Benaliouche Houda, Touahria Mohamed
Computer Science Department, University of Ferhat Abbas Sétif 1, Pôle 2 - El Bez, 19000 Sétif, Algeria.
ScientificWorldJournal. 2014 Jan 29;2014:829369. doi: 10.1155/2014/829369. eCollection 2014.
This research investigates the comparative performance from three different approaches for multimodal recognition of combined iris and fingerprints: classical sum rule, weighted sum rule, and fuzzy logic method. The scores from the different biometric traits of iris and fingerprint are fused at the matching score and the decision levels. The scores combination approach is used after normalization of both scores using the min-max rule. Our experimental results suggest that the fuzzy logic method for the matching scores combinations at the decision level is the best followed by the classical weighted sum rule and the classical sum rule in order. The performance evaluation of each method is reported in terms of matching time, error rates, and accuracy after doing exhaustive tests on the public CASIA-Iris databases V1 and V2 and the FVC 2004 fingerprint database. Experimental results prior to fusion and after fusion are presented followed by their comparison with related works in the current literature. The fusion by fuzzy logic decision mimics the human reasoning in a soft and simple way and gives enhanced results.
经典求和规则、加权求和规则和模糊逻辑方法。虹膜和指纹不同生物特征的分数在匹配分数和决策级别进行融合。在使用最小-最大规则对两个分数进行归一化后,采用分数组合方法。我们的实验结果表明,决策级别上用于匹配分数组合的模糊逻辑方法是最佳的,其次是经典加权求和规则和经典求和规则。在公共CASIA-Iris数据库V1和V2以及FVC 2004指纹数据库上进行详尽测试后,根据匹配时间、错误率和准确率报告了每种方法的性能评估。给出了融合前和融合后的实验结果,并与当前文献中的相关工作进行了比较。通过模糊逻辑决策进行的融合以一种柔和且简单的方式模拟了人类推理,并给出了更好的结果。