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EEG-based motor imagery classification using wavelet coefficients and ensemble classifiers

机译:基于小波系数和集成分类器的基于EEG的运动图像分类

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摘要

Brain-computer interface (BCI) is a system that captures and decodes electroencephalogram (EEG) signals and transforms human thoughts into actions. To achieve this goal, using classification algorithms are most popular approach. However, classification of EEG signals can be categorized in complex problems because of high nonlinearity, high dimensionality, poor signal to noise ratio and poor spatial resolution. Combining classifiers is an approach to improve the performance of complex problems. In this article we studied the application of combining classifiers based on wavelet features to improve the performance of EEG signal classification in BCI systems. Three normal subjects K3b, K6b and L1b were asked to perform imaginary movements of left hand, right hand, tongue and foot during predefined time interval. EEG signals were decomposed into wavelet coefficients by discrete wavelet transform and used as feature vectors, presenting them into classifiers. Four combining classifiers were used to evaluate the EEG signals. Experimental results show that wavelet transform is an appropriate tool for the analyzing EEG signals. Also, according to the results of the experiments, mixture of experts overcomes the other used combining methods.
机译:脑机接口(BCI)是一个捕获并解码脑电图(EEG)信号并将人类思想转化为行动的系统。为了实现这个目标,使用分类算法是最流行的方法。然而,由于高非线性,高维数,不良信噪比和不良空间分辨率,EEG信号的分类可以归类为复杂问题。组合分类器是一种改善复杂问题性能的方法。在本文中,我们研究了基于小波特征的组合分类器在BCI系统中提高EEG信号分类性能的应用。要求三个正常对象K3b,K6b和L1b在预定的时间间隔内执行左手,右手,舌头和脚的假想运动。通过离散小波变换将脑电信号分解为小波系数,并将其用作特征向量,将其呈现给分类器。四个组合分类器用于评估脑电信号。实验结果表明,小波变换是分析脑电信号的合适工具。而且,根据实验结果,专家的混合克服了其他使用的合并方法。

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