Suppression of overlearning in independent component analysis used for removal of muscular artifacts from electroencephalographic records
Jan Sebek,
Radoslav Bortel and
Pavel Sovka
PLOS ONE, 2018, vol. 13, issue 8, 1-21
Abstract:
This paper addresses the overlearning problem in the independent component analysis (ICA) used for the removal of muscular artifacts from electroencephalographic (EEG) records. We note that for short EEG records with high number of channels the ICA fails to separate artifact-free EEG and muscular artifacts, which has been previously attributed to the phenomenon called overlearning. We address this problem by projecting an EEG record into several subspaces with a lower dimension, and perform the ICA on each subspace separately. Due to a reduced dimension of the subspaces, the overlearning is suppressed, and muscular artifacts are better separated. Once the muscular artifacts are removed, the signals in the individual subspaces are combined to provide an artifact free EEG record. We show that for short signals and high number of EEG channels our approach outperforms the currently available ICA based algorithms for muscular artifact removal. The proposed technique can efficiently suppress ICA overlearning for short signal segments of high density EEG signals.
Date: 2018
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pone00:0201900
DOI: 10.1371/journal.pone.0201900
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