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基于脑电图的脑机接口中用于特征提取的幅度和相位耦合测量方法。

Amplitude and phase coupling measures for feature extraction in an EEG-based brain-computer interface.

作者信息

Wei Qingguo, Wang Yijun, Gao Xiaorong, Gao Shangkai

机构信息

Department of Electronic Engineering, School of Information Engineering, Nanchang University, Nanchang 330031, People's Republic of China.

出版信息

J Neural Eng. 2007 Jun;4(2):120-9. doi: 10.1088/1741-2560/4/2/012. Epub 2007 Mar 28.

Abstract

Most of the feature extraction methods in existing brain-computer interfaces (BCIs) are based on the dynamic behavior of separate signals, without using the coupling information between different brain regions. In this paper, amplitude and phase coupling measures, quantified by a nonlinear regressive coefficient and phase locking value respectively, were used for feature extraction. The two measures were based on three different coupling methods determined by neurophysiological a priori knowledge, and applied to a small number of electrodes of interest, leading to six feature vectors for classification. Five subjects participated in an online BCI experiment during which they were asked to imagine a movement of either the left or right hand. The electroencephalographic (EEG) recordings from all subjects were analyzed offline. The averaged classification accuracies of the five subjects ranged from 87.4% to 92.9% for the six feature vectors and the best classification accuracies of the six feature vectors ranged between 84.4% and 99.6% for the five subjects. The performance of coupling features was compared with that of the autoregressive (AR) feature. Results indicated that coupling measures are appropriate methods for feature extraction in BCIs. Furthermore, the combination of coupling and AR feature can effectively improve the classification accuracy due to their complementarities.

摘要

现有的脑机接口(BCI)中的大多数特征提取方法都是基于单独信号的动态行为,而没有利用不同脑区之间的耦合信息。在本文中,分别由非线性回归系数和锁相值量化的幅度和相位耦合度量被用于特征提取。这两种度量基于由神经生理学先验知识确定的三种不同耦合方法,并应用于少数感兴趣的电极,从而产生六个用于分类的特征向量。五名受试者参与了一项在线BCI实验,在此期间,他们被要求想象左手或右手的运动。对所有受试者的脑电图(EEG)记录进行了离线分析。对于这六个特征向量,五名受试者的平均分类准确率在87.4%至92.9%之间,对于这五名受试者,六个特征向量的最佳分类准确率在84.4%至99.6%之间。将耦合特征的性能与自回归(AR)特征的性能进行了比较。结果表明,耦合度量是BCI中特征提取的合适方法。此外,由于耦合特征和AR特征具有互补性,它们的组合可以有效提高分类准确率。

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