Fusion Model for Ontology Based Image Retrieval

Data fusion is the process of combining multiple sources of information to produce better results compared to using the source individually. This paper applies the idea of data fusion to semantic image retrieval, which combines the ranking scores between ontology based and keyword based semantic ima...

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Main Authors: Engku Fadzli Hasan, Syed Abdullah, Azrul Amri, Jamal, Wan Mohd Rizhan, Wan Idris
Format: Article
Language:English
English
Published: Hikari Ltd. 2015
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Online Access:http://eprints.unisza.edu.my/7052/1/FH02-FIK-16-05223.pdf
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spelling my-unisza-ir.70522022-09-13T04:54:20Z http://eprints.unisza.edu.my/7052/ Fusion Model for Ontology Based Image Retrieval Engku Fadzli Hasan, Syed Abdullah Azrul Amri, Jamal Wan Mohd Rizhan, Wan Idris QA75 Electronic computers. Computer science Data fusion is the process of combining multiple sources of information to produce better results compared to using the source individually. This paper applies the idea of data fusion to semantic image retrieval, which combines the ranking scores between ontology based and keyword based semantic image retrieval model. Although the evaluation shows that the overall performance of the ontology based model is higher than that of the keyword based model, the results analysis reveals that the performance of ontology based model is in direct relation with the implicit information relies within the query and annotation text. If the annotation contains less meaningful information, the ontology based method performs very poorly, thus affecting the relevancy of semantic chromosomes. This further affects the performance of the similarity measure and the quality of the retrieval results. As a result, user queries return fewer results than expected, as they get much lower similarity value than they should. Whereas, keyword-based search would perform better in these situations. To deal with this drawback, this paper proposes to combine the results coming from the proposed ontology-based retrieval model and the result returned by traditional keyword-based model. The combined model is evaluated using both traditional IR measures. Hikari Ltd. 2015 Article PeerReviewed text en http://eprints.unisza.edu.my/7052/1/FH02-FIK-16-05223.pdf image en http://eprints.unisza.edu.my/7052/2/FH02-FIK-16-06430.jpg Engku Fadzli Hasan, Syed Abdullah and Azrul Amri, Jamal and Wan Mohd Rizhan, Wan Idris (2015) Fusion Model for Ontology Based Image Retrieval. Applied Mathematical Sciences, 9 (130). pp. 6461-6475. ISSN 1314-7552 [P]
institution Universiti Sultan Zainal Abidin
building UNISZA Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sultan Zainal Abidin
content_source UNISZA Institutional Repository
url_provider https://eprints.unisza.edu.my/
language English
English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Engku Fadzli Hasan, Syed Abdullah
Azrul Amri, Jamal
Wan Mohd Rizhan, Wan Idris
Fusion Model for Ontology Based Image Retrieval
description Data fusion is the process of combining multiple sources of information to produce better results compared to using the source individually. This paper applies the idea of data fusion to semantic image retrieval, which combines the ranking scores between ontology based and keyword based semantic image retrieval model. Although the evaluation shows that the overall performance of the ontology based model is higher than that of the keyword based model, the results analysis reveals that the performance of ontology based model is in direct relation with the implicit information relies within the query and annotation text. If the annotation contains less meaningful information, the ontology based method performs very poorly, thus affecting the relevancy of semantic chromosomes. This further affects the performance of the similarity measure and the quality of the retrieval results. As a result, user queries return fewer results than expected, as they get much lower similarity value than they should. Whereas, keyword-based search would perform better in these situations. To deal with this drawback, this paper proposes to combine the results coming from the proposed ontology-based retrieval model and the result returned by traditional keyword-based model. The combined model is evaluated using both traditional IR measures.
format Article
author Engku Fadzli Hasan, Syed Abdullah
Azrul Amri, Jamal
Wan Mohd Rizhan, Wan Idris
author_facet Engku Fadzli Hasan, Syed Abdullah
Azrul Amri, Jamal
Wan Mohd Rizhan, Wan Idris
author_sort Engku Fadzli Hasan, Syed Abdullah
title Fusion Model for Ontology Based Image Retrieval
title_short Fusion Model for Ontology Based Image Retrieval
title_full Fusion Model for Ontology Based Image Retrieval
title_fullStr Fusion Model for Ontology Based Image Retrieval
title_full_unstemmed Fusion Model for Ontology Based Image Retrieval
title_sort fusion model for ontology based image retrieval
publisher Hikari Ltd.
publishDate 2015
url http://eprints.unisza.edu.my/7052/1/FH02-FIK-16-05223.pdf
http://eprints.unisza.edu.my/7052/2/FH02-FIK-16-06430.jpg
http://eprints.unisza.edu.my/7052/
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score 13.149126