基于人体通信的卷积神经网络生物特征验证方法

Jingzhen Li, Yuhang Liu, Tobore Igbe, Ze-dong Nie
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引用次数: 1

摘要

本文提出了一种基于人体通信(HBC)的生物特征验证方法。其中,人类前臂的传播增益S21被认为是生物特征。为此,我们建立并提出了三种不同的前臂模型来验证上述方法。利用矢量网络分析仪(VNA)获得了21名志愿者在0.3 MHz ~ 1500 MHz频率范围内的传输增益S21。此外,本文采用卷积神经网络(CNN),该网络包括3个卷积层、3个最大池化层和2个全连接层。研究了不同优化器和损失函数对CNN的影响。结果表明,当优化器设置为Adadelta,损失函数设置为分类交叉熵时,CNN的识别准确率为99.86%。因此,我们认为CNN有潜力提高基于HBC的生物特征验证的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Approach for Biometric Verification Based on Human Body Communication using Convolutional Neural Network
In this paper, a new approach based on human body communication (HBC) was presented for biometric verification. Specifically, the transmission gain S21 of human forearm is regarded as the biometric trait. For this purpose, three different forearm models were established and proposed to validate the aforementioned approach. Furthermore, the transmission gain S21 of 21 volunteers was obtained by the use of vector network analyzer (VNA) in the frequency range 0.3 MHz to 1500 MHz in the experiment. In addition, the convolutional neural network (CNN) which includes 3 convolution layers, 3 max pooling layers and 2 fully-connected layers was adopted in this paper. The influences of different optimizers and loss functions on CNN were investigated. The results showed that the recognition accuracy of CNN was 99.86% when the optimizer was set as Adadelta and the loss function was set as categorical crossentropy. We therefore suggest that the CNN has potentials to improve the recognition accuracy of biometric verification based on HBC.
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