
		<paper>
			<loc>https://jjcit.org/paper/208</loc>
			<title>FUSION OF DEEP LEARNING ARCHITECTURES FOR ENHANCED TARGET RECOGNITION ON SAR IMAGES</title>
			<doi>10.5455/jjcit.71-1693063991</doi>
			<authors>K. Cheikh,R. Aitahcene,A. Toumi,Z. Hammoudi</authors>
			<keywords>Automatic target recognition,Synthetic aperture radar images,Deep learning,Decision fusion</keywords>
			<citation>1</citation>
			<views>3820</views>
			<downloads>1134</downloads>
			<received_date>26-Aug.-2023</received_date>
			<revised_date>  24-Oct.-2023</revised_date>
			<accepted_date>  2-Nov.-2023</accepted_date>
			<abstract>In  various applications  of  radar  imagery,  one  of  the  fundamental  problems  is  mainly  linked  to  the  analysis  and 
interpretation of the images provided, in particular the recognition of moving and/or fixed targets. This task has 
become  more  difficult  due  to  the  large  volume  of  radar  data.  This  led  to  the  use  of  automatic-processing  and 
target-recognition  methods.  The  aim  of  this  study  is  to  explore  data  fusion  in  SAR  (Synthetic  Aperture  Radar) 
image  classifiers. To  this  end, we propose a new  approach  to combine three CNN (Convolutional  Neural 
Network) architectures with  several fusion rules. First, we  perform  a  training process  of three  deep-learning 
architectures; namely, the basic  CNN, the Xception and the  AlexNet  architectures.  Then, two fusion  techniques 
are  proposed.  The  first  one  deals with  the majority  rule and  the  second  uses a neural  network to  combine  the 
decision  outputs  obtained  from three  elementary  classifiers  to achieve the  final  decision.  To evaluate  and 
validate the  proposed  approach,  the  MSTAR  (Moving  and  Stationary  Target  Acquisition  and  Recognition) 
dataset  is  used. The obtained performances of  the  fusion  techniques  improve  the  recognition  rate with a  final 
accuracy  of  99.59%  for  the  majority  rule  and  99.51% for  the  neural  network-based  rule, which surpasses  the 
accuracy of each individual CNN.</abstract>
		</paper>


