Feature selection and channel optimization for biometric identification based on visual evoked potentials

Yanru Bai, Zhiguo Zhang, Dong Ming
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引用次数: 16

Abstract

In recent years, biometric identification has received general concerns around the world, and become a frontal and hot topic in the information age. Among the internal biometric traits, electroencephalogram (EEG) signals have emerged as a prominent characteristic due to the high security, uniqueness and impossibility to steal or mimic. In this paper, individual difference of visual evoked potentials (VEPs) with cognition task were investigated, in addition, a feature selection and channel optimization strategy was developed for the VEPs based biometric identification system, where three different methods, including genetic algorithm (GA), Fisher discriminant ratio (FDR), and recursive feature elimination (RFE) were employed. In our experiments with 20 healthy subjects, the classification accuracy by support vector machine (SVM) reached up to 97.25% with AR model parameters, compared to 96.25% before optimization, and 32 channels of most discriminative were eventually selected from 64 channels with best performance. Results in this study revealed the feasibility of VEPs based EEG to be used for biometric identification. The proposed optimization algorithm was shown to have the ability to effectively improve the identification accuracy as well as simplifying the system. Further investigate may provide a novel idea for the individual difference analysis of EEG and for its practical design and optimization in the field of biometrics in the future.
基于视觉诱发电位的生物特征识别特征选择与通道优化
近年来,生物特征识别在世界范围内受到普遍关注,成为信息时代的前沿和热点话题。在人体内部生物特征中,脑电图信号因其高安全性、唯一性和不可窃取性而成为一个突出的特征。研究了视觉诱发电位(vep)在认知任务中的个体差异,提出了基于视觉诱发电位的生物特征识别系统的特征选择和通道优化策略,采用遗传算法(GA)、Fisher判别比(FDR)和递归特征消除(RFE)三种不同的方法。在20名健康受试者的实验中,基于AR模型参数的支持向量机(SVM)分类准确率达到97.25%,而优化前的准确率为96.25%,最终从64个通道中选择出32个最具判别性的通道。本研究结果揭示了基于VEPs的脑电图用于生物识别的可行性。结果表明,所提出的优化算法能够有效地提高识别精度并简化系统。进一步的研究将为脑电图的个体差异分析以及脑电图在生物识别领域的实际设计和优化提供新的思路。
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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