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Generalized Face Antispoofing by Learning to Fuse Features From High- and Low-Frequency Domains

机译:通过学习来自高频和低频域的熔断器的广义脸部抗分散

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摘要

In this article, we propose a face spoofing detection method by learning to fuse high-frequency (HF) and low-frequency (LF) features, in an effort to improve the generalization capability and fill up the domain gap between training and testing when the antispoofing is practically conducted in unseen scenarios. In particular, the proposed face antispoofing model consists of two streams that extract HF and LF components of a facial image with three high-pass and three low-pass filters. Moreover, considering the fact that spoofing features exist in different feature levels, we train our network with a novel multiscale triplet loss. The cross-frequency spatial attention module further enables the two streams to communicate and exchange information with each other. Finally, the outputs of the two streams are fused with a weighting strategy for final classification. Extensive experiments conducted on intra- and cross-database settings show the superiority of the proposed scheme.
机译:在本文中,我们通过学习熔断高频(HF)和低频(LF)特征来提出面部欺骗检测方法,以提高泛化能力并填补训练和测试之间的域间隙反分离者实际上是在看不见的情景中进行的。特别地,所提出的面部抗断漏模型由两个流提取具有三个高通和三个低通滤波器的面部图像的HF和LF分量。此外,考虑到欺骗功能存在于不同特征级别中,我们用新的多尺度三重态丢失培训我们的网络。横频空间注意模块还使两个流能够彼此通信和交换信息。最后,两个流的输出与用于最终分类的加权策略融合。在内部和交叉数据库设置上进行的广泛实验显示了所提出的方案的优越性。

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