Discrete Markov random field models provide a natural framework for representing images or spatial datasets. They model the spatial association present while providing a convenient Markovian dependency structure and strong edge-preservation properties. However, parameter estimation for discrete Markov random field models is difficult due to the complex form of the associated normalizing constant for the likelihood function. For large lattices, the reduced dependence approximation to the normalizing constant is based on the concept of performing computationally efficient and feasible forward recursions on smaller sublattices which are then suitably combined to estimate the constant for the whole lattice. We present an efficient computational...
We illustrate how the recursive algorithm of Reeves & Pettitt (2004) for general factorizable mo...
This project explores the autologistic model for spatially correlated binary lattice data and uses a...
Random field models in image analysis and spatial statistics usually have local interactions. They c...
Discrete Markov random field models provide a natural framework for representing images or spatial d...
Discrete Markov random field models provide a natural framework for representing images or spatial d...
Hidden Markov random field models provide an appealing representation of images and other spatial pr...
Abstract. The autologistic model is a Markov random field model for spatial binary data. Because it ...
This thesis deals with how computationally effective lattice models could be used for inference of d...
Mixture models are commonly used in the statistical segmentation of images. For example, they can be...
Hidden Markov random field models provide an appealing representation of images and other spatial pr...
Motivated by the autologistic model for the analysis of spatial binary data on the two-dimensional l...
Hidden Markov random field models provide an appealing representation of images and other spatial pr...
<p>The pseudo likelihood method of Besag (1974) has remained a popular method for estimating Markov ...
The purpose of this paper is to extend the locally based prediction methodology of BayMar to a globa...
We present a variational Bayesian framework for performing inference, density estimation and model s...
We illustrate how the recursive algorithm of Reeves & Pettitt (2004) for general factorizable mo...
This project explores the autologistic model for spatially correlated binary lattice data and uses a...
Random field models in image analysis and spatial statistics usually have local interactions. They c...
Discrete Markov random field models provide a natural framework for representing images or spatial d...
Discrete Markov random field models provide a natural framework for representing images or spatial d...
Hidden Markov random field models provide an appealing representation of images and other spatial pr...
Abstract. The autologistic model is a Markov random field model for spatial binary data. Because it ...
This thesis deals with how computationally effective lattice models could be used for inference of d...
Mixture models are commonly used in the statistical segmentation of images. For example, they can be...
Hidden Markov random field models provide an appealing representation of images and other spatial pr...
Motivated by the autologistic model for the analysis of spatial binary data on the two-dimensional l...
Hidden Markov random field models provide an appealing representation of images and other spatial pr...
<p>The pseudo likelihood method of Besag (1974) has remained a popular method for estimating Markov ...
The purpose of this paper is to extend the locally based prediction methodology of BayMar to a globa...
We present a variational Bayesian framework for performing inference, density estimation and model s...
We illustrate how the recursive algorithm of Reeves & Pettitt (2004) for general factorizable mo...
This project explores the autologistic model for spatially correlated binary lattice data and uses a...
Random field models in image analysis and spatial statistics usually have local interactions. They c...