A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition

There is growing interest in the problem of human activity recognition, motivated by its countless promising applications in many domains. Despite much progress, most researchers have narrowed the problem towards fixed camera viewpoint owing to inherent difficulty to train their systems across all p...

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Main Authors: Htike@Muhammad Yusof, Zaw Zaw, Egerton, Simon, Kuang, Ye Chow
Format: Article
Language:English
English
Published: Australian National University 2010
Subjects:
Online Access:http://irep.iium.edu.my/43205/1/ICONIP.pdf
http://irep.iium.edu.my/43205/2/ICONIP_evidence.pdf
http://irep.iium.edu.my/43205/
http://dblp.l3s.de/?q=Austr.+J.+Intelligent+Information+Processing+Systems&search_opt=venuesOnlyExact&newQuery=yes&resTableName=query_resultZOF8Ko&resultsPerPage=100
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spelling my.iium.irep.432052015-06-05T03:58:52Z http://irep.iium.edu.my/43205/ A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition Htike@Muhammad Yusof, Zaw Zaw Egerton, Simon Kuang, Ye Chow AI Indexes (General) There is growing interest in the problem of human activity recognition, motivated by its countless promising applications in many domains. Despite much progress, most researchers have narrowed the problem towards fixed camera viewpoint owing to inherent difficulty to train their systems across all possible viewpoints. Fixed viewpoint systems are impractical in real scenarios. Therefore, we attempt to relax the infamous fixed viewpoint assumption and present a novel, efficient and biologically-inspired framework to recognize and classify human activities from monocular video source from arbitrary viewpoint. The proposed framework comprises two stages: human pose recognition and human activity recognition. We cascade an ensemble of invariant pose models and activity models hierarchically. All the models operate simultaneously in parallel and perform inference on impinging patterns that come from lower level. Pose models operate in a hybrid 3-layered bottom-up neural architecture. Activity models employ fuzzy-state hidden Markov model to classify activities. We have built a small-scale architecture for a proof-of-concept and performed some experiments on two publicly available datasets. The satisfactory experimental results demonstrate the efficacy of our framework and encourage us to further develop a full-scale architecture. Australian National University 2010 Article REM application/pdf en http://irep.iium.edu.my/43205/1/ICONIP.pdf application/pdf en http://irep.iium.edu.my/43205/2/ICONIP_evidence.pdf Htike@Muhammad Yusof, Zaw Zaw and Egerton, Simon and Kuang, Ye Chow (2010) A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition. Australian Journal of Intelligent Information Processing Systems, 12 (3). pp. 31-37. ISSN 1321-2133 http://dblp.l3s.de/?q=Austr.+J.+Intelligent+Information+Processing+Systems&search_opt=venuesOnlyExact&newQuery=yes&resTableName=query_resultZOF8Ko&resultsPerPage=100
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
English
topic AI Indexes (General)
spellingShingle AI Indexes (General)
Htike@Muhammad Yusof, Zaw Zaw
Egerton, Simon
Kuang, Ye Chow
A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition
description There is growing interest in the problem of human activity recognition, motivated by its countless promising applications in many domains. Despite much progress, most researchers have narrowed the problem towards fixed camera viewpoint owing to inherent difficulty to train their systems across all possible viewpoints. Fixed viewpoint systems are impractical in real scenarios. Therefore, we attempt to relax the infamous fixed viewpoint assumption and present a novel, efficient and biologically-inspired framework to recognize and classify human activities from monocular video source from arbitrary viewpoint. The proposed framework comprises two stages: human pose recognition and human activity recognition. We cascade an ensemble of invariant pose models and activity models hierarchically. All the models operate simultaneously in parallel and perform inference on impinging patterns that come from lower level. Pose models operate in a hybrid 3-layered bottom-up neural architecture. Activity models employ fuzzy-state hidden Markov model to classify activities. We have built a small-scale architecture for a proof-of-concept and performed some experiments on two publicly available datasets. The satisfactory experimental results demonstrate the efficacy of our framework and encourage us to further develop a full-scale architecture.
format Article
author Htike@Muhammad Yusof, Zaw Zaw
Egerton, Simon
Kuang, Ye Chow
author_facet Htike@Muhammad Yusof, Zaw Zaw
Egerton, Simon
Kuang, Ye Chow
author_sort Htike@Muhammad Yusof, Zaw Zaw
title A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition
title_short A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition
title_full A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition
title_fullStr A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition
title_full_unstemmed A hybrid ART-RBF Network Architecture for Viewpoint Invariant Human Activity Recognition
title_sort hybrid art-rbf network architecture for viewpoint invariant human activity recognition
publisher Australian National University
publishDate 2010
url http://irep.iium.edu.my/43205/1/ICONIP.pdf
http://irep.iium.edu.my/43205/2/ICONIP_evidence.pdf
http://irep.iium.edu.my/43205/
http://dblp.l3s.de/?q=Austr.+J.+Intelligent+Information+Processing+Systems&search_opt=venuesOnlyExact&newQuery=yes&resTableName=query_resultZOF8Ko&resultsPerPage=100
_version_ 1643612343975804928
score 13.160551