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A Riemannian Modification of Artifact Subspace Reconstruction for EEG Artifact Handling

机译:脑电伪像处理的伪像子空间重构的黎曼修正

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摘要

Artifact Subspace Reconstruction (ASR) is an adaptive method for the online or offline correction of artifacts comprising multichannel electroencephalography (EEG) recordings. It repeatedly computes a principal component analysis (PCA) on covariance matrices to detect artifacts based on their statistical properties in the component subspace. We adapted the existing ASR implementation by using Riemannian geometry for covariance matrix processing. EEG data that were recorded on smartphone in both outdoors and indoors conditions were used for evaluation (N = 27). A direct comparison between the original ASR and Riemannian ASR (rASR) was conducted for three performance measures: reduction of eye-blinks (sensitivity), improvement of visual-evoked potentials (VEPs) (specificity), and computation time (efficiency). Compared to ASR, our rASR algorithm performed favorably on all three measures. We conclude that rASR is suitable for the offline and online correction of multichannel EEG data acquired in laboratory and in field conditions.
机译:工件子空间重建(ASR)是一种用于在线或离线校正工件的自适应方法,包括多通道脑电图(EEG)记录。它会基于协方差矩阵反复计算主成分分析(PCA),以根据伪像在成分子空间中的统计属性来检测伪像。我们通过使用黎曼几何进行协方差矩阵处理来适应现有的ASR实现。使用智能手机在室外和室内条件下记录的EEG数据进行评估(N = 27)。对原始ASR和Riemannian ASR(rASR)进行了三种性能指标的直接比较:减少眨眼(敏感性),改善视觉诱发电位(VEP)(特异性)和计算时间(效率)。与ASR相比,我们的rASR算法在这三个方面均表现出色。我们得出的结论是,rASR适合在实验室和现场条件下对多通道EEG数据进行离线和在线校正。

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