High-Fidelity Face Content Recovery via Tamper-Resilient Versatile Watermarking
arXiv cs.CV / 3/26/2026
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Key Points
- The paper proposes VeriFi, a tamper-resilient versatile watermarking framework designed to protect against AIGC-driven face manipulation and deepfakes while preserving forensic usefulness.
- Unlike prior approaches that embed explicit localization payloads (creating a fidelity–functionality trade-off), VeriFi embeds a compact semantic latent watermark to enable high-fidelity pixel-level face content recovery after severe edits.
- It achieves fine-grained manipulation localization without adding localization-specific visual artifacts by correlating image features with decoded provenance signals.
- To improve robustness against real-world deepfake creation, VeriFi adds an AIGC attack simulator using latent-space mixing and seamless blending.
- Experiments on CelebA-HQ and FFHQ indicate VeriFi outperforms baselines in watermark robustness, localization accuracy, and recovery quality for deepfake forensics.
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