Many novel applications in the field of object recognition and pose estimation have been built relying on local invariant features extracted from selected key points of the images. Such keypoints usually lie on high-contrast regions of the image, such as object edges. However, the visual saliency of the those regions is not considered by state-of-the art detection algorithms that assume the user is interested in the whole image. Moreover, the most common approaches discard all the color in- formation by limiting their analysis to monochromatic versions of the input images. In this paper we present the experimental results of the application of a biologically-inspired visual attention model to the problem of local feature selection in landmark and object recognition tasks. The model uses color-information and restricts the matching between the images to the areas showing a strong saliency. The results show that the approach improves the accuracy of the classifier in the object recognition task and preserves a good accuracy in the landmark recognition task when a high percentage of visual features is filtered out. In both cases the reduction of the average numbers of local features result in high efficiency gains during the search phase that typically requires costly searches of candidate images for matches and geometric consistency checks.

Experimenting a visual attention model in the context of CBIR systems

Cardillo FA;Amato G;Falchi F
2013

Abstract

Many novel applications in the field of object recognition and pose estimation have been built relying on local invariant features extracted from selected key points of the images. Such keypoints usually lie on high-contrast regions of the image, such as object edges. However, the visual saliency of the those regions is not considered by state-of-the art detection algorithms that assume the user is interested in the whole image. Moreover, the most common approaches discard all the color in- formation by limiting their analysis to monochromatic versions of the input images. In this paper we present the experimental results of the application of a biologically-inspired visual attention model to the problem of local feature selection in landmark and object recognition tasks. The model uses color-information and restricts the matching between the images to the areas showing a strong saliency. The results show that the approach improves the accuracy of the classifier in the object recognition task and preserves a good accuracy in the landmark recognition task when a high percentage of visual features is filtered out. In both cases the reduction of the average numbers of local features result in high efficiency gains during the search phase that typically requires costly searches of candidate images for matches and geometric consistency checks.
Campo DC Valore Lingua
dc.authority.anceserie CEUR WORKSHOP PROCEEDINGS -
dc.authority.anceserie CEUR Workshop Proceedings -
dc.authority.orgunit Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI -
dc.authority.people Cardillo FA it
dc.authority.people Amato G it
dc.authority.people Falchi F it
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dc.contributor.appartenenza Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI *
dc.contributor.appartenenza Istituto di linguistica computazionale "Antonio Zampolli" - ILC *
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dc.date.accessioned 2024/02/20 21:35:59 -
dc.date.available 2024/02/20 21:35:59 -
dc.date.issued 2013 -
dc.description.abstracteng Many novel applications in the field of object recognition and pose estimation have been built relying on local invariant features extracted from selected key points of the images. Such keypoints usually lie on high-contrast regions of the image, such as object edges. However, the visual saliency of the those regions is not considered by state-of-the art detection algorithms that assume the user is interested in the whole image. Moreover, the most common approaches discard all the color in- formation by limiting their analysis to monochromatic versions of the input images. In this paper we present the experimental results of the application of a biologically-inspired visual attention model to the problem of local feature selection in landmark and object recognition tasks. The model uses color-information and restricts the matching between the images to the areas showing a strong saliency. The results show that the approach improves the accuracy of the classifier in the object recognition task and preserves a good accuracy in the landmark recognition task when a high percentage of visual features is filtered out. In both cases the reduction of the average numbers of local features result in high efficiency gains during the search phase that typically requires costly searches of candidate images for matches and geometric consistency checks. -
dc.description.affiliations CNR-ISTI, Pisa, Italy; CNR-ISTI, Pisa, Italy; CNR-ISTI, Pisa, Italy -
dc.description.allpeople Cardillo F.A.; Amato G.; Falchi F. -
dc.description.allpeopleoriginal Cardillo F.A.; Amato G.; Falchi F. -
dc.description.fulltext open en
dc.description.numberofauthors 3 -
dc.identifier.scopus 2-s2.0-84922785036 -
dc.identifier.uri https://hdl.handle.net/20.500.14243/338718 -
dc.identifier.url http://ceur-ws.org/Vol-964/paper8.pdf -
dc.language.iso eng -
dc.relation.conferencedate 16-17 January 2013 -
dc.relation.conferencename IIR 2013 - 4th Italian Information Retrieval Workshop -
dc.relation.conferenceplace Pisa, Italy -
dc.relation.firstpage 45 -
dc.relation.ispartofbook 4th Italian Information Retrieval Workshop, IIR 2013 -
dc.relation.lastpage 56 -
dc.relation.numberofpages 12 -
dc.subject.keywords Behavioral research -
dc.subject.keywords Color matching -
dc.subject.keywords Image matching -
dc.subject.keywords Information retrieval -
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dc.subject.singlekeyword Color matching *
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dc.title Experimenting a visual attention model in the context of CBIR systems en
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scopus.contributor.name Franco Alberto -
scopus.contributor.name Giuseppe -
scopus.contributor.name Fabrizio -
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scopus.contributor.surname Cardillo -
scopus.contributor.surname Amato -
scopus.contributor.surname Falchi -
scopus.date.issued 2013 *
scopus.description.abstracteng Many novel applications in the field of object recognition and pose estimation have been built relying on local invariant features extracted from selected key points of the images. Such keypoints usually lie on high-contrast regions of the image, such as object edges. However, the visual saliency of the those regions is not considered by state-of-the art detection algorithms that assume the user is interested in the whole image. Moreover, the most common approaches discard all the color in- formation by limiting their analysis to monochromatic versions of the input images. In this paper we present the experimental results of the application of a biologically-inspired visual attention model to the problem of local feature selection in landmark and object recognition tasks. The model uses color-information and restricts the matching between the images to the areas showing a strong saliency. The results show that the approach improves the accuracy of the classifier in the object recognition task and preserves a good accuracy in the landmark recognition task when a high percentage of visual features is filtered out. In both cases the reduction of the average numbers of local features result in high efficiency gains during the search phase that typically requires costly searches of candidate images for matches and geometric consistency checks. *
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