PDA

View Full Version : حرفه ای: خطا در تبدیل base64 به رشته



piter11
چهارشنبه 16 فروردین 1396, 19:36 عصر
من میخوام کد عکس زیر رو به رشته تبدیل کنم و سپس به یک فرمت تصویر

image data=data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAABkAAAAMKCAYAAAD d94gKAAAgAElEQVR4nOzd34tcZ5rYcV3O3yFfzIUmt94BExnFF +OBcUCy2W1sMYlolLRj94CDaKSgxFi9zMpoFGVYkNVaEivWYic R0wRsLLzGCopBwmAxRhnH+EKDYptMBrSsfBP27uTCectvvf2eU 1Wt+nHq6c8DH7CqT1WdqpZ9cb5+z7tv//79DQAAAAAAQCT7Fn0CAAAAAAAA0yaAAAAAAAAA4QggAAAAAABA OAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4Ag gAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCAAA AAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAAAA AQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AgjQanNzs9nc 3Fz4eQAAAAAATEoAgSXw5JNPNltbW3OPEWUAWV9fb7a2tppnn3 12Lu8/7/cDAAAAAOIQQGAJrK+vN5ubm83W1lbz5JNPzu195xlAtra2mmPH ju343AIIAAAAALAbAggsgfPnzzfHjh1rNjc3m/X19bm977xugZVWuJQBBAAAAABgtwQQ6Llnn3222draavbv/25FxPnz5+f23gIIAAAAALCsBBDouZMnTw4iRAoFtVtCbW1tNev r682xY8eara2tgZMnTw4dl37+5JNPDm6rlZSvWwaQ/Ln5cSnS5PJjyp/l53Ty5MkdP0/v2fZ+5WesHXPy5MlBLOr6PmrSrbf27/9u9U15XuX7lOeS/zyPO/n3nV6r/O7aIlDXewAAAAAAOwkg0HPlRfHNzc3qRfytra3m/PnzQz9LF9/zx1I8OH/+/FDwqO23MU4AqT1vfX19cEyKMuU55bfyalsBUnu/FBxq55A/Pw8T6bEUG0bdRiy9Xv4+te8yRaT8uZubm0OrdNLz8u8oPXb+/PmhY9P75p+t9n2lz7bov5sAAAAA0GcCCPRYCgD5Y/nqhFy6oN72GumievpzLQKUwWNUAElBYdJbV+WrWvbvHz+ApPer rYDJV3ykP49aGdKmbfP1tu8+l86xK5zk51e+Ry141VaejBNyAA AAAGAvE0Cgx2qrPdpiQdsF8fK2WW23ldq/f+ceI6MCyCR7kuS3kipjzbgBpOv9ymPbQsc459wWOmpBKj++dj uxts/WFbLy32NbYGpbCQQAAAAAfEcAgZ7Kb51UU64KWEQAGWc1Rdr3o ryF024CSNf7lSsvugLIqFUcowJIuZomf59ylcqjBJBJ/w4AAAAAAN8TQKCnui7U1yJGWwApL8h3BZAyGjxqAGm7ZdVuA8i 0VoBMK4CUe67UPvOsVoAAAAAAAN0EEOip2sX1pLYxdtuKgDIEp Iv4tYvq5WuOuwdIbU+O/OdlbCk3/07v/ah7gOTnOq8AUkancv+QRw0gXX8PAAAAAIB2Agj00Dibi29ubg5 d4E+3RcovntdiR3qsDBPpVlXle3QFkPx5+WPr6+vNk08+Wd0AP G3+XcaJ2oX+Sd6vDCPzCCDld5Z+b9MMIOk1y9CyublZXcUDAAA AAHxHAIEeqsWIUhk30kXyFBjKC/Hl88r9JWqxYJwAsn//zk3Aa3tiJMeOHavGify49J7jvl/tu5pHANm/f3hz983NzanfAqv2Hbbd7gwAAAAA+J4AAkGMe1G8aw8QAAAAAI AoBBAIQgABAAAAAPieAAJBCCAAAAAAAN8TQCAIAQQAAAAA4HsC CAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAA AAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAAAA ABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDj7fvCDHzQAAA AAAACR7Hvw8NsGAAAAAAAgEgEEAAAAAAAIRwABAAAAAADCEUAA AAAAAIBwBBAAAAAAACAcAQQAAAAAAAhHAAEAAAAAAMIRQAAAAA AAgHAEEAAAAAAAIBwBBAAAAAAACEcAAQAAAAAAwhFAAAAAAACA cAQQAAAAAAAgHAEEAAAAAAAIRwABAAAAAADCEUAAAAAAAIBwBB AAAAAAACAcAQQAAAAAAAhHAAEAAAAAAMIRQAAAAAAAgHAEEAAA AAAAIBwBBAAAAAAACEcAAQAAAAAAwhFAAAAAAACAcAQQYGwrax vNytpG88HN2ws/FwAAAACALgIIMLYDBw83Bw4ebrav31j4uQAAAAAAdBFAoMc+uH m7V6suBBAAAAAAYFkIINBj29dv9Co69OlcAAAAAAC6CCDQYwII AAAAAMDuCCDQYwIIAAAAAMDuCCDQYwIIAAAAAMDuCCDQYwIIAA AAAMDuCCDQY6MCyKWr15qVtY3m1C9/PfSc9dNnm5W1jcHPbt25O9b7fXDzdnPmwuXBc1dfebW5dPXa4O fjBpDt6zeaU7/89eB11k+fHXqd3Oorrw6OaXu9W3fuDl7rrd+8t/DfCwAAAADQfwII9NioAHLmwuXmwMHDzcraRvPFvfvNytrG4PhS W4B48PDb5ot795vVV15tfe7Pjr7cfHHv/sgAMuocDh1ZbT64eXvoOW/95r2R55he82dHX1747wQAAAAAWA4CCPTYJAFk9ZVXm8effr459 ctfN9vXbwxWYaTnP/70860rQX529OXBcStrG82lq9ea7es3mrd+816zfvrs4PGuc/ni3v3B69TO4/Gnnx9EkC/u3R96bnrt2s/yQFLGEwAAAACANgII9Ni4ASRFh1oguHT12uCY/FZZtddoW4GRv0bbueQRoxZaPrh5exBBzly4PPSzW3fuVn/2xb37zaEjq9XnAAAAAAB0EUCgxyYJIF23uEorM1bWNnb8LIWHr j04Hjz8dmg1SXkuH9y8Pdb+IOl8Dx1Z3fGzX116axBy0iqQdLx bXwEAAAAAkxJAoMcmCSBdr5PiRRke8tcfdXuprnNJrz8qVOSvU VslklaRrJ8+29y6c9etrwAAAACAXRNAoMfGDSCjwkNbKBk3oIw 6lxQuHn/6+WZlbaNVvtdI7fPkK0nSsW59BQAAAADshgACPTbJJuhdrzMqg Ixzi6lxAsgk2m6VlZ9r7VZZAAAAAADjEECgx5YtgKy+8mqzff3 GWNI+H6XVV14d2ti9dqssAAAAAIBRBBDosXkFkGndAmvUeYxy6 eq1wcqPab0mAAAAALA3CSDQY7MOIG/95r3B42/95r2xX6M8l/xnbSs7Rrl1527z+NPPD84l3wT9V5feWvjvAgAAAABYLgII9Nis