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一种用于多类运动识别的新型判别式多滤波器组切线空间映射方法

A New - Discriminative and Multi- Filter Bank Tangent Space Mapping Method for Recognition of Multiclass Motor .

作者信息

Wu Fan, Gong Anmin, Li Hongyun, Zhao Lei, Zhang Wei, Fu Yunfa

机构信息

Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming, China.

Brain Cognition and Brain-Computer Intelligence Fusion Innovation Group, Kunming University of Science and Technology, Kunming, China.

出版信息

Front Hum Neurosci. 2021 Mar 8;15:595723. doi: 10.3389/fnhum.2021.595723. eCollection 2021.

Abstract

Tangent Space Mapping (TSM) using the geometric structure of the covariance matrices is an effective method to recognize multiclass motor imagery (MI). Compared with the traditional CSP method, the Riemann geometric method based on TSM takes into account the nonlinear information contained in the covariance matrix, and can extract more abundant and effective features. Moreover, the method is an unsupervised operation, which can reduce the time of feature extraction. However, EEG features induced by MI mental activities of different subjects are not the same, so selection of subject-specific discriminative EEG frequency components play a vital role in the recognition of multiclass MI. In order to solve the problem, a discriminative and multi-scale filter bank tangent space mapping (DMFBTSM) algorithm is proposed in this article to design the subject-specific Filter Bank (FB) so as to effectively recognize multiclass MI tasks. On the 4-class BCI competition IV-2a dataset, first, a non-parametric method of multivariate analysis of variance (MANOVA) based on the sum of squared distances is used to select discriminative frequency bands for a subject; next, a multi-scale FB is generated according to the range of these frequency bands, and then decompose multi-channel EEG of the subject into multiple sub-bands combined with several time windows. Then TSM algorithm is used to estimate Riemannian tangent space features in each sub-band and finally a liner Support Vector Machines (SVM) is used for classification. The analysis results show that the proposed discriminative FB enhances the multi-scale TSM algorithm, improves the classification accuracy and reduces the execution time during training and testing. On the 4-class BCI competition IV-2a dataset, the average session to session classification accuracy of nine subjects reached 77.33 ± 12.3%. When the training time and the test time are similar, the average classification accuracy is 2.56% higher than the latest TSM method based on multi-scale filter bank analysis technology. When the classification accuracy is similar, the training speed is increased by more than three times, and the test speed is increased two times more. Compared with Supervised Fisher Geodesic Minimum Distance to the Mean (Supervised FGMDRM), another new variant based on Riemann geometry classifier, the average accuracy is 3.36% higher, we also compared with the latest Deep Learning method, and the average accuracy of 10-fold cross validation improved by 2.58%. Research shows that the proposed DMFBTSM algorithm can improve the classification accuracy of MI tasks. Compared with the MFBTSM algorithm, the algorithm proposed in this article is expected to select frequency bands with good separability for specific subject to improve the classification accuracy of multiclass MI tasks and reduce the feature dimension to reduce training time and testing time.

摘要

利用协方差矩阵的几何结构进行切空间映射(TSM)是一种识别多类运动想象(MI)的有效方法。与传统的共空间模式(CSP)方法相比,基于TSM的黎曼几何方法考虑了协方差矩阵中包含的非线性信息,能够提取更丰富有效的特征。此外,该方法是一种无监督操作,可以减少特征提取时间。然而,不同受试者的MI心理活动诱发的脑电特征不尽相同,因此选择特定于受试者的具有判别力的脑电频率成分在多类MI识别中起着至关重要的作用。为了解决这个问题,本文提出了一种判别性多尺度滤波器组切空间映射(DMFBTSM)算法,以设计特定于受试者的滤波器组(FB),从而有效地识别多类MI任务。在四类BCI竞赛IV-2a数据集上,首先,使用基于平方距离之和的非参数多变量方差分析(MANOVA)方法为一个受试者选择具有判别力的频段;接下来,根据这些频段的范围生成多尺度FB,然后结合几个时间窗口将受试者的多通道脑电分解为多个子带。然后使用TSM算法估计每个子带中的黎曼切空间特征,最后使用线性支持向量机(SVM)进行分类。分析结果表明,所提出的判别性FB增强了多尺度TSM算法,提高了分类准确率,并减少了训练和测试期间的执行时间。在四类BCI竞赛IV-2a数据集上,九名受试者的平均逐节分类准确率达到77.33±12.3%。当训练时间和测试时间相近时,平均分类准确率比基于多尺度滤波器组分析技术的最新TSM方法高2.56%。当分类准确率相近时,训练速度提高了三倍多,测试速度提高了两倍多。与另一种基于黎曼几何分类器的新变体——监督费希尔测地线到均值的最小距离(Supervised FGMDRM)相比,平均准确率高3.36%,我们还与最新的深度学习方法进行了比较,10折交叉验证的平均准确率提高了2.58%。研究表明,所提出的DMFBTSM算法可以提高MI任务的分类准确率。与MFBTSM算法相比,本文提出的算法有望为特定受试者选择具有良好可分性的频段,以提高多类MI任务的分类准确率,并降低特征维度以减少训练时间和测试时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8c2e/7982728/eb2f2e481660/fnhum-15-595723-g001.jpg

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