CRAICVFeb 15, 2025

FaceSwapGuard: Safeguarding Facial Privacy from DeepFake Threats through Identity Obfuscation

arXiv:2502.10801v13 citationsh-index: 11
Originality Highly original
AI Analysis

This addresses privacy protection for individuals against deepfake threats, representing a novel method for a known bottleneck.

The paper tackles the problem of deepfake face-swapping threats by proposing FaceSwapGuard, a black-box defense mechanism that introduces imperceptible perturbations to facial images, reducing the face match rate from 90% to below 10%.

DeepFakes pose a significant threat to our society. One representative DeepFake application is face-swapping, which replaces the identity in a facial image with that of a victim. Although existing methods partially mitigate these risks by degrading the quality of swapped images, they often fail to disrupt the identity transformation effectively. To fill this gap, we propose FaceSwapGuard (FSG), a novel black-box defense mechanism against deepfake face-swapping threats. Specifically, FSG introduces imperceptible perturbations to a user's facial image, disrupting the features extracted by identity encoders. When shared online, these perturbed images mislead face-swapping techniques, causing them to generate facial images with identities significantly different from the original user. Extensive experiments demonstrate the effectiveness of FSG against multiple face-swapping techniques, reducing the face match rate from 90\% (without defense) to below 10\%. Both qualitative and quantitative studies further confirm its ability to confuse human perception, highlighting its practical utility. Additionally, we investigate key factors that may influence FSG and evaluate its robustness against various adaptive adversaries.

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