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Papers/FaceForensics++: Learning to Detect Manipulated Facial Ima...

FaceForensics++: Learning to Detect Manipulated Facial Images

Andreas Rössler, Davide Cozzolino, Luisa Verdoliva, Christian Riess, Justus Thies, Matthias Nießner

2019-01-25DeepFake DetectionFace SwappingImage GenerationFake Image Detection
PaperPDFCodeCodeCodeCodeCodeCodeCodeCodeCodeCodeCodeCodeCode(official)Code

Abstract

The rapid progress in synthetic image generation and manipulation has now come to a point where it raises significant concerns for the implications towards society. At best, this leads to a loss of trust in digital content, but could potentially cause further harm by spreading false information or fake news. This paper examines the realism of state-of-the-art image manipulations, and how difficult it is to detect them, either automatically or by humans. To standardize the evaluation of detection methods, we propose an automated benchmark for facial manipulation detection. In particular, the benchmark is based on DeepFakes, Face2Face, FaceSwap and NeuralTextures as prominent representatives for facial manipulations at random compression level and size. The benchmark is publicly available and contains a hidden test set as well as a database of over 1.8 million manipulated images. This dataset is over an order of magnitude larger than comparable, publicly available, forgery datasets. Based on this data, we performed a thorough analysis of data-driven forgery detectors. We show that the use of additional domainspecific knowledge improves forgery detection to unprecedented accuracy, even in the presence of strong compression, and clearly outperforms human observers.

Results

TaskDatasetMetricValueModel
3D ReconstructionFakeAVCelebAP84.8Xception
3D ReconstructionFakeAVCelebROC AUC85.3Xception
3D ReconstructionFaceForensicsDF96.36XceptionNet
3D ReconstructionFaceForensicsFS90.29XceptionNet
3D ReconstructionFaceForensicsFSF86.86XceptionNet
3D ReconstructionFaceForensicsNT80.67XceptionNet
3D ReconstructionFaceForensicsReal52.4XceptionNet
3D ReconstructionFaceForensicsTotal Accuracy70.1XceptionNet
3DFakeAVCelebAP84.8Xception
3DFakeAVCelebROC AUC85.3Xception
3DFaceForensicsDF96.36XceptionNet
3DFaceForensicsFS90.29XceptionNet
3DFaceForensicsFSF86.86XceptionNet
3DFaceForensicsNT80.67XceptionNet
3DFaceForensicsReal52.4XceptionNet
3DFaceForensicsTotal Accuracy70.1XceptionNet
DeepFake DetectionFakeAVCelebAP84.8Xception
DeepFake DetectionFakeAVCelebROC AUC85.3Xception
DeepFake DetectionFaceForensicsDF96.36XceptionNet
DeepFake DetectionFaceForensicsFS90.29XceptionNet
DeepFake DetectionFaceForensicsFSF86.86XceptionNet
DeepFake DetectionFaceForensicsNT80.67XceptionNet
DeepFake DetectionFaceForensicsReal52.4XceptionNet
DeepFake DetectionFaceForensicsTotal Accuracy70.1XceptionNet
3D Shape Reconstruction from VideosFakeAVCelebAP84.8Xception
3D Shape Reconstruction from VideosFakeAVCelebROC AUC85.3Xception
3D Shape Reconstruction from VideosFaceForensicsDF96.36XceptionNet
3D Shape Reconstruction from VideosFaceForensicsFS90.29XceptionNet
3D Shape Reconstruction from VideosFaceForensicsFSF86.86XceptionNet
3D Shape Reconstruction from VideosFaceForensicsNT80.67XceptionNet
3D Shape Reconstruction from VideosFaceForensicsReal52.4XceptionNet
3D Shape Reconstruction from VideosFaceForensicsTotal Accuracy70.1XceptionNet

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