We assess the vulnerabilities of deep face recognition systems for images that falsify/spoof multiple identities simultaneously. We demonstrate that, by manipulating the deep feature representation extracted from a face image via imperceptibly small perturbations added at the pixel level using our proposed Universal Adversarial Spoofing Examples (UAXs), one can fool a face verification system into recognizing that the face image belongs to multiple different identities with a high success rate. One characteristic of the UAXs crafted with our method is that they are universal (identity-agnostic); they are successful even against identities not known in advance. For a certain deep neural network, we show that we are able to spoof almost all tested identities (99\%), including those not known beforehand (not included in training). Our results indicate that a multiple-identity attack is a real threat and should be taken into account when deploying face recognition systems.
翻译:我们评估了深度面部识别系统对同时伪造/伪造多个身份的图像的脆弱性。我们证明,通过利用我们提议的通用反反伪伪伪证示例(UAXs),在像素层次上对从脸部图像中提取的深层特征图解进行操纵,从而在像素层次上添加了无法察觉的小扰动,从而可以欺骗面部验证系统,使其认识到脸部图像属于多种不同特征,成功率很高。UAX采用我们的方法制作的一个特征是,它们具有普遍性(身份-不可知性);它们甚至针对事先不知道的身份成功。对于某个深层的神经网络来说,我们表明,我们能够掩盖几乎所有被测试的身份(99 ⁇ ),包括事先未知道的身份(未包括在培训中)。我们的结果表明,多重身份攻击是一种真正的威胁,在部署面部识别系统时应该加以考虑。