Adaptive multimodal biometric fusion algorithm using particle swarm optimization and belief functions

L. Mezai, F. Hachouf
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引用次数: 4

Abstract

In this paper, an adaptive multimodal biometric fusion algorithm is proposed. It is based on belief functions and Particle Swarm Optimization (PSO). The fusion is performed at the score level using belief functions such as Dempster Shafer, Yager, Proportional Conflict Redistribution and Dezert-Smarandache hybrid rules. A hybrid PSO is employed to select the best belief function and estimate its parameters. Several experiments have been conducted on BANCA dataset and a comparison between the well established methods has been performed. The preliminary results provide adequate motivation towards future research in the application of optimization techniques in the belief functions.
基于粒子群优化和信念函数的自适应多模态生物特征融合算法
提出了一种自适应多模态生物特征融合算法。该算法基于信念函数和粒子群优化(PSO)。采用Dempster Shafer、Yager、Proportional Conflict Redistribution和Dezert-Smarandache混合规则等信念函数在分数水平上进行融合。采用混合粒子群算法选择最优信念函数并估计其参数。在BANCA数据集上进行了多次实验,并对已有的方法进行了比较。初步结果为进一步研究优化技术在信念函数中的应用提供了充分的动力。
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