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Online Classification of Multiple Motor Imagery Tasks Using Filter Bank Based Maximum-a-Posteriori Common Spatial Pattern Filters

机译:基于过滤器组的最大空间模式过滤器在线分类多电机图像任务

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Objective: The main objective of this paper is to propose a novel technique, called filter bank maximum a-posteriori common spatial pattern (FB-MAP-CSP) algorithm, for online classification of multiple motor imagery activities using electroencephalography (EEG) signals. The proposed technique addresses the overfitting issue of CSP in addition to utilizing the spectral information of EEG signals inside the framework of filter banks while extending it to more than two conditions.Materials and methods: The classification of motor imagery signals is based upon the detection of event-related de-synchronization (ERD) phenomena in the mu and beta rhythms of EEG signals. Accordingly, two modifications in the existing MAP-CSP technique are presented: (i) The (pre-processed) EEG signals are spectrally filtered by a bank of filters lying in the mu and beta brainwave frequency range, (ii) the framework of MAP-CSP is extended to deal with multiple (more than two) motor imagery tasks classification and the spatial filters thus obtained are calculated for each sub-band, separately. Subsequently, the most imperative features over all sub-bands are selected and un-regularized linear discriminant analysis is employed for classification of multiple motor imagery tasks.Results: Publicly available dataset (BCI Competition IV Dataset I) is used to validate the proposed method i.e. FB-MAP-CSP. The results show that the proposed method yields superior classification results, in addition to be computationally more efficient in the case of online implementation, as compared to the conventional CSP based techniques and its variants for multiclass motor imagery classification.Conclusion: The proposed FB-MAP-CSP algorithm is found to be a potential / superior method for classifying multi-condition motor imagery EEG signals in comparison to FBCSP based techniques. (C) 2019 AGBM. Published by Elsevier Masson SAS. All rights reserved.
机译:目的:本文的主要目的是提出一种新颖的技术,称为滤波器组最大A-Bouthiori常见空间模式(FB-MAP-CSP)算法,用于使用脑电图(EEG)信号的多个电动机图像活动的在线分类。所提出的技术除了利用滤波器​​组框架内的eEG信号的光谱信息之外,还解决了CSP的过度处理问题,同时将其扩展到两个以上的条件。和方法:电动机图像的分类基于检测EEG信号的MU和BETA节奏中的事件相关的去同步(ERD)现象。因此,提出了在现有地图-CSP技术中的两个修改:(i)(i)通过围绕MU和BETA脑波频率范围内的滤波器组频谱过滤(预处理)的EEG信号,(ii)地图的框架-CSP扩展到处理多个(两个以上)电机图像,分类,由此获得的空间滤波器分别计算每个子带。随后,选择所有子带的最常规特征,并且采用未定数的线性判别分析来用于多个电机图像的分类。结果:公开可用的数据集(BCI竞赛IV数据集I)用于验证所提出的方法,即FB-MAP-CSP。结果表明,与传统的CSP基于CSP技术及其变频器相比,该方法除了在线实现的情况下,该方法还产生了卓越的分类结果,除了在线实现的情况下进行较高的效率。结论:建议的FB映射与FBCSP技术的技术相比,-CSP算法是一种分类多条件电机图像EEG信号的潜在/卓越的方法。 (c)2019年AGBM。由Elsevier Masson SA出版。版权所有。

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