A8iDh98OokPXbbA+uHl7cFztXPJYsX76bOe5fHDzdvPBzds7Hq +t+Ejn7VZYAAAAAMCkBBDosXkEkPxnK2sbO0LD9vUbzeNPP98Z QB48/LY59ctfD0WQ8nVu3bk7eK/y+b+69FY1dHxx735z6MiqW2EBAAAAABMTQKDH5hFAHjz8tlk/fXbw87QaZGVtYxAffnb05aHbZdXO5Yt795ufHX25+jrl4/kKkA9u3h48fubC5c7vwK2wAAAAAIBxCSDQY/MKIOmYFDxy66fPNl/cuz/yXEa9zuNPP19dGZLiSNctuFZfedWtsAAAAACAiQgg0GMpPGxfv 1HdXPzWnbvN9vUb1T01asd1hYvkg5u3q8eOOpeu92w7v/w1u8LGuMcBAAAAACQCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA 4QggAAAAAABAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCC AAAAAAAEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAA AAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAA BAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4 AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCA AAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAA AAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAAAAAB COAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCAAAAAAAEI4A AgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAAAAAQjgACAA AAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAAAAABCOAAIAAAAA AIQjgAAAAAAAAOEIIAAAAAAAQDgCCAAAAAAAEI4AAgAAAAAAhC OAAAAAAAAA4QggAAAAAABAOAIIAAAAAAAQjgACAAAAAACEI4AA AAAAAADhCCAAAAAAAEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAA AAAOEIIAAAAAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA 4QggAAAAAABAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCC AAAAAAAEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAA AAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAA BAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4 AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCA AAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAA AAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAAAAAB COAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCAAAAAAAEI4A AgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAAAAAQjgACAA AAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAAAAABCOAAIAAAAA AIQjgAAAAAAAAOEIIAAAAAAAQDgCCAAAAAAAEI4AAgAAAAAAhC OAAAAAAAAA4QggAAAAAABAOAIIAAAAAAAQjgACAAAAAACEI4AA AAAAAADhCCAAAAAAAEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAA AAAOEIIAAAAAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA 4QggAAAAAABAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCC AAAAAAAEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAA AAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAA BAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4 AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCA AAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAA AAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAAAAAB COAAIAAAAAAIQjgADNg4ffNk+8eb/5xfvfLPw8Hjz8tjlz4w/Nj974/VRf8+fbXzfPvP1V5zG/eP+bqb8vAAAAALAYAgj0VLoYn/v59tcze79lDiDl95R74s37zYOHsw8g6Zxr7w0AAAAAzJ8AAj31 i/e/2XHB/kdv/H5mkWKZA0jumbe/qoaicQLIo55zGTx+vv21FSUAAAAAsCACCPRULYDM8iK+APLo51 xb8fGjN37fnLnxh4V/pwAAAACw1wgg0FNtAaS8uP/GJ3/cceul2us98eb9oWPKi/JlAEmrF9Jj6efPvP3VjtfIX7t83fJWXuX5p+ek13jjkz/uCCDvf/Gg87PlRgWQ8lZV73/xYMcxtff90Ru/7wwobQHkiTfvD76TUd9FOv/8Flq11y1/530JVwAAAADQJwII9FQZQNJF7/yCfbqY/8Ynfxx6XnlcebE9XdjPL5znAaT2GnmgyN/7iTfvD45Lj+XPq93GK48ktRBRBpBJ9j/pCiDl6zzz9ldDcaEMIOW5doWGrhUg6Tsb9V088/ZX1d95/rq11TFWmQAAAADATgII9FRtE/RRqzaSZ97+aihm1C7Mlxfs02vVIkb6eW31Ru2xPMiUylUstRUM +UX+2vt26QogbSsp8mNSgEiRqPwe2tQCyBNv3u9cNZJ/F7XAVfv9PfHm/R3fb221EAAAAADsdQII9FTtona+YqHrAn1+IT+PIbnygvsTb94 frPKovWYttuS3d0raQk3brZ9qx+erSyaJH+nzjrsHSPkdlMek2 1GNExfKW2u1rVpp+y7GCVXlLblytecCAAAAwF4mgEBP1QJIugD +xid/nEkASRf8a8fvJoCkKJAfU1sB0hZA0vlM8r1NM4Dkn3PUbbjabo FVfqa276JtFUctgHStsAEAAAAAviOAQE91BZA8WtT2fihvgTXq