基于小波方差和Fisher线性判别分析的皮质电图分类

Shiyu Yan, Hong Wang, Chong Liu, Haibin Zhao
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引用次数: 3

摘要

针对典型的脑机接口(BCI)系统,提出了一种基于小波分析和Fisher线性判别分析的模式识别算法。首先,在研究小波理论的基础上,针对小波包变换中存在的频带交错现象,提出了一种新的eeg信号特征提取方法——小波方差(WV)或小波包方差(WPV),并给出了小波方差/小波包方差的计算方法;然后,从64个通道中选取6个最重要通道的wv和wpv作为特征进行分析,对ECoG数据进行三层分解,根据ERD/ERS现象提取含有Mu节奏和Beta节奏的wv和wpv作为最终特征;最后在ECoG数据的最优区间用FLDA对最终特征进行分类。结果表明,该方法对测试数据的最大准确率可达92%,小波方差和小波包方差均可作为eeg的有效特征。
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Electrocorticogram classification based on wavelet variance and Fisher linear discriminant analysis
For a typical electrocorticogram(ECoG)-based brain-computer interface(BCI) system, a pattern recognition algorithm using wavelet analysis and Fisher linear discriminant analysis(FLDA) was proposed. Firstly, based on studying wavelet theory, a novel feature extraction method in ECoG signal processing namely wavelet variance(WV) or wavelet packet variance(WPV) was proposed considering the band interlacing phenomenon in wavelet packet transform, and the computing method of WV/WPV was brought out; then, taken as feature, the WVs and WPVs of 6 most important channels were selected from 64 channels for analysis, consequently the ECoG data were three-layer decomposed, the WVs and WPVs containing Mu rhythm and Beta rhythm were taken out as final features based on ERD/ERS phenomenon; finally the final features were classified with FLDA in optimum-intervals of the ECoG data. The results showed that the max accuracy for test data was 92%, wavelet variance and wavelet packet variance could be taken as efficient features for ECoG.
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