Fusion Time Reduction of a Feature Level Based Multimodal Biometric Authentication System

R. Mahmoud, M. Selim, Omar A. Muhi
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引用次数: 8

Abstract

In the present study, a multimodal biometric authentication method is presented to confirm the identity of a person based on his face and iris features. This method depends on multiple biometric techniques that combine face and iris (left and right) features to recognize. The authors have designed and applied a system to identify people. It depends on extracting the features of the face using Rectangle Histogram of Oriented Gradient (R-HOG). The study applies a feature-level fusion using a novel fusion method which employs both the canonical correlation process and the proposed serial concatenation. A deep belief network was used for the recognition process. The performance of the proposed systems was validated and evaluated through a set of experiments on SDUMLA-HMT database. The results were compared with others, and have shown that the fusion time has been reduced by about 34.5%. The proposed system has also succeeded in achieving a lower equal error rate (EER), and a recognition accuracy up to 99%.
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基于特征层次的多模态生物识别认证系统融合时间缩短
在本研究中,提出了一种基于人脸和虹膜特征的多模态生物识别方法来确认一个人的身份。该方法依靠多种生物识别技术,结合面部和虹膜(左右)特征进行识别。作者设计并应用了一个识别人的系统。它依赖于使用定向梯度矩形直方图(R-HOG)提取人脸特征。该研究采用了一种新的融合方法,该方法采用典型相关过程和所提出的串行连接,实现了特征级融合。在识别过程中使用了深度信念网络。通过在SDUMLA-HMT数据库上的一系列实验,对所提出系统的性能进行了验证和评估。结果表明,融合时间缩短了34.5%左右。该系统还成功地实现了较低的等错误率(EER)和高达99%的识别精度。
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