Wang Fei, Xu Zongfeng, Zhang Weiwei, Wu Shichao, Zhang Yahui, Ping Jingyu, Wu Chengdong
Faculty of Robot Science and Engineering, Northeastern University, No. 195, Innovation Road, Hunnan District, Shenyang, People's Republic of China.
College of Information Science and Engineering, Northeastern University, No. 3-11, Wenhua Road, Heping District, Shenyang, People's Republic of China.
Rev Sci Instrum. 2020 Mar 1;91(3):034106. doi: 10.1063/1.5142343.
In recent years, Brain Computer Interface (BCI) based on motor imagery has been widely used in the fields of medicine, active safe systems for automobiles, entertainment, and so on. Motor imagery relevant electroencephalogram (EEG) signals are weak, nonlinear, and susceptible to interference. As a feature extraction method for motor imagery, Common Spatial Pattern (CSP) has been proven to be very effective. However, its effectiveness depends heavily on the choice of frequency bands, and Euclidean space cannot effectively describe the inner relationship. To solve these problems, a classification approach for motor imagery using the Geodesic Filtering Common Spatial Pattern (GFCSP) and filter-bank Feature Weighted Support Vector Machine (FWSVM) is presented. First, GFCSP based on the Riemannian manifold is proposed, in which the extracted covariance features are spatially filtered in Riemannian tangent space, and the average covariance matrix is replaced by Riemannian mean in CSP. Second, filter-bank FWSVM with a feature weighted matrix is proposed. EEG signals are filtered into 8-12 Hz, 12-16 Hz, 18-22 Hz, 22-26 Hz, and a wide band of 8-24 Hz, and GFCSP features of these filtered signals are extracted. A feature weighted matrix is calculated using mutual information and the Pearson correlation coefficient from these features and class information. Then, the Support Vector Machine (SVM) is used for classification with the feature weighted matrix. Finally, the proposed method is validated on the dataset IVa in BCI competition III. Classification accuracies of the five subjects are 92.31%, 99.03%, 80.36%, 96.30%, and 97.67%, which demonstrate the effectiveness of our proposed method.
近年来,基于运动想象的脑机接口(BCI)已广泛应用于医学、汽车主动安全系统、娱乐等领域。与运动想象相关的脑电图(EEG)信号微弱、非线性且易受干扰。作为一种运动想象的特征提取方法,共同空间模式(CSP)已被证明非常有效。然而,其有效性在很大程度上取决于频段的选择,并且欧几里得空间无法有效地描述内在关系。为了解决这些问题,提出了一种使用测地线滤波共同空间模式(GFCSP)和滤波器组特征加权支持向量机(FWSVM)的运动想象分类方法。首先,提出了基于黎曼流形的GFCSP,其中提取的协方差特征在黎曼切空间中进行空间滤波,并且在CSP中用黎曼均值代替平均协方差矩阵。其次,提出了具有特征加权矩阵的滤波器组FWSVM。EEG信号被滤波为8 - 12Hz、12 - 16Hz、18 - 22Hz、22 - 26Hz以及8 - 24Hz的宽带,然后提取这些滤波后信号的GFCSP特征。使用互信息和这些特征与类别信息之间的皮尔逊相关系数计算特征加权矩阵。然后,使用支持向量机(SVM)结合特征加权矩阵进行分类。最后,在脑机接口竞赛III的数据集IVa上对所提出的方法进行验证。五个受试者的分类准确率分别为92.31%、99.03%、80.36%、96.30%和97.67%,这证明了我们所提方法的有效性。