg6JJhGBRUV5NySVbrGL8aZn15qgUWWenZ9bmlpiXSSiWSdvQHqs7DccYkbkx2WE0FLdbx\/U20u2DhlmV3COfjc57+UbbDcjlhkFhwtSKWUPlN3plZSXn1dVK4n04DkIZXM7tS1nED71Fw6tbTaQUqCVabD89X4o8uPDaFrKmXURHKOqfPp45PVtfu+qkdmVifstoTUaZjnCMvU3pqURKfSMjItLm0upSEIu8RrUsJCQkklKSnfjeIZNyrEtOLkKckFpKjpSke4kHa4B2v0vCvytyVzZzJrTdSqkgtqk92pCnJh9cukKvcaAPGB1I8cOxWcjaThWelqXJz7U1NLY719lpkJDRFrkEE3SdQsSAq4WLeHUZFPO2MkXNz1UGrpi1gYGjK3a2g+wo7VfLmr19pJps8ppJdDvszp+9lf5YtwPHa1tz5gtnmvlpjrD9PprU7TKkuVl++DDaEd800gkKXoWm4sTvpv1PMxPKh5cJZ0KLJHx4ecO9hPLWQnab3FXpkvOy8wkpLD4UUFJHEgEXPMX4bEb2IiVz4i05tE0wl1UxzcutuS4xSrSk2eQSkggJN7FPQ9YVlHddsAlTilOPIQFFRJH7XMdXX+wj2b61PO1KfyllFPTCtbnd1epMpJNrkJRMBI67DjGhwn2WuxXiPED2G8P5Yd7PMIW6bVmttj72oJUQozQBsSOHGFUAeQ58bSWt3PS6sc88THMilcGudsDzt0XJ6cpL5qQl2UHW4ohCU9b\/UOESZyuyfzTzKpkm8mmvzK5dhuU9tm1lLDTLae7bbQq3upQkCyQeV+IJ6G0DscdnbCVQTVqPlBThONnUhc5UKhOBJtxCX5hab\/AAhyZTC8s04qVEmyy2fwKUX2Ft0j7bb8\/hGFQ2MksW2SF0zQ1yhBg\/sg0HCYdqlXUqp1SaRZ4rRaXRY3AS3uD5lRN7k7XsEznBkgxUqW8hDQQ4BdBsePnaOgU3hJpwFIaUf1REPtWZ0U\/KrETWDafhhmqzPsSpybdfnlS6WwTZLaNLa7qNjcnqBbjA2ozXLtlg6nyWLd1z6qDEzhl5+kVJlTJE0UvX4eEeEgdD3h3\/WIc+gYbbqdPbm2RYMoSvc\/iDwqv5gb78QD5QlMXVqWzGmWq3LUY01+aaWXJf2jv7oSspulWlO4I3BSOW5sYU+T9Vdw7OCTqav4hsjvnNgzqNxqNj4SPxuKfMXBrNd6hdl+wrphRzhjpOacSVw4qjzshNISSE3QQq1lHh6DwkHf8n0sp2VykpPKQlGhp\/xNAi3mR5EWVty2jKqrUsac\/IFQQlBKUrG5FrFHA77WNrnw8PJGztdW9MtszCVJmEG2yr2It4r8Sb8eu3UxXny5t1b4WAHRLldclJVXdJUQOIsi9xy9PSCEB7W5NgOe3hvSNBSBexGx+XD4QRozv6rYWNSUwnIvmUma2UANKQooUq41L28Vue2kX4alHob7DB9PmGJn2unLJcWSWFKNkp1pP3zncJCFKO9gUoJO8Jj6Zm3aU1Q\/akgCz844bbjYFN+epxfHnpHC26vpNVmWGGJuTljqbUhcu0vZXerIsVXFtk2vvt3ar7cXMjSQb80gglawg9Emsfzj7OqnsBHeMDQ4oqBIuVEpvfjsSed7k7i8M8wyFz65t0FVhobKj1HT4CFzjKqrmF1CeZcV3CFKlpZRuO8XsHHQOYuAkcrDoYQjZ7yYJFgNgNySoDb7BDOghsAq5jlWX3WaANYSRuOMXgkchHlOyzeLijfhDcKok3K86CCD0jxo0HUPd5xc1OHiL+kVGocQRHt7o1VEKaXtpG8eVo0mwAiiwNW\/GPSCLkX5R4Rdeg9VRspbVewv1i8talpSCdjcx4QCOMXAq+14AOSxPct3gbE2IMGYqpmJcLzi5apyT6VMFKQvWT4S2UmwUlQJSUkgG\/EcR11w3iRtKpGhYmmZNFfqMiJpEq0Sj2hse+UIX4kqSbakeIpvxI3jkbgTEf3HYzomKkyqJn6Jn2ZssqtZ0IWCUXPAkAgHkTflHUQyWBs+sJUfHuEq+gTDKSqTm2tnGHDpKmnE8Uqukak3vcC3IxX8aY7Oxwbp1Vz4VlY6KSNztbiw9y2eN8qsJYmU5UJO1Mn1jwutpsFHooc94bAVvG2VD6JPEko5VMMawlb7F1BgX99B4ptzSdjy6wsKhjqewq4KLj9Cme7FmqmhKnELB\/KIF7jzsbHYqN7K3DU9R6tQi7Iz8rWJB\/UkOtLS42rqknqOYO8IzK4XZuz7+Kt7YAAH7P8