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jiangqy / Adsh Aaai2018

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source code for paper "Asymmetric Deep Supervised Hashing" on AAAI-2018

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Source code for Asymmetric Deep Supervised Hashing on AAAI-2018


Introduction

  • This package contains the source code for the following paper:

    • Qing-Yuan Jiang and Wu-Jun Li. Asymmetric Deep Supervised Hashing. AAAI-2018.
  • Author: Qing-Yuan Jiang and Wu-Jun Li

  • Contact: qyjiang24#gmail.com or liwujun#nju.edu.cn

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