对对称匹配器的攻击敏感防篡改生物特征识别:指纹案例研究

N. Poh, Rita Wong, G. Marcialis
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引用次数: 7

摘要

为了使生物识别系统对恶意篡改具有鲁棒性,了解不同类型的攻击及其通过活跃度和匹配分数观察到的影响非常重要。在本研究中,我们考虑了零努力冒名顶替攻击(称为z攻击),非零努力冒名顶替攻击,如表示攻击或欺骗(s攻击),以及其他涉及模板级别篡改的攻击类别(U和t攻击)。为了阐明所有可能的攻击的影响,我们(1)引入了起源源和对称生物特征匹配器的概念,(2)随后将攻击分为四类。这些视图不仅提高了对不同攻击性质的理解,而且简化了分类问题的设计。根据这一分析,我们设计了一种新的分类方案,可以充分利用攻击特定的数据特征。该方案的两种实现,即混合线性分类器和基于高斯copuls的贝叶斯分类器,结果优于基于SVM的强基线分类器,并得到指纹欺骗实验的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward an attack-sensitive tamper-resistant biometric recognition with a symmetric matcher: A fingerprint case study
In order to render a biometric system robust against malicious tampering, it is important to understand the different types of attack and their impact as observed by the liveness and matching scores. In this study, we consider zero-effort impostor attack (referred to as the Z-attack), nonzero-effort impostor attack such as presentation attack or spoofing (S-attack), and other categories of attack involving tampering at the template level (U- and T-attacks). In order to elucidate the impact of all possible attacks, we (1) introduce the concepts of source of origin and symmetric biometric matchers, and (2) subsequently group the attacks into four categories. These views not only improve the understanding of the nature of different attacks but also turn out to ease the design of the classification problem. Following this analysis, we design a novel classification scheme that can take full advantage of the attack-specific data characteristics. Two realisations of the scheme, namely, a mixture of linear classifiers, and a Gaussian Copula-based Bayesian classifier, turn out to outperform a strong baseline classifier based on SVM, as supported by fingerprint spoofing experiments.
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