Concepedia

Abstract

A major issue in electroencephalogram (EEG)-based brain-computer interfaces (BCIs) is the intrinsic nonstationarities in the brain waves, which may degrade the performance of the classifier, while transitioning from calibration to feedback generation phase. The nonstationary nature of the EEG data may cause its input probability distribution to vary over time, which often appear as a covariate shift. To adapt to the covariate shift, we had proposed an adaptive learning method in our previous work and tested it on offline standard datasets. This paper presents an online BCI system using previously developed covariate shift detection (CSD)-based adaptive classifier to discriminate between mental tasks and generate neurofeedback in the form of visual and exoskeleton motion. The CSD test helps prevent unnecessary retraining of the classifier. The feasibility of the developed online-BCI system was first tested on ten healthy individuals, and then on ten stroke patients having hand disability. A comparison of the proposed online CSD-based adaptive classifier with conventional nonadaptive classifier has shown a significantly (p <; 0.01) higher classification accuracy in both the cases of healthy and patient groups. The results demonstrate that the online CSD-based adaptive BCI system is superior to the nonadaptive BCI system and it is feasible to be used for actuating hand exoskeleton for the stroke-rehabilitation applications.

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