An9Qr+F5+hz9FYqtBnWpyTmhdt5tVwo879CDxB3Ea1vBMkjEE3iKiTKKe9OEGdZCAWJhf\/eEDdK+RI2OxIvcxqZXAEnhPEDlcwZNvSDE2bztMCiZV0\/lBB9xfmm1xsb8lhJzWlaS6m6b7jyiKcpbZSQ5zTe+6DVkUthS3mAmYlVpcbN73UCOHlDzIZ19bcN4YB8M1bF0vSmrKZfmm21Afk33h+FTikG19uMXThMPdHIeVwuafiC6Js8I\/VY+V9P5V8toSeEUsjpGKqcPIx4VNE8TFvDXLnedvJZ3eMJ2Kd\/WPQfYG5RGrU9fmIoVlR4Rlk6rztRyC2xmWD+J9cQk7VOZD7uZs9gmqTZZo7bLbSAODTqm0rQ6fRek+QvEx0ar7CIY9q\/BaznhTat3A9nn6c1NrKhdKnGlKRb6kE+sSKVrA45tVFqnSPaA3qmIpOUTWNa8qotU2akWwoe2zLpshtdhdLKSLqWd9\/dT5mwjfYyx\/SMopJWGKQwGvZEAtJQLJ0n8cnnc8T1jeYgzPqNFpDsjLSIem23ksaibBKD7rpvyTaxP5yeFoS2G8rapmjUDWsTTDrVMQoKM86NLryRbwspOyU3v4yLnawHL3VxJOymRh1gDsmX7vM\/PLEX0fRJWbdSSFKcVcIbQdwbXFr8iSL9YlNlJ2Z8D5XSjNdxo+xUKmU94e8OpttXHwg8fWwvxtfeM6pZgZc5O0o0rDEow04AdHdgFS19VKO6iep4w3EvijH+blZU3TpSZdYS5pULlLKUg8VLPLe1r6tj1BUNidN6zjlb1Uh9Rkblibfw+pT4VvNhx1lym4RS1LyzP3ozCyG20k8EhXAE8B69I3WEMANJm28RTVVNWnJhkj2hKrtqSopJIsohQ8Kbcbb8LmErJYApFEkWTi2oMzh1AtyLSB3BWTsAki6tyBvc8IfzLnDUrLUouLQy2\/NL79xtlISlolKUhIsBfwpF\/O\/lEtxp46e1OD3nqlUEdVNU3qiO4DkO\/vWJTcPSy1IQuUUs6kkgAWUARqFrdL+vDnDr0aiSy2W3pcJUlQuCRv8fOLNMw0lyykg2Avy3+cKmTkJilpEy2yt1kW79pNyRfYrSOu+45jhvsqsVkoJ9Uq60EWRuq8tUpLbS1lAGlJJI9IajKil037o6WmXmG3H0yk+XmksBHckv3T4gAV6gAdybQ+i2UT1NdXIqQrvmVd0QfDunb4ecIDK\/LzFeHa0mdxC417KzLuNNoS+FgFSgSAOQ94xKw+ojjo5w54BNrDrofqqvxRQ1dVjGHPgjLmMccxF7NBtqdR05g+HMK92lJO+gbiMZdMS2dXdpsPKFO8ZdB0pAUs72G5t19IxlypdJK028oRgq+g3SVflgo6UNXUb2F7QwGbXZAwBmpVpuv1xqZFSmi5ebadcS4WzcpRpK+68IIAPd3sBe5F4lMaeCOEW3KYkp4R6HZV45gduuQWefZTmskarJ4gkZhUxRZRNndbwW4lpa\/vh0pZQLgKUbhV77W3uEMaZLUyqs0ycbszNJLaVkWTvZSBfl+OPnHUbtM4ElsQZfzy3ZULDASs297QFeK0c+q1R6ZOyTkl3KiumFYTp2Ugp2UE+Y5esJsTee0FuiteAR3hdfWxWpHtknSnmnnElEolRRy1MlXhHkkE2HTccN4StXqIS0l8lBdatdSRe44XP139PKFpRp2UnJcU+cLbq9CmnSdza5Fz530n0WB1hA1uWVIzkxIa1KAcIQVHUTsLhVuGrYX\/ACgeW8IntuVamXAuFiv1x5hzVLOWQ6A5uR73A8uoMEaKZmTLvKSw5oCiVEFJ43tfbhw387wQZAse1C1+HJZ+cWHXnVrL6\/aFk7aG99APQ21K\/pp46YVzlSelZGdnphwMy0oypQuNJ75Y3BN7XAsAORv1FtOh9uUbWJYJQXVgFQsoJQn3ElPAAkN89woxpMcVdRpUphimoUpLKkKmlEeElSCpKb8SoJR4r\/lp6mHQbncqqXCBh1WLUmg\/KNLdUV6Gi4sKudwL8+Fio2HIWHKEhTm7sIJNzx+MK2paZWhTawSk6CElXME2A+Vh8YSVNUruQb8OEM6MWJVaxd1wFm3usm8eyogR5CQYCeRMMUhO6rrUOB+ceg4o7qtt0jyLGBSgiPLLK69FQJIiiR4+MWxurV13i4FDjGKFcTfhF1IsPeJiynUTsYugKPE3PnGYWJXpHE+YtC8yvzlx5k5U3axg+pJSy\/Yzki+kqlZsJGwWi+xtcBSbEdbbQgkpUFC5