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首页> 外文期刊>Journal of medical systems >Relevant Feature Selection from a Combination of Spectral-Temporal and Spatial Features for Classification of Motor Imagery EEG
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Relevant Feature Selection from a Combination of Spectral-Temporal and Spatial Features for Classification of Motor Imagery EEG

机译:来自频谱时间和空间特征的组合选择的相关特征选择,用于电机图像eeg分类

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摘要

This paper presents a novel algorithm (CVSTSCSP) for determining discriminative features from an optimal combination of temporal, spectral and spatial information for motor imagery brain computer interfaces. The proposed method involves four phases. In the first phase, EEG signal is segmented into overlapping time segments and bandpass filtered through frequency filter bank of variable size subbands. In the next phase, features are extracted from the segmented and filtered data using stationary common spatial pattern technique (SCSP) that can handle the non-stationarity and artifacts of EEG signal. The univariate feature selection method is used to obtain a relevant subset of features in the third phase. In the final phase, the classifier is used to build adecision model. In this paper, four univariate feature selection methods such as Euclidean distance, correlation, mutual information and Fisher discriminant ratio and two well-known classifiers (LDA and SVM) are investigated. The proposed method has been validated using the publicly available BCI competition IV dataset Ia and BCI Competition III dataset IVa. Experimental results demonstrate that the proposed method significantly outperforms the existing methods in terms of classification error. A reduction of 76.98%, 75.65%, 73.90% and 72.21% in classification error over both datasets and both classifiers can be observed using the proposed CVSTSCSP method in comparison to CSP, SBCSP, FBCSP and CVSCSP respectively.
机译:本文提出了一种新的算法(CVSTSCSP),用于从最佳的时间,光谱和电动机图像计算机电脑接口的最佳时间,光谱和空间信息的最佳组合确定辨别特征。该方法涉及四个阶段。在第一阶段中,EEG信号被分段为通过可变尺寸子带的频率滤波器组的重叠时间段和带通滤波。在下一阶段,使用可以使用静止公共空间模式技术(SCSP)从分段和滤波的数据中提取特征,该技术可以处理EEG信号的非实用性和伪像。单变量特征选择方法用于在第三阶段获得相关的特征子集。在最终阶段,分类器用于构建深度模型。本文研究了四种单变量特征选择方法,例如欧几里德距离,相关性,互信息和捕获素判别比和两种公知的分类剂(LDA和SVM)。该方法已经使用公开的BCI竞赛IV数据集IA和BCI竞赛III数据集IVA验证。实验结果表明,该方法在分类误差方面显着优于现有方法。可以使用所提出的CSP,SBCSP,FBCSP和CVSCSP,在数据集中减少76.98%,75.65%,75.65%,73.90%和72.21%的分类误差和两个分类器。

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