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Beyond the Prior Forgery Knowledge: Mining Critical Clues for General Face Forgery Detection

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Face forgery detection is essential in combating malicious digital face attacks. Previous methods mainly rely on prior expert knowledge to capture specific forgery clues, such as noise patterns, blending boundaries, and frequency artifacts. However, these methods tend to get trapped in local optima, resulting in limited robustness and generalization capability. To address these issues, we propose a novel Critical Forgery Mining (CFM) framework, which can be flexibly assembled with various backbones to boost their generalization and robustness performance. Specifically, we first build a fine-grained triplet and suppress specific forgery traces through prior knowledge-agnostic data augmentation. Subsequently, we propose a fine-grained relation learning prototype to mine critical information in forgeries through instance and local similarity-aware losses. Moreover, we design a novel progressive learning controller to guide the model to focus on principal feature components, enabling it to learn critical forgery features in a coarse-to-fine manner. The proposed method achieves state-of-the-art forgery detection performance under various challenging evaluation settings.

Anwei Luo, Chenqi Kong, Jiwu Huang, Yongjian Hu, Xiangui Kang, Alex C. Kot• 2023

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC
AUC70.6
135
Deepfake DetectionDFD
AUC0.952
77
Image Deepfake DetectionDFo
AUC0.976
20
Image Deepfake DetectionCDF v2
AUC89.7
15
Image Deepfake DetectionFFIW
AUC0.831
15
Face Forgery DetectionCDF v2
Frame-level AUC82.8
15
Face Forgery DetectionDFDCP
Frame-level AUC75.8
15
Face Forgery DetectionDFD
Frame-level AUC91.5
14
Image Deepfake DetectionDFDCP
AUC0.802
13
Image Deepfake DetectionWDF
AUC0.823
11
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