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基于小波包分析的意识任务特征提取与分类
引用本文:薛建中,和卫星,闫相国,郑崇勋.基于小波包分析的意识任务特征提取与分类[J].生物医学工程学杂志,2004,21(3):397-400.
作者姓名:薛建中  和卫星  闫相国  郑崇勋
作者单位:西安交通大学,生物医学工程研究所,西安,710049
摘    要:将基于小波包变换的多尺度分析方法应用于自发脑电 (EEG)的特征提取。在对 3种意识任务的脑电信号进行多级小波包分解的基础上 ,将不同尺度空间的能量信号作为特征值 ,组成不同意识任务的特征向量 ,并利用径向基函数神经网络进行分类测试。结果表明 ,小波包变换方法的分类正确率高于自回归模型方法。小波包分析方法可以作为不同意识任务脑电信号特征提取的一种新方法 ,具有较强的稳定性

关 键 词:小波包分析  意识任务  脑电(EEG)

Feature Extraction and Classification of EEG for Mental Tasks Based on Wavelet Packet Analysis
Xue Jianzhong,He Weixing,Yan Xiangguo,Zheng Chongxun.Feature Extraction and Classification of EEG for Mental Tasks Based on Wavelet Packet Analysis[J].Journal of Biomedical Engineering,2004,21(3):397-400.
Authors:Xue Jianzhong  He Weixing  Yan Xiangguo  Zheng Chongxun
Institution:Institute of Biomedical Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
Abstract:This paper explores the use of wavelet packet analysis to extract features from spontaneous electroencephalogram (EEG) during three different mental tasks. Artifact-free EEG segments are transformed to multi-scale representations by dyadic wavelet packet decomposition channel by channel. Their feature vectors formed by energy values of different sub-spaces EEG components are used as inputs of a radial basis function network to test the classification accuracies of three task pairs. The results indicate that the classification accuracies of the wavelet packet analysis method are significantly better than those of autoregressive model method. Wavelet packet analysis would be a promising method to extract features from EEG signals.
Keywords:Wavelet packet analysis    Mental task    Electroencephalogram (EEG)  
本文献已被 CNKI 维普 万方数据 等数据库收录!
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