
		<paper>
			<loc>https://jjcit.org/paper/107</loc>
			<title>ARABIC SIGN LANGUAGE CHARACTERS RECOGNITION BASED ON A DEEP LEARNING APPROACH AND A SIMPLE LINEAR CLASSIFIER</title>
			<doi>10.5455/jjcit.71-1587943974</doi>
			<authors>Ahmad Hasasneh</authors>
			<keywords>Arabic sign language,S ign language recognition,D eep belief network,Softmax regression,C lassification</keywords>
			<citation>18</citation>
			<views>8389</views>
			<downloads>2254</downloads>
			<received_date>27-Apr .- 2020</received_date>
			<revised_date>  22 -Jun. -2020</revised_date>
			<accepted_date>  1 8-Jul. -2020</accepted_date>
			<abstract>One of the best ways of communication between  deaf  people and  hearing people is based on sign language or 
so-called hand gestures. In the  Arab society, only deaf people and specialists could deal with Arabic sign 
language, which makes the deaf community narrow and thus communicating with normal people dif ficult. In 
addition to that, studying the problem of Arabic sign language recognition (ArSLR) has been paid attention 
recently, which emphasizes the necessity of investigating other approaches for such  a problem. This paper 
proposes a novel ArSLR scheme based on an unsupervised deep learning algorithm, a deep belief network 
(DBN) coupled with a direct use of tiny images , which has been used  to recognize and classify Arabic 
alphabetical letters. The use of deep learning contributed to extracting the most important features that are 
sparsely represented and played an important role in simplifying the overall recognition task. In total, around 
6,000 samples of the 28 Arabic alphabetic signs have been used after resizing and normalization for feature 
extraction.  The classification process was investigated using a softmax regression and achieved an overall 
accuracy of 83. 32%, showing high reliability of the DBN-based Arabic alphabetical character recognition  
model. This model  also  achieved a sensitivity and a  specificity of 70.5% and 96.2% , respectively.</abstract>
		</paper>


