Face anti-spoofing (FAS) plays an important role in protecting face recognition systems from face representation attacks. Many recent studies in FAS have approached this problem with domain generalization technique. Domain generalization aims to increase generalization performance to better detect various types of attacks and unseen attacks. However, previous studies in this area have defined each domain simply as an anti-spoofing datasets and focused on developing learning techniques. In this paper, we proposed a method that enables network to judge its domain by itself with the clustered convolutional feature statistics from intermediate layers of the network, without labeling domains as datasets. We obtained pseudo-domain labels by not only using the network extracting features, but also using depth estimators, which were previously used only as an auxiliary task in FAS. In our experiments, we trained with three datasets and evaluated the performance with the remaining one dataset to demonstrate the effectiveness of the proposed method by conducting a total of four sets of experiments.
翻译:面部反威胁(FAS)在保护面部识别系统免受面部代表攻击方面发挥了重要作用。FAS的很多近期研究都以域性一般化技术来处理这一问题。域性一般化的目的是提高一般化性能,以更好地发现各种类型的攻击和无形攻击。然而,以前在这方面的研究将每个领域都仅仅定义为一个反面面面部反威胁数据集,并侧重于开发学习技术。在本文中,我们提出了一个方法,使网络能够自行判断其域与网络中间层的组合式共变特征统计数据,而不将域标为数据集。我们不仅利用网络提取功能,而且还利用深度估计器获得了假磁体标签,这些标志以前只是作为FAS的辅助任务。我们实验中,我们用三个数据集培训了三个数据集,并评估了其余一个数据集的性能,以通过总共进行四套实验来证明拟议方法的有效性。