An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications

Recent work in the computational modeling of visual attention has demonstrated that a purely bottom-up approach to identifying salient regions within an image can be successfully applied to diverse and practical problems from target recognition to the placement of advertisement. This paper proposes...

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Main Authors: Humberto R. Gamba, Gustavo B. Borba, Oge Marques, Liam M. Mayron
Format: Article
Language:English
Published: SpringerOpen 2007-01-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://dx.doi.org/10.1155/2007/43450
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spelling doaj-8cb6601893db4fd690eff58787c00d752020-11-24T22:10:08ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802007-01-01200710.1155/2007/43450An Attention-Driven Model for Grouping Similar Images with Image Retrieval ApplicationsHumberto R. GambaGustavo B. BorbaOge MarquesLiam M. MayronRecent work in the computational modeling of visual attention has demonstrated that a purely bottom-up approach to identifying salient regions within an image can be successfully applied to diverse and practical problems from target recognition to the placement of advertisement. This paper proposes an application of a combination of computational models of visual attention to the image retrieval problem. We demonstrate that certain shortcomings of existing content-based image retrieval solutions can be addressed by implementing a biologically motivated, unsupervised way of grouping together images whose salient regions of interest (ROIs) are perceptually similar regardless of the visual contents of other (less relevant) parts of the image. We propose a model in which only the salient regions of an image are encoded as ROIs whose features are then compared against previously seen ROIs and assigned cluster membership accordingly. Experimental results show that the proposed approach works well for several combinations of feature extraction techniques and clustering algorithms, suggesting a promising avenue for future improvements, such as the addition of a top-down component and the inclusion of a relevance feedback mechanism. http://dx.doi.org/10.1155/2007/43450
collection DOAJ
language English
format Article
sources DOAJ
author Humberto R. Gamba
Gustavo B. Borba
Oge Marques
Liam M. Mayron
spellingShingle Humberto R. Gamba
Gustavo B. Borba
Oge Marques
Liam M. Mayron
An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications
EURASIP Journal on Advances in Signal Processing
author_facet Humberto R. Gamba
Gustavo B. Borba
Oge Marques
Liam M. Mayron
author_sort Humberto R. Gamba
title An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications
title_short An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications
title_full An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications
title_fullStr An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications
title_full_unstemmed An Attention-Driven Model for Grouping Similar Images with Image Retrieval Applications
title_sort attention-driven model for grouping similar images with image retrieval applications
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2007-01-01
description Recent work in the computational modeling of visual attention has demonstrated that a purely bottom-up approach to identifying salient regions within an image can be successfully applied to diverse and practical problems from target recognition to the placement of advertisement. This paper proposes an application of a combination of computational models of visual attention to the image retrieval problem. We demonstrate that certain shortcomings of existing content-based image retrieval solutions can be addressed by implementing a biologically motivated, unsupervised way of grouping together images whose salient regions of interest (ROIs) are perceptually similar regardless of the visual contents of other (less relevant) parts of the image. We propose a model in which only the salient regions of an image are encoded as ROIs whose features are then compared against previously seen ROIs and assigned cluster membership accordingly. Experimental results show that the proposed approach works well for several combinations of feature extraction techniques and clustering algorithms, suggesting a promising avenue for future improvements, such as the addition of a top-down component and the inclusion of a relevance feedback mechanism.
url http://dx.doi.org/10.1155/2007/43450
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