Learning based biometric key generation method using CNN and RNN

Jong-hyuk Roh, Sangrae Cho, Seunghun Jin
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引用次数: 8

Abstract

Studies on the biometric authentication and biometric key generation have been underway for a long time. Fundamentally, there is a disadvantage that it is difficult to obtain uniform biometrics due to noise, and issues of security and privacy are still mentioned, but high user convenience is an advantage that cannot be ignored. Recently, the results of existing researches on biometric key generation show very good results. However, since the algorithms presented in many studies are suited to the specific dataset, applying these algorithms to different datasets makes it difficult to achieve the good results mentioned in the paper. The reason is probably because most datasets are collected in one place with one camera. We wanted to present a key generation method that is not limited to datasets, and we came up with a training-based method for this. In this paper, we propose a method with the convolutional neural network (CNN) and the recurrent neural network (RNN) for cryptographic key generation from face biometrics. CNN is used to extract the feature vector from the face image, and RNN generates the key from the feature vector. In the registration process, the RNN is iteratively trained. Experimental results on the databases show that the proposed approach is effective in the biometric key generation. The results for mixed database also show good performance.
基于学习的基于CNN和RNN的生物特征密钥生成方法
生物特征认证和生物特征密钥生成的研究已经进行了很长时间。从根本上说,它的缺点是由于噪声难以获得统一的生物识别,安全性和隐私性问题仍然被提及,但高度的用户便利性是不可忽视的优势。近年来,已有的生物识别密钥生成研究取得了很好的成果。然而,由于许多研究中提出的算法只适用于特定的数据集,因此将这些算法应用于不同的数据集很难达到本文提到的良好结果。原因可能是因为大多数数据集都是用一台相机在一个地方收集的。我们想提出一种不局限于数据集的密钥生成方法,为此我们提出了一种基于训练的方法。本文提出了一种基于卷积神经网络(CNN)和递归神经网络(RNN)的人脸生物特征密钥生成方法。使用CNN从人脸图像中提取特征向量,RNN从特征向量中生成密钥。在配准过程中,迭代训练RNN。在数据库上的实验结果表明,该方法在生物特征密钥生成中是有效的。混合数据库的结果也显示出良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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