i+tIKdPUcP29YwexsjS14uF7FM+B4kjNiF0WyV7R+X2fjaGy4zT653YE1Q5xY16uZZUQA8jY8PEOYFxdZTeXUrQKya\/gOeeok08tK5qXSq8tNgW2cb90njYjcdRHIamzSkT4nZacWysOF1BbdUlSCDsQRwI8on92PO0XV8eujLDMKru1CqobU9SalMvanZpCUjUw4o7qWANQUSVKAVfdNzU67CTEDJAfcuj4XxCKhzYKrQnnyUrDPWbQtbQbcX7wB2B8oxqpVkoCDLp8WmxsdrxbqCVpeDak6dJsBHh2TLzfdgcdx6wiN3OVqDWNaqYLBbxrS5t1Woe1AEH87a\/1xIRQltIKkXPrDB01kU+dl5xRA7h1DilHlYg3+qHrm3lJbDrVltqAUhQNwpJ4EHmCIvXCZtFJFsb3+C5X+IDSKmKcjQgjyWQpMte4Onzi2WmF\/wCdG0aVdUTfe8W1VNs9Yt4Y5c4dNGdwt53LAHvj5xTvGk\/jAwnzPhfhRcH1j227NukFJCfWMuzWImHIJQombKs2B5xHrtPTaJ\/EtEkdKQ5ISTjylWvs64kW\/wD0\/XD6sKblUKfmppISkXVva3nEaM2q3TsR4zq8xT51My3LLTJXH4qmkjWn1CtUYt0dut7QXjUJq1zFNo80atP06UmW0oDTyZhlLiVtk7hQUCD8owcRZtSa5KbpFEaVLS7bqUy6AhSlTCSkKCW0jdZBJRtzTvaNhVGW5hC5Z1CVocSUqSRcEGMSkVTDeFmXqZWJdhqWfQsImSz3jkuom+pJ96197A\/iiJDQ1xuRcra4Oy5QkhQ8nmqpUxivH04uXkSe9Eqt0d7foVjZCfJNzy1EQv6fjdlpv6AwBTmZSSliAZgp0NIHDYc1eXGG9reNHcUBVPmFaKOwA8VJVpWtxJt4VDZSVAG\/P0O0ZmDpycxHOtU+SZDMm2bIQgWSE\/CJsUbHnPLt05Lw9oW5QdU7uHJEzLyJmYecqM4Vai64nwpV+Yne1vifOJO5XUCZbk21zKFDXp0ptwht8s8FsSwZ1JF025XiSGHJViSZSomxTblC\/E8RYG9nEmWG4cb9o5bqm0xDbQuAD6RYxfiei4EoExiKuP8Acy0qkruB4lEAmw89vrtxNo2bdQlW03KyR5coiR2wcTVjEOJqRlwiYXLyUyz7bM6FFKgyXC2kJtxUSD6bHkIT4XRHE6tsJOhOqZ4viDMJon1B5KPWKO2DnziTHlWk8s38RLlpmcdclpKkSKX22t9RSDpN1AbqtzuYsTnaB7Z7AJnKZmIgoaXMK1UkJIbR7yt0jhflE28kMisF4WpLLLuH6e86lIIQ7LpWhryCTcajzVxJJ3MOvMZd4JmEfxjCNFcvw1yLR+1MPa2uw+klMMcea3OwH371U8JqsSxWm9KZ6rSdASb291tfBQ67FHa3qOOcRVfA2ZtXm11RZbcZ+kkBl5tO1gQLDQTe\/MEi\/GJ0IYBSDYW9YhL2oOzlJYeUnNDLhlml1Slvh1gp2S04o202uLsqJ0qRcAA7WHCQXZnzaTmXlfQ61OSymZl2WIUhSr6FNLLTiL89K0qAPMW84W4vRRGJldS6sdodLWP1T3AsWNU99HK0tew7E30635g+Y2Ttezp5pi240kco9qnm+UY7k2lW8V8aqzLR4opctUaY\/Kvsd42ptQUgC5UnmB5xy\/zhoCMt82q7RStIYdWiYlSTxbWkAm\/S4t8I6nTbqVJINuHOObv7ohIijY8oFaaSG0T0iqXLhF792q+\/lZYH9HpC\/EI8zA4ck+wGcsnMZ2IUYq5O\/QdcXP055SQhYW8kK99OwVt1HhV6xaxPMt1RszkoVJW6i9lCxQbi424EXVf4dIRtZrgmGzUEKImJS7aQTbXchKwR6G\/wBjCoVbnZqSmpNak95Jvm6b+82SpKh8hf1T57rHQZhmVmZVWdlKypapNTDWt+ZU04FFKwAN1X3PxghP1RMwJ1a5VSEIWEq8RO5sN9j5QR52QWy62EtMvFDlRUgALfcfNibaU2Sm46XtYHmRzEY81qdRLtLdAXMPKnHVg3PiWdXK24QB6AcOd6feaZpaHQmypiwSk72JJO45e8E9L2jDH36pKQhwlMn3UuXCBZRab8RAHG4+HiHWGbAFUXm4sV6xnMS9Po7LTwOhTqUqtYniVH6xeExL1GnAANlSAet7Rn4qm\/b56Rp6DcNJU6oHeyiq31aSPjHhMqjuwkoFh5QwpGkMuq9ikrXSW6KqHWFi6HUm\/Qx6sFcIxzIMg60JCT5CKgPt7BZIiXcpZZp1V+2hNxHkeLcx5S4TsobRcSU8L8YLhe2VLAR4UL8OsXNPi2POPWkR4vCLKrLiUndF4yR4vEIxQg8RF1tdrCMgsCrove8VcuLFQttePNwYE27wKukFNtiNvjAVrtZJKjoQ4UgEAEi\/ht9l4lL2I8j6fnJnXTZKqzUw1S8Pt\/TU2lhZQ48GlpCGkrBBRqWpF1A30hVrEgh4sqP3PvJTHtIlKqcZ40kHZlpLq2FNy4DaiNwAWzt03MSn7PfZLwH2bq1VK5hbENVrM3WJduVUqoaE9w0lRUQkIAuVK0E3\/IFrXN4jrkEDmmWYB4eOS2dToUwmYU1NoHeNnxBO1hx\/bzvFtLEuw0rXcEA2B8odTEmE3KwwqfpDjTc0lJOh0kNueRIB0m\/O3Pfyi\/m7Us45OryeA8OZd1dNVrToYYmEMlxlAJCS53qLoCU3uSVCw42isVFE6KTQLoFDijKmGxdqBsk\/j\/ADJnKliBrDWF5lpuTl3CKpPqIUhmx\/BJH4y9wTfYJ8yAVfkTn4ms5mO5BtNmeao9HVOIc2CqYw0W0IYdWbqccUHQSCbo2BJ5MTnvijDXZtyvXQ6RNVCYxzOTbsrLzSSCxMOElTsyUqO6EBVgq1yruxbSVkV\/cxMA1sLxvnRXu+UzUkppEnNvrKlTTgcLky4FHdQCu7BVzOocQYf4NTOhka4bn5c1S+Kq9lZGQD6rdr8z3Kck6GCspUsC3GNe4ZZFyhdzGpq5nQ8XZV8OD80xp11qaaJRMI4fCL22M23XLZJ2g2ypRrqa2SU6AQOcEvVX5hQCSbHnCbbrzJNnkKUmMpFclHFgNkJUTtyEZZD0WoTC9wV6zOxijDlPp1MnHC1LVsuy7s0Lky3g8K7bXAKhcE8BEWcSUjGOW2Yc1PVqWMxhzFa\/aHXW1BYkKiWwVjVtqbXxSq1zdOwNwZBZ2yDtWwtTX0tKV3E1xAvspJ38uAhsGqzT6rQZjAuMC0hpUspiSnH1EoCeTTp\/I3JSr8RXlwYjCjU0Qnh1cCbhQmcRsosR9CnNgQCLpNOJbmAXNSSCOIIIsfOElW6SxVHHHJ10oaQLab21AQwyc3s7cK1xGXreGJ19S1lqRaQyZqZcbH5Cwkd6ALb2uBa8LxvDGLFtIqealcmJdSgFihS609\/1AeKLpbHDa5P1iE0ccrpMrQbhXVxjhiEsjhY6gjmtbN0Z1MkurS71pOfqbrDLadvvSEoQg9TcocJ63B4k3kBkph+TlWmRpSlSiFLUT0iP2OMWeyUOaebl\/ZmZNpK2GmQCGkoOqyQTufDxPHrGPlp2mZEPMyb85VJZOpA7\/wBiZWhIJAuoBzVz5AxvrAIWiFzrEow6T0gOnDbgG2i6dYYfkacw3oIKusKxvFI3AcvaIt5eZpIxHKPKankTIlnlMd+2CkO6bWVYk2uCOcOXIYh7wC7m+3OK1JEWvIdyVqhexzA5vNO4MRuLFtex2iNfahrKJHPvD7arXmKDL\/VNvqP+7DntVoBIV3n1xHztfTqz2k8HsoWfvtElkgf7VOf8of8ADDbYgzvuPgq3xc3PhcoHQqcWDMRSvdJ8SRsBCpm8SysuypSnACRDGUSVqkopKk6thG5nU1Wda061bcrxtqsHhfPmzaLi+E8dVtHhwgZHdw2Sf7S2OJZWVlXJWLBbH\/8AZA\/XCN7FVXUjJXDjwUAHX6ofW9QmT\/d8oTvamkZ+nZNVmafUoDvZUD1MwiMHsY1HRkDg0qXZRTPLPxnX\/wC+JGKwxU2FtijP6j8grv8Ah9VVWJSS11ULPJt7h\/8AVL5NcUR78VVXQBuuG9NcAT+E+uMSYxB\/6v1xRsttl11OBN4hCAfvgiEf7ov3VbwBIVVkJS9TZ5KtdrnQsEEfMj5CJB1HEXhV9\/PDrEcu1Q6nEeWtVkAda1MlSRx8SfEPrAjVMzMwhTKV\/ZytcudiZpdSlnWkuWJUEupO1tikWjEaqC6ZVdd7B7StwK2CgUpI+IUDGqL6mJ8IQ4U966b+Q4A\/D7Yy6+TMtsTiQNbNi4epOxP138tQiBkFrdU9dLclwW4m\/bZl4updWAeSeHG\/64I0bVRdbQEh1SRxAuYI19mVMbVaJW1xTLNRaky5rakmStaEC4Lt9W5\/og2\/Y4Un3yJVt9y6VrbS4o395xXiV8jaG0ViqvKWpaqo6VOEqUbC5Jvf7T84oMVV4NpaFSc0J4JsLD6olCIhVl9SHG4CWTBXNVOYnXElKbhKNQtsna\/xtf4xsEruLXhu\/ulrQ4VBz5CD7pq3\/wCYOfIROZK1jbAJJNTSSvL7pxTbYXjypI8obz7p63\/5g58h\/dB901b\/APMHPkP7oy7cdFrFC\/qnBLY6R4KSD0hAnE1bVsag4fgIp90laHCfc+QjHtRfZZ+iO6pf3I5x6ClEc4b37pK0f\/qDnyEH3R1n\/wAcv5CDtQj0R3VOKlShtcx61C3u7w3H3SVocJ9fyEV+6Os\/+Pc+QjLtgsDRPPNOQFxfa0qS4VW\/BkG\/SGw+6Ss8p9z5CPaMU1xAKRUHACLEWG\/1Qds1Ymgeea7u9nYPHCNKUShSRKNDa+1kjaHeVdagoi56\/KODlH7avagw\/KNyFFzeqkpLspCG225eWskAWAH3uM\/+Hp2uf5b6z+jy3\/8AlGsyA8lIbSkDdd4pOb7lYaWbJVvYn3vSDEs85L4dqPcTKmnfZXNBCt03BGq3lfjHB09vPtcqtqzurJsbj+Ly2x\/+KPTnb27XLyS29ndWVoJvpMtK2J6\/go1vs5bGwubzUp84smcT9qPtYyWX9CU\/LUDDtJYdr1TSBpkG3HFqJF9i6ttLCUJ338RGkKImsmiYZy3whTsD4PpyZCkUdhMvKMJUVaUje5J3Uokkknckk8448S\/bg7UkmuYck8256XXOLDkypmRlGy8sJCQpZS0CohKUpBNzZIHAARiTXbN7TM6oqms26q7fjdlj\/BEzDp46QkyC\/IJbi+HT4g0MjIA77\/ei6yPVRavE07ot5xiOYja1dzMNg\/nXveOTC+1n2hl7HM6o2\/8AaZ\/wRb\/hVZ\/31fvlVG\/m0z\/gh2Mapx+g\/BVp3CdYdpG\/FdagJee3ZdLQPMnYxkS6ESjyFOkKseR\/VHJD+Fj2huWZ9SHo0z\/gj2z2tu0QyoFOaFSFuF2mT9qIDjkJFrH4IHCNSNc7b+9dsMMSzOIJmlys2wTKOzCmnk3I1oLSzpPkSB9nAkRH\/PrA7WHKvNsyaClptxxCQNyLG31ixtw3jnLKdt\/tTyLqHpTOOrNraN21BiX8Jta\/4PzMa+u9sDtHYmmFzVczRqE464dS1rYYBUbAckAcAInYXxTHh9QXOaSwjYW3SPHPw6qcTLJYZGCQO3N\/ZtqNO+3xUvqlimv4faCaJVHpMTzKQ8GiATpGxvxHvct4byp1B1RcW8oqWvdSivVqPU+frEXJ3PLNKfSkTWMZtduWhAH1CNe5mnjx0WcxJMH+in+6JVRxVRyyF7Izr4KfRcFV8EQjllabdL2T6Y0nVTNJn2SSSuWcTuePhV\/fDE0pycZU24mWeUptSVCyCQbH\/pGLMY6xRNJWiYrDywsEHwp3v8IwZbEFXk1JXK1F5tSDdKk7EfGKziWIxV0jZADorphWGy4dEY3OvdT6yJryZWQmmW1nQJmyN+Xdo\/5mJD0TEGsJuvkOccnaXm9mNQ06KRiublgVajpSjc9SSnyjdNdpPO9n8HmHPp9G2v8ABGiStY91yFOigextiV1tarQLYur6\/KGR7YWJpOldorANZnV2Ybo8upRuADpmZja5sB7w3JtECm+1Jn23sjMqop9Gmf8ABGnxfnnmpj2flqpi\/Gc3U5qTl\/ZWHHW2wUM3J0WSkC1yePWJWHYsyhqGzW2UTEcN9PgdATuLLvnhOvYZxVRW6zQZ9maZcFzY2Uk2vZSTYpPkRGfLqaccKFKAF44I4R7Tue2A0JZwlmVVaa2lstBDego7s\/iaVJI0jkOCeVoUqe3H2qUk6M5qyjUkpJQ0wlVj0IRcRIlxamLjkDrd9lzh\/wCHlY1zRE9gA8foun3bxx5hai5Nz2GRUW3KpNTUue6RYlpKFa7rPAElIAT7xvcAgEhB9kSqBnI3CTJXq0S00q\/rMrP645a4izYzCxbOCfxJiyfqEwNdnH1AkFZusjbYqsLnibbmN5hvtH514QpMtQsN5gz8jISaC3LsNtNFKEk3IGpJPHeNNVisc0LYGg2FzrzJt9Fd8CwB2Ess5wJPTZdlX64ANlfXGsm6+QOJv6xyQV2tO0UsWVmpVP8A4mf8EWl9qvtBr3VmfUyevdM\/4IT9o1WWy6qVPEJ0nxEfGGczarAmaNNtd5dJbWCL8iIgOvtO57OG68x6iT\/7TP8AgjWT+fOblUbWzP43nXUL2UC22L\/JMYl4IWbXW3WPiC0tiNxKB+DcO3LfxD7YrTKgJ2Ufp80pX3y6U78CbED5p+qEpNVefnZhc1NTS3HF+8ogXMWkzj6BYOqsd\/jEbJopgqhe6V3dPJJQoJujw+IXghNJrlSAt7WoW\/NH90EY9mVs9PWvgggjclqIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBCIIIIEIggggQiCCCBC\/\/2Q==\" width=\"303px\" alt=\"ai