Self-Paced Movement Intention Recognition from EEG Signals During Upper Limb Robot-Assisted Rehabilitation

Luis Guillermo Hernandez Rojas1, Javier M. Antelis2

  • 1Tecnologico de Monterrey
  • 2University of Zaragoza

Details

16:30 - 18:30 | Thu 21 Mar | Grand Ballroom B | ThPO.18

Session: Poster Session I

Abstract

Currently, one of the challenges in EEG-based brain-computer interfaces (BCI) for neurorehabilitation is the recognition of the intention to perform different movements from same limb. This would allow finer control of neurorehabilitation and motor recovery devices by end-users [1]. To address this issue, we assess the feasibility of recognizing two self-paced movement intention of the right upper limb plus a rest state from EEG signals recorded during robot-assisted rehabilitation therapy. In addition, the work proposes the use of Multi-CSP features and deep learning classifiers to recognize movement intentions of the same limb. The results showed performance peaked greater at (80%) using a novel classification models implemented in a multiclass classification scenario. On the basis of these results, the decoding of the movement intention could potentially be used to develop more natural and intuitive robot assisted neurorehabilitation therapies.