论文标题
学习面部广义面部反欺骗的面部耐受性代表
Learning Facial Liveness Representation for Domain Generalized Face Anti-spoofing
论文作者
论文摘要
面部抗散热器(FAS)旨在将面部欺骗攻击与真实的攻击区分开,通常通过学习适当的模型来执行相关的分类任务。在实践中,人们期望将这种模型推广到不同图像域中的FAS。此外,假设欺骗攻击的类型将是事先知道的。在本文中,我们提出了一个深度学习模型,以解决上述域名抗繁殖任务。特别是,我们提出的网络能够将面部无性表示与无关的面部表述(即面部内容和图像域特征)相关。所得的耐受性表示表现出足够的域不变特性,因此可以应用于执行域将来的FAS。在我们的实验中,我们在具有各种设置的五个基准数据集上进行实验,并验证我们的模型在识别未见图像域中的新型欺骗攻击方面对最新方法的表现有利。
Face anti-spoofing (FAS) aims at distinguishing face spoof attacks from the authentic ones, which is typically approached by learning proper models for performing the associated classification task. In practice, one would expect such models to be generalized to FAS in different image domains. Moreover, it is not practical to assume that the type of spoof attacks would be known in advance. In this paper, we propose a deep learning model for addressing the aforementioned domain-generalized face anti-spoofing task. In particular, our proposed network is able to disentangle facial liveness representation from the irrelevant ones (i.e., facial content and image domain features). The resulting liveness representation exhibits sufficient domain invariant properties, and thus it can be applied for performing domain-generalized FAS. In our experiments, we conduct experiments on five benchmark datasets with various settings, and we verify that our model performs favorably against state-of-the-art approaches in identifying novel types of spoof attacks in unseen image domains.