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Wavelet based Multimodal Biometrics with Score Level Fusion Using Mathematical Normalization

机译:基于小波的多模态生物识别技术,具有基于数学归一化的得分水平融合

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Biometric based authentication is playing a very important role in various security related applications. A novel multimodal biometric verification based on fingerprint, palmprint and iris with matching score level fusion using Mathematical Normalization is proposed in this paper. In feature extraction stage of unimodal, features of each modality are extracted by applying wavelet decomposition using 6 different wavelet families and 35 respective wavelet family members. Further, the three optimal combinations of unimodal systems based on equal error rate achieved by wavelet(s) are chosen for development of multimodal biometric system. In matching score level fusion, along with well-known normalization techniques- Min-max, Tan-h and Z-score, the performance of multimodal systems are also analyzed using Mathematical Normalization (Math-norm) followed by product, weighted product, sum and average fusion rule. The experiments are conducted on database of 100 different subjects from publically available FVC2006, CASIA V1 and IITD database of fingerprint, palmprint and iris, respectively. The experimental results clearly show that Mathematical Normalization followed by weighted product has given promising accuracy with equal error rate (EER) of 0.325%.
机译:基于生物特征的身份验证在各种与安全相关的应用程序中扮演着非常重要的角色。提出了一种新的基于指纹,掌纹和虹膜的多模态生物特征验证方法,并利用数学归一化技术进行了匹配的分数水平融合。在单峰特征提取阶段,通过使用6个不同的小波家族和35个各自的小波家族成员进行小波分解来提取每个模态的特征。此外,选择基于小波实现的相等错误率的单峰系统的三个最佳组合,以开发多峰生物识别系统。在匹配分数级别融合中,连同著名的归一化技术(Min-max,Tan-h和Z分数),还使用数学归一化(Math范数),乘积,加权乘积,总和来分析多峰系统的性能。和平均融合规则。实验分别在公开的FVC2006,CASIA V1和IITD的指纹,掌纹和虹膜数据库的100个不同主题的数据库上进行。实验结果清楚地表明,数学归一化后再加上加权乘积具有0.325%的均等错误率(EER),具有令人满意的准确性。

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