Generalizing Fingerprint Spoof Detector: Learning a One-Class Classifier

Joshua J. Engelsma, Anil K. Jain
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引用次数: 45

Abstract

Prevailing fingerprint recognition systems are vulnerable to spoof attacks. To mitigate these attacks, automated spoof detectors are trained to distinguish a set of live or bona fide fingerprints from a set of known spoof fingerprints. Despite their success, spoof detectors remain vulnerable when exposed to attacks from spoofs made with materials not seen during training of the detector. To alleviate this shortcoming, we approach spoof detection as a one-class classification problem. The goal is to train a spoof detector on only the live fingerprints such that once the concept of "live" has been learned, spoofs of any material can be rejected. We accomplish this through training multiple generative adversarial networks (GANS) on live fingerprint images acquired with the open source, dual-camera, 1900 ppi RaspiReader fingerprint reader. Our experimental results, conducted on 5.5K spoof images (from 12 materials) and 11.8K live images show that the proposed approach improves the cross-material spoof detection performance over state-of-the-art one-class and binary class spoof detectors on 11 of 12 testing materials and 7 of 12 testing materials, respectively.
泛化指纹欺骗检测器:学习一类分类器
常用的指纹识别系统容易受到欺骗攻击。为了减轻这些攻击,对自动欺骗检测器进行了训练,以区分一组活指纹或真实指纹和一组已知的欺骗指纹。尽管他们取得了成功,但欺骗探测器在暴露于用探测器训练期间未见过的材料制成的欺骗攻击时仍然容易受到攻击。为了减轻这个缺点,我们将欺骗检测作为一个单类分类问题来处理。我们的目标是训练一个欺骗检测器,使其只对真实指纹进行训练,这样,一旦了解了“真实”的概念,任何材料的欺骗都可以被拒绝。我们通过训练多个生成对抗网络(GANS)来实现这一目标,GANS是通过开源的双摄像头、1900 ppi RaspiReader指纹识别器获取的实时指纹图像来实现的。我们在5.5K欺骗图像(来自12种材料)和11.8K实时图像上进行的实验结果表明,所提出的方法分别在12种测试材料中的11种和12种测试材料中的7种上提高了最先进的一类和二元欺骗检测器的跨材料欺骗检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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