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Yann Lecun CNN


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Fast R-CNN


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Yahoo ,DDFD,一种人脸检测方法


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VIPL Face ,seetaFace 引擎的论文


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Batch normalization


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Adam 优化器


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LFW 人脸识别排行榜,论文多多