Empirical Mode Decomposition Coupled with Fast Fourier Transform based Feature Extraction Method for Motor Imagery Tasks Classification

Md. Nahidul Islam, N. Sulaiman, M. Rashid, Bifta Sama Bari, Md. Jahid Hasan, M. Mustafa, M. Jadin
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引用次数: 5

Abstract

Brain-Computer Interfaces (BCI) offers a robust solution to the people with disabilities and allows for creative connectivity between the user's intention and supporting tools. Different signals from the human brain, including the motor imagery, steady-state visual evoked potential, error-related potential (ErrP), motion-related potentials and P300 have been employed to design a competent BCI system. Motor imagery is commonly seen in almost every BCI system among these neural signals. This article has implemented feature extraction and feature selection techniques to classify the Electrocorticography (ECoG) motor imaging signal. The empirical mode decomposition (EMD) coupled fast Fourier transform (FFT) has been utilized as the feature extraction and recursive feature elimination (RFE) has been utilised to select the features. Finally, the extracted features have been classified using K-nearest neighbor, support vector machine and linear discriminant analysis. Two classes ECoG data from dataset I (BCI competition III) have been considered to validate the proposed method. In contrast with other state of the art techniques that employed the same dataset, the presented feature extraction and selection method significantly improve the classification accuracy (maximum achieved accuracy was 95.89% with SVM).
基于经验模态分解和快速傅立叶变换的运动图像任务特征提取方法
脑机接口(BCI)为残疾人提供了一个强大的解决方案,并允许用户的意图和支持工具之间的创造性连接。利用运动意象、稳态视觉诱发电位、错误相关电位(ErrP)、运动相关电位和P300等不同的大脑信号设计脑机接口系统。在这些神经信号中,运动意象几乎在每个脑机接口系统中都能看到。本文采用特征提取和特征选择技术对脑皮质电图(ECoG)运动成像信号进行分类。利用经验模态分解(EMD)和快速傅立叶变换(FFT)进行特征提取,并利用递归特征消除(RFE)选择特征。最后,利用k近邻、支持向量机和线性判别分析对提取的特征进行分类。考虑了来自数据集I (BCI竞争III)的两类ECoG数据来验证所提出的方法。与使用相同数据集的其他先进技术相比,所提出的特征提取和选择方法显着提高了分类精度(SVM的最大实现精度为95.89%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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