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Neighbor Distance Ratios and Dynamic Weighting in Multi-biometric Fusion

机译:多生物识别融合中的邻居距离比率和动态加权

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Multi-biometrics aims at building more accurate unified biometric decisions based on the information provided by multiple biometric sources. Information fusion is used to optimize the process of creating this unified decision. In previous works dealing with score-level multi-biometric fusion, the scores of different biometric sources belonging to the comparison of interest are used to create the fused score. This is usually achieved by assigning static weights for the different biometric sources. In contrast, we focus on integrating the information imbedded in the relative relation between the comparison scores (within a 1:N comparison) in the biometric fusion process using a dynamic weighting scheme. This is performed by considering the neighbors distance ratio in the ranked comparisons to influence the dynamic weights of the fused scores. The evaluation was performed on the Biometric Scores Set BSSR1 database. The enhanced performance induced by including the neighbors distance ratio information within a dynamic weighting scheme in comparison to the baseline solution was shown by an average reduction of the equal error rate by more than 40% over the different test scenarios.
机译:多生物识别技术旨在根据多种生物识别源提供的信息构建更准确的统一生物识别决策。信息融合用于优化创建统一决策的过程。在以前的作品处理得分级多生物识别融合中,使用属于感兴趣的比较的不同生物识别源的分数用于创建融合分数。这通常通过为不同的生物识别源分配静态权重来实现。相反,我们专注于使用动态加权方案在生物识别融合过程中的比较分数(在1:n比较内)之间的相对关系中嵌入的信息集成。这是通过考虑排序比较中的邻居距离比来执行的,以影响融合得分的动态权重。在生物识别分数集BSSR1数据库上执行评估。通过在与基线解决方案相比,通过在动态加权方案中包括邻居距离比较的增强性能通过在不同的测试场景上的平均误差率的平均降低超过40%。

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