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Discrimination of EEG related to motor imagery by combined wavelet energy feature with phase synchronization feature

机译:小波能量特征与相位同步特征相结合识别与运动图像有关的脑电图

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For the problem of the EEG signals classification in Brain-computer interfaces (BCI), we proposed a method of feature extraction is that the combination of the wavelet energy feature and phase synchronization feature. In this paper EEG signals are transformed by means of discrete wavelet transform firstly, and then extracted 5 wavelet energy feature in different 5 frequency bands. We also obtained the instantaneous phase values based on Hilbert Transform, and extracted the phase synchronization feature through the method of Phase Locking Value (PLV). According to the distribution of the phase locking value in the time-domain, we obtained the best feature extracting time rage. Thus the final signal features are used as inputs for a Support Vector Machine (SVM) classifier. The result indicated the best feature extracting time rage is 4s∼7s, and the accuracy of classification is 89.4%, providing an improvement comparing with only using wavelet energy feature.
机译:针对脑机接口(BCI)中的脑电信号分类问题,提出一种特征提取的方法是将小波能量特征和相位同步特征相结合。本文首先通过离散小波变换对脑电信号进行变换,然后提取5个不同频段的5个小波能量特征。我们还基于希尔伯特变换获得了瞬时相位值,并通过锁相值方法提取了相位同步特征。根据锁相值在时域中的分布,我们获得了最佳的特征提取时间范围。因此,最终的信号特征将用作支持向量机(SVM)分类器的输入。结果表明,最佳特征提取时间为4s〜7s,分类精度为89.4%,与仅使用小波能量特征相比有较大的提高。

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