Face Anti-Spoofing: Model Matters, so Does Data

Xiao Yang, Wenhan Luo, Linchao Bao, Yuan Gao, Dihong Gong, Shibao Zheng, Zhifeng Li, Wei Liu
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引用次数: 158

Abstract

Face anti-spoofing is an important task in full-stack face applications including face detection, verification, and recognition. Previous approaches build models on datasets which do not simulate the real-world data well (e.g., small scale, insignificant variance, etc.). Existing models may rely on auxiliary information, which prevents these anti-spoofing solutions from generalizing well in practice. In this paper, we present a data collection solution along with a data synthesis technique to simulate digital medium-based face spoofing attacks, which can easily help us obtain a large amount of training data well reflecting the real-world scenarios. Through exploiting a novel Spatio-Temporal Anti-Spoof Network (STASN), we are able to push the performance on public face anti-spoofing datasets over state-of-the-art methods by a large margin. Since the proposed model can automatically attend to discriminative regions, it makes analyzing the behaviors of the network possible.We conduct extensive experiments and show that the proposed model can distinguish spoof faces by extracting features from a variety of regions to seek out subtle evidences such as borders, moire patterns, reflection artifacts, etc.
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面对反欺骗:模型很重要,数据也很重要
人脸防欺骗是人脸检测、验证和识别等全栈人脸应用中的重要任务。以前的方法在不能很好地模拟真实世界数据的数据集上建立模型(例如,小规模,不显著的方差等)。现有的模型可能依赖于辅助信息,这使得这些抗欺骗解决方案在实践中不能很好地推广。在本文中,我们提出了一种数据收集解决方案以及一种数据合成技术来模拟基于数字介质的人脸欺骗攻击,这可以很容易地帮助我们获得大量反映真实场景的训练数据。通过利用一种新颖的时空反欺骗网络(STASN),我们能够将公共面孔反欺骗数据集的性能大大提高到最先进的方法。由于该模型能够自动关注判别区域,使得分析网络的行为成为可能。我们进行了大量的实验,并表明该模型可以通过从各种区域提取特征来寻找诸如边界,云纹图案,反射伪影等细微证据来区分欺骗人脸。
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