Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover

Associative methods for content-based image ranking by semantics are attractive due to the similarity of generated models to human models of understanding. Although they tend to return results that are better understood by image analysts, the induction of these models is difficult to build due to fa...

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Main Authors: Nil Kilicay-Ergin, Adrian Barb
Format: Article
Language:English
Published: MDPI AG 2013-06-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:http://www.mdpi.com/2220-9964/2/2/531
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spelling doaj-170bae5497e849aea639a4fa1c3075c92020-11-25T01:05:52ZengMDPI AGISPRS International Journal of Geo-Information2220-99642013-06-012253155210.3390/ijgi2020531Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land CoverNil Kilicay-ErginAdrian BarbAssociative methods for content-based image ranking by semantics are attractive due to the similarity of generated models to human models of understanding. Although they tend to return results that are better understood by image analysts, the induction of these models is difficult to build due to factors that affect training complexity, such as coexistence of visual patterns in same images, over-fitting or under-fitting and semantic representation differences among image analysts. This article proposes a methodology to reduce the complexity of ranking satellite images for associative methods. Our approach employs genetic operations to provide faster and more accurate models for ranking by semantic using low level features. The added accuracy is provided by a reduction in the likelihood to reach local minima or to overfit. The experiments show that, using genetic optimization, associative methods perform better or at similar levels as state-of-the-art ensemble methods for ranking. The mean average precision (MAP) of ranking by semantic was improved by 14% over similar associative methods that use other optimization techniques while maintaining smaller size for each semantic model.http://www.mdpi.com/2220-9964/2/2/531content-based image rankingdata miningrankinggeneticsatellite imagesassociative
collection DOAJ
language English
format Article
sources DOAJ
author Nil Kilicay-Ergin
Adrian Barb
spellingShingle Nil Kilicay-Ergin
Adrian Barb
Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover
ISPRS International Journal of Geo-Information
content-based image ranking
data mining
ranking
genetic
satellite images
associative
author_facet Nil Kilicay-Ergin
Adrian Barb
author_sort Nil Kilicay-Ergin
title Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover
title_short Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover
title_full Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover
title_fullStr Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover
title_full_unstemmed Genetic Optimization for Associative Semantic Ranking Models of Satellite Images by Land Cover
title_sort genetic optimization for associative semantic ranking models of satellite images by land cover
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2013-06-01
description Associative methods for content-based image ranking by semantics are attractive due to the similarity of generated models to human models of understanding. Although they tend to return results that are better understood by image analysts, the induction of these models is difficult to build due to factors that affect training complexity, such as coexistence of visual patterns in same images, over-fitting or under-fitting and semantic representation differences among image analysts. This article proposes a methodology to reduce the complexity of ranking satellite images for associative methods. Our approach employs genetic operations to provide faster and more accurate models for ranking by semantic using low level features. The added accuracy is provided by a reduction in the likelihood to reach local minima or to overfit. The experiments show that, using genetic optimization, associative methods perform better or at similar levels as state-of-the-art ensemble methods for ranking. The mean average precision (MAP) of ranking by semantic was improved by 14% over similar associative methods that use other optimization techniques while maintaining smaller size for each semantic model.
topic content-based image ranking
data mining
ranking
genetic
satellite images
associative
url http://www.mdpi.com/2220-9964/2/2/531
work_keys_str_mv AT nilkilicayergin geneticoptimizationforassociativesemanticrankingmodelsofsatelliteimagesbylandcover
AT adrianbarb geneticoptimizationforassociativesemanticrankingmodelsofsatelliteimagesbylandcover
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