Opto-Electronic Engineering, Volume. 48, Issue 5, 200388(2021)

The joint discriminative and generative learning for person re-identification of deep dual attention

Zhang Xiaoyan1, Zhang Baohua1,2、*, Lv Xiaoqi2,3, Gu Yu1,2, Wang Yueming1,2, Liu Xin1,2, Ren Yan1, and Li Jianjun1,2
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    Zhang Xiaoyan, Zhang Baohua, Lv Xiaoqi, Gu Yu, Wang Yueming, Liu Xin, Ren Yan, Li Jianjun. The joint discriminative and generative learning for person re-identification of deep dual attention[J]. Opto-Electronic Engineering, 2021, 48(5): 200388

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    Paper Information

    Category: Article

    Received: Oct. 20, 2020

    Accepted: --

    Published Online: Sep. 4, 2021

    The Author Email: Baohua Zhang (zbh_wj2004@imust.cn)

    DOI:10.12086/oee.2021.200388

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