INVESTIGADORES
FLESIA Ana Georgina
congresos y reuniones científicas
Título:
On segmentation with Markovian prior models
Autor/es:
ANA G FLESIA; JAVIER GIMENEZ; JOSEF BAUMGARTNER
Lugar:
Córdoba
Reunión:
Simposio; ASAI 2013; 2013
Institución organizadora:
SADIO
Resumen:
This paper addresses the image modeling problem under the assumption that images can be represented by 2d order, hidden Markov random field models. The modeling applications we have in mind comprise pixelwise segmentation of gray-level images coming from the field of Oral Radiographic Di fferential Diagnosis. Segmentation is achieved by approximations to the solution of the maximum a posteriori equation (MAP) when the emission distribution is assumed the same in all models and the diff erence lays in the Neighborhood Markovian hypothesis made over the labeling random field. For two algorithms, 2d path-constrained Viterbi training and Potts-ICM we investigate goodness of fit by study- ing statistical complexity, computational gain, extent of automation, and rate of classication measured with kappa statistic. All code written is provided in a Matlab toolbox available for download from our website, following the Reproducible Research Paradigm.