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Score level fusion of hand based biometrics using t-norms

机译:使用t范数的基于手的生物特征评分等级融合

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A multimodal biometric system amalgamates the information from multiple biometric sources to alleviate the limitations in performance of each individual biometric system. In this paper a multimodal biometric system employing hand based biometrics (i.e. palmprint, hand veins, and hand geometry) is developed. A general combination approach is proposed for the score level fusion which combines the matching scores from these hand based modalities using t-norms due to Hamacher, Yager, Weber, Schweizer and Sklar. This study aims at exploring the potential usefulness of t-norms for multimodal biometrics. These norms deal with the real challenge of uncertainty and imperfection pervading the different sources of knowledge (scores from different modalities). We construct the membership functions of fuzzy sets formed from the genuine and imposter scores of each of the modalities considered. The fused genuine score and imposter scores are obtained by integrating the fuzzified genuine scores and imposter scores respectively from each of the modalities. These norms are relatively very simple to apply unlike the other methods (example SVM, decision trees, discriminant analysis) as no training or any learning is required here. The proposed approach renders very good performance as it is quite computationally fast and outperforms the score level fusion using the conventional rules (min, max, sum, median) The experimental evaluation on a database of 100 users confirms the effectiveness of score level fusion. The preliminary results are encouraging in terms of decision accuracy and computing efficiency.
机译:多模式生物识别系统将来自多个生物识别源的信息融合在一起,以减轻每个单独的生物识别系统在性能方面的局限性。在本文中,开发了一种多模式生物识别系统,该系统采用了基于手的生物识别技术(即掌纹,手静脉和手部几何形状)。对于分数水平融合,提出了一种通用的组合方法,该方法将由于Hamacher,Yager,Weber,Schweizer和Sklar的t范数使用t范数组合来自这些基于手的模态的匹配分数。这项研究旨在探讨t范数对多模式生物识别技术的潜在实用性。这些规范处理了遍及不同知识来源(来自不同方式的得分)的不确定性和缺陷的真正挑战。我们构造模糊集的隶属函数,该模糊集由所考虑的每种方式的真实分数和冒名顶替分数组成。融合的真实分数和冒名顶替者分数是通过分别从每种方式对模糊化的真实分数和冒名顶替者分数进行积分而获得的。与其他方法(例如SVM,决策树,判别分析)不同,这些准则的应用相对非常简单,因为这里不需要培训或学习。所提出的方法具有非常好的计算速度,并且使用常规规则(最小,最大,总和,中位数)优于分数水平融合,因此具有非常好的性能。在100个用户的数据库上进行的实验评估证实了分数水平融合的有效性。初步结果在决策准确性和计算效率方面令人鼓舞。

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