image recognition\"\/><\/p>\n<p><p>Vision systems can be perfectly trained to take over these often risky inspection tasks. Defects <a href=\"https:\/\/www.metadialog.com\/blog\/ai-in-image-recognition\/\">such as rust,<\/a> missing bolts and nuts, damage or objects that do not belong where they are can thus be identified. These elements from the image recognition analysis can themselves be part of the data sources used for broader predictive maintenance cases. By combining AI applications, not only can the current state be mapped but this data can also be used to predict future failures or breakages. For example, if Pepsico inputs photos of their cooler doors and shelves full of product, an image recognition system would be able to identify every bottle or case of Pepsi that it recognizes.<\/p>\n<\/p>\n<p><p>As a <a href=\"https:\/\/www.metadialog.com\/blog\/ai-in-image-recognition\/\">result several<\/a> anchor boxes are created and the objects are separated properly. Treating patients can be challenging, sometimes a tiny element might be missed during an exam, leading medical staff to deliver the wrong treatment. To prevent this from happening, the Healthcare system started to analyze imagery that is acquired during treatment.<\/p>\n<\/p>\n<p><h2>What does image recognition software do?<\/h2>\n<\/p>\n<p><p>Solutions based on image recognition technology already solve different business tasks in healthcare, eCommerce and other industries. The manner in which a system interprets an image is completely different from humans. Computer vision uses image processing algorithms to analyze and understand visuals from a single image or a sequence of images. An example of computer vision is identifying pedestrians and vehicles on the road by, categorizing and filtering millions of user-uploaded pictures with accuracy.