Several face de-identification methods have been proposed to preserve users' privacy by obscuring their faces. These methods, however, can degrade the quality of photos, and they usually do not preserve the utility of faces, e.g., their age, gender, pose, and facial expression. Recently, advanced generative adversarial network models, such as StyleGAN, have been proposed, which generate realistic, high-quality imaginary faces. In this paper, we investigate the use of StyleGAN in generating de-identified faces through style mixing, where the styles or features of the target face and an auxiliary face get mixed to generate a de-identified face that carries the utilities of the target face. We examined this de-identification method with respect to preserving utility and privacy, by implementing several face detection, verification, and identification attacks. Through extensive experiments and also comparing with two state-of-the-art face de-identification methods, we show that StyleGAN preserves the quality and utility of the faces much better than the other approaches and also by choosing the style mixing levels correctly, it can preserve the privacy of the faces much better than other methods.
翻译:为了保护使用者的隐私,我们提出了几种面部去身份识别方法,通过遮盖脸部来保护使用者的隐私。但是,这些方法可以降低照片的质量,而且通常不会保护面部的效用,例如其年龄、性别、姿势和面部表情。最近,提出了先进的基因化对抗网络模型,例如StyleGAN, 产生了现实的、高质量的假相面貌。在本文中,我们研究了StyGAN在通过风格混合产生面部去身份识别面部时的使用情况,目标面部和辅助面部的样式或特征被混在一起,以产生带有目标面部功能的面部去身份特征。我们研究了这种去身份识别方法,通过实施几次面部检测、核查和识别攻击来维护效用和隐私。我们通过广泛的实验,并与两种最先进的面部去身份识别方法进行比较,我们表明StyGAN保护面部质量和效用比其他方法要好得多,并且通过正确选择风格混合水平来保持面部的隐私比其他方法要好得多。