CVDec 10, 2024

DFREC: DeepFake Identity Recovery Based on Identity-aware Masked Autoencoder

arXiv:2412.07260v23 citationsh-index: 12
Originality Highly original
AI Analysis

This addresses the need for identity tracing in deepfake forensics to reduce attack risks, representing a novel approach rather than an incremental improvement.

The paper tackles the problem of deepfake forensics lacking interpretability and identity traceability by introducing DFREC, a scheme that recovers source and target faces from deepfake images, demonstrating superior performance on six high-fidelity face-swapping attacks across multiple datasets.

Recent advances in deepfake forensics have primarily focused on improving the classification accuracy and generalization performance. Despite enormous progress in detection accuracy across a wide variety of forgery algorithms, existing algorithms lack intuitive interpretability and identity traceability to help with forensic investigation. In this paper, we introduce a novel DeepFake Identity Recovery scheme (DFREC) to fill this gap. DFREC aims to recover the pair of source and target faces from a deepfake image to facilitate deepfake identity tracing and reduce the risk of deepfake attack. It comprises three key components: an Identity Segmentation Module (ISM), a Source Identity Reconstruction Module (SIRM), and a Target Identity Reconstruction Module (TIRM). The ISM segments the input face into distinct source and target face information, and the SIRM reconstructs the source face and extracts latent target identity features with the segmented source information. The background context and latent target identity features are synergetically fused by a Masked Autoencoder in the TIRM to reconstruct the target face. We evaluate DFREC on six different high-fidelity face-swapping attacks on FaceForensics++, CelebaMegaFS and FFHQ-E4S datasets, which demonstrate its superior recovery performance over state-of-the-art deepfake recovery algorithms. In addition, DFREC is the only scheme that can recover both pristine source and target faces directly from the forgery image with high fadelity.

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