inria-00321513, version 1
Greedy Gaussian mixture learning for texture segmentation
Jakob Verbeek
a, 1Nikos Vlassis
b, 1Ben Krose
a, 1
ICANN Workshop on Kernel and Subspace Methods for Computer Vision (2001) 37--46
Abstract: The problem of segmenting an image into several modalities representing different textures can be modeled using Gaussian mixtures. Fitting a Gaussian mixtures on the data is not trivial problem and no guaranteed optimal algorithm exists. In this paper we show the benefits of a recently developed greedy procedure to Gaussian mixture learning to the problem of texture segmentation. We present the greedy learning method and provide experimental results illustrating the potential of the new method.
- a – Universiteit van Amsterdam
- b – Technical University of Crete
- 1: Instituut voor Informatica (IvI)
- Universiteit van Amsterdam
- Domain : Computer Science/Learning
- inria-00321513, version 1
- http://hal.inria.fr/inria-00321513
- oai:hal.inria.fr:inria-00321513
- From: Jakob Verbeek
- Submitted on: Wednesday, 16 February 2011 17:04:50
- Updated on: Friday, 18 February 2011 14:08:08







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