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Crane, M. (2010). Nonparametric Estimation of Three Dimensional Projective Shapes with Applications in Medical Imaging and in Pattern
Recognition. Retrieved from http://purl.flvc.org/fsu/fd/FSU_migr_etd-4607
This dissertation is on analysis of invariants of a 3D configuration from its 2D images in pictures of this configuration, without requiring any restriction on the camera positioning relative to the scene pictured. We briefly review some of the main results found in the literature. The methodology used is nonparametric, manifold based combined with standard computer vision re-construction techniques. More specifically, we use asymptotic results for the extrinsic sample mean and the extrinsic sample covariance to construct boot-strap confidence regions for mean projective shapes of 3D configurations. Chapters 4, 5 and 6 contain new results. In chapter 4, we develop tests for coplanarity. In chapter 5, is on reconstruction of 3D polyhedral scenes, including texture from arbitrary partial views. In chapter 6, we develop a nonparametric methodology for estimating the mean change for matched samples on a Lie group. We then notice that for k ≥ 4, a manifold of projective shapes of k-ads in general position in 3D has a structure of 3k − 15 dimensional Lie group (P-Quaternions) that is equivariantly embedded in an Euclidean space, therefore testing for mean 3D projective shape change amounts to a one sample test for extrinsic mean PQuaternion Objects. The Lie group technique leads to a large sample and nonparametric bootstrap test for one population extrinsic mean on a projective shape space, as recently developed by Patrangenaru, Liu and Sughatadasa. On the other hand, in absence of occlusions, the 3D projective shape of a spatial configuration can be recovered from a stereo pair of images, thus allowing to test for mean glaucomatous 3D projective shape change detection from standard stereo pairs of eye images.
Extrinsic Mean, Statistics on Manifolds, Nonparametric Bootstrap, Image Analysis
Date of Defense
May 3, 2010.
Submitted Note
A Dissertation submitted to the Department of Statistics in partial fulfillment of the requirements for the degree of Doctor of Philosophy.
Bibliography Note
Includes bibliographical references.
Advisory Committee
Victor Patrangenaru, Professor Directing Dissertation; Xiuwen Liu, University Representative; Fred W. Huffer, Committee Member; Debajyoti Sinha, Committee Member.
Publisher
Florida State University
Identifier
FSU_migr_etd-4607
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Crane, M. (2010). Nonparametric Estimation of Three Dimensional Projective Shapes with Applications in Medical Imaging and in Pattern
Recognition. Retrieved from http://purl.flvc.org/fsu/fd/FSU_migr_etd-4607