论文标题

Facemae:通过蒙版自动编码器识别隐私的面部识别

FaceMAE: Privacy-Preserving Face Recognition via Masked Autoencoders

论文作者

Wang, Kai, Zhao, Bo, Peng, Xiangyu, Zhu, Zheng, Deng, Jiankang, Wang, Xinchao, Bilen, Hakan, You, Yang

论文摘要

面部识别是人工智能中最成功的应用之一,已被广泛用于安全,管理,广告和医疗保健中。但是,近年来,公共面部数据集的隐私问题引起了人们的关注。以前的作品只需使用生成模型来构建隐私的面部数据集掩盖大多数面部面积或合成样品,从而忽略了隐私保护和数据实用程序之间的权衡。在本文中,我们提出了一个新颖的框架面,在该框架中,面部隐私和识别性能是同时考虑的。首先,随机掩盖的面部图像用于训练Facemae中的重建模块。我们定制实例关系匹配(IRM)模块,以最大程度地减少真实面部和脸部重建的模块之间的分布差距。在部署阶段,我们使用训练有素的Facemae在没有额外培训的情况下从看不见的身份的面孔中重建图像。隐私泄漏的风险是根据重建和原始数据集之间的面部检索来衡量的。实验证明,很难检索重建图像的身份。我们还可以在几个公共面部数据集(即Casia-Webface和WebFace260M)上执行足够的隐私面部识别。与以前的艺术状态相比,Facemae始终在LFW,CFP-FP和AgeDB上降低至少50 \%错误率}。

Face recognition, as one of the most successful applications in artificial intelligence, has been widely used in security, administration, advertising, and healthcare. However, the privacy issues of public face datasets have attracted increasing attention in recent years. Previous works simply mask most areas of faces or synthesize samples using generative models to construct privacy-preserving face datasets, which overlooks the trade-off between privacy protection and data utility. In this paper, we propose a novel framework FaceMAE, where the face privacy and recognition performance are considered simultaneously. Firstly, randomly masked face images are used to train the reconstruction module in FaceMAE. We tailor the instance relation matching (IRM) module to minimize the distribution gap between real faces and FaceMAE reconstructed ones. During the deployment phase, we use trained FaceMAE to reconstruct images from masked faces of unseen identities without extra training. The risk of privacy leakage is measured based on face retrieval between reconstructed and original datasets. Experiments prove that the identities of reconstructed images are difficult to be retrieved. We also perform sufficient privacy-preserving face recognition on several public face datasets (i.e. CASIA-WebFace and WebFace260M). Compared to previous state of the arts, FaceMAE consistently \textbf{reduces at least 50\% error rate} on LFW, CFP-FP and AgeDB.

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