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Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches

This book presents a collection of computational intelligence algorithms that addresses issues in visual pattern recognition such as high computational complexity, abundance of pattern features, sensitivity to size and shape variations and poor performance against complex backgrounds. The book has 3...

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Detalles Bibliográficos
Autores principales: Pisharady, Pramod Kumar, Vadakkepat, Prahlad, Poh, Loh Ai
Lenguaje:eng
Publicado: Springer 2014
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-981-287-056-8
http://cds.cern.ch/record/1707500
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author Pisharady, Pramod Kumar
Vadakkepat, Prahlad
Poh, Loh Ai
author_facet Pisharady, Pramod Kumar
Vadakkepat, Prahlad
Poh, Loh Ai
author_sort Pisharady, Pramod Kumar
collection CERN
description This book presents a collection of computational intelligence algorithms that addresses issues in visual pattern recognition such as high computational complexity, abundance of pattern features, sensitivity to size and shape variations and poor performance against complex backgrounds. The book has 3 parts. Part 1 describes various research issues in the field with a survey of the related literature. Part 2 presents computational intelligence based algorithms for feature selection and classification. The algorithms are discriminative and fast. The main application area considered is hand posture recognition. The book also discusses utility of these algorithms in other visual as well as non-visual pattern recognition tasks including face recognition, general object recognition and cancer / tumor classification. Part 3 presents biologically inspired algorithms for feature extraction. The visual cortex model based features discussed have invariance with respect to appearance and size of the hand, and provide good inter class discrimination. A Bayesian model of visual attention is described which is effective in handling complex background problem in hand posture recognition. The book provides qualitative and quantitative performance comparisons for the algorithms outlined, with other standard methods in machine learning and computer vision. The book is self-contained with several figures, charts, tables and equations helping the reader to understand the material presented without instruction.
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spelling cern-17075002021-04-21T20:58:43Zdoi:10.1007/978-981-287-056-8http://cds.cern.ch/record/1707500engPisharady, Pramod KumarVadakkepat, PrahladPoh, Loh AiComputational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approachesEngineeringThis book presents a collection of computational intelligence algorithms that addresses issues in visual pattern recognition such as high computational complexity, abundance of pattern features, sensitivity to size and shape variations and poor performance against complex backgrounds. The book has 3 parts. Part 1 describes various research issues in the field with a survey of the related literature. Part 2 presents computational intelligence based algorithms for feature selection and classification. The algorithms are discriminative and fast. The main application area considered is hand posture recognition. The book also discusses utility of these algorithms in other visual as well as non-visual pattern recognition tasks including face recognition, general object recognition and cancer / tumor classification. Part 3 presents biologically inspired algorithms for feature extraction. The visual cortex model based features discussed have invariance with respect to appearance and size of the hand, and provide good inter class discrimination. A Bayesian model of visual attention is described which is effective in handling complex background problem in hand posture recognition. The book provides qualitative and quantitative performance comparisons for the algorithms outlined, with other standard methods in machine learning and computer vision. The book is self-contained with several figures, charts, tables and equations helping the reader to understand the material presented without instruction.Springeroai:cds.cern.ch:17075002014
spellingShingle Engineering
Pisharady, Pramod Kumar
Vadakkepat, Prahlad
Poh, Loh Ai
Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
title Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
title_full Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
title_fullStr Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
title_full_unstemmed Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
title_short Computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
title_sort computational intelligence in multi-feature visual pattern recognition: hand posture and face recognition using biologically inspired approaches
topic Engineering
url https://dx.doi.org/10.1007/978-981-287-056-8
http://cds.cern.ch/record/1707500
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AT vadakkepatprahlad computationalintelligenceinmultifeaturevisualpatternrecognitionhandpostureandfacerecognitionusingbiologicallyinspiredapproaches
AT pohlohai computationalintelligenceinmultifeaturevisualpatternrecognitionhandpostureandfacerecognitionusingbiologicallyinspiredapproaches