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Multivariate Variational Mode Decomposition based approach for Blink Removal from EEG Signal

机译:基于多元变分模式分解的脑电信号眨眼消除方法

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Electroencephalography (EEG) signals contain ocular artifacts which degrades the overall performance of any neuro-engineering based analysis or applications like brain computer interfaces. In general, independent component analysis (ICA) is used for removing blinks. However, that requires expert intervention. This paper aims at cleaning the eye blink related artifacts automatically without any manual interventions. We propose a novel approach based on multivariate extension of variational mode decomposition (VMD), called MVMD, for the said purpose. The mode-alignment property of MVMD has been utilized to align the joint/common oscillations across multiple channels of a given single mode. The detection of blinks is found to be better in the components of MVMD over the raw EEG signal. The proposed approach is first validated on synthetically generated EEG data and then it is tested on two publicly available real EEG datasets. Results confirm usability of the proposed approach over ICA technique. An average correlation of 0.938 (±0.0221) and 0.9869 (±0.0094) are obtained for the synthetically generated and high end EEG data, respectively, in the non-blink regions. We obtained approximately 90% classification accuracy in detecting fatigue on CogBeacon dataset. This accuracy is comparable with that obtained using state of the art approach, with the added advantage of not requiring manual interventions of experts.
机译:脑电图(EEG)信号包含眼部伪影,这些伪影会降低任何基于神经工程的分析或诸如脑计算机接口之类的应用程序的整体性能。通常,使用独立成分分析(ICA)来消除闪烁。但是,这需要专家干预。本文旨在自动清洁与眨眼相关的伪影,而无需任何人工干预。为此,我们提出了一种基于变分模式分解(VMD)的多元扩展的新颖方法,称为MVMD。 MVMD的模式对齐属性已被用来对齐给定单模的多个通道之间的关节/公共振荡。发现眨眼的检测在MVMD的组件中优于原始EEG信号。首先对合成生成的EEG数据进行验证,然后对两个公开可用的真实EEG数据集进行测试。结果证实了所提出的方法在ICA技术上的可用性。在非闪烁区域,分别针对合成生成的和高端EEG数据分别获得0.938(±0.0221)和0.9869(±0.0094)的平均相关性。在CogBeacon数据集上检测疲劳时,我们获得了大约90%的分类精度。该精度与使用最新技术方法获得的精度相当,并且具有不需要专家手动干预的额外优势。

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