4.6 Article

Dual Attention Network Approaches to Face Forgery Video Detection

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 110754-110760

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3215963

Keywords

Deepfakes; Forgery; Face recognition; Feature extraction; Convolutional neural networks; Neural networks; Generative adversarial networks; Information security; Deepfake; forgery video detection; dual attention neural network; convolutional neural network; information security

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This study introduces a Dual Attention Forgery Detection Network that embeds two attention mechanisms to identify traces of tampering in fake videos. The proposed DAFDN outperforms other methods in two benchmark datasets, DFDC and FaceForensics++.
Forged videos are commonly spread online. Most have malicious content and cause serious information security problems. The most critical issue in deepfake detection is the identification of traces of tampering in fake videos. This study designs a Dual Attention Forgery Detection Network (DAFDN), which embeds a spatial reduction attention block (SRAB) and a forgery feature attention module (FFAM) to the backbone network. DAFDN embeds the two proposed attention mechanisms and enables the convolution neural network to extract peculiar traces left by images' warping. This study uses two benchmark datasets, DFDC and FaceForensics++, to compare the performance of the proposed DAFDN with other methods. The results show that the proposed DAFDN mechanism achieves AUC scores of 0.911 and 0.945 in the datasets DFDC and FaceForensics++, respectively. These results are better than those of previously developed methods, such as XceptionNet and EfficientNet-related methods.

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