Channel selection from EEG signals and application of support vector machine on EEG data

Mustafa Turan Arslan, S. G. Eraldemir, Esen Yildirim
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引用次数: 5

Abstract

In this study, EEG data recorded during mental arithmetic operations and silent reading were analyzed by discrete wavelet transform and feature vectors were obtained. The obtained feature vectors are classified by Support Vector Machines (SVM). Results are given for 26 channels, all recorded channels, and for 10 most effective channels. Correlation based feature selection based algorithm is used for choosing the most effective channels. Decreasing the number of channels without compromising the accuracy, is an important issue for real time applications for which a short analysis time is crucial. In this study, mental arithmetic and silent reading tasks are classified with an accuracy of 90.71%, a precision rate of 91.03% and F-measure rate of 90.63% on the average using 26 channels, whereas the accuracy, precision and F-measure were 90.44%, 90.61% and 90.08, respectively which were comparable to that of obtained using all channels, for reduced number of channels.
脑电信号的通道选择及支持向量机在脑电信号上的应用
采用离散小波变换对心算运算和默读时的脑电数据进行分析,得到特征向量。得到的特征向量通过支持向量机进行分类。给出了26个通道的结果,所有记录的通道和10个最有效的通道。采用基于相关性的特征选择算法来选择最有效的信道。在不影响精度的情况下减少通道数量,对于实时应用程序来说是一个重要的问题,因为短的分析时间是至关重要的。在本研究中,使用26个通道对心算和默读任务进行分类,平均准确率为90.71%,准确率为91.03%,F-measure率为90.63%,而由于通道数减少,其准确率、精密度和F-measure率分别为90.44%、90.61%和90.08,与使用全部通道获得的结果相当。
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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