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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Person identification using EEG channel selection with hybrid flower pollination algorithm
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Person identification using EEG channel selection with hybrid flower pollination algorithm

机译:利用eEG频道选择与混合花授粉算法的人识别

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摘要

Recently, electroencephalogram (EEG) signal presents a great potential for a new biometric system to deal with a cognitive task. Several studies defined the EEG with uniqueness features, universality, and natural robustness that can be used as a new track to prevent spoofing attacks. The EEG signals are the graphical recording of the brain electrical activities which can be measured by placing electrodes (channels) in various positions of the scalp. With a large number of channels, some channels have very important information for biometric system while others not. The channel selection problem has been recently formulated as an optimisation problem and solved by optimisation techniques. This paper proposes hybrid optimisation techniques based on binary flower pollination algorithm (FPA) and beta-hill climbing (called FPA beta-hc) for selecting the most relative EEG channels (i.e., features) that come up with efficient accuracy rate of personal identification. Each EEG signals with three different groups of EEG channels have been utilized (i.e., time domain, frequency domain, and time-frequency domain). The FPA beta-hc is measured using a standard EEG signal dataset, namely, EEG motor movement/imagery dataset with a real world data taken from 109 persons each with 14 different cognitive tasks using 64 channels. To evaluate the performance of the FPA beta-hc, five measurement criteria are considered:accuracy (Acc), (ii) sensitivity (Sen), (iii) F-score (F_s), (v) specificity (Spe), and (iv) number of channels selected (No. Ch). The proposed method is able to identify the personals with high Acc, Sen., F_s, Spe, and less number of channels selected. Interestingly, the experimental results suggest that FPA beta-hc is able to reduce the number of channels with accuracy rate up to 96% using time-frequency domain features. For comparative evaluation, the proposed method is able to achieve results better than those produced by binary-FPA-OPF method using the same EEG motor movement/imagery datasets. In a nutshell, the proposed method can be very beneficial for effective use of EEG signals in biometric applications. (C) 2020 Elsevier Ltd. All rights reserved.
机译:最近,脑电图(EEG)信号对新的生物识别系统提供了一种处理认知任务的巨大潜力。几项研究定义了具有独特性特征,普遍性和自然稳健性的脑电图,可以用作新轨道以防止欺骗攻击。 EEG信号是脑电气活动的图形记录,其可以通过将电极(通道)放置在头皮的各个位置来测量。通过大量渠道,一些通道对生物识别系统具有非常重要的信息,而其他通道则没有。最近将频道选择问题作为优化问题制定为优化问题并通过优化技术解决。本文提出了基于二元花授粉算法(FPA)和Beta-hill攀爬(称为FPA Beta-HC)的混合优化技术,用于选择具有有效的个人识别的高精度率的最相关的eEG信道(即,特征)。已经利用了具有三个不同eEG信道组的每个EEG信号(即时域,频域和时频域)。使用标准EEG信号数据集测量FPA Beta-HC,即EEG电机移动/图像数据集,具有从109人获取的真实世界数据,每个人使用64个通道使用14个不同的认知任务。为了评估FPAβ-HC的性能,考虑了五种测量标准:精度(ACC),(II)敏感性(SEN),(III)F分数(F_S),(V)特异性(SPE),以及( iv)选择的频道数(编号CH)。该方法能够识别具有高ACC,SEN。,F_S,SPE和较少数量的频道的人员。有趣的是,实验结果表明FPAβ-HC能够使用时频域特征来减少高达96%的准确率的通道数。对于比较评估,所提出的方法能够比使用相同的EEG电机运动/图像数据集的二进制-FPA-OPF方法更好地实现结果。简而言之,该方法可以非常有利于生物识别应用中的EEG信号非常有益。 (c)2020 elestvier有限公司保留所有权利。

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