Liveness detection on touchless fingerprint devices using texture descriptors and artificial neural networks

Caue Zaghetto, Mateus Mendelson, A. Zaghetto, F. Vidal
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引用次数: 7

Abstract

This paper presents a liveness detection method based on texture descriptors and artificial neural networks, whose objective is to identify potential attempts of spoofing attacks against touchless fingerprinting devices. First, a database was created. It comprises a set of 400 images, from which 200 represent real fingers and 200 represent fake fingers made of beeswax, corn flour play dough, latex, silicone and wood glue, 40 samples each. The artificial neural network classifier is trained and tested in 7 different scenarios. In Scenario 1, there are only two classes, “real finger” and “fake finger”. From Scenarios 2 to 6, six classes are used, but classification is done considering the “realfinger” class and each one of the five “fake finger” classes, separately. Finally, in Scenario 7, six classes are used and the classifier must indicate to which of the six classes the acquired sample belongs. Results show that the proposed method achieves its goal, since it correctly detects liveness in almost 100% of cases.
基于纹理描述符和人工神经网络的非接触式指纹检测
本文提出了一种基于纹理描述符和人工神经网络的动态检测方法,其目的是识别针对非接触式指纹设备的潜在欺骗攻击企图。首先,创建一个数据库。它包括一组400张图片,其中200张代表真手指,200张代表用蜂蜡、玉米粉橡皮泥、乳胶、硅胶和木胶制成的假手指,每个手指40张样本。人工神经网络分类器在7种不同的场景下进行了训练和测试。在场景1中,只有两个类,“真手指”和“假手指”。从场景2到场景6,使用了6个类,但分类是分别考虑“真实手指”类和五个“假手指”类中的每一个。最后,在场景7中,使用了六个类,分类器必须指出所获取的样本属于六个类中的哪一个。结果表明,该方法达到了预期目标,在几乎100%的病例中正确检测出了活体。
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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