wnp6rV+8/80gCoxzu61RAaS2aXsZKLoCSDp+ktUNswggtWNHfZ+19+/6Lmp7e6Tn5a9rvw8AAAAAGI8AAj3Vdgus/LGuTdDz57Vtgp5fSM8DR221wm4DSG0D70kCSHqfcSPItALIG5/8cejztgWK/OejAsg430Xt95s/r7ZB/ZkbfxBFAAAAAKAggEBP1TZBb1vJMc5eEOVrlbdRKgNHev/0nrvdAyTf8yKtgpg0gOTnP+r2T9MKILX9Nro2RB8VQMb5Lsrf0 8+3v66+bvl3w/4fAAAAALCTAALQY22bowMAAAAA3QQQgB5rW9ECAAAAAHQTQAB6 ou1WV1233gIAAAAA6gQQgJ545u2vduw7suhzAgAAAIBlJYAAAA AAAADhCCAAAAAAAEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAAAA AOEIIAAAAAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4Q ggAAAAAABAOAIIAAAAAAAQjgACAAAAAACEI4DAEtu+fqM5cPBw s339xshjz1y43Bw4eHjh5zyJZTxnAAAAAKAfBBDoofXTZ5sDBw 93unXn7kwDSDq+dOnqtbl9DwIIAAAAALBbAggsgQMHDzdnLlze 8fg8Akj+2KWr11rPZRZmGUBu3bk79ncHAAAAACwfAQSWQF8CyG 5e51HM8r0m+e4AAAAAgOUjgMAS6FMASatAbt25O/PPLYAAAAAAALslgMASGCeAlPuGlHt1zCqArKxtNCtrG4PHy+es rG0MndfK2kb1/dJnyY8rz6EtvrQ9Xr5mOqY8pwMHDzfrp88u/PcMAAAAAEyPAAJLYFQAOXRkdSh4pCCQPzatALJ++mxz6Mjq4M8 raxvNoSOr1bBRCx6Hjqy27i2Sr8bIN2EvjxsngKTnl6+ZjrECB AAAAABiE0BgCYwKILXVC2WomEYAqUWFtJpi1Pt3fZ62z1e+9rg BJH0v5SqY2ncngAAAAABATAIILIHd7AGSokD6824DSKk8Lt0Cq 3z80JHV6jmXz0mfobanyG5vgXXmwuXW+DLOdwcAAAAALD8BBJb AIgPIqOPaAkjbOT94+N3qkPScrk3VdxtAulafjPPdAQAAAADLT wCBJbCbAFLGg3kHkHFXgAggAAAAAMAsCCCwBEYFkNrPDh1ZHdo bZN4BZNQeIGl/jlt37rbu11FumN4WLdK5TrLBeXpfAQQAAAAAYhJAYAmMCiDlhf z102d3rJSYdwBJgaH82aEjqzvCSDrf2mcoz6F8zfw7yD9v2kC9/A7yP3fdpgsAAAAAWG4CCCyBcW6BlVZLtG1WPu8AkpTnla9KyeX BI60IqZ1DCivJytpG662xyo3cy/CSntd1XgAAAADAchJAAAAAAACAcAQQAAAAAAAgHAEE9qDydlNd t4kCAAAAAFhGAggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIA AAAAAAQDgCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAA AABAOAIIAAAAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAE A4AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgC CAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4Qgg0EN/+/AhAAAAAEtk0deTgJ0EEOihv/27vwMAAABgiSz6ehKwkwACAAAAAACEI4AAAAAAAADhCCAAAAAA AEA4AggAAAAAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQD gCCAAAAAAAEI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAII AAAAAAAQjgACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AggAAA AAABCOAAIAAAAAAIQjgAAAAAAAAOEIIAAAAAAAQDgCCAAAAAAA EI4AAgAAAAAAhCOAAAAAAAAA4QggAAAAAABAOAIIAAAAAAAQjg ACAAAAAACEI4AAAAAAAADhCCAAAAAAAEA4AgjAElpZ22gOHDzc XLp6rfO47esfNQcOHh7rWAAAAACIRAAB6Ilbd+4OYkWblbWNoe NW1jY6X1MAAQAAAGCvEkAAemLcAPLgYX0FyKWr13ZEEQEEAAAA gL1KAAHoqRQu1k+fHev4FEUEEAAAAAAQQAB6qyuA5D9rWzmyfv psawCpPWfWn+fMhctD75dWrNy6c3fwz/nxtcfWT58d+j7SMSIPAAAAACUBBKCnZhVA8sfmFUFS/Kh9hlt37g7+nAeMtKJl+/qNwWOHjqwO/nzmwuXm0JHVwc/S95AfDwAAAMDeJYAA9NS4ASQ9Nu4tsNJxteeeuXB5Zp+lXJ2xf f3GUAApV3ek80mPpePzn6fnJuVrAAAAALB3CSAAPTWrANK1yfo s4kEZOpK0YiM9funqtcGKjktXr/3/FSw3Bo+duXB58NnSa3ZtFA8AAADA3iaAAPRUtABSPl4GkPzP66 fPDp3vrTt3m5W1jew2XvWoAgAAAACJAALQU7sNIPm+GLUAcujI 6sxiR03b3hz5Juj5Zyg3P88fK2OJ/T4AAAAAaCOAAPTUpAFk/fTZsTZBTzFhnpugp3NLf843bs8DSNrYPF/Fkm6NVd7aqnzN9HxRBAAAAIAHDwUQgN6aNIA8ePj96o6uAPLg4 fDKkHkEkAcPv1+hkoePMoCkx/JzTY/VNmgvo4/9PwAAAABIBBAAFqIWQAAAAABgWgQQABZCAAEAAABglgQQABZCA AEAAABglgQQABZCAAEAAABglgQQAAAAAAAgHAEEAAAAAAAIRwA BAAAAAADCEUAAAAAAAIBwBBAAAAAAACAcAQQAAAAAAAhHAAEAA AAAAMIRQACW3Prps82Bg4ebMxcuL/xcAAAAAKAvBBCABTt0ZLU5cPDwDitrG2M9Px1/6Mjqwj9Lm1t37lY/Y3ncytpG5+cpX0f0AQAAAKCNAAKwYG0BZNyosQwrQLav36gGj9 zK2sZQ9FlZ2xj6/Cl+XLp6bejPff7cAAAAACyOAAKwYCmA5Bf/U9Q4cPBws339o4Wf46Pavn6jM+akQHLrzt3BYylwbF+/MfhOylUxZy5c7vXKFwAAAAAWRwABWLBaALl09doggFy6em3Hn/PVIbXnP3g4fDup8ue1W1LN8jNeunqtM1ScuXC5esuvQ0dWBys8 Dh1ZHaz+SGrhBAAAAAAePBRAABZunBUgeQApb49Ve37XniLb1z 9qveXWrD7jmQuXO99r/fTZZv302R3PW1nbGDyerwZJylUiAAAAAJAIIAAL1rUHSLr4nwe QcqVEGUDy2JCvmEgrKdLKkDw4pMfmtZ9GCjxp5YYAAgAAAMC0C SAAC9YWQPJ4kQeQck+QMoCkmFG7pdSDh/XVIWVwmdfnTsFFAAEAAABg2gQQgAVr28MjFzGArKxtDAKIPUAA AAAAmDYBBGDBph1A8v1DarfASsfPM3bU5OeXQkb+87S6o+s2WW 