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Subject dependent feature extraction method for motor imagery based BCI using multivariate empirical mode decomposition

机译:基于多元经验模态分解的基于运动图像的BCI主题依赖特征提取方法

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Extracting efficient features is an important stage in Brain Computer Interface (BCI). In motor imagery (MI) based BCI, features that characterize ERS/ERD phenomenon could favor the discriminant of different kinds of MI tasks. Common Spatial Pattern (CSP), a spatial filtering method which is often used in MI-EEG feature extraction, shows outstanding performance due to its effectiveness in maximizing the difference of variance between each class. But one of the shortcomings of CSP is that performance is greatly affected by the frequency of the signal, because the variances can be used to discriminate each class only by processing those task related frequency bands. However, individual differences existed in EEG is an obstacle for CSP. Although MI related frequency bands focus on mu and beta rhythms, for every subject, the distinguishing bands could be different. In this paper, a novel feature extraction method (Subject Dependent Multivariate Empirical Mode Decomposition, SD-MEMD) for MI based BCI is proposed, it utilizes MEMD algorithm to decompose the multi-channel EEG into a set of Intrinsic Mode Functions (IMFs), each IMF represents an inherent oscillation mode of the raw signal. Then an enhanced EEG is re-constructed after a careful selection of the task related IMF subset. Classification accuracy for right hand and left hand MI tasks is improved by 5.76% on our dataset.
机译:提取有效特征是脑计算机接口(BCI)的重要阶段。在基于运动图像(MI)的BCI中,表征ERS / ERD现象的特征可能有助于区分不同类型的MI任务。通用空间模式(CSP)是一种在MI-EEG特征提取中经常使用的空间滤波方法,由于其在最大化每个类之间的方差差异方面的有效性,因此表现出出色的性能。但是CSP的缺点之一是性能受信号频率的影响很大,因为方差只能通过处理那些与任务相关的频带来区分每个类别。但是,脑电图中存在的个体差异是CSP的障碍。尽管MI相关的频带专注于mu和beta节奏,但对于每个对象,区分频带可能会有所不同。本文提出了一种新的基于MI的BCI特征提取方法(对象相关多元经验模态分解SD-MEMD),它利用MEMD算法将多通道EEG分解为一组固有模式函数(IMF),每个IMF代表原始信号的固有振荡模式。然后,在仔细选择与任务相关的IMF子集后,将重建增强的EEG。在我们的数据集上,左右手MI任务的分类精度提高了5.76%。

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