<?xml version="1.0" encoding="UTF-8"?>
<!DOCTYPE ArticleSet PUBLIC "-//NLM//DTD PubMed 2.7//EN" "https://dtd.nlm.nih.gov/ncbi/pubmed/in/PubMed.dtd">
<ArticleSet>
<Article>
<Journal>
				<PublisherName>Faculty of Management, University of Tehran</PublisherName>
				<JournalTitle>Journal of Information Technology Management</JournalTitle>
				<Issn>2008-5893</Issn>
				<Volume>13</Volume>
				<Issue>Special Issue:  Role of ICT in Advancing Business and Management</Issue>
				<PubDate PubStatus="epublish">
					<Year>2021</Year>
					<Month>05</Month>
					<Day>01</Day>
				</PubDate>
			</Journal>
<ArticleTitle>Comparative Analysis on Hybrid Content &amp; Context-basedimage Retrieval System</ArticleTitle>
<VernacularTitle></VernacularTitle>
			<FirstPage>133</FirstPage>
			<LastPage>142</LastPage>
			<ELocationID EIdType="pii">80761</ELocationID>
			
<ELocationID EIdType="doi">10.22059/jitm.2021.80761</ELocationID>
			
			<Language>EN</Language>
<AuthorList>
<Author>
					<FirstName>Anuradha</FirstName>
					<LastName>Banerjee</LastName>
<Affiliation>Dept. of Information Systems, Indian Institute of Management, Shillong, Meghalaya, India.</Affiliation>

</Author>
</AuthorList>
				<PublicationType>Journal Article</PublicationType>
			<History>
				<PubDate PubStatus="received">
					<Year>2021</Year>
					<Month>04</Month>
					<Day>13</Day>
				</PubDate>
			</History>
		<Abstract>Learning effective segment depictions and resemblance measures are fundamental to the recuperation execution of a substance based picture recuperation (CBIR) structure. Regardless of wide research tries for a significant long time, it stays one of the most testing open gives that broadly impedes the achievements of real-world CBIR structures. The key test has been credited to the extraordinary &quot;semantic hole&quot; subject that happens between low-level photo pixels got by technologies and raised close semantic thoughts saw by a human. Among various techniques, AI has been successfully analyzed as a possible course to interface the semantic gap in the whole deal. Impelled by late triumphs of significant learning techniques for PC vision and various applications, in this paper, we try to address an open issue: if significant learning is a longing for spreading over the semantic gap in CBIR and how much updates in CBIR endeavors can be cultivated by exploring the front line significant learning methodology for learning feature depictions and likeness measures. Specifically, we explore a structure of significant learning with application to CBIR assignments with a wide game plan of definite examinations by investigating front line significant learning methodologies for CBIR endeavors under moved settings. From our exploratory examinations, we find some encouraging results and compress some huge bits of information for upcoming research.</Abstract>
		<ObjectList>
			<Object Type="keyword">
			<Param Name="value">CBIR</Param>
			</Object>
			<Object Type="keyword">
			<Param Name="value">Content</Param>
			</Object>
			<Object Type="keyword">
			<Param Name="value">Context</Param>
			</Object>
			<Object Type="keyword">
			<Param Name="value">Machine learning</Param>
			</Object>
			<Object Type="keyword">
			<Param Name="value">Deep learning</Param>
			</Object>
		</ObjectList>
<ArchiveCopySource DocType="pdf">https://jitm.ut.ac.ir/article_80761_7e2b15e4f97a6440983c1f14518d5b88.pdf</ArchiveCopySource>
</Article>
</ArticleSet>
