3.8 Proceedings Paper

EEG ARTIFACT REMOVAL BASED ON BRAIN DIPOLES' REGIONS USING ICA AND DIPFIT IN MOTOR IMAGERY TASKS

Publisher

IEEE
DOI: 10.1109/ICBME57741.2022.10052870

Keywords

BSS; DIPFIT Plug-in; EEG; ICA; Motor Imagery; Semi-Automatic EEG Artifact Removal

Funding

  1. Isfahan University of Medical Sciences [2400208]

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This article proposes a new semi-automatic method for removing EEG artifacts to improve system performance. The method utilizes reference clusters and a blind source separation algorithm to eliminate artifacts. Experimental results show promising performance improvement.
In this article, a new semi-automatic Electroencephalogram (EEG) artifact removal has been proposed for Motor Imagery (MI) tasks to improve the system performance. There are eight reference clusters whose locations have been calculated based on the precise coordinates of a copious amount of brain dipoles acquired from a large number of users performing MI tasks. In this method, called 8 Ref-Clusters, a kind of Blind Source Separation (BSS) algorithm along with the DIPFIT plugin of the EEGLAB platform take on a decisive role. These eight clusters demonstrate which dipoles are brain sources and which ones are artifacts to eliminate. In the case of improving the performance of a system for a particular subject, we defined a specific threshold that could alter the size of clusters in three dimensions. The elaborate threshold pointed out above is unquestionably user-dependent. Having made a comparison between results before and after applying the 8-Ref-Clusters on the BCI-Competition IV 2a datasets, the average performance increased by roughly 4% which is promising when the datasets used in these evaluations had been filtered, between 8 and 30 Hz, only before applying Independent Component Analysis (ICA). Making a comparison between the results of the proposed method and those of other CSP-based methods shows that applying the proposed artifact removal only before CSP can significantly enhance the performance of the system at about 15.6%, in the case of the mCSP method. All in all, the proposed artifact removal method is a semi-automatic method that is computationally fast and able to detect the various types of artifacts like a heartbeat, muscle and head movements, eye blink, line noise, and so on.

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