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首页> 外文期刊>International journal of applied evolutionary computation >Score-Level Multimodal Biometric Authentication of Humans Using Retina, Fingerprint, and Fingervein
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Score-Level Multimodal Biometric Authentication of Humans Using Retina, Fingerprint, and Fingervein

机译:使用视网膜,指纹和fingervein的人类分数级多模态生物识别

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摘要

This paper characterizes a multi-modular framework for confirmation, dependent on the biometric combination of retina, finger vein, and unique mark acknowledgment. The authors have proposed feature extraction in retina acknowledgment model by utilizing SIFT and MINUTIA. Security is the fundamental idea in ATM (Automated Teller Machines) today. The use of multi-modular biometrics can be ATM. The work includes three biometric attributes of a client to be specific retina, unique mark, and finger veins. These are pre-prepared and joined (fused) together for score level combination approach. Retina is chosen as a biometric attribute as there are no parallel retina feature matches except if they are of the comparative client; likewise, retina has a decent vessel design making it a decent confirming methodology when contrasted with other biometric attributes. Security is found in the framework by multi-modular biometric combination of retina with finger vein and unique finger impression. Feature extraction approach and cryptography are utilized so as to accomplish security. The element extraction is finished with the assistance of MINUTIA and SIFT calculation, which are at that point characterized utilizing deep neural network (DNN). The element key focuses are intertwined at score level utilizing separation normal and later matched. The test result assessed utilizing MATLAB delineates the significant improvement in the presentation of multi-modular biometric frameworks with higher qualities in GAR and FAR rates.
机译:本文表征了一种用于确认的多模块化框架,取决于视网膜,手指静脉和唯一标记确认的生物识别组合。作者通过利用SIFT和MENUTIA提出了RETINA确认模型的特征提取。安全是今天ATM(自动柜员机)的基本因。使用多模块化生物识别性可以是ATM。该工作包括客户的三个生物识别属性,以特定视网膜,唯一标记和手指静脉。这些是预先准备和加入(融合)的共同级别组合方法。选择视网膜作为生物识别属性,因为没有并行视网膜功能匹配,除非它们是比较客户端;同样,视网膜具有体面的血管设计,使其成为与其他生物识别属性形成对比时的体面确认的方法。通过多模块化生物识别的视网膜与手指静脉和独特的手指印象,在框架中找到了安全性。特征提取方法和密码采用以实现安全性。在细节和SIFT计算的辅助下,元素提取完成,在该点处于利用深神经网络(DNN)的特征。元素密钥对焦在分数级别在分离级别的频率级别,并稍后匹配。利用MATLAB评估的测试结果界定了具有更高质量的多模块化生物识别框架的显着改进,具有较高的GAS和远程速率。

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