以客户端冒名顶替者为中心的自适应分数规范化:指纹验证的案例研究

N. Poh, A. Merati, J. Kittler
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引用次数: 23

摘要

以t范数(测试归一化)为例的基于队列的分数归一化是最先进的方法,用于解释测试中信号质量的可变性。另一方面,特定于用户的分数标准化,如z规范和f规范,旨在处理不同参考模型之间的性能变化,也被证明是非常有效的。利用这两种方法的优势,本文提出了一种新的分数归一化,称为自适应f规范,它以客户冒充者为中心,即利用真实和冒充者的分数信息,以及自适应,即由于使用队列模型池而适应测试条件。基于BioSecure DS2数据库的实验,该数据库包含415名受试者的6个手指,每个手指都使用热敏和光学设备获取,表明所提出的自适应f -范数更好或至少与其他替代方案一样好,包括最近在文献中提出的替代方案。
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Adaptive client-impostor centric score normalization: A case study in fingerprint verification
Cohort-based score normalization as examplified by the T-norm (for Test normalization) has been the state-of-the-art approach to account for the variability of signal quality in testing. On the other hand, user-specific score normalization such as the Z-norm and the F-norm, designed to handle variability in performance across different reference models, has also been shown to be very effective. Exploiting the strenghth of both approaches, this paper proposes a novel score normalization called adaptive F-norm, which is client-impostor centric, i.e., utilizing both the genuine and impostor score information, as well as adaptive, i.e, adaptive to the test condition thanks to the use of a pool of cohort models. Experiments based on the BioSecure DS2 database which contains 6 fingers of 415 subjects, each acquired using a thermal and an optical device, show that the proposed adaptive F-norm is better or at least as good as the other alternatives, including those recently proposed in the literature.
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