Classification of multichannel EEG patterns using parallel hidden Markov models

被引:0
作者
Dror Lederman
Joseph Tabrikian
机构
[1] Ben-Gurion University of the Negev,Department of Electrical and Computer Engineering
来源
Medical & Biological Engineering & Computing | 2012年 / 50卷
关键词
Brain–computer interface; Classification; Event-related potentials; Parallel hidden Markov model;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, a parallel hidden-Markov-model (PHMM)-based approach is proposed for the problem of multichannel electroencephalogram (EEG) patterns classification. The approach is based on multi-channel representation of the EEG signals using a parallel combination of HMMs, where each model represents a particular channel. The performance of the proposed algorithm is studied using an artificial EEG database, and two real EEG databases: a database of two classes of EEGs elicited during a task of imagery of hand upward and downward movements of a computer screen cursor (db Ia), and a database of two classes of sensorimotor EEGs elicited during a feedback-regulated left–right motor imagery task (db III). The results show that the proposed algorithm outperforms other commonly used methods with classification rate improvement of 2 and 10% for db Ia and db III, respectively. In addition, the proposed method outperforms a support vector machine classifier with a linear kernel, when both classifiers utilize the same feature set. The results also show that a model architecture which includes a left-to-right scheme with no skips, five states and three Gaussians, outperforms the other tested architectures due to the fact that it allows a better modeling of the temporal sequencing of the EEG components.
引用
收藏
页码:319 / 328
页数:9
相关论文
共 100 条
[1]  
Birbaumer N(1999)Brain-controlled spelling device for the completely paralyzed Nature 398 297-298
[2]  
Flor H(2005)A parametric feature extraction and classification strategy for brain–computer interfacing IEEE Trans Neural Syst Rehabil Eng 13 12-17
[3]  
Ghanayim N(2000)The mental prosthesis: assessing the speed of a P300-based brain–computer interface IEEE Trans Rehabil Eng 8 174-179
[4]  
Hinterberger TI(2007)Multiple channel detection of steady-state visual evoked potentials for brain–computer interfaces IEEE Trans Biomed Eng 54 742-750
[5]  
Iverson E(2005)Multichannel fusion models for the parametric classification of differential brain activity IEEE Trans Biomed Eng 52 1869-1881
[6]  
Taub B(2004)BCI competition 2003—data set IIb: support vector machines for the p300 speller paradigm IEEE Trans Biomed Eng 51 1073-1076
[7]  
Kotchoubey A(1999)Event-related desynchronization (ERD) and synchronization (ERS) during auditory information processing J New Music Res 28 257-265
[8]  
Kübler A(1991)A study on speaker adaptation of the parameters of continuous density hidden Markov models IEEE Trans Speech Signal Proc 39 806-814
[9]  
Perelmouter J(2004)BCI competition 2003—data set III: probabilistic modeling of sensorimotor μ rhythms for classification of imaginary hand movements IEEE Trans Biomed Eng 51 1077-1080
[10]  
Burke D(2007)A review of classification algorithms for EEG-based brain–computer interfaces J Neural Eng 4 1-13