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对抗样本攻击

上传者: qq_31490151 | 上传时间:2023/9/16 16:26:14 | 文件大小:185.79MB | 文件类型:ZIP
对抗样本攻击
对抗样本攻击的实现,运行test.py即可,如果想要测试其他图片可以修改代码中的图片路径。

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评论信息

  • 爱看剧的码农:
    挺好不错的2019-09-20
  • 林至简:
    你好,这个代码有对应的blog讲解吗?2019-04-01

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