3hBAAAAAAEEIAFm3YASeGgbRP02obqs94EvfxsK2sbg03c889R 7kuS/zlFknS7K7e/AgAAAKCLAAKwYNMOIOXjtdtbbV//aK4BJF+V0vVZ83OurVBJEeT770L8AAAAAKBOAAEAAAAAAMIRQA AAAAAAgHAEEAAAAAAAIBwBBICZeuc//5fm3/+HN4EJfHTjvy38310AAABYdgIIADN1/Pjx5sSJE80LL7wAjOH1119vPvvss4X/uwsAAADLTgABYKZeeOGF5vjx483169eBMXz22WfNp59+uvB/dwEAAGDZCSAAzFT6v9qNMePNp59+KoAAAADAFAggAMyUAGLMZC OAAAAAwHQIIADMlABizGQjgAAAAMB0CCAAzJQAYsxkI4AAAADA dAggAMyUAGLMZCOAAAAAwHQIIADMlABizGQjgAAAAMB0CCAAzJ QAYsxkI4AAAADAdAggAMyUAGLMZCOAAAAAwHQIIADMlABizGQj gAAAAMB0CCAAzFQZQD7++ONm3759A4899tgCLzUb078RQAAAAG A6BBAAZqoMIC+++OLQxd6f/OQnIogx2QggAAAAMB0CCAAzNeoWWGlFiDHmuxFAAAAAYDoEEAB malQAeeeddwQQY7IRQAAAAGA6BBAAZmpUANm3b1/z+uuvz/HysjH9HgEEAAAApkMAAWCmagHkscceG2yCfu/evQVdZjamnyOAAAAAwHQIIADM1KgVICmGGGO+GwEEAAAApkMAA WCmRgWQpvkugrzzzjtzurxsTL9HAAEAAIDpEEAAmCkBxJjJRgA BAACA6RBAAJipMoC8+OKLQxd7X3zxRbfAMiYbAQQAAACmQwABY KbKAJJvgL5v377mscceW+ClZmP6NwIIAAAATIcAAsBMjXMLLGP M9yOAAAAAwHQIIADMlABizGQjgAAAAMB0CCAAzJQAYsxkI4AAA ADAdAggAMyUAGLMZCOAAAAAwHQIIADM1AsvvNCcPHmy+eqrr4A x/O53vxNAAAAAYAoEEABm6uTJk83HH388+L/agW6//e1vm9/97ncL/3cXAAAAlp0AAsBM/ZhRdm0AACAASURBVI/P/2dz/6uvgQn8r6+/Wfi/uwAAALDsBBAAAAAAACAcAQQAAAAAAAhHAAEAAAAAAMIRQAAAAA AAgHAEEAAAAAAAIBwBBAAAAAAACEcAAQAAAAAAwhFAAAAAAACA cAQQAAAAAAAgHAEEAAAAAAAIRwABAAAAAADCEUAAAAAAAIBwBB AAAAAAACAcAQQAAAAAAAhHAAEAAAAAAMIRQAAAAAAAgHAEEAAA AAAAIBwBBAAAAAAACEcAAQAAAAAAwhFAoIf+79//PQBTsOj/ngMAAACLI4BADxljjJnOLPq/5wAAAMDiCCDQQ8YYY6Yzi/7vOQAAALA4Agj0kDHGmOnMov97DgAAACyOAAI9ZIwxZjqz6P+e AwAAAIsjgEAP1ebP/93lZv1f/QUALQQQAAAAICeAQA/V5sDBw81HH3/CjP3p6isLPwdm472/udn8k5dPLfw8mI1/e+k/NtvvfSiAAAAAAAMCCPRQWwAxs58f/viniz4FM6P55n//n+YfHf6niz4NM6P5y7/66+Yv/+qvdzy+6P+eAwAAAIsjgEAP1UYAmc8IIHFHAIk9AggAAABQEkC gh2ojgMxnBJC4I4DEHgEEAAAAKAkg0EO1EUDmMwJI3BFAYo8AA gAAAJQEEOih2ggg8xkBJO4IILFHAAEAAABKAgj0UG0EkPmMABJ 3BJDYI4AAAAAAJQEEeqg2Ash8RgCJOwJI7BFAAAAAgJIAAj1UG wFkPiOAxB0BJPYIIAAAAEBJAIEeqo0AMp8RQOKOABJ7BBAAAAC gJIBAD9WmFkA+//Jec+Dg4R2uXnt36hcX98oIIHFHAIk9AggAAABQEkCgh2pTBpAT r52vxo9pB5APb95uDhw83Dz13PGpvWafRwCJOwJI7BFAAAAAgJ IAAj1UmzyAnLt4ZRA7jr50aui4q9fenWoASaFFADHLPgJI7BFA AAAAgJIAAj1UmzyAtMWPfPLbY527eGXw+FPPHd/x3Npqkvx9cvnz8hCTfP7lvcHPr157d/D4hzdvD947/bl8j/RYmrT6JCkjTHr8xGvnm6Mvnaq+xqQjgMQdAST2CCAAAABASQCB HqpNihJ5VOha6TFuAGm7lVZ6z7YAkoJD1y248nOtyYNI/r5dz80jSO3nAohpGwEk9gggAAAAQEkAgR6qTS2AdF3sHzeA1Fa E5FO7BVZ+DrXXTsfWjstXjdQeSytI0mvVXj8FlraVJ48yAkjcE UBijwACAAAAlAQQ6KHazHMFSD61AJIHi3zyc/v8y3vVWDPOY/m516TPk98Ca1ojgMQdAST2CCAAAABASQCBHqpNig35vhjT2gOk drupFCcEEBNlBJDYI4AAAAAAJQEEeqg2eWzI998oI8jVa+/uuEVUOiYPC7V4kv88vUa+QiR/j9oqlK5bYE0SQPJzz+NN7TsRQMy4I4DEHgEEAAAAKAkg0EO1KV dbdK2QSFGia6Pycg+QthUg+WqP/HmTboI+aQAp3zepbYIugJhxRgCJPQIIAAAAUBJAoIdqUwaQpmm PBPmG4GXUaNsEve35TdO+4qS2f0j+3EcJIOXjAoh51BFAYo8AA gAAAJQEEOih2tQCiJn+5AEkj0PlhvO124WZfk9bAKmFvDy0meU YAQQAAAAoCSDQQ7URQOYzbQGk/P4FkOWbMoDkv8O+BZC0+qm2V4+pjwACAAAAlAQQ6KHaCCDzma4 Akt9qSwBZvikDSG3PmzSLDg/ptnOLPo9lGgEEAAAAKAkg0EO1EUDmM7UAku+Bki6U1wJI24qCf PLXzPc4SRe6831dahe/y83nxZfxJw8g+fdcxo/alDGs/N2Ue+s0zfCttdLkMS0/h7TipO3v0InXzg/97NzFK4P3fPdv/nvreeXHRx8BBAAAACgJINBDtRFA5jO1AJJfrK5dqE4R4sObt1t vqVS+Ztttl8rH8gvXbc8VQcabPICk73LUra66bpNV+72OG0Bqz l28MnYAyX3+5b3qe+WBbS+MAAIAAACUBBDoodrslYuYi562FSD 5n8uL0W0BIj8mrTLII0aa2gX18rZbtYvZ6bFF71exLFMLIKNuM ZWvuPn8y3tN0wyHrhSodhNAysfy59ZugVUGkHxqfx/T++e3bos8AggAAABQEkCgh2ojgMxnugJIfuE7DxJ5AGn7v/vTMbUL5eM8ll9M71qJYNpnNytA8uiVTxkodnMLrPK18nMZFUBq t7RKz0mvXca36COAAAAAACUBBHqoNi5yz2e6AkjT1ENEGTfSao Ha/5UvgCxu8gBS29elNssUQPIol2LdXlodJIAAAAAAJQEEeqg2LnL PZ0YFkPzxMm6UF9Rrq0R2G0DyDbPN7iYPIOV+LWUESd97HkrS1 G6BVTuu63Zn4waQ/LFRASR//fT8vbD5eRoBBAAAACgJINBDtXHhez4zTgApL57XVoCki9fTCiB NM/r2WqZ78gDSNMNRqVTb7L5r5U3Xa+0mgJQrfsp9Z9rCRnkead+S vTACCAAAAFASQKCHaiOAzGfGCSBNM3yBOgWIMoxM8xZY5eMCyO