Dual Asymmetric Deep Hashing Learning

25 Jan 2018Jinxing LiBob ZhangGuangming LuDavid Zhang

Due to the impressive learning power, deep learning has achieved a remarkable performance in supervised hash function learning. In this paper, we propose a novel asymmetric supervised deep hashing method to preserve the semantic structure among different categories and generate the binary codes simultaneously... (read more)

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