Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors

Nowadays, many features have been proposed for image category recognition. Scale Invariant Feature Transform (SIFT) is one of the important descriptors, which is used in these systems. It is robust against rotation change, viewpoint change, scaling change, but it is partially robust against illumina...

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मुख्य लेखकों: Rassem, Taha Hussein Alaaldeen, Khoo, Bee Ee, Bayuaji, Luhur, Makbol, Nasrin M., Suryanti, Awang
स्वरूप: लेख
भाषा:English
प्रकाशित: AENSI Publishing 2015
विषय:
ऑनलाइन पहुंच:http://umpir.ump.edu.my/id/eprint/9226/1/93-103.pdf
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author Rassem, Taha Hussein Alaaldeen
Khoo, Bee Ee
Bayuaji, Luhur
Makbol, Nasrin M.
Suryanti, Awang
author_facet Rassem, Taha Hussein Alaaldeen
Khoo, Bee Ee
Bayuaji, Luhur
Makbol, Nasrin M.
Suryanti, Awang
author_sort Rassem, Taha Hussein Alaaldeen
collection UMP
description Nowadays, many features have been proposed for image category recognition. Scale Invariant Feature Transform (SIFT) is one of the important descriptors, which is used in these systems. It is robust against rotation change, viewpoint change, scaling change, but it is partially robust against illumination change. Color SIFT descriptors are proposed to increase the illumination invariant. In this paper, the performances of different color SIFT descriptors densely extracted from the images were evaluated for object and scene recognition. RGB color SIFT, HSV color SIFT, Opponent color SIFT, Transformed-color SIFT and a new proposed color SIFT descriptor based on Ohta color space (Ohta Color SIFT) were used instead of the traditional gray SIFT. The performances of these descriptors and all their possible combinations were evaluated using challenging data sets. Caltech-04, Caltech-101, Caltech-256, Graz-02 are examples of object data sets used, whereas Oliva and Torralba data set (OT) and SUN-398 are examples of scene data sets. Using some combination of dense color SIFT descriptors, remarkable results of classification accuracy were achieved for some data sets such as Caltech-04 and Graz-02 and acceptable accuracy results for the remaining data sets as shown in experimental results.
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spelling UMPir92262024-01-05T08:47:24Z http://umpir.ump.edu.my/id/eprint/9226/ Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors Rassem, Taha Hussein Alaaldeen Khoo, Bee Ee Bayuaji, Luhur Makbol, Nasrin M. Suryanti, Awang QA75 Electronic computers. Computer science Nowadays, many features have been proposed for image category recognition. Scale Invariant Feature Transform (SIFT) is one of the important descriptors, which is used in these systems. It is robust against rotation change, viewpoint change, scaling change, but it is partially robust against illumination change. Color SIFT descriptors are proposed to increase the illumination invariant. In this paper, the performances of different color SIFT descriptors densely extracted from the images were evaluated for object and scene recognition. RGB color SIFT, HSV color SIFT, Opponent color SIFT, Transformed-color SIFT and a new proposed color SIFT descriptor based on Ohta color space (Ohta Color SIFT) were used instead of the traditional gray SIFT. The performances of these descriptors and all their possible combinations were evaluated using challenging data sets. Caltech-04, Caltech-101, Caltech-256, Graz-02 are examples of object data sets used, whereas Oliva and Torralba data set (OT) and SUN-398 are examples of scene data sets. Using some combination of dense color SIFT descriptors, remarkable results of classification accuracy were achieved for some data sets such as Caltech-04 and Graz-02 and acceptable accuracy results for the remaining data sets as shown in experimental results. AENSI Publishing 2015-05 Article PeerReviewed application/pdf en http://umpir.ump.edu.my/id/eprint/9226/1/93-103.pdf Rassem, Taha Hussein Alaaldeen and Khoo, Bee Ee and Bayuaji, Luhur and Makbol, Nasrin M. and Suryanti, Awang and UNSPECIFIED (2015) Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors. Australian Journal of Basic and Applied Sciences, 9 (12). pp. 93-103. ISSN 1991-8178. (Published) http://www.ajbasweb.com/old/Ajbas_Special-IPN-Penang%20_2015.html
spellingShingle QA75 Electronic computers. Computer science
Rassem, Taha Hussein Alaaldeen
Khoo, Bee Ee
Bayuaji, Luhur
Makbol, Nasrin M.
Suryanti, Awang
Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors
title Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors
title_full Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors
title_fullStr Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors
title_full_unstemmed Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors
title_short Object and Scene Category Recognition using a Combination of Dense Color SIFT Descriptors
title_sort object and scene category recognition using a combination of dense color sift descriptors
topic QA75 Electronic computers. Computer science
url http://umpir.ump.edu.my/id/eprint/9226/1/93-103.pdf
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