<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"306px\" alt=\"ai image recognition\"\/><\/p>\n<p><p>The residual blocks have also made their way into many other architectures that don\u2019t explicitly bear the ResNet name. Two years after AlexNet, researchers from the Visual Geometry Group (VGG) at Oxford University developed a new neural network architecture dubbed VGGNet. VGGNet has more convolution blocks than AlexNet, making it \u201cdeeper\u201d, and it comes in 16 and 19 layer varieties, referred to as VGG16 and VGG19, respectively.<\/p>\n<\/p>\n<p><h2>Step 1: Extraction of Pixel Features of an Image<\/h2>\n<\/p>\n<p><p>One of the more promising applications of automated image recognition is in creating visual content that\u2019s more accessible to individuals with visual impairments. Providing alternative sensory information (sound or touch, generally) is one way to create more accessible applications and experiences using image recognition. With modern smartphone camera technology, it\u2019s become incredibly easy and fast to snap countless photos and capture high-quality videos.<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"309px\" alt=\"ai image recognition\"\/><\/p>\n<p><p>Their facial emotion tends to be disappointed when looking at this green skirt. Acknowledging all of these details is necessary for them to know their targets and adjust their communication in the future. Improvements made in the field of AI and picture recognition for the past decades have been tremendous. There is absolutely no doubt that researchers are already looking for new techniques based on all the possibilities provided by these exceptional technologies. One of the recent advances they have come up with is image recognition to better serve their customer.<\/p>\n<\/p>\n<p><h2>Open-source Frameworks and Software Libraries &#8211; The Building Blocks<\/h2>\n<\/p>\n<p><p>In fact, it\u2019s a popular solution for military and national border security purposes. A research paper on deep learning-based image recognition highlights how it is being used detection of crack and leakage defects in metro shield tunnels. These types of object detection algorithms are flexible and accurate and are mostly used in face recognition scenarios where the training set contains few instances of an image. This object detection algorithm uses a confidence score and annotates multiple objects via bounding boxes within each grid box. YOLO, as the name suggests, processes a frame only once using a fixed grid size and then determines whether a grid  box contains an image or not. The key idea behind convolution is that the network can learn to identify a specific feature, such as an edge or texture, in an image by repeatedly applying a set of  filters to the image.