CVLGFeb 4

SIDeR: Semantic Identity Decoupling for Unrestricted Face Privacy

arXiv:2602.04994v1
Originality Incremental advance
AI Analysis

This addresses privacy concerns for users of facial recognition in services like online banking and identity verification, though it is an incremental advancement in adversarial face generation.

The paper tackles the problem of protecting face privacy by decoupling identity from visual representations, achieving a 99% attack success rate in black-box scenarios and a 41.28% improvement in restoration quality over baselines.

With the deep integration of facial recognition into online banking, identity verification, and other networked services, achieving effective decoupling of identity information from visual representations during image storage and transmission has become a critical challenge for privacy protection. To address this issue, we propose SIDeR, a Semantic decoupling-driven framework for unrestricted face privacy protection. SIDeR decomposes a facial image into a machine-recognizable identity feature vector and a visually perceptible semantic appearance component. By leveraging semantic-guided recomposition in the latent space of a diffusion model, it generates visually anonymous adversarial faces while maintaining machine-level identity consistency. The framework incorporates momentum-driven unrestricted perturbation optimization and a semantic-visual balancing factor to synthesize multiple visually diverse, highly natural adversarial samples. Furthermore, for authorized access, the protected image can be restored to its original form when the correct password is provided. Extensive experiments on the CelebA-HQ and FFHQ datasets demonstrate that SIDeR achieves a 99% attack success rate in black-box scenarios and outperforms baseline methods by 41.28% in PSNR-based restoration quality.

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