Performances among various common spatial pattern methods for simultaneous MEG/EEG data

S. Kang, M. Ahn, S. Jun
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引用次数: 4

Abstract

Brain Computer Interface (BCI) is a communication pathway between devices (computers) and the human brain. It treats brain signals in a real-time basis and deciphers some of what the human brain is doing to give us certain information. In this work, we develop the BCI system based on simultaneous electroencephalograph (EEG) and magnetoencephalography (MEG) using various preprocessing and feature extraction methods along with Fisher linear discriminant analysis (FLDA) classifier. Common spatial pattern (CSP) is a spatial filter whose spatially projected signal has maximum power for one class and minimum power for the other. Each single trial is computed by the variance in the time domain. We choose a proper number of patterns in order to make a feature vector. In this work, 6 CSP patterns, the first three and the last three ones are selected. A feature vector consists of 6 variances of each extracted CSP pattern from projected data. Among various CSP methods, we used normal common spatial patterns (CSP), invariant common spatial patterns (iCSP), and common spectral spatial patterns (CSSP) methods to measure the performances. Simultaneous MEG/EEG datasets (340 channels) for four subjects from Eleckta Vectorview system were digitally acquired at a 1 KHz and 8-30Hz bandpass filtered. Total 340 channels consist of three kinds of channel types such as 102 magnetometers, 204 gradiometers and 40 EEG electrodes. Three different modalities such as EEG-only, MEG-only, and simultaneous MEG and EEG were analyzed in order to study comparative BCI performances on three variants of CSP. Particularly, for simultaneous MEG/EEG data we proposed three different combination ways for BCI and their performances were discussed.
几种常用空间模式方法在脑电信号/脑电信号同步处理中的性能分析
脑机接口(BCI)是设备(计算机)与人脑之间的通信通道。它可以实时处理大脑信号,并破译人类大脑的一些活动,为我们提供某些信息。在这项工作中,我们使用各种预处理和特征提取方法以及Fisher线性判别分析(FLDA)分类器开发了基于脑电图(EEG)和脑磁图(MEG)的脑机接口系统。公共空间模式(Common spatial pattern, CSP)是一种空间滤波器,它的空间投影信号在一类中具有最大功率,在另一类中具有最小功率。每一次试验都是通过时域的方差来计算的。我们选择适当数量的模式来组成特征向量。本作品共选取了6种CSP模式,前三种和后三种。特征向量由从投影数据中提取的每个CSP模式的6个方差组成。在各种CSP方法中,我们使用正常共同空间模式(CSP)、不变共同空间模式(iCSP)和共同光谱空间模式(CSSP)方法来衡量性能。以8-30Hz的带通滤波频率,以1 KHz的频率对4名受试者的脑电信号和脑电信号同时采集340个通道。总共340个通道由102个磁强计、204个梯度计和40个脑电电极三种通道类型组成。为了研究脑机接口在三种CSP变体上的性能对比,我们分析了三种不同的模式,即仅脑电、仅脑电和同时脑电和脑电。特别地,针对同时进行的脑电信号和脑电信号数据,我们提出了三种不同的脑机接口组合方式,并讨论了它们的性能。
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