RTBpA0tWBR3vKq/Hnt70S+CuTcxSuPdAusphn+XY8bQPJjRm3wHm0EEAAAAKAkgEA P1Sa/iJoumHZd+B7nYqnZOXkAMbGmLYBEmlp02ysjgAAAAAAlAQR6qD YpgIz7f3gLILsbASTu7IUAspf3ihFAAAAAgJIAAj1UGytA5jMC SNyJHEDy22/txdUfTSOAAAAAADsJINBDtZn0/+gWQHY3Akjc2SsBZC/Gj6YRQAAAAICdBBDoodqM2kg5Dx4pegggk48AEnciBxAjgAAAA AA7CSDQQ7XpCiAf3rw9FD9KAsj4I4DEHQEk9gggAAAAQEkAgR6 qTVcAyW9/8/mX95qmaZqr194VQHYxAkjcEUBijwACAAAAlAQQ6KHadAWQp547 vuOWWPlxAsj4I4DEHQEk9gggAAAAQEkAgR6qjQAynxFA4o4AEn sEEAAAAKAkgEAP1WbcW2ClsQn67kYAiTsCSOwRQAAAAICSAAI9 VJuuAJLv92ET9EcbASTuCCCxRwABAAAASgII9FBtugJI0+yMIB/evC2A7GIEkLgjgMQeAQQAAAAoCSDQQ7XJA4iZ3QggcUcAiT0CC AAAAFASQKCHaiOAzGcEkLgjgMQeAQQAAAAoCSDQQ7URQOYzAkj cEUBijwACAAAAlAQQ6KHaCCDzGQEk7gggsUcAAQAAAEoCCPRQb Q4cPNy8tHGGGfuTn/zpws+B2fhn//LfND9++s8Wfh7MxvP//ETzLzbOCCAAAADAgAACPdQWQD68eYsZ++GPf7rwc2A2/tN/fb/5k5/82cLPg9l45V//RfPLC1sCCAAAADAggEAPtQUQM/txC6y44xZYscctsAAAAICSAAI9VBsBZD4jgMQdAST2CCAAAABA SQCBHqqNADKfEUDijgASewQQAAAAoCSAQA/VRgCZzwggcUcAiT0CCAAAAFASQKCHaiOAzGcEkLgjgMQeAQQAA AAoCSDQQ7URQOYzAkjcEUBijwACAAAAlAQQ6KHaCCDzGQEk7gg gsUcAAQAAAEoCCPRQbQSQ+cy0AsjRl041J147P5XXMuPN51/eaw4cPNx8/uW96s9nGUDSe1+99u5MXv+p547P7LWjjAACAAAAlAQQ6KHatAW QcxevNEdfOjXVC4l7ecoAki5sf3jz9kSvM8sA0nU+e/lC+SQB5MObt1uPHfU6Xe+9yABy7uKV5sDBw0Mm+QzLPgIIAAAA UBJAoIdqUwaQE6+dH1zkFECmNwLI8s4iA0htpvm7GPVaJ1473z z13PGhx85dvDL4e5I+76Rz9KVTzbmLVyZ+3iJGAAEAAABKAgj0 UG3yi5f5xdsTr50XQKY4Asjyzl4OIKP+jgogAAAAwF4kgEAP1a bt4qUAMt0ZN4AcfenU0K2GyovEKYCUtyUadUz5f/HXZpIAki58t71+Ood8RVH6LPlnLD9fut3TU88dHxyTzil/v9p55s+p3TbqqeeON+cuXhm5yqn8bruiRtPsPoDkx7add35M+Z 2X31/tvPMpn5++51EBpO3n+fdY3hqr/HucXqP8rAcOHh4Kelevvdv5Oyxfdx634hJAAAAAgJIAAj1UGwF kPjNOAHnqueM7vvPyAnG6AJxf+C6f13bMqJUjkwSQE6+dH7r4X K5MSeeQnpMuvj/13PEdt0/K37O8sJ0u6ueBJT1Wnnv+/un7Lb+D8qJ6W0QoP/ssA0j+fikA1CJJfj5lGCj/fS2fV/uuU8DoCiDpfNr+W1BbAZJWkLWdS9PUV4Ccu3hl6Pdc/jtSfsar194VQAAAAICFEECgh2ojgMxnRgWQdKG5nPIC89GXTu3 4vaT/k3+SY2pT/p/5pVEXykedQy3wlBfzyyBRCxllSCgvnLedUy0Cnbt4Zeicap9z1 itAyuiUfyfjBJD0uuXkkaHt1mmjfq/5cbUQMu4tsMpzrgWQ2veWVhG1PWceI4AAAAAAJQEEeqg2Ash8Z lQAyS/0dh1Xu5BdxpNxjqnNJCtA0jm33Qardg61C9jptlT5OZTvU55X7 TupXRgv40H5Xk0zHE/a4sWs9gBpOzY/z3ECSHnbqNrtpdpCx6T7iZQrVtoCSO1WV10BpHZ7rzK65J9zHi s/0gggAAAAQEkAgR6qjQAyn4kUQNI5lXs3RAkg5UwSQLqOnXUA6Z q23+1uNlTPf7e17yyFsa5zbgsg44SNfK+TeYwAAgAAAJQEEOih 2ggg85kygJQXjttuUVW7BdaiA0jtXMvbUM0zgJS3sUpTuwVWVw Bp25i+3JejnDyAtH2G2vlMK4CMEw9qnz193kkDSB7ragGkFlVG rQBp++67pvaZZjECCAAAAFASQKCHaiOAzGfKAFJb8dG2CXp+kb cvASS/4J4uXi8qgKRjapug5681KoCkc8y/p/xWTuMGkLRCoXbO44SLUQGk7bsto1S+UX3tnGqbwufz+Zf3dvx9 LD9H7XdR7rVS22y99t+XdFw+5y5eGVrpk89u4s1uRgABAAAASg II9FBtBJD5TAogbZtJp0kXpWv7JjRNPwJI0wzv/5F+tsgAko7L1TYXHxVA0nnmn22SW2Clqe3LUZ7PbgNIvl9GGcd q+3/knzX/+edf3uu8BVZtH4/a58j/Lnz+5b0dz0t/N2obt5fnWe4rk/97Un6+eW2ILoAAAAAAJQEEeqg287qP/l6fcgWIiTO1AGLijAACAAAAlAQQ6KHaCCDzGQEk7gggsUcAAQA AAEoCCPRQbQSQ+YwAEncEkNgjgAAAAAAlAQR6qDYCyHxGAIk7A kjsEUAAAACAkgACPVQbAWQ+I4DEHQEk9gggAAAAQEkAgR6qzYG Dh5sf/vinwCP4B//wHy/8HJidl09tCiAAAADAgAACPdQWQMzs54c/tgIk6lgBEnusAAEAAABKAgj0UG0EkPmMABJ3BJDYI4AAAAAAJQ EE/l979/sqyXXfCfi+8V+gl37jBsO+0EshWJZFMG4wZENgJSSj7GpBoRHI yAIThEAbxcsV2Aw43nkRYmzBDYLBJjCgN2PwEGsdhMEiP+S9KB FBScRCbt/RzEi2ri0RE8Km8mJy7j197qnq6r5dt06ffg48MN1dXXWqqmcov p855xQo1wQgl9MEIPU2AUjdTQACAAAApAQgUKBcE4BcThOA1Ns EIHU3AQgAAACQEoBAgXJNAHI5TQBSbxOA1N0EIAAAAEBKAAIFy jUByOU0AUi9TQBSdxOAAAAAACkBCBQo1wQgl9MEIPU2AUjdTQA CAAAApAQgUKBcE4BcThOA1NsEIHU3AQgAAACQEoBAgXJNAHI5b ewAZPr4M831GzdH7cOm24OPPFrEOQ0VgFy/cbOZPv7MwusHH3m0efe99zd+LK29CUAAAACAlAAECpRrcQDy7n vvNw8+8ugCxdbNtDgAeWH/W72K9w8+8mjz1HMvbeT42xaAPPjIo82P3nxr4b30upUagOT6vk 4TgJTRBCAAAABASgACBcq1OAB56rmXFoqr3/z2a0aIbKjlApCucCNcewHI/RauR/z73LUARBunCUAAAACAlAAECpRrywKOUorM297SAOSp517q/N/808efaZ567iUBSHM28iENFUr5bQpA6m4CEAAAACAlAIEC5ZoA5 