The Classification of Motor Imagery EEG Signals Based on the Time-Frequency-Spatial Feature

Xin Deng, Boxian Zhang, Ke Liu, Jin Wang, Pengfei Yang, Chengxin Hu
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引用次数: 2

Abstract

The effective features of the motor imagery (MI) electroencephalogram (EEG) signals plays a significant role to improve the classification accuracy for the brain-computer interface (BCI) system. Some traditional methods usually extract the frequency or spatial features without considering the related information between different channels that would affect the classification performance. This paper proposes a new method for feature extraction of EEG signals based on the fusion of time-frequency and spatial features. At the beginning, the common spatial pattern (CSP) algorithm is adopted to extract the spatial features. Then the discrete wavelet transform (DWT) and the wavelet packet decomposition (WPD) are used to extract the µ rhythm of the motor imagery EEG signals as the time-frequency features. After that, by combining the spatial and time-frequency features, the time-frequency-spatial feature is formed. Based on different kinds of features, the experimental data are classified by using the support vector machine (SVM), as well as the sparse representation classification (SRC) algorithm with the elastomeric network (EN) and L1 norm, respectively. The experimental results show that the SRC with EN has a better performance on either the time-frequency feature or spatial feature than the SRC with L1 norm does. In contrast, the SVM and the SRC with Ll norm perform better than the SRC with EN based on the time-frequency-spatial feature. The study concludes that the time-frequency-spatial feature cooperating with the certain classifiers can achieve the good classification effect for the MI EEG signals, which not only reduces the operation time but also improves the classification accuracy.
基于时频空间特征的运动图像脑电信号分类
运动图像(MI)脑电图信号的有效特征对提高脑机接口(BCI)系统的分类精度具有重要意义。一些传统的方法通常提取频率或空间特征,而不考虑不同通道之间的相关信息,这些信息会影响分类性能。提出了一种基于时频特征和空间特征融合的脑电信号特征提取方法。首先,采用公共空间模式(CSP)算法提取空间特征。然后采用离散小波变换(DWT)和小波包分解(WPD)提取运动意象脑电信号的微节律作为时频特征。然后结合空间特征和时频特征,形成时频-空间特征。基于不同类型的特征,分别采用支持向量机(SVM)和基于弹性网络(EN)和L1范数的稀疏表示分类(SRC)算法对实验数据进行分类。实验结果表明,与L1范数相比较,EN范数相结合的信号源在时间频率特征和空间特征上都有更好的表现。相比之下,基于时频空间特征,支持向量机和带Ll范数的SRC比带EN范数的SRC表现更好。研究表明,将时频空间特征与一定的分类器配合使用,可以对MI脑电信号达到较好的分类效果,不仅减少了操作时间,而且提高了分类精度。
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