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GENERALIZED FACE ANTI-SPOOFING VIA CROSS-ADVERSARIAL DISENTANGLEMENT WITH MIXING AUGMENTATION

Hanye Huang, Youjun Xiang, Guodong Yang, Lingling Lv, Xianfeng Li, Zichun Weng, Yuli Fu

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    Length: 00:08:05
11 May 2022

Conventional face anti-spoofing methods might be poorly generalized to unseen data distributions. Thus, we improve the generalization of spoof detection from the multi-domain feature disentanglement. Specially, a two-branch convolutional network is proposed to separate spoof-specific features and domain-specific features from face images explicitly. The spoof-specific features are further used for live vs. spoof classification. To minimize correlation among these two features, we present a cross-adversarial training scheme, which requires each branch to act as adversarial supervision for the other branch. To further exploit the subdomains from source data, a mixing augmentation approach is proposed based on mixing domain-specific feature statistics from different instances. It ensures more abundant domain discrepancy and facilitates the disentanglement process. The proposed approach shows promising generalization capacity in several public face anti-spoofing datasets.

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