Home /Research /Mobile robot control based on noninvasive brain-computer interface using hierarchical classifier of imagined motor commands
LEARNING

Mobile robot control based on noninvasive brain-computer interface using hierarchical classifier of imagined motor commands

Filipp Gundelakh, Lev Stankevich, Konstantin Sonkin

Year
2018
Citations
7
Access
Open access

Abstract

The study describes approaches of direct and supervisor control of a mobile robot based on a non-invasive brain-computer interface. An interface performs electroencephalographic signal decoding, which includes several steps: filtering, artefact detection, feature extraction, and classification. In this study, a classifier with hierarchical structure was developed and applied. Description of a committee of classifiers based on neural networks and support vector machines is given. The developed classifier demonstrated accuracy 50 ± 5% of single trial decoding of four classes of imaginary fine movements. Prospects of using non-invasive brain-computer interface for control of mobile robots was described. Key applications of the system are maintenance of immobilized patients and rehabilitation procedures both in clinic and at home.

Keywords

Brain–computer interfaceComputer scienceClassifier (UML)Support vector machineSupervisorRobotArtificial intelligenceDecoding methodsArtificial neural networkFeature extraction

Related papers

Browse all LEARNING papers