多模态指纹表示攻击检测:分析表面和内部

M. Gomez-Barrero, Jascha Kolberg, C. Busch
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引用次数: 13

摘要

生物识别系统的部署在过去十年中有了相当大的增长,特别是基于指纹的系统。为了解决生物识别捕获设备上的表示攻击所带来的安全问题,提出了自动表示攻击检测方法。尽管它们在LivDet数据库上的检测率很高,但绝大多数方法依赖于传统捕获设备提供的样本,这可能无法检测到更复杂的呈现攻击工具(PAI)物种。在本文中,我们提出了一种多模态指纹PAD,它依赖于分析:i)手指表面在短波红外(SWIR)光谱内,ii)由于激光散斑对比成像(LSCI)技术,手指内部。通过对包含4700多个样本和35种PAI物种的数据库进行实验评估,并包括未知攻击来模拟现实场景,实现了0.5%的检测等错误率(D-EER)。此外,对于BPCER≤0.1%(即高度方便的系统),APCER保持在3%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Modal Fingerprint Presentation Attack Detection: Analysing the Surface and the Inside
The deployment of biometric recognition systems has seen a considerable increase over the last decade, in particular for fingerprint based systems. To tackle the security issues derived from presentation attacks launched on the biometric capture device, automatic presentation attack detection (PAD) methods have been proposed. In spite of their high detection rates on the LivDet databases, the vast majority of the methods rely on the samples provided by traditional capture devices, which may fail to detect more sophisticated presentation attack instrument (PAI) species. In this paper, we propose a multi-modal fingerprint PAD which relies on an analysis of: i) the surface of the finger within the short wave infrared (SWIR) spectrum, and ii) the inside of the finger thanks to the laser speckle contrast imaging (LSCI) technology. On the experimental evaluation over a database comprising more than 4700 samples and 35 PAI species, and including unknown attacks to model a realistic scenario, a Detection Equal Error Rate (D-EER) of 0.5% has been achieved. Moreover, for a BPCER ≤ 0.1% (i.e., highly convenient system), the APCER remains around 3%.
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