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Short-Time Fourier Transform Covariance and Selection, A Feature Extraction Method for Binary Motor Imagery Classification

机译:短时傅里叶变换协方差和选择,一种二元电机图像分类的特征提取方法

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The brain-computer interfaces (BCI) technology is able to help dysfunctional people recover their motor functions. Electroencephalography (EEG) is an effective noninvasive method to construct BCI. Motor imagery (MI) paradigm can directly reflect the motor intention of user without additional stimulation equipment in EEG-BCI. The feature extraction methods are the key components to improve the accuracy of MI classification. Traditional feature extraction methods like CSP that only extract features in a single domain or two domains. In this study, we propose two novel feature selection method, short-time Fourier transform covariance and its selection method, which are aiming to extract spatial-time-frequency features simultaneously. In order to evaluate the proposed features, the BCI Competition IV Data Set IIb is employed to test the classification accuracy. By comparing the average accuracy of novel TSGSP method, the proposed method is more stable than TSGSP about 6% and the accuracy is just decrease about 0.5% at the same time. The average accuracy of 83.8% over all subjects is obtained. Superior classification performance results show that our proposed method has great potential, which is helpful for the further development and application of BCI technology for motor imaging in the field of neurorehabilitation.
机译:大脑 - 计算机接口(BCI)技术能够帮助功能失调人员恢复其电机功能。脑电图(EEG)是构建BCI的有效的非侵入方法。电动机图像(MI)范式可以直接反映用户的电机意向,在EEG-BCI中没有额外的刺激设备。特征提取方法是提高MI分类准确性的关键组件。传统的特征提取方法,如CSP,只能在单个域或两个域中提取特征。在本研究中,我们提出了两种新颖特征选择方法,短时傅里叶变换协方差及其选择方法,其目的是同时提取空间时频特征。为了评估所提出的功能,使用BCI竞赛IV数据集IIB来测试分类准确性。通过比较新型TSGSP方法的平均精度,所提出的方法比TSGSP更稳定,约6%,精度同时降低约0.5%。获得所有受试者的平均准确度为83.8%。卓越的分类性能结果表明,我们所提出的方法具有很大的潜力,这有助于对Neurorathitation领域的电机成像进行进一步的开发和应用。

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