基于深度卷积连体网络的认证系统设计与实现

Sumagna Dey, Indrajit Das, Soubarna Das, Subhrapratim Nath
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引用次数: 0

摘要

今天最重要的先决条件是征服各种威胁。人类的行为和生理成分是克服这些安全问题的最大选择。无论如何,目前的生物识别认证方法,如指纹、人脸和虹膜,都是非常复杂的方法。为此,本文提出了一种新的身份认证系统,即基于深度卷积暹罗网络的指静脉身份认证。通过近红外和CCD相机捕获图像的阈值来确定感兴趣区域。之后,使用深度卷积暹罗网络对两幅图像进行比较和对比,预测两幅图像是否相似。现代暹罗网络使用“三重损失函数”。在这个三重损失函数中,考虑三个基本图像(锚图像,正图像和负图像),其中每个图像是一个像素矩阵。通过使用几种机器学习技术(ANFIS, SVM, MLP和Global mapping/SVM)的准确率进行比较,测试和训练的检测准确率分别为97.2%和96.4%。对比分析表明,本文提出的方法比其他算法具有更好的效果。TPR、FPR、FNR和TNR分别为0.916、0.027、0.041和0.027。从这些值可以明显看出,所提出的模型得到了更好的结果,因为TP值较高,而FP、FN和TN值较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of Authentication System Using Deep Convoluted Siamese Network
The majority essential prerequisite in this day is to conquer the various sorts of threats. Human behavioral and physiological components have the biggest alternative to overcome these security issues. In any case, the current biometric authentication methodology like fingerprints, faces and iris are profoundly complex methods. So in this paper, a new authentication system i.e. Finger vein authentication with the help of Deep Convoluted Siamese network has been proposed. The region of interest was done by threshold value over captured images by NIR and CCD cameras. After that, the Deep convoluted Siamese network is used to compare and contrast between two images to predict whether the two images are similar or not. The modern Siamese network uses a "Triplet Loss Function". In this triplet loss function, three fundamental images (Anchor Image, Positive Image and Negative Image) are considered where each image is a pixel matrix. The detection accuracy for testing and training is 97.2% and 96.4 % which is compared by utilizing several machine learning techniques (ANFIS, SVM, MLP and Global mapping/SVM) accuracy. It is clear from the comparative analysis that the proposed method gives better results than other algorithms. The proposed methodology TPR, FPR, FNR and TNR are 0.916, 0.027, 0.041 and 0.027 respectively. From these values, it is obvious that the proposed model gives better results, as the TP value is higher while the FP, FN and TN value are lower.
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