Comparison of combination methods utilizing T-normalization and second best score model

S. Tulyakov, Zhi Zhang, V. Govindaraju
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引用次数: 28

Abstract

The combination of biometric matching scores can be enhanced by taking into account the matching scores related to all enrolled persons in addition to traditional combinations utilizing only matching scores related to a single person. Identification models take into account the dependence between matching scores assigned to different persons and can be used for such enhancement. In this paper we compare the use of two such models - T-normalization and second best score model. The comparison is performed using two combination algorithms - likelihood ratio and multilayer perceptron. The results show, that while second best score model delivers better performance improvement than T-normalization, two models are complementary to each other and can be used together for further improvements.
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使用t归一化和次优得分模型的组合方法的比较
除了仅利用与单个人相关的匹配分数的传统组合外,还可以通过考虑与所有登记人员相关的匹配分数来增强生物识别匹配分数的组合。识别模型考虑了分配给不同人的匹配分数之间的依赖性,可以用于这种增强。在本文中,我们比较了两种这样的模型- t归一化和次优得分模型的使用。采用两种组合算法——似然比算法和多层感知器算法进行比较。结果表明,虽然次优得分模型比t归一化提供了更好的性能改进,但两个模型是互补的,可以一起使用以进一步改进。
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