DFREC: DeepFake Identity Recovery Based on Identity-aware Masked Autoencoder
Peipeng Yu, Hui Gao, Jianwei Fei, Zhitao Huang, Zhihua Xia, Chip-Hong, Chang

TL;DR
DFREC is a novel deepfake recovery method that reconstructs source and target faces from deepfake images, enhancing identity traceability and forensic investigation with high fidelity.
Contribution
It introduces a new deepfake recovery scheme with an identity segmentation and reconstruction framework, improving over existing detection-focused methods.
Findings
Superior recovery performance on multiple datasets
Able to recover both source and target faces with high fidelity
Outperforms state-of-the-art deepfake recovery algorithms
Abstract
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…
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Taxonomy
TopicsTopic Modeling · Generative Adversarial Networks and Image Synthesis · Speech Recognition and Synthesis
MethodsSkim and Intensive Reading Model
