Human Action Segmentation and Recognition with a High Dimensional Single Camera System
A key goal in machine vision is to understand how the actions of sentient agents such as humans are processed, identified, and understood. The most apparent challenge is the need to segment a continuous set of visual movements into meaningful discrete actions. Part of the work of the intentional vis...
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ndltd-VANDERBILT-oai-VANDERBILTETD-etd-03242009-1527332013-01-08T17:16:30Z Human Action Segmentation and Recognition with a High Dimensional Single Camera System Hunter, Jonathan Edward Electrical Engineering A key goal in machine vision is to understand how the actions of sentient agents such as humans are processed, identified, and understood. The most apparent challenge is the need to segment a continuous set of visual movements into meaningful discrete actions. Part of the work of the intentional vision research was to detect a set of determining features exhibited by human participants that account for the selection of significant action boundaries as judged by human raters. They found that action boundaries could be identified by a set of sub-actions such as hand-to-object contacts, object-to-object contacts, occlusions, and eye movements. Our goal was to create a cost effective vision system to be an easy-to-use tool for training and tracking to aid in analysis of video recordings of experiments for non-vision specialists. The system was validated for human motion analysis by applying it in conjunction with psychological studies performed with the intentional vision research. The results show correlation with the human rater data gathered from the intentional vision research showing that the cues observed in the intentional vision research are captured in our behavior feature vector. The system was extended to perform autonomous segmentation and analysis for motion studies to expand the possibility of interdisciplinary use. Of the 100 videos collected, 84 were successfully segmented and analyzed without intervention. The autonomous system was also shown to yield good results in natural scene segmentation. Don Mitchell Wilkes Kazuhiko Kawamura Richard Alan Peters II Daniel Levin Megan Saylor VANDERBILT 2009-04-21 text video/x-msvideo application/pdf http://etd.library.vanderbilt.edu//available/etd-03242009-152733/ http://etd.library.vanderbilt.edu//available/etd-03242009-152733/ en unrestricted I hereby certify that, if appropriate, I have obtained and attached hereto a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to Vanderbilt University or its agents the non-exclusive license to archive and make accessible, under the conditions specified below, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report. |
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Electrical Engineering |
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Electrical Engineering Hunter, Jonathan Edward Human Action Segmentation and Recognition with a High Dimensional Single Camera System |
description |
A key goal in machine vision is to understand how the actions of sentient agents such as humans are processed, identified, and understood. The most apparent challenge is the need to segment a continuous set of visual movements into meaningful discrete actions. Part of the work of the intentional vision research was to detect a set of determining features exhibited by human participants that account for the selection of significant action boundaries as judged by human raters. They found that action boundaries could be identified by a set of sub-actions such as hand-to-object contacts, object-to-object contacts, occlusions, and eye movements. Our goal was to create a cost effective vision system to be an easy-to-use tool for training and tracking to aid in analysis of video recordings of experiments for non-vision specialists. The system was validated for human motion analysis by applying it in conjunction with psychological studies performed with the intentional vision research. The results show correlation with the human rater data gathered from the intentional vision research showing that the cues observed in the intentional vision research are captured in our behavior feature vector. The system was extended to perform autonomous segmentation and analysis for motion studies to expand the possibility of interdisciplinary use. Of the 100 videos collected, 84 were successfully segmented and analyzed without intervention. The autonomous system was also shown to yield good results in natural scene segmentation. |
author2 |
Don Mitchell Wilkes |
author_facet |
Don Mitchell Wilkes Hunter, Jonathan Edward |
author |
Hunter, Jonathan Edward |
author_sort |
Hunter, Jonathan Edward |
title |
Human Action Segmentation and Recognition with a High Dimensional Single Camera System |
title_short |
Human Action Segmentation and Recognition with a High Dimensional Single Camera System |
title_full |
Human Action Segmentation and Recognition with a High Dimensional Single Camera System |
title_fullStr |
Human Action Segmentation and Recognition with a High Dimensional Single Camera System |
title_full_unstemmed |
Human Action Segmentation and Recognition with a High Dimensional Single Camera System |
title_sort |
human action segmentation and recognition with a high dimensional single camera system |
publisher |
VANDERBILT |
publishDate |
2009 |
url |
http://etd.library.vanderbilt.edu//available/etd-03242009-152733/ |
work_keys_str_mv |
AT hunterjonathanedward humanactionsegmentationandrecognitionwithahighdimensionalsinglecamerasystem |
_version_ |
1716533301358886912 |