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Multiclass EEG motor-imagery classification with sub-band common spatial patterns

机译:具有子带常见空间模式的多款EEG电机图像分类

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Electroencephalogram (EEG) signal classification plays an important role to facilitate physically impaired patients by providing brain-computer interface (BCI)-controlled devices. However, practical applications of BCI make it difficult to decode motor imagery-based brain signals for multiclass classification due to their non-stationary nature. In this study, we aim to improve multiclass classification accuracy for motor imagery movement using sub-band common spatial patterns with sequential feature selection (SBCSP-SBFS) method. Filter bank having bandpass filters of different overlapped frequency cutoffs is applied to suppress the noise signals from raw EEG signals. The output of these sub-band filters is sent for feature extraction by applying common spatial pattern (CSP) and linear discriminant analysis (LDA). As all of the extracted features are not necessary for classification therefore, selection of optimal features is done by passing the extracted features to sequential backward floating selection (SBFS) technique. Three different classifiers were then trained on these optimal features, i.e., support vector machine (SVM), Naive-Bayesian Parzen-Window (NBPW), and k-Nearest Neighbor (KNN). Results are evaluated on two datasets, i.e., Emotiv Epoc and wet gel electrodes for three classes, i.e., right-hand motor imagery, left hand motor imagery, and rest state. The proposed model yields a maximum accuracy of 60.61% in case of Emotiv Epoc headset and 86.50% for wet gel electrodes. The computed accuracy shows an increase of 7% as compared to previously implemented multiclass EEG classification.
机译:脑电图(EEG)信号分类通过提供脑电器接口(BCI)控制设备来促进物理受损的患者的重要作用。然而,由于其非静止性质,BCI的实际应用使其难以解码基于电机图像的大脑信号进行多级分类。在这项研究中,我们的目的,利用具有顺序特征选择(SBCSP-SBF)方法的子带公共空间模式来提高电动机图像运动的多款分类精度。应用具有不同重叠频率截止的带通滤波器的滤波器组以抑制来自原始EEG信号的噪声信号。通过应用公共空间模式(CSP)和线性判别分析(LDA)来发送这些子带滤波器的输出。由于所有提取的特征是对分类所必需的,因此,通过将提取的特征传递到顺序向后浮动选择(SBFS)技术来完成最佳特征的选择。然后在这些最佳特征中培训三种不同的分类器,即支持向量机(SVM),天真贝叶斯百窗(NBPW)和K最近邻(KNN)。结果是在两个数据集,即Softiv Epoc和湿凝胶电极上进行评估,即三类,即右手电机图像,左手电机图像和休息状态。在Emotiv Epoc耳机的情况下,所提出的型号在60.61%的情况下产生60.61%,湿凝胶电极86.50%。与先前实现的多字符EEG分类相比,计算的精度显示增加7%。

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