
		<paper>
			<loc>https://jjcit.org/paper/57</loc>
			<title>FUZZY-ROUGH CLASSIFICATION FOR BRAINPRINT AUTHENTICATION</title>
			<doi>10.5455/jjcit.71-1556703387</doi>
			<authors>Siaw-Hong Liew,Yun-Huoy Choo,Yin Fen Low</authors>
			<keywords>Fuzzy-rough nearest neighbour (FRNN),EEG,Brainprint authentication,Biometrics.</keywords>
			<citation>4</citation>
			<views>6397</views>
			<downloads>1826</downloads>
			<received_date>2019-05-04</received_date>
			<revised_date>2019-06-17</revised_date>
			<accepted_date>2019-07-02</accepted_date>
			<abstract>The electroencephalogram (EEG) signal is used as biometric modality, because it is proven to be unique, universal 
and collectable. This work aims to assess the performance of fuzzy-based techniques for brainprint authentication 
modelling. We benchmark the  performance  of Fuzzy-Rough  Nearest  Neighbour  (FRNN) technique  to the 
Discernibility Nearest Neighbour (D-kNN) and the Fuzzy Lattice Reasoning (FLR) techniques using the selected 
samples  of  brainwaves’ data  from  the  original  UCI  EEG  dataset. All  the  three  classifiers  are  available  in  the 
fuzzy-rough  version  of  WEKA implementation  tool. Selected 9 EEG  channels located  at the  midline  and  lateral 
regions were  used  in the  experimentation. The coherence, mean  of  amplitudes and  cross-correlation feature 
extraction  methods were used  to  extract  the  EEG  signals.  The area  under  ROC  curve (AUC)  measurement of 
FRNN was promising  against the D-kNN and  FLR techniques. The FRNN  model has achieved the  best 
performance of AUC measure at 0.904 in opposition to the D-kNN and FLR models, where both recorded 0.770 
and 0.563, respectively. However,  the  classification accuracy  shows significantly no difference among the  three 
classifiers. The  results  confirmed  that  the  classification  accuracy  of  D-kNN and  FLR  techniques is not  reliable, 
because they are highly contributed by the true negative cases. Hence, we conclude that the FRNN model is less 
biased to imbalance data problem as compared to the D-kNN and FLR models. Future work of this research should 
focus  on optimizing  the  EEG  channel  and feature  selection in  order to  obtain  a  better  data  representation  of 
biometric brainprint for more efficient authentication in imbalance data problem.</abstract>
		</paper>


