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FreqBlender: Enhancing DeepFake Detection by Blending Frequency Knowledge

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Generating synthetic fake faces, known as pseudo-fake faces, is an effective way to improve the generalization of DeepFake detection. Existing methods typically generate these faces by blending real or fake faces in spatial domain. While these methods have shown promise, they overlook the simulation of frequency distribution in pseudo-fake faces, limiting the learning of generic forgery traces in-depth. To address this, this paper introduces {\em FreqBlender}, a new method that can generate pseudo-fake faces by blending frequency knowledge. Concretely, we investigate the major frequency components and propose a Frequency Parsing Network to adaptively partition frequency components related to forgery traces. Then we blend this frequency knowledge from fake faces into real faces to generate pseudo-fake faces. Since there is no ground truth for frequency components, we describe a dedicated training strategy by leveraging the inner correlations among different frequency knowledge to instruct the learning process. Experimental results demonstrate the effectiveness of our method in enhancing DeepFake detection, making it a potential plug-and-play strategy for other methods.

Hanzhe Li, Jiaran Zhou, Yuezun Li, Baoyuan Wu, Bin Li, Junyu Dong• 2024

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC
AUC87.56
150
Deepfake DetectionDFDC (test)--
122
Deepfake DetectionCelebDF v2
AUC0.9459
57
Face Forgery DetectionDFDC
AUC74.59
52
Deepfake DetectionCeleb-DF
ROC-AUC0.9459
44
Deepfake DetectionCeleb-DF (test)
Accuracy92.65
40
Face Forgery DetectionCeleb-DF v2
Video-level AUC94.59
33
Deepfake DetectionFaceForensics++ c23 (test)--
26
Face Forgery DetectionFace Forensics in the Wild (FFIW)
Video-level AUC86.14
15
Image Deepfake DetectionFFIW
AUC0.8614
15
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