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Deep Models and Shortwave Infrared Information to Detect Face Presentation Attacks

机译:深度模型和短波红外信息,以检测面部呈现攻击

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摘要

This paper addresses the problem of face presentation attack detection using different image modalities. In particular, the usage of short wave infrared (SWIR) imaging is considered. Face presentation attack detection is performed using recent models based on Convolutional Neural Networks using only carefully selected SWIR image differences as input. Conducted experiments show superior performance over similar models acting on either color images or on a combination of different modalities (visible, NIR, thermal and depth), as well as on a SVM-based classifier acting on SWIR image differences. Experiments have been carried on a new public and freely available database, containing a wide variety of attacks. Video sequences have been recorded thanks to several sensors resulting in 14 different streams in the visible, NIR, SWIR and thermal spectra, as well as depth data. The best proposed approach is able to almost perfectly detect all impersonation attacks while ensuring low bonafide classification errors. On the other hand, obtained results show that obfuscation attacks are more difficult to detect. We hope that the proposed database will foster research on this challenging problem. Finally, all the code and instructions to reproduce presented experiments is made available to the research community.
机译:本文通过不同的图像模态解决了面部呈现攻击检测问题。特别地,考虑了短波红外(SWIR)成像的使用。面部呈现攻击检测使用基于卷积神经网络的最近模型来使用仅作为输入的仔细选择的SWIR图像差异来执行。进行的实验表明,在作用于彩色图像的类似模型或在不同模式(可见,NIR,热和深度)的组合,以及作用于SWIR图像差异的基于SVM的分类器的相似模型的卓越性能。在新的公共和自由可用的数据库上进行了实验,包含各种各样的攻击。由于若干传感器,已经记录了视频序列,导致可见,NIR,SWIR和热谱中的14个不同的流,以及深度数据。最好的建议方法能够在确保低合金的分类错误的同时几乎完全检测所有冒充攻击。另一方面,获得的结果表明,混淆攻击更难以检测。我们希望拟议的数据库将促进对这一具有挑战性的问题的研究。最后,对研究界提供了呈现呈现实验的所有代码和指令。

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