As face recognition is widely used in diverse security-critical applications, the study of face anti-spoofing (FAS) has attracted more and more attention. Several FAS methods have achieved promising performances if the attack types in the testing data are the same as training data, while the performance significantly degrades for unseen attack types. It is essential to learn more generalized and discriminative features to prevent overfitting to pre-defined spoof attack types. This paper proposes a novel dual-stage disentangled representation learning method that can efficiently untangle spoof-related features from irrelevant ones. Unlike previous FAS disentanglement works with one-stage architecture, we found that the dual-stage training design can improve the training stability and effectively encode the features to detect unseen attack types. Our experiments show that the proposed method provides superior accuracy than the state-of-the-art methods on several cross-type FAS benchmarks.
翻译:由于面部识别被广泛用于不同的安全关键应用,面部防伪研究吸引了越来越多的关注。如果测试数据中的攻击类型与培训数据相同,而其性能明显降低,则若干面部防伪方法取得了有希望的成绩。必须学习更加普遍和歧视性的特征,以防止过度适应预先定义的攻击类型。本文件提出了一个新的两阶段分解的代言学习方法,可以有效地解开与不相关的特征。与以前的FAS分解工作与一阶段结构不同,我们发现两阶段培训设计可以提高培训稳定性,并有效地编码识别隐形攻击类型的特征。我们的实验表明,拟议的方法比若干跨类型FAS基准的先进方法更准确。