在多模态生物识别系统中改进的分数水平融合

S. Horng, Yuan-Hsin Chen, R. Run, Rong-Jian Chen, Jui-Lin Lai, Kevin Octavius Sentosa
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引用次数: 33

摘要

在多模态生物识别系统中,需要有效的融合方法来将各种单模态系统的信息结合起来。本文研究了基于和规则的分数水平融合和基于支持向量机的分数水平融合的性能。本研究考虑了三个生物特征:指纹、面部和手指静脉。我们还提出了一种新的鲁棒归一化方案(High-scores Effect Reduction normalization),该方案源自最小-最大归一化方案。在4个不同的多模态数据库上进行的实验表明,将该方法与基于规则的和基于支持向量机的融合相结合,可以获得一致的高准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Score Level Fusion in Multimodal Biometric Systems
In a multimodal biometric system, the effective fusion method is necessary for combining information from various single modality systems. In this paper we examined the performance of sum rule-based score level fusion and Support Vector Machines (SVM)-based score level fusion. Three biometric characteristics were considered in this study: fingerprint, face, and finger vein. We also proposed a new robust normalization scheme (Reduction of High-scores Effect normalization) which is derived from min-max normalization scheme. Experiments on four different multimodal databases suggest that integrating the proposed scheme in sum rule-based fusion and SVM-based fusion leads to consistently high accuracy.
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