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Learning Self-Consistency for Deepfake Detection

About

We propose a new method to detect deepfake images using the cue of the source feature inconsistency within the forged images. It is based on the hypothesis that images' distinct source features can be preserved and extracted after going through state-of-the-art deepfake generation processes. We introduce a novel representation learning approach, called pair-wise self-consistency learning (PCL), for training ConvNets to extract these source features and detect deepfake images. It is accompanied by a new image synthesis approach, called inconsistency image generator (I2G), to provide richly annotated training data for PCL. Experimental results on seven popular datasets show that our models improve averaged AUC over the state of the art from 96.45% to 98.05% in the in-dataset evaluation and from 86.03% to 92.18% in the cross-dataset evaluation.

Tianchen Zhao, Xiang Xu, Mingze Xu, Hui Ding, Yuanjun Xiong, Wei Xia• 2020

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC
AUC73.8
230
Deepfake DetectionDFD
AUC0.992
193
Deepfake DetectionDFDC (test)
AUC74.37
130
Deepfake DetectionCDF v2
AUC0.9
97
Face Forgery DetectionDFDC--
74
Deepfake DetectionCelebDF (CDF) v2 (test)
AUC90.03
52
Fake Face DetectionCeleb-DF v2 (test)
AUC90.03
50
Deepfake DetectionCDF v2
Video-level AUC92.8
48
Image Deepfake DetectionFFIW
AUC0.815
47
Deepfake DetectionFF++ (test)
AUC99.11
44
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