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基于小波包熵的运动意识任务分类研究
引用本文:任亚莉.基于小波包熵的运动意识任务分类研究[J].生物物理学报,2008,24(3):227-231.
作者姓名:任亚莉
作者单位:陇东学院物理与电子工程学院,甘肃庆阳,745000
基金项目:甘肃省高校研究生导师科研项目
摘    要:提出了以小波包熵作为脑电特征向量的左右手运动意识任务分类方法,对被测试者想象左右手运动时的脑电小波包熵动态变化情况及分析窗口长度的选择进行了研究.结果表明,小波包熵能很好地反映左右手运动想象的脑电特征变化,用线性判别式算法对脑电特征进行识别,分类正确率达到92.14%.由于小波包熵的计算比较简单,稳定性好,识别率高,为大脑运动意识任务的分类提供了新思路.

关 键 词:脑电信号  小波包熵  特征提取  分类  小波包熵  大脑运动  意识任务  分类研究  ENTROPY  WAVELET  PACKET  BASED  HAND  CLASSIFICATION  识别率  稳定性  比较  计算  正确率  脑电特征  算法  线性判别式  特征变化  运动想象  结果
收稿时间:2007-08-30

Study on Classification of Imaginary Hand Movements Based on Wavelet Packet Entropy
REN Ya-li.Study on Classification of Imaginary Hand Movements Based on Wavelet Packet Entropy[J].Acta Biophysica Sinica,2008,24(3):227-231.
Authors:REN Ya-li
Institution:Physics and Electronic Engineering College, Longdong University, Qingyang Gansu 745000, China
Abstract:Based on wavelet packet entropy derived from EEG, a method of classification of imagining hand movements was proposed. The EEG signals have been recorded during the imagination of left or right hand movement. The wavelet packet entropy of EEG and its dynamic changing properties with respect to time and windows length have been analyzed. The event-related EEG patterns during imagining left and right hand movement were identified by using linear discriminant algorithm. The results show that the method is effective and the correct rate of classification is up to 92.14 %. Since the computation of wavelet packet entropy is simple, the result is stable, and the identification rate is high, the new method might provide a new way for the classification of mental tasks.
Keywords:EEG  Wavelet packet entropy  Characteristic extraction  Classification
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