Diffusion-based Adversarial Identity Manipulation for Facial Privacy Protection
Journal:
arXiv
Published Date:
Apr 30, 2025
Abstract
The success of face recognition (FR) systems has led to serious privacy
concerns due to potential unauthorized surveillance and user tracking on social
networks. Existing methods for enhancing privacy fail to generate natural face
images that can protect facial privacy. In this paper, we propose
diffusion-based adversarial identity manipulation (DiffAIM) to generate natural
and highly transferable adversarial faces against malicious FR systems. To be
specific, we manipulate facial identity within the low-dimensional latent space
of a diffusion model. This involves iteratively injecting gradient-based
adversarial identity guidance during the reverse diffusion process,
progressively steering the generation toward the desired adversarial faces. The
guidance is optimized for identity convergence towards a target while promoting
semantic divergence from the source, facilitating effective impersonation while
maintaining visual naturalness. We further incorporate structure-preserving
regularization to preserve facial structure consistency during manipulation.
Extensive experiments on both face verification and identification tasks
demonstrate that compared with the state-of-the-art, DiffAIM achieves stronger
black-box attack transferability while maintaining superior visual quality. We
also demonstrate the effectiveness of the proposed approach for commercial FR
APIs, including Face++ and Aliyun.