Fusion of global shape and local features using meta-classifier framework.

In computer vision, objects in an image can be described using many features such as shape, color, texture and local features. The number of dimensions for each type of feature has differing size. Basically, the underlying belief from a recognition point of view is that, the more features being used...

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Main Authors: Manshor, Noridayu, Abdul Rahiman, Amir Rizaan, Raja Mahmood, Raja Azlina
Format: Article
Language:English
English
Published: Praise Worthy Prize 2013
Online Access:http://psasir.upm.edu.my/id/eprint/30671/1/Fusion%20of%20global%20shape%20and%20local%20features%20using%20meta.pdf
http://psasir.upm.edu.my/id/eprint/30671/
http://www.praiseworthyprize.org/latest_issues/IRECOS-latest/IRECOS_vol_8_n_9.html
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Institution: Universiti Putra Malaysia
Language: English
English
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spelling my.upm.eprints.306712015-10-07T01:36:31Z http://psasir.upm.edu.my/id/eprint/30671/ Fusion of global shape and local features using meta-classifier framework. Manshor, Noridayu Abdul Rahiman, Amir Rizaan Raja Mahmood, Raja Azlina In computer vision, objects in an image can be described using many features such as shape, color, texture and local features. The number of dimensions for each type of feature has differing size. Basically, the underlying belief from a recognition point of view is that, the more features being used, the better the recognition performance. However, having more features does not necessarily correlate to better performance. The higher dimensional vectors resulting from fusion might contain irrelevant or noisy features that can degrade classifier performance. Repetitive and potentially useless information might be present which further escalates the 'curse of dimensionality' problem. Consequently, unwanted and irrelevant features are removed from the combination of features. Although this technique provides promising recognition performance, it is not efficient when it comes to computational time in model building. This study proposes meta- classifier framework to ensure all relevant features are not ignored, while maintaining minimal computational time. In this framework, individual classifiers are trained using the local and global shape features, respectively. Then, these classifiers results are combined as input to the meta- classifier. Experimental results have shown to be comparable, or superior to existing state-of-the-art works for object class recognition. Praise Worthy Prize 2013-09 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/30671/1/Fusion%20of%20global%20shape%20and%20local%20features%20using%20meta.pdf Manshor, Noridayu and Abdul Rahiman, Amir Rizaan and Raja Mahmood, Raja Azlina (2013) Fusion of global shape and local features using meta-classifier framework. International Review on Computers and Software, 8 (9). pp. 2113-2117. ISSN 1828-6003 http://www.praiseworthyprize.org/latest_issues/IRECOS-latest/IRECOS_vol_8_n_9.html English
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
English
description In computer vision, objects in an image can be described using many features such as shape, color, texture and local features. The number of dimensions for each type of feature has differing size. Basically, the underlying belief from a recognition point of view is that, the more features being used, the better the recognition performance. However, having more features does not necessarily correlate to better performance. The higher dimensional vectors resulting from fusion might contain irrelevant or noisy features that can degrade classifier performance. Repetitive and potentially useless information might be present which further escalates the 'curse of dimensionality' problem. Consequently, unwanted and irrelevant features are removed from the combination of features. Although this technique provides promising recognition performance, it is not efficient when it comes to computational time in model building. This study proposes meta- classifier framework to ensure all relevant features are not ignored, while maintaining minimal computational time. In this framework, individual classifiers are trained using the local and global shape features, respectively. Then, these classifiers results are combined as input to the meta- classifier. Experimental results have shown to be comparable, or superior to existing state-of-the-art works for object class recognition.
format Article
author Manshor, Noridayu
Abdul Rahiman, Amir Rizaan
Raja Mahmood, Raja Azlina
spellingShingle Manshor, Noridayu
Abdul Rahiman, Amir Rizaan
Raja Mahmood, Raja Azlina
Fusion of global shape and local features using meta-classifier framework.
author_facet Manshor, Noridayu
Abdul Rahiman, Amir Rizaan
Raja Mahmood, Raja Azlina
author_sort Manshor, Noridayu
title Fusion of global shape and local features using meta-classifier framework.
title_short Fusion of global shape and local features using meta-classifier framework.
title_full Fusion of global shape and local features using meta-classifier framework.
title_fullStr Fusion of global shape and local features using meta-classifier framework.
title_full_unstemmed Fusion of global shape and local features using meta-classifier framework.
title_sort fusion of global shape and local features using meta-classifier framework.
publisher Praise Worthy Prize
publishDate 2013
url http://psasir.upm.edu.my/id/eprint/30671/1/Fusion%20of%20global%20shape%20and%20local%20features%20using%20meta.pdf
http://psasir.upm.edu.my/id/eprint/30671/
http://www.praiseworthyprize.org/latest_issues/IRECOS-latest/IRECOS_vol_8_n_9.html
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