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Biometric Verification: Looking Beyond Raw Similarity Scores

机译:生物识别验证:超越原始相似度分数

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Most biometric verification techniques make decisions based solely on a score that represents the similarity of the query template with the reference template of the claimed identity stored in the database. When multiple templates are available, a fusion scheme can be designed using the similarities with these templates. Combining several templates to construct a composite template and selecting a set of useful templates has also been reported in addition to usual multi-classifier fusion methods when multiple matchers are available. These commonly adopted techniques rarely make use of the large number of non-matching templates in the database or training set. In this paper, we highlight the usefulness of such a fusion scheme while focusing on the problem of fingerprint verification. For each enrolled template, we identify its cohorts (similar fingerprints) based on a selection criterion. The similarity scores of the query template with the reference template and its cohorts from the database are used to make the final verification decision using two approaches: a likelihood ratio based normalization scheme and a Support Vector Machine (SVM)-based classifier. We demonstrate the accuracy improvements using the proposed method with no a priori knowledge about the database or the matcher under consideration using a publicly available database and matcher. Using our cohort selection procedure and the trained SVM, we show that accuracy can be significantly improved at the expense of few extra matches.
机译:大多数生物识别技术仅基于分数的决策,该分数表示查询模板与存储在数据库中的所要求保护的身份的参考模板的相似性。当多个模板可用时,可以使用与这些模板的相似性设计融合方案。结合多个模板来构造复合模板并在多分类器融合方法中还有许多匹配器可用时,还报告了选择一组有用的模板。这些通常采用的技术很少利用数据库或培训集中的大量非匹配模板。在本文中,我们突出了这种融合方案的有用性,同时关注指纹验证问题。对于每个注册的模板,我们根据选择标准识别其群组(类似指纹)。使用来自数据库的参考模板及其群组的查询模板的相似性分数用于使用两种方法进行最终验证决策:基于似然比的归一化方案和支持向量机(SVM)的分类器。我们展示了使用该方法的准确性改进,没有关于数据库的先验知识或使用公开可用的数据库和匹配器所考虑的匹配。使用我们的队列选择程序和培训的SVM,我们表明,以额外的匹配为代价,准确性可以显着提高。

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