MOTOR ACTIVITY RECOGNITION USING EEG DATA AND ENSEMBLE OF STACKED BLSTM-LSTM NETWORK AND TRANSFORMER MODEL
Pallavi Kaushik (Indian Institute of Technology Roorkee); Ilina Tripathi (Thapar Institute of Engineering); Dr. Partha Pratim Roy (IIT Roorkee)
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With the rapid development of brain-computer interfaces, the
number of applications based on this technology is increasing
rapidly. This work proposes a stacked BLSTM-LSTM, EEG
Transformer, and their ensemble network to predict real-life
motor activities of individuals using EEG data. A 32 electrode
gel-based EEG recording device has been used to record brain
signals from 20 subjects while performing 17 commonly used
day-to-day motor activities. The stacked BLSTM-LSTM and
EEG Transformer networks predicted the activities with an
accuracy of 97.9%, 96.7%, respectively. The ensemble im-
proved the classification accuracy further to 98.5%, which is
a considerable improvement over the existing state-of-the-art
methods. This study also reveals that raw and delta band fre-
quencies are better in predicting the activities than other fre-
quency bands of the EEG signals. Motor activity recognition
has several applications, including rehabilitation, healthcare,
gaming, and preventing loss of lives during mitigation of fires,
diffusion of bombs, etc., via imitation robots.