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1、繁凡的论文精读(一)CVPR 2019 基于决策的高效人脸识别黑盒对抗攻击(清华朱军)图6。对真实世界人脸验证API的模拟攻击的例子。我们展示了原始图像对和由每种方法产生的对抗图像。 5. Conclusion 在本文中 我们提出了一种进化攻击算法 用于在基于决策的黑盒环境中生成对抗实例。我们的方法通过对搜索方向的部分几何形状进展建模 同时降低搜索空间的维数 进而进步了效率。我们应用提出的方法综合研究了几种先进的人脸识别模型的鲁棒性 并与其他方法进展了比拟。大量实验证明了该方法的有效性。我们说明 现有的人脸识别模型极易受到黑盒方式的攻击 这为开发更鲁棒的人脸识别模型提出了平安问题。最后 利用该
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