
		<paper>
			<loc>https://jjcit.org/paper/40</loc>
			<title>MOTOR IMAGERY EEG SIGNAL PROCESSING AND CLASSIFICATION USING MACHINE LEARNING APPROACH</title>
			<doi>10.5455/jjcit.71-1512555333</doi>
			<authors>S. R. Sreeja,Debasis Samanta,Pabitra Mitra,Monalisa Sarma</authors>
			<keywords>Motor  imagery,Brain  computer  interface,Electroencephalography,Feature  extraction,Feature  selection,Machine learning.</keywords>
			<citation>76</citation>
			<views>7003</views>
			<downloads>2056</downloads>
			<received_date>2017-12-06</received_date>
			<revised_date>2018-03-05</revised_date>
			<accepted_date>2018-03-10</accepted_date>
			<abstract>Typically,  people  with  severe  motor  disabilities  have  limited  opportunities  to  socialize.  Brain-Computer 
Interfaces  (BCIs)  can  be  seen  as  a  hope  of  restoring  freedom  to  immobilized  individuals. Motor  imagery  (MI) 
signals  recorded  via  electroencephalograms (EEGs)  are  the  most  convenient  basis  for  designing  BCIs  as they 
provide a high degree of freedom. MI-based BCIs help motor disabled people to interact with any real-time BCI 
applications  by  performing  a  sequence  of  MI  tasks.  But, inter-subject  variability,  extracting  user-specific 
features and increasing accuracy of the classifier are still a challenging task in MI-based BCIs. In this work, we 
propose  an  approach  to  overcome  the  above-mentioned issues.  The  proposed  approach  considers  channel 
selection,  band-pass  filter  based  common  spatial  pattern,  feature  extraction,  feature  selection  and  modeling 
using  Gaussian  Naïve  Bayes  (GNB)  classifier.  Since  the  optimal  features  are  selected  by  feature  selection 
techniques, they help overcome inter-subject variability and improve performance of GNB classifier. To the best 
of  our  knowledge,  the  proposed  methodology  has  not  been  used  for  MI-based  BCI  applications.  The  proposed 
approach  has  been validated  using  BCI  competition  III  dataset  IVa.  The  result  of  our approach  has  been 
compared  with those  of two classifiers; namely, Linear  Discriminant  Analysis  (LDA)  and  Support  Vector 
Machine (SVM). The results prove that the proposed method provides an improved accuracy over LDA and SVM 
classifiers.  The  proposed  method  can  be  further  developed  to  design  reliable  and  real-time  MI-based  BCI 
applications.</abstract>
		</paper>


