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Improving Potts MRF Model Parameter Estimation in Image Analysis
July 16-July 18
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/CSE.2008.112008 11th IEEE International Conferen ...
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This paper presents a novel pseudo-likelihood equation for the estimation of the Potts MRF model parameter on second-order neighborhood systems. Experiments with simulated images comparing the proposed estimation method with a recent maximum likelihood estimation approach derived in literature show the superiority of our methodology. In order to evaluate the performance of the estimation method, we proposed a hypothesis testing approach to validate the obtained results. The test statistic together with the p-values, calculated through our approximation for the asymptotic variance of maximum pseudo-likelihood estimators, provide a complete framework for quantitative analysis of Potts model parameter estimation in image processing, pattern recognition and computer vision applications using MRF models.
Index Terms:
Markov Random Fields. Potts model, Maximum Pseudo-Likelihood Estimation, Image Analysis
Citation:
Alexandre L. M. Levada, Nelson D. A. Mascarenhas, Alberto Tann?, "Improving Potts MRF Model Parameter Estimation in Image Analysis," cse, pp.211-218, 2008 11th IEEE International Conference on Computational Science and Engineering, 2008
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