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On the Detection of Digital Face Manipulation

About

Detecting manipulated facial images and videos is an increasingly important topic in digital media forensics. As advanced face synthesis and manipulation methods are made available, new types of fake face representations are being created which have raised significant concerns for their use in social media. Hence, it is crucial to detect manipulated face images and localize manipulated regions. Instead of simply using multi-task learning to simultaneously detect manipulated images and predict the manipulated mask (regions), we propose to utilize an attention mechanism to process and improve the feature maps for the classification task. The learned attention maps highlight the informative regions to further improve the binary classification (genuine face v. fake face), and also visualize the manipulated regions. To enable our study of manipulated face detection and localization, we collect a large-scale database that contains numerous types of facial forgeries. With this dataset, we perform a thorough analysis of data-driven fake face detection. We show that the use of an attention mechanism improves facial forgery detection and manipulated region localization.

Hao Dang, Feng Liu, Joel Stehouwer, Xiaoming Liu, Anil Jain• 2019

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC
AUC96
150
Deepfake DetectionDFD
AUC0.802
91
Deepfake DetectionCDFv1, CDFv2, DFD, DFDCP, DFDC (test)
Overall Average Score75.52
74
Face Forgery DetectionDFDCP
Frame-level AUC74.3
64
Deepfake DetectionCelebDF v2
AUC0.744
57
Deepfake DetectionCeleb-DF
ROC-AUC0.744
44
Frame-level Deepfake DetectionDFD
AUC80.2
42
Deepfake DetectionFF++
AUC92.32
34
Deepfake DetectionCross-Domain Evaluation (test)
CDFv1 Score78.4
31
Deepfake DetectionFaceForensics++ c23 (train)
FF c23 Score96.24
31
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