发明授权
- 专利标题: Adversarial optimization method for training process of generative adversarial network
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申请号: US17288566申请日: 2020-09-29
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公开(公告)号: US11315343B1公开(公告)日: 2022-04-26
- 发明人: Songwen Pei , Tianma Shen
- 申请人: UNIVERSITY OF SHANGHAI FOR SCIENCE AND TECHNOLOGY , YUNWU NETLINK (SUZHOU) INTELLIGENT TECHNOLOGY CO., LTD.
- 申请人地址: CN Shanghai; CN Suzhou
- 专利权人: UNIVERSITY OF SHANGHAI FOR SCIENCE AND TECHNOLOGY,YUNWU NETLINK (SUZHOU) INTELLIGENT TECHNOLOGY CO., LTD.
- 当前专利权人: UNIVERSITY OF SHANGHAI FOR SCIENCE AND TECHNOLOGY,YUNWU NETLINK (SUZHOU) INTELLIGENT TECHNOLOGY CO., LTD.
- 当前专利权人地址: CN Shanghai; CN Suzhou
- 代理机构: Zhu Lehnhoff LLP
- 优先权: CN202010113638.1 20200224
- 国际申请: PCT/CN2020/118698 WO 20200929
- 国际公布: WO2021/169292 WO 20210902
- 主分类号: G06V10/774
- IPC分类号: G06V10/774 ; G06N3/04 ; G06F17/13
摘要:
The invention relates to an adversarial optimization method for the training process of generative adversarial network. According to the adversarial optimization method for the training process of generative adversarial network, the optimal transmission problem is transformed into solving the elliptic Monge-Ampere partial differential equation (MAPDE) in the generator G. To solve MAPDE of n (n>3) dimensions, the Neumann boundary conditions are improved and the discretization of MAPDE is extended to obtain the optimal mapping between a generator and a discriminator, which constitutes the adversarial network MAGAN. In the process of training the defence network, by overcoming the loss function of the optimal mapping, the defence network can obtain a maximum distance between the two measurements and obtain filtered security samples. The effective attack method of GANs is successfully established, with the precision improved by 5.3%. In addition, the MAGAN can be stably trained without adjusting hyper-parameters, so that the accuracy of target classification and recognition system for unmanned vehicle can be well improved.
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