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使用优化小波的脑机接口中的听觉和空间导航意象

Auditory and spatial navigation imagery in Brain-Computer Interface using optimized wavelets.

作者信息

Cabrera Alvaro Fuentes, Dremstrup Kim

机构信息

Centre for Motor-Sensory Interaction (SMI), Department of Health Science and Technology, Aalborg University, Aalborg, Denmark.

出版信息

J Neurosci Methods. 2008 Sep 15;174(1):135-46. doi: 10.1016/j.jneumeth.2008.06.026. Epub 2008 Jul 6.

DOI:10.1016/j.jneumeth.2008.06.026
PMID:18656500
Abstract

Features extracted with optimized wavelets were compared with standard methods for a Brain-Computer Interface driven by non-motor imagery tasks. Two non-motor imagery tasks were used, Auditory Imagery of a familiar tune and Spatial Navigation Imagery through a familiar environment. The aims of this study were to evaluate which method extracts features that could be best differentiated and determine which channels are best suited for classification. EEG activity from 18 electrodes over the temporal and parietal lobes of nineteen healthy subjects was recorded. The features used were autoregressive and reflection coefficients extracted using autoregressive modeling with several model orders and marginals of the wavelet spaces generated by the Discrete Wavelet Transform (DWT). An optimization algorithm with 4 and 6 taps filters and mother wavelets from the Daubechies family were used. The classification was performed for each single channel and for all possible combination of two channels using a Bayesian Classifier. The best classification results were found using the marginals of the Optimized DWT spaces for filters with 6 taps in a 2 channels classification basis. Classification using 2 channels was found to be significantly better than using 1 channel (p<<0.01). The marginals of the optimized DWT using 6 taps filters showed to be significantly better than the marginals of the Daubechies family and autoregressive coefficients. The influence of the combination of number of channels and feature extraction method over the classification results was not significant (p=0.97).

摘要

将通过优化小波提取的特征与用于由非运动想象任务驱动的脑机接口的标准方法进行了比较。使用了两个非运动想象任务,即熟悉曲调的听觉想象和在熟悉环境中的空间导航想象。本研究的目的是评估哪种方法提取的特征最易于区分,并确定哪些通道最适合分类。记录了19名健康受试者颞叶和顶叶上18个电极的脑电图活动。所使用的特征是通过自回归建模提取的自回归系数和反射系数,该自回归建模采用了几种模型阶数以及离散小波变换(DWT)生成的小波空间的边缘。使用了具有4抽头和6抽头滤波器以及来自Daubechies族的母小波的优化算法。使用贝叶斯分类器对每个单通道以及两个通道的所有可能组合进行分类。在两通道分类基础上,对于6抽头滤波器,使用优化DWT空间的边缘获得了最佳分类结果。发现使用两通道进行分类明显优于使用单通道(p<<0.01)。使用6抽头滤波器的优化DWT的边缘显示明显优于Daubechies族的边缘和自回归系数。通道数量和特征提取方法的组合对分类结果的影响不显著(p = 0.97)。

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