Authors
Peipeng Yu, Jianwei Fei, Zhihua Xia, Zhili Zhou, Jian Weng
Publication date
2022/1/27
Journal
IEEE Transactions on Information Forensics and Security
Volume
17
Pages
547-558
Publisher
IEEE
Description
This paper proposes a commonality learning strategy for face video forgery detection to improve the generalization. Considering various face forgery methods could leave certain similar forgery traces in videos, we attempt to learn the common forgery features from different forgery databases, so as to achieve better generalization in the detection of unknown forgery methods. Firstly, the Specific Forgery Feature Extractors (SFFExtractors) are trained separately for each of given forgery methods. We utilize the U-net structure and consider the triplet loss, location loss, classification loss, and automatic weighted loss to ensure the detection ability of SFFExtractors on the corresponding forgery methods. Next, the Common Forgery Feature Extractor (CFFExtractor) is trained under the supervision of SFFExtractors to explore the commonality of the forgery traces caused by different forgery methods. The extracted common …
Total citations
202220232024103817
Scholar articles
P Yu, J Fei, Z Xia, Z Zhou, J Weng - IEEE Transactions on Information Forensics and …, 2022