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Dynamic Difference Learning With Spatio–Temporal Correlation for Deepfake Video Detection

Qilin Yin, Wei Lu, Bin Li, Jiwu Huang

2023IEEE Transactions on Information Forensics and Security83 citationsDOI

Abstract

With the rapid development of face forgery techniques, the existing frame-based deepfake video detection methods have fell into a dilemma that frame-based methods may fail when encountering extremely realistic images. To overcome the above problem, many approaches attempted to model the spatio-temporal inconsistency of videos to distinguish real and fake videos. However, current works model spatio-temporal inconsistency by combining intra-frame and inter-frame information, but ignore the disturbance caused by facial motions that would limit further improvement in detection performance. To address this issue, we investigate into long and short range inter-frame motions and propose a novel dynamic difference learning method to distinguish between the inter-frame differences caused by face manipulation and the inter-frame differences caused by facial motions in order to model precise spatio-temporal inconsistency for deepfake video detection. Moreover, we elaborately design a dynamic fine-grained difference capture module (DFDC-module) and a multi-scale spatio-temporal aggregation module (MSA-module) to collaboratively model spatio-temporal inconsistency. Specifically, the DFDC-module applies self-attention mechanism and fine-grained denoising operation to eliminate the differences caused by facial motions and generates long range difference attention maps. The MSA-module is devised to aggregate multi-direction and multi-scale temporal information to model spatio-temporal inconsistency. The existing 2D CNNs can be extended into dynamic spatio-temporal inconsistency capture networks by integrating the proposed two modules. Extensive experimental results demonstrate that our proposed algorithm steadily outperforms state-of-the-art methods by a clear margin in different benchmark datasets.

Topics & Concepts

Computer scienceFrame (networking)Margin (machine learning)Aggregate (composite)Artificial intelligenceFace (sociological concept)Range (aeronautics)Temporal difference learningComputer visionInter framePattern recognition (psychology)Frame rateMachine learningReference frameReinforcement learningSociologyMaterials scienceComposite materialTelecommunicationsSocial scienceDigital Media Forensic DetectionGenerative Adversarial Networks and Image SynthesisAnomaly Detection Techniques and Applications