Privacy-preserving Adversarial Facial Features
This addresses privacy concerns for users of face recognition systems by preventing reconstruction attacks without degrading accuracy, representing an incremental improvement over existing privacy-preserving methods.
The paper tackles the problem of facial features being exploited to reconstruct original faces, proposing AdvFace to generate privacy-preserving adversarial features that disrupt such reconstruction attacks while maintaining recognition accuracy, with experimental results showing it outperforms state-of-the-art methods.
Face recognition service providers protect face privacy by extracting compact and discriminative facial features (representations) from images, and storing the facial features for real-time recognition. However, such features can still be exploited to recover the appearance of the original face by building a reconstruction network. Although several privacy-preserving methods have been proposed, the enhancement of face privacy protection is at the expense of accuracy degradation. In this paper, we propose an adversarial features-based face privacy protection (AdvFace) approach to generate privacy-preserving adversarial features, which can disrupt the mapping from adversarial features to facial images to defend against reconstruction attacks. To this end, we design a shadow model which simulates the attackers' behavior to capture the mapping function from facial features to images and generate adversarial latent noise to disrupt the mapping. The adversarial features rather than the original features are stored in the server's database to prevent leaked features from exposing facial information. Moreover, the AdvFace requires no changes to the face recognition network and can be implemented as a privacy-enhancing plugin in deployed face recognition systems. Extensive experimental results demonstrate that AdvFace outperforms the state-of-the-art face privacy-preserving methods in defending against reconstruction attacks while maintaining face recognition accuracy.