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Zisserman, \u201cVery Deep Convolutional Networks for Large-Scale Image Recognition,\u201d 3rd International Conference on Learning Representations (ICLR2015), San Diego, USA, 2015, pp. 1-14. 269","\u5f9e\u96f6\u958b\u59cb\uff0c\u6210\u70ba AI \u5716\u50cf\u8a13\u7df4\u5e2b ! \u8a8d\u8b49\u6aa2\u5b9a\u6559\u6750 \u4e3b \u7de8\uff1a \u8a31\u5fd7\u9752 \u4f5c \u8005\uff1a \u8a31\u5fd7\u9752 \u5510\u5927\u70ba \u7de8 \u8f2f \u7fa4\uff1a \u912d\u5065\u9022 \u90b1\u5f18\u8208 \u738b\u51a0\u767b \u9673\u5fd7\u744b \u7f8e\u8853\u8a2d\u8a08\uff1a \u694a\u601d\u742a \u51fa \u7248\uff1a \u667a\u6cf0\u79d1\u6280\u80a1\u4efd\u6709\u9650\u516c\u53f8 \u96fb \u8a71\uff1a 02-22672688 \u5730 \u5740\uff1a \u65b0\u5317\u5e02\u571f\u57ce\u5340\u5fe0\u627f\u8def 123 \u865f 2 \u6a13 \u90f5 \u4ef6\uff1a [email protected] \u51fa\u7248\u6642\u9593\uff1a 2023 \u5e74 8 \u6708\u521d\u7248 \u5e73\u88dd \u6709\u8457\u4f5c\u6b0a\uff0e\u4fb5\u5bb3\u5fc5\u7a76 \u7f3a\u9801\u6216\u7834\u640d\u8acb\u5bc4\u56de\u66f4\u63db \u51e1\u672c\u8457\u4f5c\u4efb\u4f55\u5716\u7247\u3001\u6587\u5b57\u53ca\u5176\u4ed6\u5167\u5bb9\uff0c\u672a\u7d93\u672c\u516c\u53f8\u540c\u610f\u6388\u6b0a\u8005\uff0c\u5747\u4e0d\u5f97\u64c5\u81ea\u91cd\u88fd\u3001\u4eff \u88fd\u6216\u4ee5\u5176\u4ed6\u65b9\u6cd5\u52a0\u4ee5\u4fb5\u5bb3\uff0c\u5982\u4e00\u7d93\u67e5\u7372\uff0c\u5fc5\u5b9a\u8ffd\u7a76\u5230\u5e95\uff0c\u7d55\u4e0d\u5bec\u8cb8\u3002 \u7248\u6b0a\u6240\u6709 \u7ffb\u5370\u5fc5\u7a76 \u570b\u5bb6\u5716\u66f8\u9928\u51fa\u7248\u54c1\u9810\u884c\u7de8\u76ee (CIP) \u8cc7\u6599 \u5f9e\u96f6\u958b\u59cb , \u6210\u70ba AI \u5716\u50cf\u8a13\u7df4\u5e2b ! \u8a8d\u8b49\u6aa2\u5b9a\u6559\u6750 \/ \u8a31\u5fd7\u9752 , \u5510\u5927\u70ba\u4f5c . -- \u521d\u7248 . -- \u65b0\u5317\u5e02 : \u667a\u6cf0\u79d1\u6280\u80a1\u4efd\u6709\u9650\u516c\u53f8 , 2023.08 \u3000\u9762 ; \u3000\u516c\u5206 ISBN 978-986-99227-1-5( \u5e73\u88dd ) 1.CST: \u4eba\u5de5\u667a\u6167 2.CST: \u6a5f\u5668\u5b78\u7fd2 3.CST: \u96fb\u8166\u5716\u50cf\u8655\u7406 312.83 \t 112011800 270 \u7b2c\u5341\u4e8c\u7ae0 AI \u7684\u672a\u4f86"]
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