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Face-Fake-Net: The Deep Learning Method for Image Face Anti-Spoofing Detection : Paper ID 45

机译:面部假网:图像面部防欺骗检测的深度学习方法:纸张ID 45

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摘要

Due to the increasingly growing demand for user identification on cell phones, PCs, laptops, and so on, face anti-spoofing has risen to significance and is an active research area in academia and industry. The detection of the real face then recognize it present an important challenge regarding the techniques that can be used to spoof any recognition system like masks, printed photos. This paper we present an anti-spoofing face method to solve the real-world scenario that learns the target domain classifier based on samples used for training in a particular source domain. Specifically, with the conventional regression CNN, the Spatial/Channel-wise Attention Modules were introduced. Two modules, namely the Spatial-wise Attention Module and the Channel-wise Attention Module, were used at spatial and channel levels to improve local features and ignore the irrelevant features. Extensive experiments on current collections with benchmarks datasets verifies that the recommended solution will significantly benefit from the two modules and better generalization capability by providing significantly improved results in anti-spoofing.
机译:由于对手机,PC,笔记本电脑等的用户识别日益增长的需求日益增长,面部反欺骗已经升高到学术界和工业中的活跃研究区域。实际面的检测然后识别它对可以用于欺骗任何识别系统,如掩码,印刷照片的技术存在重要挑战。本文介绍了一种反欺人的面部方法来解决基于用于在特定源域中训练的样本来了解目标域分类器的真实情景。具体地,利用传统的回归CNN,引入了空间/通道的关注模块。在空间和频道级别使用两个模块,即空间注意模块和通道 - 明智的注意模块,以改善局部特征,忽略无关的功能。通过基准数据集的当前收集的广泛实验验证了推荐的解决方案通过提供显着提高的抗欺骗结果,推荐的解决方案将从两个模块和更好的泛化能力中受益匪浅。

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