Motor-imagery EEG signal decoding using multichannel-empirical wavelet transform for brain computer interfaces

Ilaria Siviero, L. Brusini, G. Menegaz, S. Storti
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引用次数: 2

Abstract

Motor-imagery (MI) electroencephalography (EEG) signal decomposition is an emerging technique for improving the performance of brain computer interfaces (BCIs), We proposed a multichannel-empirical wavelet transform (EWT) representation combined with a scattering convolution network (SCN) to efficiently decode the brain activity and extract relevant wave patterns for MI-based BCI. Two different preprocessing steps were tested: the first (PM1) included a bandpass Butterworth filter (1–40 Hz) and the independent component analysis (ICA), the second one (PM2) consisted only of a bandpass Butterworth filter (8–30 Hz). A binary support vector machine (SVM) classifier was used and the performance was evaluated in terms of classification accuracy. The proposed framework was assessed using the BCI competition IV dataset IIa, which contains EEG from 9 healthy subjects. PMI presented a maximum mean accuracy over all subjects of 82.05% in the classification of the tongue and the left-hand MI tasks. PM2 achieved an average accuracy over all subjects of 88.40% and a standard deviation of 3.01 outperforming other state of the art methods in classifying right-hand and left-hand MI tasks. Finally, we observed that the best channels, intended as the channels holding the highest discrimination power between two MI tasks, were highly subject-specific and thus enabling task-based channel selection is crucial.
基于多通道经验小波变换的脑机接口运动图像脑电信号解码
运动图像(MI)脑电图(EEG)信号分解是一种提高脑机接口(BCI)性能的新兴技术,我们提出了一种结合散射卷积网络(SCN)的多通道经验小波变换(EWT)表示,以有效地解码脑活动并提取相关波型。测试了两种不同的预处理步骤:第一个(PM1)包括一个带通巴特沃斯滤波器(1-40 Hz)和独立分量分析(ICA),第二个(PM2)只包括一个带通巴特沃斯滤波器(8-30 Hz)。采用二值支持向量机(SVM)分类器,并从分类精度方面对其性能进行了评价。使用BCI competition IV数据集IIa对所提出的框架进行了评估,该数据集包含9名健康受试者的脑电图。PMI在舌头和左手MI任务分类上的最高平均准确率为82.05%。PM2在所有受试者中的平均准确率为88.40%,标准偏差为3.01,优于其他最先进的右手和左手MI任务分类方法。最后,我们观察到,作为两个人工智能任务之间具有最高辨别能力的通道,最佳通道具有高度的主题特异性,因此能够基于任务的通道选择至关重要。
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