Estimating 3D hand pose using hierarchical multi-label classification

This paper presents an analysis of the design of classifiers for use in a hierarchical object recognition approach. In this approach, a cascade of classifiers is arranged in a tree in order to recognize multiple object classes. We are interested in the problem of recognizing multiple patterns as it...

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Auteurs principaux: Stenger, B, Thayananthan, A, Torr, PHS, Cipolla, R
Format: Journal article
Langue:English
Publié: Elsevier 2006
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author Stenger, B
Thayananthan, A
Torr, PHS
Cipolla, R
author_facet Stenger, B
Thayananthan, A
Torr, PHS
Cipolla, R
author_sort Stenger, B
collection OXFORD
description This paper presents an analysis of the design of classifiers for use in a hierarchical object recognition approach. In this approach, a cascade of classifiers is arranged in a tree in order to recognize multiple object classes. We are interested in the problem of recognizing multiple patterns as it is closely related to the problem of locating an articulated object. Each different pattern class corresponds to the hand in a different pose, or set of poses. For this problem obtaining labelled training data of the hand in a given pose can be problematic. Given a parametric 3D model, generating training data in the form of example images is cheap, and we demonstrate that it can be used to design classifiers almost as good as those trained using non-synthetic data. We compare a variety of different template-based classifiers and discuss their merits.
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spelling oxford-uuid:74c0477d-ea88-407e-9ba0-6e8ccf80114c2024-07-11T11:42:37ZEstimating 3D hand pose using hierarchical multi-label classificationJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:74c0477d-ea88-407e-9ba0-6e8ccf80114cEnglishSymplectic ElementsElsevier2006Stenger, BThayananthan, ATorr, PHSCipolla, RThis paper presents an analysis of the design of classifiers for use in a hierarchical object recognition approach. In this approach, a cascade of classifiers is arranged in a tree in order to recognize multiple object classes. We are interested in the problem of recognizing multiple patterns as it is closely related to the problem of locating an articulated object. Each different pattern class corresponds to the hand in a different pose, or set of poses. For this problem obtaining labelled training data of the hand in a given pose can be problematic. Given a parametric 3D model, generating training data in the form of example images is cheap, and we demonstrate that it can be used to design classifiers almost as good as those trained using non-synthetic data. We compare a variety of different template-based classifiers and discuss their merits.
spellingShingle Stenger, B
Thayananthan, A
Torr, PHS
Cipolla, R
Estimating 3D hand pose using hierarchical multi-label classification
title Estimating 3D hand pose using hierarchical multi-label classification
title_full Estimating 3D hand pose using hierarchical multi-label classification
title_fullStr Estimating 3D hand pose using hierarchical multi-label classification
title_full_unstemmed Estimating 3D hand pose using hierarchical multi-label classification
title_short Estimating 3D hand pose using hierarchical multi-label classification
title_sort estimating 3d hand pose using hierarchical multi label classification
work_keys_str_mv AT stengerb estimating3dhandposeusinghierarchicalmultilabelclassification
AT thayananthana estimating3dhandposeusinghierarchicalmultilabelclassification
AT torrphs estimating3dhandposeusinghierarchicalmultilabelclassification
AT cipollar estimating3dhandposeusinghierarchicalmultilabelclassification