International Journal on Smart Sensing and Intelligent Systems, Volume 14, Issue 1, Pages 1-10 , 01/02/2021
A face-machine interface utilizing EEG artifacts from a neuroheadset for simulated wheelchair control
Abstract
Many people suffer from movement disabilities and would benefit from an assistive mobility device with practical control. This paper demonstrates a face-machine interface system that uses motion artifacts from electroencephalogram (EEG) signals for mobility enhancement in people with quadriplegia. We employed an Emotiv EPOC X neuroheadset to acquire EEG signals. With the proposed system, we verified the preprocessing approach, feature extraction algorithms, and control modalities. Incorporating eye winks and jaw movements, an average accuracy of 96.9% across four commands was achieved. Moreover, the online control results of a simulated power wheelchair showed high efficiency based on the time condition. The combination of winking and jaw chewing results in a steering time on the same order of magnitude as that of joystickbased control, but still about twice as long. We will further improve the efficiency and implement the proposed face-machine interface system for a real-power wheelchair.
Document Type
Article
Source Type
Journal
Keywords
EEG artifactsFace-machine interfaceHuman-computer interactionNeuroheadsetSimulated wheelchair
ASJC Subject Area
Engineering : Electrical and Electronic EngineeringEngineering : Control and Systems Engineering
Funding Agency
Walailak University