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Spoofing Deep Face Recognition with Custom Silicone Masks

机译:用定制硅胶面罩欺骗深层识别

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We investigate the vulnerability of convolutional neural network (CNN) based face-recognition (FR) systems to presentation attacks (PA) performed using custom-made silicone masks. Previous works have studied the vulnerability of CNN-FR systems to 2D PAs such as print-attacks, or digital- video replay attacks, and to rigid 3D masks. This is the first study to consider PAs performed using custom-made flexible silicone masks. Before embarking on research on detecting a new variety of PA, it is important to estimate the seriousness of the threat posed by the type of PA. In this work we demonstrate that PAs using custom silicone masks do pose a serious threat to state-of-the-art FR systems. Using a new dataset based on six custom silicone masks, we show that the vulnerability of each FR system in this study is at least 10 times higher than its false match rate. We also propose a simple but effective presentation attack detection method, based on a low-cost thermal camera.
机译:我们调查基于卷积神经网络(CNN)的面部识别(FR)系统到使用定制硅胶掩模执行的呈现攻击(PA)的脆弱性。以前的作品已经研究了CNN-FR系统的脆弱性,例如打印攻击或数码视频重放攻击,以及刚性3D面具。这是第一次考虑使用定制柔性硅胶掩模进行PAS的研究。在开始检测新品种PA的研究之前,重要的是估计PA类型所带来的威胁的严重性。在这项工作中,我们证明了使用定制硅胶掩模的PAS对最先进的FR系统构成严重威胁。使用基于六种自定义硅胶掩模的新数据集,我们显示本研究中每个FR系统的漏洞至少比其假匹配率高的10倍。我们还提出了一种简单但有效的演示攻击检测方法,基于低成本的热摄像头。

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