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Robust Biometric Score Fusion by Naive Likelihood Ratio via Receiver Operating Characteristics

机译:通过天真​​似然比通过接收器工作特性进行稳健的生物特征评分融合

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摘要

This paper presents a novel method of fusing multiple biometrics on the matching score level. We estimate the likelihood ratios of the fused biometric scores, via individual receiver operating characteristics (ROC) which construct the Naive Bayes classifier. Using a limited number of operation points on the ROC, we are able to realize reliable and robust estimation of the Naive Bayes probability without explicit estimation of the genuine and impostor score distributions. Different from previous work, the method takes into consideration a particular characteristic of the matching score: its quantitative value is already an indication of the sample's likelihood of being genuine. This characteristic is integrated into the proposed method to improve the fusion performance while reducing the inherent algorithmic complexity. We demonstrate by experiments that the proposed method is reliable and robust, suitable for a wide range of matching score distributions in realistic data and public databases.
机译:本文提出了一种在匹配得分水平上融合多个生物特征的新颖方法。我们通过构建朴素贝叶斯分类器的单个接收器操作特征(ROC)估计融合的生物特征评分的似然比。在ROC上使用有限数量的操作点,我们能够实现对朴素贝叶斯概率的可靠且可靠的估计,而无需显式估计真实分数和冒名顶替者分数分布。与以前的工作不同,该方法考虑了匹配分数的特定特征:其定量值已经表明样品是真实的可能性。该特征被集成到所提出的方法中,以提高融合性能,同时降低固有的算法复杂性。我们通过实验证明了所提出的方法可靠且健壮,适用于现实数据和公共数据库中广泛的匹配分数分布。

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