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Article
A Wrapped Trivariate Normal Distribution and Bayes Inference for 3-D Rotations
Statistica Sinica
  • Yu Qiu, Iowa State University
  • Daniel J. Nordman, Iowa State University
  • Stephen B. Vardeman, Iowa State University
Document Type
Article
Publication Version
Published Version
Publication Date
1-1-2014
DOI
10.5705/ss.2011.235
Abstract

For modeling orientation data represented as 3 × 3 rotation matrices, we develop a wrapped trivariate normal distribution (wTND) under which random rotations have simple geometric construction as symmetric errors about a mean. While of interest in its own right, the wTND also provides simple and effective approximations to the isotropic Gaussian distribution on rotations, with some advantages over approximations based on other commonly used models. We develop non-informative Bayes inference for the wTND via Markov Chain Monte Carlo methods that allow straightforward computations in a model where maximum likelihood is undefined. Credible regions for model parameters (including a fixed 3 × 3 mean rotation) are shown to possess good frequentist coverage properties. We illustrate the model and inference method with orientation data collected in texture analysis from materials science.

Comments

This article is from Statistica Sinica 24 (2014): 897, doi: 10.5705/ss.2011.235. Posted with permission.

Copyright Owner
Institute of Statistical Science, Academia Sinica
Language
en
File Format
application/pdf
Citation Information
Yu Qiu, Daniel J. Nordman and Stephen B. Vardeman. "A Wrapped Trivariate Normal Distribution and Bayes Inference for 3-D Rotations" Statistica Sinica Vol. 24 Iss. 2 (2014) p. 897 - 917
Available at: http://works.bepress.com/stephen_vardeman/6/