Learning 3-D Models of Object Structure from Images

Recognizing objects in images is an effortless task for most people.Automating this task with computers, however, presents a difficult challengeattributable to large variations in object appearance, shape, and pose. The problemis further compounded by ambiguity from projecting 3-D objects into a 2-...

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Main Author: Schlecht, Joseph
Other Authors: Barnard, Kobus
Language:EN
Published: The University of Arizona. 2010
Subjects:
Online Access:http://hdl.handle.net/10150/194661
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-1946612015-10-23T04:41:25Z Learning 3-D Models of Object Structure from Images Schlecht, Joseph Barnard, Kobus Barnard, Kobus Efrat, Alon Morrison, Clayton Fasel, Ian 3-D Object recognition Computer vision Machine learning MCMC sampling Statistical inference Recognizing objects in images is an effortless task for most people.Automating this task with computers, however, presents a difficult challengeattributable to large variations in object appearance, shape, and pose. The problemis further compounded by ambiguity from projecting 3-D objects into a 2-D image.In this thesis we present an approach to resolve these issues by modeling objectstructure with a collection of connected 3-D geometric primitives and a separatemodel for the camera. From sets of images we simultaneously learn a generative,statistical model for the object representation and parameters of the imagingsystem. By learning 3-D structure models we are going beyond recognitiontowards quantifying object shape and understanding its variation.We explore our approach in the context of microscopic images of biologicalstructure and single view images of man-made objects composed of block-likeparts, such as furniture. We express detected features from both domains asstatistically generated by an image likelihood conditioned on models for theobject structure and imaging system. Our representation of biological structurefocuses on Alternaria, a genus of fungus comprising ellipsoid and cylindershaped substructures. In the case of man-made furniture objects, we representstructure with spatially contiguous assemblages of blocks arbitrarilyconstructed according to a small set of design constraints.We learn the models with Bayesian statistical inference over structure andcamera parameters per image, and for man-made objects, across categories, suchas chairs. We develop a reversible-jump MCMC sampling algorithm to exploretopology hypotheses, and a hybrid of Metropolis-Hastings and stochastic dynamicsto search within topologies. Our results demonstrate that we can infer both 3-Dobject and camera parameters simultaneously from images, and that doing soimproves understanding of structure in images. We further show how 3-D structuremodels can be inferred from single view images, and that learned categoryparameters capture structure variation that is useful for recognition. 2010 text Electronic Dissertation http://hdl.handle.net/10150/194661 659753694 10816 EN Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language EN
sources NDLTD
topic 3-D Object recognition
Computer vision
Machine learning
MCMC sampling
Statistical inference
spellingShingle 3-D Object recognition
Computer vision
Machine learning
MCMC sampling
Statistical inference
Schlecht, Joseph
Learning 3-D Models of Object Structure from Images
description Recognizing objects in images is an effortless task for most people.Automating this task with computers, however, presents a difficult challengeattributable to large variations in object appearance, shape, and pose. The problemis further compounded by ambiguity from projecting 3-D objects into a 2-D image.In this thesis we present an approach to resolve these issues by modeling objectstructure with a collection of connected 3-D geometric primitives and a separatemodel for the camera. From sets of images we simultaneously learn a generative,statistical model for the object representation and parameters of the imagingsystem. By learning 3-D structure models we are going beyond recognitiontowards quantifying object shape and understanding its variation.We explore our approach in the context of microscopic images of biologicalstructure and single view images of man-made objects composed of block-likeparts, such as furniture. We express detected features from both domains asstatistically generated by an image likelihood conditioned on models for theobject structure and imaging system. Our representation of biological structurefocuses on Alternaria, a genus of fungus comprising ellipsoid and cylindershaped substructures. In the case of man-made furniture objects, we representstructure with spatially contiguous assemblages of blocks arbitrarilyconstructed according to a small set of design constraints.We learn the models with Bayesian statistical inference over structure andcamera parameters per image, and for man-made objects, across categories, suchas chairs. We develop a reversible-jump MCMC sampling algorithm to exploretopology hypotheses, and a hybrid of Metropolis-Hastings and stochastic dynamicsto search within topologies. Our results demonstrate that we can infer both 3-Dobject and camera parameters simultaneously from images, and that doing soimproves understanding of structure in images. We further show how 3-D structuremodels can be inferred from single view images, and that learned categoryparameters capture structure variation that is useful for recognition.
author2 Barnard, Kobus
author_facet Barnard, Kobus
Schlecht, Joseph
author Schlecht, Joseph
author_sort Schlecht, Joseph
title Learning 3-D Models of Object Structure from Images
title_short Learning 3-D Models of Object Structure from Images
title_full Learning 3-D Models of Object Structure from Images
title_fullStr Learning 3-D Models of Object Structure from Images
title_full_unstemmed Learning 3-D Models of Object Structure from Images
title_sort learning 3-d models of object structure from images
publisher The University of Arizona.
publishDate 2010
url http://hdl.handle.net/10150/194661
work_keys_str_mv AT schlechtjoseph learning3dmodelsofobjectstructurefromimages
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