Classification of mental tasks using fixed and adaptive autoregressive models of EEG signals

Huan Nai-Jen, Ramaswamy Palaniappan
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引用次数: 59

Abstract

Classification of EEG signals extracted during mental tasks is a technique for designing brain computer interfaces (BCI). We classify EEG signals that were extracted during mental tasks using fixed autoregressive (FAR) and adaptive AR (AAR) models. Five different mental tasks from 4 subjects were used in the experimental study and combinations of 2 different mental tasks are studied for each subject. Four different feature extraction methods were used to extract features from these EEG signals: FAR coefficients computed with Burg's algorithm using 125 data points, without segmentation and with segmentation of 25 data points, AAR coefficients computed with least-mean-square (LMS) algorithm using 125 data points, without segmentation and with segmentation of 25 data points. Multilayer perception (MLP) neural network (NN) trained by the backpropagation (BP) algorithm is used to classify these features into the different categories representing the mental tasks. The best results for FAR was 92.70% while for AAR was only 81.80%. The results obtained here indicated that FAR using 125 data points without segmentation gave better classification performance as compared to AAR, with all other parameters constant.
脑电信号固定自回归模型和自适应自回归模型的脑任务分类
脑电信号分类是脑机接口设计的一项重要技术。我们使用固定自回归(FAR)和自适应AR (AAR)模型对脑力任务中提取的脑电信号进行分类。实验研究采用了4个被试的5个不同的心理任务,并对每个被试的2个不同的心理任务组合进行了研究。采用四种不同的特征提取方法从这些EEG信号中提取特征:使用125个数据点的Burg算法计算FAR系数,不进行分割和分割25个数据点;使用125个数据点的最小均方(LMS)算法计算AAR系数,不进行分割和分割25个数据点。通过反向传播(BP)算法训练的多层感知(MLP)神经网络(NN)将这些特征划分为代表心理任务的不同类别。FAR的最佳结果为92.70%,而AAR仅为81.80%。本文的结果表明,在其他参数不变的情况下,使用125个数据点而不进行分割的FAR比AAR具有更好的分类性能。
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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