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My Face Is Mine, Not Yours: Facial Protection Against Diffusion Model Face Swapping

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The proliferation of diffusion-based deepfake technologies poses significant risks for unauthorized and unethical facial image manipulation. While traditional countermeasures have primarily focused on passive detection methods, this paper introduces a novel proactive defense strategy through adversarial attacks that preemptively protect facial images from being exploited by diffusion-based deepfake systems. Existing adversarial protection methods predominantly target conventional generative architectures (GANs, AEs, VAEs) and fail to address the unique challenges presented by diffusion models, which have become the predominant framework for high-quality facial deepfakes. Current diffusion-specific adversarial approaches are limited by their reliance on specific model architectures and weights, rendering them ineffective against the diverse landscape of diffusion-based deepfake implementations. Additionally, they typically employ global perturbation strategies that inadequately address the region-specific nature of facial manipulation in deepfakes.

Hon Ming Yam, Zhongliang Guo, Chun Pong Lau• 2025

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentFFHQ
PSNR31.1
12
ImperceptibilityVoxCeleb2
SSIM0.952
10
Imperceptibility EvaluationCelebA-HQ
SSIM0.924
10
Imperceptibility EvaluationFRGC
SSIM0.966
10
Imperceptibility EvaluationXM2VTS
SSIM0.953
10
Face Swapping DefenseFRGC (test)
SSIM0.91
10
Face Swapping DefenseFFHQ (test)
SSIM0.899
10
Face Swapping DefenseCelebA-HQ (test)
SSIM0.901
10
Face Swapping DefenseXM2VTS (test)
SSIM0.903
10
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