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Fast Geometrically-Perturbed Adversarial Faces

机译:快速的几何扰动对抗面

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The state-of-the-art performance of deep learning algorithms has led to a considerable increase in the utilization of machine learning in security-sensitive and critical applications. However, it has recently been shown that a small and carefully crafted perturbation in the input space can completely fool a deep model. In this study, we explore the extent to which face recognition systems are vulnerable to geometrically-perturbed adversarial faces. We propose a fast landmark manipulation method for generating adversarial faces, which is approximately 200 times faster than the previous geometric attacks and obtains 99.86% success rate on the state-of-the-art face recognition models. To further force the generated samples to be natural, we introduce a second attack constrained on the semantic structure of the face which has the half speed of the first attack with the success rate of 99.96%. Both attacks are extremely robust against the state-of-the-art defense methods with the success rate of equal or greater than 53.59%. Code is available at https://github.com/alldbi/FLM.
机译:深度学习算法的最新性能已导致在对安全敏感的关键应用程序中机器学习的利用率大大提高。但是,最近发现,在输入空间中进行细微且精心制作的扰动可以完全愚弄一个深层模型。在这项研究中,我们探讨了人脸识别系统在多大程度上容易受到几何干扰的对抗性人脸的攻击。我们提出了一种用于生成对抗性面孔的快速地标操纵方法,该方法比以前的几何攻击速度快约200倍,并且在最新的面孔识别模型上获得了99.86%的成功率。为了进一步使生成的样本更加自然,我们引入了针对面部语义结构的第二次攻击,该攻击具有第一次攻击的一半速度,成功率为99.96%。两种攻击对最先进的防御方法都非常强大,成功率等于或大于53.59 \%。可以在https://github.com/alldbi/FLM上找到代码。

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