Statistical Models for Multidisciplinary Applications of Image Segmentation and Labelling
 
Statistical Models for Multidisciplinary Applications of Image Segmentation and Labelling 
 
Jan Cornelis, Edgard Nyssen, Antonis Katartzis, Luc van Kempen, Piet Boekaerts, Rudi Deklerck, Alexandru Ioan Salomie
 
Abstract 

Three classes of statistical techniques used to solve image segmentation and labelling problems are reviewed: (1) supervised and unsupervised pixel classification, (2) exploitation of the probability distribution map as a way to model image structure, (3) Markov random field modelling combined with MAP statistical classification. Diverse examples illustrate the potential of the three approaches that are described as generic methods belonging to a common framework for image segmentation/labelling