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Multimodal Biometric System Using Face-Iris Fusion Feature

机译:使用Face-Iris Fusion功能的多模式生物识别系统

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—With the wide application, the performance of unimodal biometrics systems has to contend with a variety of problems such as background noise, signal noise and distortion, and environment or device variations. Therefore, multimodal biometric systems are proposed to solve the above mentioned problems. This paper proposed a novel multimodal biometric system using face-iris fusion feature. Face feature and iris feature are first extracted respectively and fused in feature-level. However, existing feature level schemes such as sum rule and weighted sum rule are inefficient in complicated condition. In this paper, we adopt an efficient feature-level fusion scheme for iris and face in series. The algorithm normalizes the original features of iris and face using z-score model to eliminate the unbalance in the order of magnitude and the distribution between two different kinds of feature vectors, and then connect the normalized feature vectors in serial rule. The proposed algorithm is tested using CASIA iris database and two face databases (ORL database and Yale database). Experimental results show the effectiveness of the proposed algorithm.
机译:为广泛的应用,单峰生物识别系统的性能必须与各种问题相抗衡,如背景噪声,信号噪声和失真,以及环境或设备变化。因此,提出了多模式生物识别系统来解决上述问题。本文提出了一种使用Face-Iris Fusion特征的新型多模态生物识别系统。首先提取面部特征和虹膜功能,并在特征级别融合。然而,诸如Sum规则和加权和规则之类的现有特征级别方案在复杂条件下效率低下。在本文中,我们采用了一个有效的特征级融合方案,用于虹膜和面部串联。该算法使用Z-Score模型使IRIS和面部的原始特征标准化,以消除幅度的不平衡和两个不同类型的特征向量之间的分布,然后在串行规则中连接归一化特征向量。使用CASIA IRIS数据库和两个面部数据库(ORL数据库和耶鲁数据库)测试所提出的算法。实验结果表明了该算法的有效性。

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