DocumentCode :
3707858
Title :
Texture classification using Rao´s distance: An EM algorithm on the poincaré half plane
Author :
Salem Said;Lionel Bombrun;Yannick Berthoumieu
Author_Institution :
Laboratoire IMS (CNRS - UMR 5218), Université
fYear :
2015
Firstpage :
3466
Lastpage :
3470
Abstract :
This paper presents a new Bayesian approach to texture classification, yielding enhanced performance in the presence of intraclass diversity. From a mathematical point of view, it specifies an original EM algorithm for mixture estimation on Riemannian manifolds, generalising existing, non probabilistic, clustering analysis methods. For texture classification, the chosen feature space is the Riemannian manifold known as the Poincaré half plane, here denoted H, (this is the set of univariate normal distributions, equipped with Rao´s distance). Classes are modelled as finite mixtures of Riemannian priors, (Riemannian priors are probability distributions, recently introduced by the authors, which represent clusters of points in H). During the training phase of classification, the EM algorithm, proposed in this paper, computes maximum likelihood estimates of the parameters of these mixtures. The algorithm combines the structure of an EM algorithm for mixture estimation, with a Riemannian gradient descent, for computing weighted Riemannian centres of mass.
Keywords :
"Measurement","Manifolds","Maximum likelihood estimation","Sociology","Bayes methods","Clustering algorithms"
Publisher :
ieee
Conference_Titel :
Image Processing (ICIP), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/ICIP.2015.7351448
Filename :
7351448
Link To Document :
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