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Asymptotic Biometric Analysis for Large Gallery Sizes

机译:大型画廊的渐近生物特征分析

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Motivated by the need to predict the future biometric performance of the U.S. Visitor and Immigrant Status Indicator Technology program as it increases the size of its watchlist database, we use extreme-value theory (which is an asymptotic theory for the maximum of a large number of independent and identically distributed random variables) to analyze biometric performance as the gallery size gets very large. Due to the lack of published data for open-set fingerprint systems (where some users of the system are not on the watchlist), we assess the accuracy of our approach using the rank-one identification probability for closed-set fingerprint systems (where all users are on the watchlist). Consistent with earlier empirical observations, we find that the relationship between the rank-one identification probability and gallery size is log-linear to first-order and has a quadratic correction term, at least under our specific distributional assumptions. We also find that the probabilistic biometric model provides a good fit to empirical fingerprint data only when the genuine and impostor similarity scores are allowed to depend on the quality of the fingerprint images, which leads to genuine and impostor scores that are mixtures of distributions. Finally, we use the extreme-value approach to derive the receiver operating characteristic curve for open-set systems.
机译:由于需要预测美国访客和移民身份指示器技术计划的未来生物识别性能,因为它增加了其监视列表数据库的大小,因此我们采用了极值理论(这是一种渐近理论,它针对大量独立且均等分布的随机变量),以根据画廊的规模变大来分析生物特征识别性能。由于缺乏开放式指纹系统的数据(该系统的某些用户不在监视列表中),我们使用封闭式指纹系统的第一个识别概率来评估我们方法的准确性。用户在关注列表中)。与早期的经验观察一致,我们发现至少在我们特定的分布假设下,秩一识别概率与画廊大小之间的关系对一阶是对数线性的,并且具有二次校正项。我们还发现,只有在允许真实和冒名顶替者的相似度分数取决于指纹图像的质量时,概率生物特征模型才可以很好地拟合经验指纹数据,从而导致真实和冒名顶替者分数是分布的混合体。最后,我们使用极值方法来得出开放系统的接收机工作特性曲线。

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