论文标题
保护面部隐私:通过风格化妆转移生成对抗性身份面具
Protecting Facial Privacy: Generating Adversarial Identity Masks via Style-robust Makeup Transfer
论文作者
论文摘要
尽管深度识别(FR)系统在识别和验证方面表现出惊人的性能,但它们也引起了隐私问题,因为他们对用户的过度监视,尤其是对于广泛在社交网络上广泛传播的公共面部图像。最近,一些研究采用对抗性例子来保护照片免于未经授权的面部识别系统识别。但是,现有的产生对抗性面部图像的方法遭受了许多局限性,例如尴尬的视觉,白色盒子设置,弱的可转移性,使它们难以应用于实际上保护面部隐私。在本文中,我们提出了对抗性化妆转移GAN(AMT-GAN),这是一种新型的面部保护方法,旨在构建对抗性面部图像,可同时保留更强的黑色盒子可传递性和更好的视觉质量。 AMT-GAN利用生成的对抗网络(GAN),通过从参考图像中传递的化妆来合成对抗面图像。特别是,我们引入了一个新的正则化模块以及联合培训策略,以调和对抗噪声与化妆转移中的周期一致性损失之间的冲突,从而在攻击强度和视觉变化之间达到了理想的平衡。广泛的实验证明,与艺术状态相比,AMT-GAN不仅可以保持舒适的视觉质量,而且还可以比商业FR API获得更高的攻击成功率,包括Face ++,Aliyun和Microsoft。
While deep face recognition (FR) systems have shown amazing performance in identification and verification, they also arouse privacy concerns for their excessive surveillance on users, especially for public face images widely spread on social networks. Recently, some studies adopt adversarial examples to protect photos from being identified by unauthorized face recognition systems. However, existing methods of generating adversarial face images suffer from many limitations, such as awkward visual, white-box setting, weak transferability, making them difficult to be applied to protect face privacy in reality. In this paper, we propose adversarial makeup transfer GAN (AMT-GAN), a novel face protection method aiming at constructing adversarial face images that preserve stronger black-box transferability and better visual quality simultaneously. AMT-GAN leverages generative adversarial networks (GAN) to synthesize adversarial face images with makeup transferred from reference images. In particular, we introduce a new regularization module along with a joint training strategy to reconcile the conflicts between the adversarial noises and the cycle consistence loss in makeup transfer, achieving a desirable balance between the attack strength and visual changes. Extensive experiments verify that compared with state of the arts, AMT-GAN can not only preserve a comfortable visual quality, but also achieve a higher attack success rate over commercial FR APIs, including Face++, Aliyun, and Microsoft.