HJaGoDE0hYK39/89msLAUhu+x+9+da5exjeC8L+4vsYQoUgDVrSfcTHDaMx4v2HF oKd3Gdhn/G+21rYLv5ObpvrN24uHHPZeaSBwlPPvdS8sP+thXNaNXRYFoDk +pm77/Hn4X7Fffnmt1871zdT1g3fBCAAAABASgACBcq1riJ0KB4rql68 5QKQsOZK2p567qXm+o2bawUgucAgt+ZIGhSEwKVpztaCSaegap qz4CS0d997/3S/7773/kL/0t9PeN0nYAj97QrgQtE/9DP0O/Q1nHv8+w2BR/w6/c708WeyAUVb6xOA5PqZ3o/4noRtugKQ6zduLuwjF5BoF28CEAAAACAlAIEC5VpbAJIrJmvrt 1wA0jRnYUdo7773/mkRe50AJC3wh7ZsJE98rNyoktx2fVo88qRrNEeuv8vCktzvs21 UTWjpqIrcNGOrTj3VJwDp6mdb0JgGGssCjvB3VmC52SYAAQAAA FICEChQruUK3WE6IFNfba61BSA/evOthaJ2mI6padYLQNruW24NkHS6qvhY08efyU7VFIrsbceJP0 +3W2VEUQgRwloobdukfQjrq6TvtU2DlQuM0lEuy1rfKbDa+tkW bPSZAiudykwAsvkmAAEAAABSAhAoUK6lhd5QFNc229oCkKa5Hz aEgnl87dcNQHIjLHIjMeJRCW0jO0JRPR3BEK+tEY4Xgoa4AJ87 7ioBSPhz31EtcbAQwpj4u7kRICUEILlrvywAmT7+zMJrI0CGaQ IQAAAAICUAgQLlWlzozf3veW0zrSsAuX7j5unIj65QInd/0mJ9vJZHaOmaE7mCe9e97woE4u/lRplcdARI/L30vJYFC7mprNIQoYQApO14L+x/qzUAyYUd1uwZpglAAAAAgJQABAqUa31GD2gXb10BSNM0p1M9xc XrNKjIraERRmHE30m3CdNZxQFIbuH0uCDftrh216Li6eLh6eLr 6wYgoU9pCNI3WAjHyy0sXkIAEraJX4c+LAtA4v2G+ywA2WwTgA AAAAApAQgUKNdCoTe3dkNubQhtvbYsAPnmt1/Lvpde+xBexNNPpcX6dJuwsHpcLI/X/3jquZeyi6DH2vYd9y/9DYURGJsIQOJjh2P2CRbi9T9CX0oMQMJ2wQv731o6BVa6/ocRIMM0AQgAAACQEoBAgXLNeh+X0+IARKurpQGIVlcTgAAAAAA pAQgUKNcEIJfTBCD1NgFI3U0AAgAAAKQEIFCgXBOAXE4TgNTbB CB1NwEIAAAAkBKAQIFyTQByOU0AUm8TgNTdBCAAAABASgACBcq 1Bx95tPnbv3ufgf2H//gbo/eBYfzl4d80//k3/9vo/WAY/+vqHzZ/8Ed/LAABAAAATglAoEC59n9+8ufNf/0fzzGw6WO/M3ofGM5/+i+/PXofGMZv/fcvN//z69cEIAAAAMApAQgUSNM0TdtMG/vfcwAAAGA8AhAokKZpmraZNva/5wAAAMB4BCBQIE3TNG0zbex/zwEAAIDxCECgQJqmadpm2tj/ngMAAADjEYBAgT786OdQrF/88lewNcb+9xwAAAAYjwAECnR8fNwcHR1BUebzeXP79u3R/34AAAAAQB8CECjQ0dFRc3x83HzwwQdQjNu3bzdHR0ej//0AAAAAgD4EIFCg8D/uT05OoBjhdzn23w8AAAAA6EMAAgUSgFAiAQgAAAAA20QAAgUSg FAiAQgAAAAA20QAAgUSgFAiAQgAAAAA20QAAgUSgFAiAQgAAAA A20QAAgUSgFAiAQgAAAAA20QAAgUSgFAiAQgAAAAA20QAAgUSg KxvOp020+l09H7USAACAAAAwDYRgECB+gYg+/v7zd7e3jm3bt0avVg+lm0MQMJ9PDk5aQ4PD7P39PDwcPDjLzuG AAQAAACAbSIAgQKtEoCUXOwvvX8lCIFHCB/S1ycnJ83BwcFGg62Dg4NmMpksvDebzZbeKwEIAAAAANtEAAIFE oDsjtls1sxms9PXuQDk5OT+yJZ4u4vIBSBtx40JQAAAAADYJgI QKNAmApAwrVE8aiCMJDg8PGxu3bp1+ufJZHI61VJuf+lUW+k2+/v7zWQyOd3/dDpd2Ofe3t65gnvX/tNCf9hvsL+/37qvyWSy8Pne3t5pwT+dIqxr2rBlfQqhRHx+uWAhXOe2vk8mk4 VjtwURaVASH7vtmuSuf/q9MPVW+Kzr2gpAAAAAANgmAhAo0KZGgKTTGsWF/rgwHxfb02L/bDZbKJKHQnlc6A9hQRoS9B0Bkm4TQou4n3EfVw1A4u+Hvub637 dP4fN4m9DPeL8huGnbTwg74s+7RoCE85pMJtn+xdc/vQ7xn3NBTZ/7JQABAAAAYJsIQKBAF1kEPS1sh4J7OoIgFOzTkQ9x0T4U43NrT 8Tv5wKEVQKQXHAT+tpWrF8lAIlfh3PKvdc1/VPcp1woE8437ms6uiO9Jrdu3eo1FVUcQuVClbhPufuTarumy66 1AAQAAACAbSIAgQJtcg2QePqoXME8LeLHBfiugngcNKSF/3UCkHTKrDis6TP1VVcAEo/cyIUDbUFPW5/azje+XmGfOWGbg4ODc9cn9734WGmQ1XYOITRZJehIQxQBCAAAA ADbTAACBdpkAJKbmqmkACQENHFIkSvyx8FAGmhsOgBZ1qe288o FIG2jMJYFIG2jUfoGIEFY8yM+jgAEAAAAgF0gAIECbTIACYX86 XTaewqstIifK8anU2CtG4DkCvppX9N9dk3TtIkAZFmf2qahms1 mC31bFtb0nQKr7f70DS9yAY8psAAAAAConQAECjTEIuhpETw3M iS3PkbbIujxcbumhOoaUZALDcJ34tEWcViRLuw+VADS1aewj3R URdvi6nGYcXBwsNYi6Ok55hZBD+d9eHiYDbvCPrvWMLEIOgAAA AC1EIBAgS6yCHoohIfgIi5yxwX5eARI/N3ciIWwr9z6HF0BSCjWt61FkW4T9p0ugt61yPsQAciyPsX7ibf JjaBI71H6ebpQep8AJO1f2znG2qbGigOY6XTauc6KAAQAAACAb SIAgQL1DUAuom0UAOtbNj1XTtuaHpetz5olAhAAAAAAtokABAo kANlOXWuXLAsexr4Py6YWOzkRgAAAAACwXQQgUCABSPnaprpa5 3qG7451Ln37LgABAAAAYJsIQKBAR0dHzXw+bz766KPB/OAHP2j29vaat99+e9Dj1OoLX/jCuXU2xu7T0AQgAAAAAGwTAQgUaD6fN7dv3z4tOEMJjo+Pm6Mj AQgAAAAA20EAAgW6c/duc/uDD6A4H9y5M/rfDwAAAADoQwACAAAAAABURwACAAAAAABURwACAAAAAABURwAC AAAAAABURwACAAAAAABURwACAAAAAABURwACAAAAAABURwACAA AAAABURwACAAAAAABURwACAAAAAABURwACAAAAAABURwACAAAA AABURwACAAAAAABURwACAAAAAABURwACAAAAAABURwACAAAAAA BURwACAAAAAABURwACAAAAAABURwACAAAAAABURwACO+QX83nz 