Machine Learning for removing EEG artifacts: Setting the benchmark

Roy, Subhrajit

arXiv.org Machine Learning 

Electroencephalograms (EEG) are often contaminated by artifacts which make interpreting them more challenging for clinicians. Hence, automated artifact recognition systems have the potential to aid the clinical workflow. In this abstract, we share the first results on applying various machine learning algorithms to the recently released world's largest open-source artifact recognition dataset. We envision that these results will serve as a benchmark for researchers who might work with this dataset in future. Introduction Removal of artifacts from electroencephalogram (EEG) is a necessary step in analyzing EEG signals since artifacts can lead to severe misinterpretation of these signals. However, manual removal of artifacts requires trained clinicians or neurophysiologists and is a procedure that is known to be both time and resource hungry.

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