2022
DOI: 10.1109/access.2022.3215963
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Dual Attention Network Approaches to Face Forgery Video Detection

Abstract: 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 netwo… Show more

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Cited by 13 publications
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References 105 publications
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