Nonlinear image labeling for multivalued segmentation

@article{Dellepiane1996NonlinearIL,
  title={Nonlinear image labeling for multivalued segmentation},
  author={Silvana G. Dellepiane and F. Fontana and Gianni Vernazza},
  journal={IEEE transactions on image processing : a publication of the IEEE Signal Processing Society},
  year={1996},
  volume={5 3},
  pages={
          429-46
        }
}
We describe a framework for multivalued segmentation and demonstrate that some of the problems affecting common region-based algorithms can be overcome by integrating statistical and topological methods in a nonlinear fashion. We address the sensitivity to parameter setting, the difficulty with handling global contextual information, and the dependence of results on analysis order and on initial conditions. We develop our method within a theoretical framework and resort to the definition of… 
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