Differential evolution based score level fusion for multi-modal biometric systems

Satrajit Mukherjee, Kunal Pal, Bodhisattwa Prasad Majumder, Chiranjib Saha, B. K. Panigrahi, Sanjoy Das
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引用次数: 9

Abstract

The purpose of a multimodal biometric system is to construct a robust classifier of genuine and imposter candidates by extracting useful information from several biometric sources which fail to perform well in identification or verification as individual biometric systems. Amongst different levels of information fusion, very few approaches exist in literature exploring score level fusion. In this paper, we propose a novel adaptive weight and exponent based function mapping the matching scores from different biometric sources into a single amalgamated matching score to be used by a classifier for further decision making. Differential Evolution (DE) has been employed to adjust these tunable parameters with the objective being the minimization of the overlapping area of the frequency distributions of genuine and imposter scores in the fused score space, which are estimated by Gaussian kernel density method to achieve higher level of accuracy. Experimental results show that, the proposed method outperforms the conventional score-level fusion rules (sum, product, tanh, exponential) when tested on two databases of 4 modalities (fingerprint, iris, left ear and right ear) of 200 and 516 users and thus confirms the effectiveness of score level fusion. The preliminary results provide adequate motivation towards future research in the line of the application of meta-heuristics in score level fusion.
基于差分进化的多模态生物识别系统评分融合
多模态生物识别系统的目的是通过从几个生物识别源中提取有用的信息来构建真实和冒名顶替候选人的鲁棒分类器,这些生物识别源作为单个生物识别系统在识别或验证方面表现不佳。在不同层次的信息融合中,探索分数层次融合的文献很少。在本文中,我们提出了一种新的基于权重和指数的自适应函数,将来自不同生物特征来源的匹配分数映射成一个单一的混合匹配分数,供分类器进一步决策使用。采用差分进化(DE)对这些可调参数进行调整,目标是在融合分数空间中使真分数和冒名分数的频率分布重叠面积最小,并通过高斯核密度法估计真假分数以达到更高的精度。实验结果表明,该方法在200名和516名用户的指纹、虹膜、左耳和右耳4种形态数据库上进行了测试,结果优于传统的分数级融合规则(和、乘积、tanh、指数),验证了分数级融合的有效性。初步的研究结果为进一步研究元启发式在分数水平融合中的应用提供了充分的动力。
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