Gappy POD and Temporal Correspondence for Lizard Motion Estimation
With the maturity of conventional industrial robots, there has been increasing interest in designing robots that emulate realistic animal motions. This discipline requires careful and systematic investigation of a wide range of animal motions from biped, to quadruped, and even to serpentine motion...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-836032020-09-29T05:46:24Z Gappy POD and Temporal Correspondence for Lizard Motion Estimation Kurdila, Hannah Robertshaw Mathematics Borggaard, Jeffrey T. Gugercin, Serkan Zietsman, Lizette Gappy proper orthogonal decomposition lizard locomotion motion capture occlusion pose estimation temporal correspondence tracking With the maturity of conventional industrial robots, there has been increasing interest in designing robots that emulate realistic animal motions. This discipline requires careful and systematic investigation of a wide range of animal motions from biped, to quadruped, and even to serpentine motion of centipedes, millipedes, and snakes. Collecting optical motion capture data of such complex animal motions can be complicated for several reasons. Often there is the need to use many high-quality cameras for detailed subject tracking, and self-occlusion, loss of focus, and contrast variations challenge any imaging experiment. The problem of self-occlusion is especially pronounced for animals. In this thesis, we walk through the process of collecting motion capture data of a running lizard. In our collected raw video footage, it is difficult to make temporal correspondences using interpolation methods because of prolonged blurriness, occlusion, or the limited field of vision of our cameras. To work around this, we first make a model data set by making our best guess of the points' locations through these corruptions. Then, we randomly eclipse the data, use Gappy POD to repair the data and then see how closely it resembles the initial set, culminating in a test case where we simulate the actual corruptions we see in the raw video footage. Master of Science 2018-06-21T08:01:12Z 2018-06-21T08:01:12Z 2018-06-20 Thesis vt_gsexam:15350 http://hdl.handle.net/10919/83603 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech |
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Gappy proper orthogonal decomposition lizard locomotion motion capture occlusion pose estimation temporal correspondence tracking |
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Gappy proper orthogonal decomposition lizard locomotion motion capture occlusion pose estimation temporal correspondence tracking Kurdila, Hannah Robertshaw Gappy POD and Temporal Correspondence for Lizard Motion Estimation |
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With the maturity of conventional industrial robots, there has been increasing interest in designing robots that emulate realistic animal motions. This discipline requires careful and systematic investigation of a wide range of animal motions from biped, to quadruped, and even to serpentine motion of centipedes, millipedes, and snakes. Collecting optical motion capture data of such complex animal motions can be complicated for several reasons. Often there is the need to use many high-quality cameras for detailed subject tracking, and self-occlusion, loss of focus, and contrast variations challenge any imaging experiment. The problem of self-occlusion is especially pronounced for animals. In this thesis, we walk through the process of collecting motion capture data of a running lizard. In our collected raw video footage, it is difficult to make temporal correspondences using interpolation methods because of prolonged blurriness, occlusion, or the limited field of vision of our cameras. To work around this, we first make a model data set by making our best guess of the points' locations through these corruptions. Then, we randomly eclipse the data, use Gappy POD to repair the data and then see how closely it resembles the initial set, culminating in a test case where we simulate the actual corruptions we see in the raw video footage. === Master of Science |
author2 |
Mathematics |
author_facet |
Mathematics Kurdila, Hannah Robertshaw |
author |
Kurdila, Hannah Robertshaw |
author_sort |
Kurdila, Hannah Robertshaw |
title |
Gappy POD and Temporal Correspondence for Lizard Motion Estimation |
title_short |
Gappy POD and Temporal Correspondence for Lizard Motion Estimation |
title_full |
Gappy POD and Temporal Correspondence for Lizard Motion Estimation |
title_fullStr |
Gappy POD and Temporal Correspondence for Lizard Motion Estimation |
title_full_unstemmed |
Gappy POD and Temporal Correspondence for Lizard Motion Estimation |
title_sort |
gappy pod and temporal correspondence for lizard motion estimation |
publisher |
Virginia Tech |
publishDate |
2018 |
url |
http://hdl.handle.net/10919/83603 |
work_keys_str_mv |
AT kurdilahannahrobertshaw gappypodandtemporalcorrespondenceforlizardmotionestimation |
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1719346342288949248 |