3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation

Dexterous robotic manipulation of non-rigid objects is a challenging problem but necessary to explore as robots are increasingly interacting with more complex environments in which such objects are frequently present. In particular, common manipulation tasks such as molding clay to a target shape...

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Bibliographic Details
Main Author: Valencia, Angel
Other Authors: Payeur, Pierre
Format: Others
Language:en
Published: Université d'Ottawa / University of Ottawa 2020
Subjects:
Online Access:http://hdl.handle.net/10393/40718
http://dx.doi.org/10.20381/ruor-24946
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spelling ndltd-uottawa.ca-oai-ruor.uottawa.ca-10393-407182020-07-15T07:09:31Z 3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation Valencia, Angel Payeur, Pierre deformable objects deformation modeling dexterous manipulation robotics Dexterous robotic manipulation of non-rigid objects is a challenging problem but necessary to explore as robots are increasingly interacting with more complex environments in which such objects are frequently present. In particular, common manipulation tasks such as molding clay to a target shape or picking fruits and vegetables for use in the kitchen, require a high-level understanding of the scene and objects. Commonly, the behavior of non-rigid objects is described by a model. Although, well-established modeling techniques are difficult to apply in robotic tasks since objects and their properties are unknown in such unstructured environments. This work proposes a sensing and modeling framework to measure the 3D shape deformation of non-rigid objects. Unlike traditional methods, this framework explores data-driven learning techniques focused on shape representation and deformation dynamics prediction using a graph-based approach. The proposal is validated experimentally, analyzing the performance of the representation model to capture the current state of the non-rigid object shape. In addition, the performance of the prediction model is analyzed in terms of its ability to produce future states of the non-rigid object shape due to the manipulation actions of the robotic system. The results suggest that the representation model is able to produce graphs that closely capture the deformation behavior of the non-rigid object. Whereas, the prediction model produces visually plausible graphs when short-term predictions are required. 2020-07-09T20:08:40Z 2020-07-09T20:08:40Z 2020-07-09 Thesis http://hdl.handle.net/10393/40718 http://dx.doi.org/10.20381/ruor-24946 en application/pdf Université d'Ottawa / University of Ottawa
collection NDLTD
language en
format Others
sources NDLTD
topic deformable objects
deformation modeling
dexterous manipulation
robotics
spellingShingle deformable objects
deformation modeling
dexterous manipulation
robotics
Valencia, Angel
3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation
description Dexterous robotic manipulation of non-rigid objects is a challenging problem but necessary to explore as robots are increasingly interacting with more complex environments in which such objects are frequently present. In particular, common manipulation tasks such as molding clay to a target shape or picking fruits and vegetables for use in the kitchen, require a high-level understanding of the scene and objects. Commonly, the behavior of non-rigid objects is described by a model. Although, well-established modeling techniques are difficult to apply in robotic tasks since objects and their properties are unknown in such unstructured environments. This work proposes a sensing and modeling framework to measure the 3D shape deformation of non-rigid objects. Unlike traditional methods, this framework explores data-driven learning techniques focused on shape representation and deformation dynamics prediction using a graph-based approach. The proposal is validated experimentally, analyzing the performance of the representation model to capture the current state of the non-rigid object shape. In addition, the performance of the prediction model is analyzed in terms of its ability to produce future states of the non-rigid object shape due to the manipulation actions of the robotic system. The results suggest that the representation model is able to produce graphs that closely capture the deformation behavior of the non-rigid object. Whereas, the prediction model produces visually plausible graphs when short-term predictions are required.
author2 Payeur, Pierre
author_facet Payeur, Pierre
Valencia, Angel
author Valencia, Angel
author_sort Valencia, Angel
title 3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation
title_short 3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation
title_full 3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation
title_fullStr 3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation
title_full_unstemmed 3D Shape Deformation Measurement and Dynamic Representation for Non-Rigid Objects under Manipulation
title_sort 3d shape deformation measurement and dynamic representation for non-rigid objects under manipulation
publisher Université d'Ottawa / University of Ottawa
publishDate 2020
url http://hdl.handle.net/10393/40718
http://dx.doi.org/10.20381/ruor-24946
work_keys_str_mv AT valenciaangel 3dshapedeformationmeasurementanddynamicrepresentationfornonrigidobjectsundermanipulation
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