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Beauty and the Beast: Imperceptible Perturbations Against Diffusion-Based Face Swapping via Directional Attribute Editing

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Diffusion-based face swapping achieves state-of-the-art performance, yet it also exacerbates the potential harm of malicious face swapping to violate portraiture right or undermine personal reputation. This has spurred the development of proactive defense methods. However, existing approaches face a core trade-off: large perturbations distort facial structures, while small ones weaken protection effectiveness. To address these issues, we propose FaceDefense, an enhanced proactive defense framework against diffusion-based face swapping. Our method introduces a new diffusion loss to strengthen the defensive efficacy of adversarial examples, and employs a directional facial attribute editing to restore perturbation-induced distortions, thereby enhancing visual imperceptibility. A two-phase alternating optimization strategy is designed to generate final perturbed face images. Extensive experiments show that FaceDefense significantly outperforms existing methods in both imperceptibility and defense effectiveness, achieving a superior trade-off.

Yilong Huang, Songze Li• 2026

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentFFHQ
PSNR32.683
12
ImperceptibilityVoxCeleb2
SSIM0.961
10
Imperceptibility EvaluationCelebA-HQ
SSIM0.96
10
Imperceptibility EvaluationFRGC
SSIM0.972
10
Imperceptibility EvaluationXM2VTS
SSIM0.96
10
Face Swapping DefenseFRGC (test)
SSIM0.889
10
Face Swapping DefenseCelebA-HQ (test)
SSIM0.886
10
Face Swapping DefenseFFHQ (test)
SSIM0.877
10
Face Swapping DefenseXM2VTS (test)
SSIM0.883
10
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