8T/8fXPyN+8AAAAA7JSP3/vb5ud37o5enwEujwAEdsQ/vf4nzb++8OWm+crTAAAAADvr199/bfQ6DXA5BCCwAz75sz8d/eECAAAAoBS/eusno9drgOEJQGAH/PMf/e/RHywAAAAASvGvL3x59HoNMDwBCOyA///7vzv6gwUAAABAScau1wDDE4DADhj7gQIAAACgNGPXa4DhCUBgB 4z9QAEAAABQmrHrNcDwBCCwA8Z+oAAAAAAozdj1GmB4AhDYAWM/UAAAAACUZux6DTA8AQjsgLEfKAAAAABKM3a9BhieAAR2wNgPFA AAAAClGbteAwxPAAI7YOwHCgAAAIDSjF2vAYYnAIEdMPYDBQAA AEBpxq7XAMMTgMAOGPuBAgAAAKA0Y9drgOEJQGAHjP1AAQAAAF Cases1wPAEILADxn6gAAAAACjN2PUaYHgCENgBYz9QAAAAAJRm 7HoNMDwBCOyAsR8oAAAAAEozdr0GGJ4ABHbA2A8UAAAAAKUZu1 4DDE8AAjtg7AcKAAAAgNKMXa8BhicAgR0w9gMFAAAAQGnGrtcA wxOAwA4Y+4ECANgRn37SNNe+MX4/AAB6GLteAwxPAAI7YOwHCgBgRwhAAIAtMna9BhieAAR2wNgPFA DAjhCAAABbZOx6DTA8AQjsgLEfKACAyrzzs2ahhdDj00+a5sb3 8p8Fn35y9tmnn5y9f+/O/f3Gx7h35+z1m28svgYAuKCx6zXA8AQgsAPGfqAAACoSAo7w+s0 3FgOQONT4f/+wGFp8+sn998LrOORIA47cvt58Y/zzBwCqMXa9BhieAAR2wNgPFABARa59434AcuN75z8LI0DibUOI kQYn8XeufeNsv+F79+7cDz3C/nKjSQAALmDseg0wPAEI7ICxHygAgMrE01zFozLSNUDiAOTNNxZ HdAT37pyFHOHP7/zsvjffOAtBTH8FAGzY2PUaYHgCENgBYz9QAAAVi0OQrgBk2QiQ rzx9Fnzcu3M2KuTTT87eH/tcAYCqjF2vAYYnAIEdMPYDBQBQkRvfW5zm6t6dfgFI+LxtDZB4 +/Q76dRaAAAbMHa9BhieAAR2wNgPFABAReLpr5pmMdBYFoB85enF 7+amtQojPsLrd36WnzoLAOCCxq7XAMMTgMAOGPuBAgAAAKA0Y9 drgOEJQGAHjP1AAQAAAFCases1wPAEILADxn6gAAAAACjN2PUa YHgCENgBYz9QAAAAAJRm7HoNMDwBCOyAsR8oAAAAAEozwx7OYw AADq9JREFUdr0GGJ4ABHbA2A8UAAAAAKUZu14DDE8AAjtg7AcK AAAAgNKMXa8BhicAgR0w9gMFAAAAQGnGrtcAwxOAwA4Y+4ECAA AAoDRj12uA4QlAYAeM/UABAAAAUJqx6zXA8AQgsAPGfqAAAAAAKM3Y9RpgeAIQ2AFjP1A AAAAAlGbseg0wPAEI7IB/+frvjf5QAQAAAFCKf/n6741erwGGJwCBHfCrt34y+oMFAAAAQCn+6fU/Gb1eAwxPAAI74tfff230hwsAAACAsf36+6+NXqcBLocABHbIL4 7+sTn568PmV3/xFgAAAMBO+eX//avmF0f/OHp9Brg8AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAA AAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAA AKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAK A6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6 AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAo0N0PP2zu3o M1fPjh6L9fAAAAACiBAAQKNJ/Pm/l83hwdHUFv8/m8OT4+Hv33CwAAAAAlEIBAgUIx++7du9Db8fFxc3R0NPrvFwAA AABKIACBAoX/0X9ycgK9hd/N2L9fAAAAACiBAAQKJABhHQIQAAAAADgjAIECCUBYhwAEAAAAA M4IQKBAAhDWIQABAAAAgDMCECiQAIR1CEAAAAAA4IwABAokAGE dAhAAAAAAOCMAgQIJQFiHAAQAAAAAzghAoEACEHL29/eb6XTa+rkABAAAAADOCECgQAIQcgQgAAAAANCfAAQKJAAhJwQg e3t7zf7+/rnPBSAAAAAAcEYAAgUqJQCZzWbNZDIZvR/cZwQIAAAAAPQnAIECXVYAsre31+zt7TW3bt0avbi/CdPpdKvOZTqddgYaKQEIAAAAAPQnAIECrRKA3Lp1q3VKpK7Ce1 vwEfYXOzw87LXfw8PDZm9vr5nNZpceJhweHjaTyaTZ29trDg4O LuWYs9lspetzUfv7+81DDz3Uel8EIAAAAABwRgACBVp1BEgIHv oU/kPA0XffcSDSd7TCqoFMajKZLP3+/v7+wvRcBwcHp+HLRUKJ6XTazGazZn9/v9d16rvdJnz1q189Pbf0/AUgAAAAALBIAAIFWmcKrBAApMX5NLQIgcbVq1dXKvCvEmqEY8Q hxMHBQe/1RHIBSFrwT19PJpPTACiEGGl/VglA1glNcuexLDiKg6tlU1x98YtfbB544IHsdwUgAAAAALBIAA IFWncNkDgECIX5XGgRhxpta2aEQGXdNULSYy8r7qfn8fDDDy+E Cl0BSBpwpGHQKuFLLswII2zaRpXkApbZbHa6n64RLfHx4u/0CUDS7QUgAAAAAHBGAAIFWjcASUOHtgAk+MxnPtM8/PDDrQHJRdbSSIvzuSmbugKQJ554YiEwyQUg4fM04FgWiKxyDYO uICgXkMTbd41Aic9rNpt1hkRPPPHEwn0RgAAAAABAOwEIFGjdA CQNLZZN5/TAAw+cC0BCsX6dUR9piBEHCSEkyL0XBwfh+GG9i/hc4m3j4n865VZutEmfxdm/9KUvtZ57n9EyXeffNoIk/m44j7bgaX9/v/n85z9/Oq1W2icBCAAAAACcEYBAgfoEIPHi5G1rdITielq4D8HDZz/72XOhwCpTVaX7i7WFDel2OWGR7/i9yWRyusB5kPa77bM4lFh27K5+h+uY9iMXbuSuSS5ASUeH5L7X dZ3ifQlAAAAAAOCMAAQKtO4IkL5BSSiez2azc6HJsnUoNmnZ1F CrBjEX1TVl2EVHxXQFIH2nBltGAAIAAAAAZwQgUKBNBiBd0kXT Q/CwqYL8Ml2Liy9bv2QIbeFPV1DTx2UFPQIQAAAAADgjAIECXUYA 0hV0hDUmcoX8TfYhBAMPPfTQub5dJHDoI4QvcQDUtv5JbnqxNr n1O9q+H/qwqesqAAEAAACAMwIQKNDR0VEzn8+be/fubdTTTz99OgXW5z73uc5tr1y5cm7arCtXrmy8T7ljLevbkG7e vHnuvL/73e+utI/0+1/72tda93/z5s2N9X0+nwtAAAAAAODfCUCgQPP5vDk+Pj79H/3Qx3w+b+bz+ei/XwAAAAAogQAECnT37r3mzt27sLK7d++N/vsFAAAAgBIIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAA AAAAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAA AAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAA AgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAAAg OoIQAAAAAAAgOoIQAAAAAAAgOoIQAAAAAAAgOoIQKBAP//4YwAAAAC2yNj1JOA8AQgU6OcfnwAAAACwRcauJwHnCUAAAAAAA IDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAID qCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqC EAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEA AAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAA AAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAA AAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAAIDqCEAAAAAAA IDqCEAAAAAAAIDqCEAAGN2Tz77YPP/y1YXXTz774qDHvPLYbOGYAAAAANRFAAJb4PUf/rh58JFHF7xy7dXe33/l2qsL380Vln/69ju99//8y1fPFY6ffPbFc30MvnP9xoWvQejflcdmvc719R/+eCPX/spjs85jfuf6jXPnGx/7ymOzla5H2F9bYT699um9jfvw/MtXW+9J32u07Pw3RQACAAAAwKYJQKBwTz77YrYAHYrby77/07ffOVdITgu/IVwIhfnwOg1B4pCjT+H4O9dvbKx4Hgc0XYX7VYr7y7z+wx+fBg C5/YXwIT3nOOC48ths4XXbtY2/33UOuQCkT1AQ9rvJ89+kNADZtPQ+AAAAAFA/AQgU7PmXr3YWbUOBetX9psXw51++eq6I/sq1Vxf2HX+nb7F6U6M/Pjo5Cw66jv2d6zdOQ5pNFOyff/lq88q1V5tXrr2aPWafonpum/TapucQAqpcYHGZAciy898kAQgAAAAAmyYAgUKFKYzC63SKqZ++/U7z0cn9wvYq02GF78TF8FxxOEy7FY4T61Os7iryryMEIF39Cuc RByC50RbpiJc24Thtx7zy2Gzptc9d266RMfFnuSmaLjMAWXb+4 R53TZ8W37f4N5yef/qbyl3bdLqv+PN0eq/Q167p43K/gfTvWW4UVAiG2s4FAAAAgDIIQKBQz7989bSImwsc4mL0qmslpC M+ciMm4sJ1+v0+AcgmR3/E/fnp2++cFqDjz+PRMHG/cwFBn6m50m1yBflQXO/aV9sIkLZ7Fh837D++B5cVgPQ5/xACxNuFPqfTqeXWRon7vSwAyY2ICZ+n047lwrfcfUh/o2mfwja5IDLum7VEAAAAAMokAIFChUJsn2muVglAQtE6DlA2HY Bscu2PtD9hREK6/3i6sLjf8ffi/i8buZFu0zWiJSx0nvs8LbynI1SWXbvnX7567vWyRdBz/Vg1AOlz/rk1UEIfw2+ybbRNOqqkKwDpGvWz7LfSdh/C7yS813Z9wrHj67JOoAYAAADA5ROAQKGGCEBCoT59f9MBSJ+A4 aOTxQW/l42kSIvaTz774rlRBm3nE/cn3bbPsZZdj/T6poX3tumZ2q5JbvRCuN6XMQKk7/m3hULxOXRdt/j9rgCkz3Rq6W9p1QAkva5t55377a8zvRgAAAAAwxOAQKHiKbBy U+ykBf6ufYUibltosck1QHLF801I9xsWPP/o5JenC3WHbdOCe7rtsumKwnRLOX2+G9+PVRffzgUg8VRYlxGA9 D3/ywxAus7xymOzhX6sMwJEAAIAAABQHwEIFGqTi6AvW48jV/ztKjp3BSB9C/Kraitq50Z05Aru4btPPvti5yiOruvVp9Cdnv8mApBwj0IQNnQA 0vf8u6bACn1cNgVW228qNwVW399FLrzrMwVW7rov6+eq1xYAAA CAyyMAgYLF61rk9Jkeq8/6BOli28ume+oKQPpOf7WqXKE7jOxI+5LreyjK951Kqe3zuGie2 1dugeyuexiOFwday9YaGTIAWeX8QwAS9ydd4yReBD3dTxrwdS2 Cno7yCMfPBSy5qcjafid9FkGP+yEAAQAAANgeAhAo3JPPvtg6I qBP0TW3SHYQF39DCBJ0jZLoCkCWjTZZV9vUWm3vpf0P57csnMk VwdPrHu7Hsmsa9repACScw7JF0HPn2bdIv8r5hymw0vU32tYO6 erfsgAkbJP7jabHz40AiY8f9tt2v7rupwAEAAAAYHsIQGALpMX jPoV8Fg21Nsku67M4eZ/F4wEAAABgCAIQYCf0Wfyc1a+pAAQAAACAUglAgJ2gCL95AhAAA AAASiYAAaoW1nQYYl2SXScAAQAAAKBkAhAAAAAAAKA6AhAAAAA AAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAA KA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA 6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6A hAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhA AAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAA AAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAAAAKA6AhAAAAA AAKA6AhAAAAAAAKA6AhAAAAAAAKA6/wbtwMsyORfyjwAAAABJRU5ErkJggg==



متد زیر رو مینویسم ولی وقتی میرسه به کلاس image ارور پارامتر میده ! ممنون میشم راهنمایی کنید
public Image up(string base64String)
{

if (base64String.Contains(":")) base64String = base64String.Split(':')[0];
// Convert base 64 string to byte[]
byte[] imageBytes = Convert.FromBase64String(base64String);
// Convert byte[] to Image
using (var ms = new MemoryStream(imageBytes, 0, imageBytes.Length))
{
Image image = Image.FromStream(ms, true);
return image;
}
}
144884
144885

Mahmoud.Afrad
پنج شنبه 17 فروردین 1396, 11:44 صبح
از جایی که دیتا شروع میشه رو باید استفاده کنید(تا , باید حذف بشه) قسمت های ابتدایی برای شناسایی نوع دیتا هست.

piter11
پنج شنبه 17 فروردین 1396, 23:22 عصر
ممنون حالا چطوری به صورت آدرس درش بیارم ذخیرش کنم تو دیتا بیس؟