Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity

In this research, an approach is proposed for the robust tracking of upper body movement in unconstrained environments by using a Haar- Disparity algorithm together with a novel 2D silhouette projection algorithm. A cascade of boosted Haar classifiers is used to identify human faces in video images,...

Full description

Bibliographic Details
Main Author: Chu, Cheng-Tse
Language:en
Published: University of Canterbury. Computer Science and Software Engineering 2009
Subjects:
Online Access:http://hdl.handle.net/10092/2165
id ndltd-canterbury.ac.nz-oai-ir.canterbury.ac.nz-10092-2165
record_format oai_dc
spelling ndltd-canterbury.ac.nz-oai-ir.canterbury.ac.nz-10092-21652015-03-30T15:30:10ZRobust Upper Body Pose Recognition in Unconstrained Environments Using Haar-DisparityChu, Cheng-Tsecomputer visiongesture recognitionhuman-computer interationIn this research, an approach is proposed for the robust tracking of upper body movement in unconstrained environments by using a Haar- Disparity algorithm together with a novel 2D silhouette projection algorithm. A cascade of boosted Haar classifiers is used to identify human faces in video images, where a disparity map is then used to establish the 3D locations of detected faces. Based on this information, anthropometric constraints are used to define a semi-spherical interaction space for upper body poses. This constrained region serves the purpose of pruning the search space as well as validating user poses. Haar-Disparity improves on the traditional skin manifold tracking by relaxing constraints on clothing, background and illumination. The 2D silhouette projection algorithm provides three orthogonal views of the 3D objects. This allows tracking of upper limbs to be performed in the 2D space as opposed to manipulating 3D noisy data directly. This thesis also proposes a complete optimal set of interactions for very large interactive displays. Experimental evaluation includes the performance of alternative camera positions and orientations, accuracy of pointing, direct manipulative gestures, flag semaphore emulation, and principal axes. As a minor part of this research interest, the usability of interacting using only arm gestures is also evaluated based on ISO 9241-9 standard. The results suggest that the proposed algorithm and optimal set of interactions are useful for interacting with large displays.University of Canterbury. Computer Science and Software Engineering2009-03-08T22:12:29Z2009-03-08T22:12:29Z2008Electronic thesis or dissertationTexthttp://hdl.handle.net/10092/2165enNZCUCopyright Cheng-Tse Chuhttp://library.canterbury.ac.nz/thesis/etheses_copyright.shtml
collection NDLTD
language en
sources NDLTD
topic computer vision
gesture recognition
human-computer interation
spellingShingle computer vision
gesture recognition
human-computer interation
Chu, Cheng-Tse
Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity
description In this research, an approach is proposed for the robust tracking of upper body movement in unconstrained environments by using a Haar- Disparity algorithm together with a novel 2D silhouette projection algorithm. A cascade of boosted Haar classifiers is used to identify human faces in video images, where a disparity map is then used to establish the 3D locations of detected faces. Based on this information, anthropometric constraints are used to define a semi-spherical interaction space for upper body poses. This constrained region serves the purpose of pruning the search space as well as validating user poses. Haar-Disparity improves on the traditional skin manifold tracking by relaxing constraints on clothing, background and illumination. The 2D silhouette projection algorithm provides three orthogonal views of the 3D objects. This allows tracking of upper limbs to be performed in the 2D space as opposed to manipulating 3D noisy data directly. This thesis also proposes a complete optimal set of interactions for very large interactive displays. Experimental evaluation includes the performance of alternative camera positions and orientations, accuracy of pointing, direct manipulative gestures, flag semaphore emulation, and principal axes. As a minor part of this research interest, the usability of interacting using only arm gestures is also evaluated based on ISO 9241-9 standard. The results suggest that the proposed algorithm and optimal set of interactions are useful for interacting with large displays.
author Chu, Cheng-Tse
author_facet Chu, Cheng-Tse
author_sort Chu, Cheng-Tse
title Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity
title_short Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity
title_full Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity
title_fullStr Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity
title_full_unstemmed Robust Upper Body Pose Recognition in Unconstrained Environments Using Haar-Disparity
title_sort robust upper body pose recognition in unconstrained environments using haar-disparity
publisher University of Canterbury. Computer Science and Software Engineering
publishDate 2009
url http://hdl.handle.net/10092/2165
work_keys_str_mv AT chuchengtse robustupperbodyposerecognitioninunconstrainedenvironmentsusinghaardisparity
_version_ 1716799176719728640