Gesture recognition as a means of human-machine interface

Thesis (M.Eng.)--Memorial University of Newfoundland, 1998. Engineering and Applied Science Bibliography: leaves 95-97. The development of a reliable multi-modal human-machine interface has many potential applications. The interface with a personal computer has become very common yet many disabled u...

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Main Author: Hale, Rodney D., 1969-
Other Authors: Memorial University of Newfoundland. Faculty of Engineering and Applied Science
Format: Thesis
Language:English
Published: 1998
Subjects:
Online Access:http://collections.mun.ca/cdm/ref/collection/theses2/id/199810
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spelling ftmemorialunivdc:oai:collections.mun.ca:theses2/199810 2023-05-15T17:23:31+02:00 Gesture recognition as a means of human-machine interface Hale, Rodney D., 1969- Memorial University of Newfoundland. Faculty of Engineering and Applied Science 1998 ix, 185 leaves : ill. Image/jpeg; Application/pdf http://collections.mun.ca/cdm/ref/collection/theses2/id/199810 Eng eng Electronic Theses and Dissertations (17.85 MB) -- http://collections.mun.ca/PDFs/theses/Hale_RodneyD.pdf a1320363 http://collections.mun.ca/cdm/ref/collection/theses2/id/199810 The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission. Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries User interfaces (Computer systems) Pattern recognition systems Text Electronic thesis or dissertation 1998 ftmemorialunivdc 2015-08-06T19:17:16Z Thesis (M.Eng.)--Memorial University of Newfoundland, 1998. Engineering and Applied Science Bibliography: leaves 95-97. The development of a reliable multi-modal human-machine interface has many potential applications. The interface with a personal computer has become very common yet many disabled users have limited access due to the restrictiveness of the current interface. An improved interface would improve the quality of life for disabled users and has applications in controlling machinery in an industrial setting. Many different types of gestures ranging from head gestures, headpointing, hand and arm gestures are being investigated. A wide variety of classification techniques are available. These techniques range from simple clustering routines to complex adaptive routines. This work compares the recognition results of four pattern recognition techniques, the k-nearest neighbor, a Mahalanobis distance classifier, a rule based classifier and hidden Markov models. The techniques were tested on a set of six hand gestures captured using The Flock of Birds data collection system. The best average recognition result was 97% obtained from the k-nearest neighbor classifier, the Mahalanobis distance classifier had an average recognition rate at 92%, the rule based classifier had an average recognition rate at 89% and the hidden Markov models had the lowest average recognition results at 83%. The hidden Markov models are the most complex of the four techniques studied. Although the average recognition results were lower, they are rich in mathematical structure and can be used to model very complex observations. Thesis Newfoundland studies University of Newfoundland Memorial University of Newfoundland: Digital Archives Initiative (DAI)
institution Open Polar
collection Memorial University of Newfoundland: Digital Archives Initiative (DAI)
op_collection_id ftmemorialunivdc
language English
topic User interfaces (Computer systems)
Pattern recognition systems
spellingShingle User interfaces (Computer systems)
Pattern recognition systems
Hale, Rodney D., 1969-
Gesture recognition as a means of human-machine interface
topic_facet User interfaces (Computer systems)
Pattern recognition systems
description Thesis (M.Eng.)--Memorial University of Newfoundland, 1998. Engineering and Applied Science Bibliography: leaves 95-97. The development of a reliable multi-modal human-machine interface has many potential applications. The interface with a personal computer has become very common yet many disabled users have limited access due to the restrictiveness of the current interface. An improved interface would improve the quality of life for disabled users and has applications in controlling machinery in an industrial setting. Many different types of gestures ranging from head gestures, headpointing, hand and arm gestures are being investigated. A wide variety of classification techniques are available. These techniques range from simple clustering routines to complex adaptive routines. This work compares the recognition results of four pattern recognition techniques, the k-nearest neighbor, a Mahalanobis distance classifier, a rule based classifier and hidden Markov models. The techniques were tested on a set of six hand gestures captured using The Flock of Birds data collection system. The best average recognition result was 97% obtained from the k-nearest neighbor classifier, the Mahalanobis distance classifier had an average recognition rate at 92%, the rule based classifier had an average recognition rate at 89% and the hidden Markov models had the lowest average recognition results at 83%. The hidden Markov models are the most complex of the four techniques studied. Although the average recognition results were lower, they are rich in mathematical structure and can be used to model very complex observations.
author2 Memorial University of Newfoundland. Faculty of Engineering and Applied Science
format Thesis
author Hale, Rodney D., 1969-
author_facet Hale, Rodney D., 1969-
author_sort Hale, Rodney D., 1969-
title Gesture recognition as a means of human-machine interface
title_short Gesture recognition as a means of human-machine interface
title_full Gesture recognition as a means of human-machine interface
title_fullStr Gesture recognition as a means of human-machine interface
title_full_unstemmed Gesture recognition as a means of human-machine interface
title_sort gesture recognition as a means of human-machine interface
publishDate 1998
url http://collections.mun.ca/cdm/ref/collection/theses2/id/199810
genre Newfoundland studies
University of Newfoundland
genre_facet Newfoundland studies
University of Newfoundland
op_source Paper copy kept in the Centre for Newfoundland Studies, Memorial University Libraries
op_relation Electronic Theses and Dissertations
(17.85 MB) -- http://collections.mun.ca/PDFs/theses/Hale_RodneyD.pdf
a1320363
http://collections.mun.ca/cdm/ref/collection/theses2/id/199810
op_rights The author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission.
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