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<ArticleSet>
		<Article>
		<Journal>
			<PublisherName>Majlesi Journal of Electrical Engineering</PublisherName>
			<JournalTitle>An Ensemble Learning Approach for Glaucoma Detection in Retinal Images</JournalTitle>
			<Issn></Issn>
			<Volume>Volume 16 (2022)</Volume>
			<Issue>Issue 4, December 2022</Issue>
			<PubDate PubStatus="epublish">
                <Year>2024</Year>
                <Month>02</Month>
                <Day>11</Day>
			</PubDate>
		</Journal>
		<ArticleTitle>An Ensemble Learning Approach for Glaucoma Detection in Retinal Images</ArticleTitle>
		<VernacularTitle></VernacularTitle>
		<FirstPage></FirstPage>
		<LastPage></LastPage>
		<ELocationID EIdType="doi">10.30486/mjee.2022.696522</ELocationID>
		<Language>EN</Language>
		<AuthorList>
            			<Author>
                				<FirstName>Marwah</FirstName>
				<LastName>M. Mahdi</LastName>
				<Affiliation>Anesthesia Techniques Department, Al-Mustaqbal University College, Babylon, Iraq</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Mohammed</FirstName>
				<LastName>Abdulkreem Mohammed</LastName>
				<Affiliation>Department of Anesthesia Techniques, Al-Noor University College, Bartella, Iraq</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Haider</FirstName>
				<LastName>Al-Chalibi</LastName>
				<Affiliation>Medical Technical College, Al-Farahidi University, Baghdad, Iraq</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Bashar</FirstName>
				<LastName>S. Bashar</LastName>
				<Affiliation>Department of Medical instruments engineering techniques, Al-Farahidi University, Baghdad,10021, Iraq</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Hayder</FirstName>
				<LastName>Adnan Sadeq</LastName>
				<Affiliation>Al-Hadi University College, Baghdad,10011, Iraq</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Talib</FirstName>
				<LastName>Mohammed Jawad Abbas</LastName>
				<Affiliation>Medical device engineering, Ashur University College, Baghdad, Iraq</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            		</AuthorList>
		<PublicationType>Journal Article</PublicationType>
		<History>
			<PubDate PubStatus="received">
				<Year>2024</Year>
				<Month>02</Month>
				<Day>11</Day>
			</PubDate>
		</History>
		<Abstract>To stop vision loss from glaucoma, early identification and regular screening are crucial. Convolutional neural networks (CNN) have been effectively used in recent years to diagnose glaucoma automatically from color fundus pictures. CNNs can extract distinctive characteristics directly from the fundus pictures, as opposed to the current automatic screening techniques. In this study, a CNN-based deep learning architecture is created for the categorization of normal and glaucomatous fundus pictures. In this paper, we propose a deep learning-based framework for the detection of glaucoma based on retinal images. Our proposed approach utilizes the two CNN-based models, namely Inception and DenseNet, in order to classify the input images. We also show the impact of transfer learning on the training and the validation processes and put forward an effective pipeline with lower trainable parameters for the target task. Our experiments on a collected dataset demonstrate the efficacy of the proposed model by achieving an accuracy of 93.84%, a precision of 92.83%, and a recall of 95.00%.</Abstract>
		<ObjectList>
            			<Object Type="keyword">
				<Param Name="value">Convolutional neural networks</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Glaucoma Detection</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Medical Images Analysis</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Retinal images</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">DenseNet. inception</Param>
			</Object>
					</ObjectList>
	</Article>
	</ArticleSet>
