Analysis of MLP and DSLVQ Classifiers for EEG Signals Based Movements Identification

Y. Narayan
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引用次数: 1

Abstract

Brain-Computer Interfacing (BCI) is the latest research trend for developing the rehabilitation robotic system based on electroencephalogram (EEG) signals to make human life more comfortable. In this context, a framework was suggested to critically compare the performance of two different classification methods so that the performance of EEG signals could be improved in conjunction with Common Spatial Pattern (CSP), Independent Component Analysis (ICA) and Principal Component Analysis (PCA) approach. Further, the performance of Multilayer Perceptron Classifier (MLP) and Distinction Sensitive Learning Vector Quantization (DSLVQ) was compared with each other on a single feature accuracy scale. EEG dataset was recorded from ten healthy human subjects followed by band-pass Butterworth filtering for de-noising and ocular artifact rejection by ICA. The CSP was utilized for generating the discriminating features followed by PCA dimension reduction. After performing the all desired preprocessing steps, eight features were extracted to form the feature vector and classified by MLP and DSLVQ classifiers. The best classification accuracy of 98.75% was achieved with ten healthy subjects’ EEG datasets by exploiting the MLP method followed by the DSLVQ classifier. This study reveals that MLP classifier with PCA, CSP and ICA methods produced the best performance and able to enhance the practical implementation of various assistive robotic devices.
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基于脑电信号运动识别的MLP和DSLVQ分类器分析
脑机接口(BCI)是基于脑电图(EEG)信号的康复机器人系统的最新研究方向,旨在使人类的生活更加舒适。在此背景下,提出了一个框架来严格比较两种不同分类方法的性能,从而可以结合共同空间模式(CSP)、独立成分分析(ICA)和主成分分析(PCA)方法来提高脑电信号的性能。进一步,在单特征精度尺度上比较了多层感知器分类器(MLP)和区分敏感学习向量量化(DSLVQ)的性能。记录10名健康受试者的脑电图数据,采用带通巴特沃斯滤波去噪,并用ICA抑制眼伪影。利用CSP生成判别特征,然后进行主成分降维。在完成所有所需的预处理步骤后,提取8个特征形成特征向量,并通过MLP和DSLVQ分类器进行分类。采用MLP方法和DSLVQ分类器对10个健康受试者的脑电数据进行分类,准确率达到98.75%。本研究表明,采用PCA、CSP和ICA方法的MLP分类器产生了最好的性能,并且能够增强各种辅助机器人设备的实际实施。
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