基于假名标识符的指纹细节特征决策级融合

Bian Yang, C. Busch, K.T.J. de Groot, Hai-yun Xu, R. Veldhuis
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引用次数: 5

摘要

在生物识别模板保护认证系统中,假名标识符是受保护生物识别模板的一部分,可以直接与其他假名标识符进行比较。每对比较的假名标识符都会产生一个验证决策,测试两个属性是否来自同一个人。与不受保护的系统相比,现有的大多数生物识别模板保护方法都会在一定程度上导致生物识别性能的下降。因此,融合是提高模板保护系统生物识别性能的一种很有前途的方法。与特征级融合和分数级融合相比,决策级融合不仅具有最小的融合复杂度,而且具有最大的跨不同生物特征、基于分数的系统甚至单个算法的互操作性。然而,决策层融合对绩效的改善并不明显。它受所进行的融合试验之间的依赖性和性能差距的影响。在本文中,我们研究了几种场景(多样本、多实例、多传感器和多算法),当对基于假名标识符的指纹细节验证获得的二进制决策进行融合时。研究了多传感器指纹数据库中不同融合场景下决策级融合对生物识别性能的影响。
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Decision Level Fusion of Fingerprint Minutiae Based Pseudonymous Identifiers
In a biometric template protected authentication system, a pseudonymous identifier is the part of a protected biometric template that can be compared directly against other pseudonymous identifiers. Each compared pair of pseudonymous identifiers results in a verification decision testing whether both attributes are derived from the same individual. Compared to an unprotected system, most existing biometric template protection methods cause to a certain extent, degradation in biometric performance. Therefore fusion is a promising method to enhance the biometric performance in template protected systems. Compared to feature level fusion and score level fusion, decision level fusion exhibits not only the least fusion complexity, but also the maximum interoperability across different biometric features, systems based on scores, and even individual algorithms. However, performance improvement via decision level fusion is not obvious. It is influenced by both the dependency and the performance gap among the conducted tests for fusion. We investigate in this paper several scenarios (multi-sample, multi-instance, multi- sensor, and multi-algorithm) when fusion is performed on binary decisions obtained from verification of fingerprint minutiae based pseudonymous identifiers. We demonstrate the influence on biometric performance from decision level fusion in different fusion scenarios on a multi-sensor fingerprint database.
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