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Adaptive Frequency Learning in Two-branch Face Forgery Detection

Authors :
Wang, Neng
Bai, Yang
Yu, Kun
Jiang, Yong
Xia, Shu-tao
Wang, Yan
Publication Year :
2022

Abstract

Face forgery has attracted increasing attention in recent applications of computer vision. Existing detection techniques using the two-branch framework benefit a lot from a frequency perspective, yet are restricted by their fixed frequency decomposition and transform. In this paper, we propose to Adaptively learn Frequency information in the two-branch Detection framework, dubbed AFD. To be specific, we automatically learn decomposition in the frequency domain by introducing heterogeneity constraints, and propose an attention-based module to adaptively incorporate frequency features into spatial clues. Then we liberate our network from the fixed frequency transforms, and achieve better performance with our data- and task-dependent transform layers. Extensive experiments show that AFD generally outperforms.<br />Comment: Deepfake Detection

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.14315
Document Type :
Working Paper