Performance evaluation of score level fusion in multimodal biometric systems

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In a multimodal biometric system, the effective fusion method is necessary for combining information from various single modality systems. In this paper the performance of sum rule-based score level fusion and support vector machines (SVM)-based score level fusion are examined. Three biometric characteristics are 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. The performance of simple sum rule-based fusion preceded by our normalization scheme is comparable to another approach, likelihood ratio-based fusion [8] (Nandakumar et al., 2008), which is based on the estimation of matching scores densities. Comparison between experimental results on sum rule-based fusion and SVM-based fusion reveals that the latter could attain better performance than the former, provided that the kernel and its parameters have been carefully selected.

论文关键词:Multimodal biometrics,Score level fusion,Verification,Normalization,Sum rule,Support vector machines

论文评审过程:Received 12 March 2009, Revised 12 November 2009, Accepted 14 November 2009, Available online 24 November 2009.

论文官网地址:https://doi.org/10.1016/j.patcog.2009.11.018