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Classification of multichannel EEG patterns using parallel hidden Markov models.

机译:使用并行隐马尔可夫模型对多通道脑电图模式进行分类。

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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.
机译:针对多通道脑电图(EEG)模式分类问题,提出了一种基于并行隐式马尔可夫模型(PHMM)的方法。该方法基于使用HMM的并行组合的EEG信号的多通道表示,其中每个模型代表一个特定的通道。使用人工EEG数据库和两个真实的EEG数据库研究了所提出算法的性能:一个在计算机屏幕光标(db Ia)的手向上和向下运动的成像任务期间引发的两类EEG的数据库,以及一个在反馈调节左右运动成像任务期间引起的两类感觉运动脑电图的数据库(数据库III)。结果表明,该算法优于其他常用方法,对db Ia和db III的分类率分别提高了2%和10%。另外,当两个分类器利用相同的特征集时,所提出的方法优于具有线性核的支持向量机分类器。结果还表明,由于模型架构可以更好地对EEG组件的时间顺序建模,因此其模型架构包括无跳跃,从左到右的方案,五个状态和三个高斯,其性能优于其他经过测试的架构。 。

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