Low-Rank + Sparse Decomposition (LR+SD) for EEG Artifact Removal
Jerome Gilles, Travis Meyer, Pamela K. Douglas

TL;DR
This paper introduces a low-rank plus sparse decomposition algorithm to automatically remove residual noise from EEG signals in concurrent EEG-fMRI recordings, improving signal clarity and enabling better analysis of brain activity.
Contribution
The paper presents a novel LR+SD method for EEG artifact removal that effectively separates true EEG signals from noise in both experimental and simulated data.
Findings
Recovered true EEG signals and alpha power diminution after artifact removal.
Increased signal-to-noise ratio by approximately 34% compared to ICA.
Successfully separated multiple EEG sources from artifacts in simulated data.
Abstract
Concurrent EEG-fMRI recordings are advantageous over serial recordings, as they offer the ability to explore the relationship between both signals without the compounded effects of nonstationarity in the brain. Nonetheless, analysis of simultaneous recordings is challenging given that a number of noise sources are introduced into the EEG signal even after MR gradient artifact removal with balistocardiogram artifact being highly prominent. Here, we present an algorithm for automatically removing residual noise sources from the EEG signal in a single process using low rank + sparse decomposition (LR+SD). We apply this method to both experimental and simulated EEG data, where in the latter case the true EEG signature is known. The experimental data consisted of EEG data collected concurrently with fMRI (EEG-fMRI) as well as alone outside the scanning environment while subjects viewed Gabor…
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Taxonomy
TopicsBlind Source Separation Techniques · EEG and Brain-Computer Interfaces · Sparse and Compressive Sensing Techniques