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 13px;'>\n<h3>Mars&#8217; Speed of Scale: How AI-Fueled Image Recognition Is &#8230; &#8211; Consumer Goods Technology<\/h3>\n<p>Mars&#8217; Speed of Scale: How AI-Fueled Image Recognition Is &#8230;.<\/p>\n<p>Posted: Fri, 09 Dec 2022 08:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiYWh0dHBzOi8vY29uc3VtZXJnb29kcy5jb20vbWFycy1zcGVlZC1zY2FsZS1ob3ctYWktZnVlbGVkLWltYWdlLXJlY29nbml0aW9uLWluY3JlYXNpbmctY29udmVyc2lvbnPSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Read more about <a href=\"https:\/\/www.metadialog.com\/\">https:\/\/www.metadialog.com\/<\/a> here.<\/p><\/p>\n","protected":false},"excerpt":{"rendered":"<p>Image recognition AI: from the early days of the technology to endless business applications today Vision systems can be perfectly trained to take over these often risky inspection tasks. Defects such as rust, missing bolts and nuts, damage or objects that do not belong where they are can thus be identified. These elements from the [&hellip;]<\/p>\n","protected":false},"author":2,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":[],"categories":[172],"tags":[],"jetpack_featured_media_url":"","_links":{"self":[{"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/posts\/3443"}],"collection":[{"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/users\/2"}],"replies":[{"embeddable":true,"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/comments?post=3443"}],"version-history":[{"count":1,"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/posts\/3443\/revisions"}],"predecessor-version":[{"id":3444,"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/posts\/3443\/revisions\/3444"}],"wp:attachment":[{"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/media?parent=3443"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/categories?post=3443"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.jopack.in\/blog\/wp-json\/wp\/v2\/tags?post=3443"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}