EEG motor imagery classification using deep learning approaches in naïve BCI users.

Journal: Biomedical physics & engineering express
Published Date:

Abstract

Motor Imagery (MI)-Brain Computer-Interfaces (BCI) illiteracy defines that not all subjects can achieve a good performance in MI-BCI systems due to different factors related to the fatigue, substance consumption, concentration, and experience in the use. To reduce the effects of lack of experience in the use of BCI systems (naïve users), this paper presents the implementation of three Deep Learning (DL) methods with the hypothesis that the performance of BCI systems could be improved compared with baseline methods in the evaluation of naïve BCI users. The methods proposed here are based on Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM)/Bidirectional Long Short-Term Memory (BiLSTM), and a combination of CNN and LSTM used for upper limb MI signal discrimination on a dataset of 25 naïve BCI users. The results were compared with three widely used baseline methods based on the Common Spatial Pattern (CSP), Filter Bank Common Spatial Pattern (FBCSP), and Filter Bank Common Spatial-Spectral Pattern (FBCSSP), in different temporal window configurations. As results, the LSTM-BiLSTM-based approach presented the best performance, according to the evaluation metrics of Accuracy, F-score, Recall, Specificity, Precision, and ITR, with a mean performance of 80% (maximum 95%) and ITR of 10 bits/min using a temporal window of 1.5 s. The DL Methods represent a significant increase of 32% compared with the baseline methods (< 0.05). Thus, with the outcomes of this study, it is expected to increase the controllability, usability, and reliability of the use of robotic devices in naïve BCI users.

Authors

  • Cristian D Guerrero-Mendez
    Postgraduate Program in Electrical Engineering, Federal University of Espírito Santo (UFES), Vitória, Brazil.
  • Cristian F Blanco-Diaz
    Postgraduate Program in Electrical Engineering, Federal University of Espírito Santo (UFES), Vitória, Brazil.
  • Andres F Ruiz-Olaya
    Faculty of Mechanical, Electronic and Biomedical Engineering, Antonio Nariño University (UAN), Bogotá, Colombia.
  • Alberto López-Delis
    Center of Medical Biophysics, Universidad de Oriente, Santiado de Cuba, Cuba.
  • Sebastian Jaramillo-Isaza
    Faculty of Mechanical, Electronic and Biomedical Engineering, Antonio Nariño University (UAN), Bogotá, Colombia.
  • Rafhael Milanezi Andrade
    Graduate Program in Mechanical Engineering, Federal University of Espírito Santo (UFES), Vitória, Brazil.
  • Alberto Ferreira De Souza
    Department of Informatics, Federal University of Espírito Santo (UFES), Vitória, Brazil.
  • Denis Delisle-Rodríguez
    Edmond and Lily Safra International Institute of Neurosciences, Santos Dumont Institute, 59280-000 Macaiba, Brazil.
  • Anselmo Frizera-Neto
    Postgraduate Program in Electrical Engineering, Federal University of Espirito Santo (UFES), Fernando Ferrari Av., 514, 29075-910 Vitoria, Brazil. anselmo@ele.ufes.br.
  • Teodiano F Bastos-Filho
    Postgraduate Program in Electrical Engineering, Federal University of Espírito Santo (UFES), Vitória, Brazil.