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Papers/Lips Don't Lie: A Generalisable and Robust Approach to Fac...

Lips Don't Lie: A Generalisable and Robust Approach to Face Forgery Detection

Alexandros Haliassos, Konstantinos Vougioukas, Stavros Petridis, Maja Pantic

2020-12-14CVPR 2021 1Speech Recognitionspeech-recognitionDeepFake DetectionVisual Speech RecognitionLipreading
PaperPDFCode(official)

Abstract

Although current deep learning-based face forgery detectors achieve impressive performance in constrained scenarios, they are vulnerable to samples created by unseen manipulation methods. Some recent works show improvements in generalisation but rely on cues that are easily corrupted by common post-processing operations such as compression. In this paper, we propose LipForensics, a detection approach capable of both generalising to novel manipulations and withstanding various distortions. LipForensics targets high-level semantic irregularities in mouth movements, which are common in many generated videos. It consists in first pretraining a spatio-temporal network to perform visual speech recognition (lipreading), thus learning rich internal representations related to natural mouth motion. A temporal network is subsequently finetuned on fixed mouth embeddings of real and forged data in order to detect fake videos based on mouth movements without overfitting to low-level, manipulation-specific artefacts. Extensive experiments show that this simple approach significantly surpasses the state-of-the-art in terms of generalisation to unseen manipulations and robustness to perturbations, as well as shed light on the factors responsible for its performance. Code is available on GitHub.

Results

TaskDatasetMetricValueModel
3D ReconstructionFakeAVCelebAP89.4LipForensics
3D ReconstructionFakeAVCelebROC AUC91.1LipForensics
3DFakeAVCelebAP89.4LipForensics
3DFakeAVCelebROC AUC91.1LipForensics
DeepFake DetectionFakeAVCelebAP89.4LipForensics
DeepFake DetectionFakeAVCelebROC AUC91.1LipForensics
3D Shape Reconstruction from VideosFakeAVCelebAP89.4LipForensics
3D Shape Reconstruction from VideosFakeAVCelebROC AUC91.1LipForensics

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