A SVM based classification of EEG for predicting the movement intent of human body

Kaiyang Li, Xiaodong Zhang, Yuhuan Du
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引用次数: 8

Abstract

In this paper, the EEG (electroencephalograph) signal acquisition equipment is used to collect the EEG signal of human lower limb movement intention. This paper firstly analyzes α waveform and β waveform, which can most reveal the intentions of human body movement. Then, wavelet transform is used for noise removal, filter and feature extraction. This paper also has described the theory of Support Vector Machine (SVM), and one-to-one SVM method is used for the classification of EEG of six different movement patterns. Finally through the experimental verification, the validity of the proposed research method is demonstrated. The experiment has shown a better judging result, in which the average recognition rate is 78.9%.
基于支持向量机的脑电分类预测人体运动意图
本文采用脑电图信号采集设备采集人体下肢运动意图的脑电图信号。本文首先分析了最能揭示人体运动意图的α波形和β波形。然后利用小波变换进行去噪、滤波和特征提取;本文还介绍了支持向量机(SVM)的基本原理,并采用一对一的支持向量机方法对六种不同运动模式的脑电信号进行了分类。最后通过实验验证,验证了所提研究方法的有效性。实验显示了较好的判断结果,平均识别率为78.9%。
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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