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inria-00072028, version 1

Gamma-convergence of discrete functionals with non convex perturbation for image classification

Gilles Aubert 1, Laure Blanc-Féraud (), Riccardo March

N° RR-4560 (2002)

Résumé : The purpose of this report is to show the theoretical soundness of a variation- al method proposed in image processing for supervised classification. Based on works developed for phase transitions in fluid mechanics, the classification is obtained by minimizing a sequence of functionals. The method provides an image composed of homogeneous regions with regular boundaries, a region being defined as a set of pixels belonging to the same class. In this paper, we show the gamma-convergence of the sequence of functionals which differ from the ones proposed in fluid mechanics in the sense that the perturbation term is not quadratic but has a finite asymptote at infinity, corresponding to an edge preserving regularization term in image processing.

  • 1 :  ARIANA (INRIA Sophia Antipolis / Laboratoire I3S)
  • INRIA – Université Nice Sophia Antipolis [UNS] – CNRS : UMR7271
  • Domaine : Informatique/Autre
  • Mots-clés : GAMMA-CONVERGENCE / IMAGE CLASSIFICATION / EDGE-PRESERVING REGULARIZATION
  • Référence interne : RR-4560
 
  • inria-00072028, version 1
  • oai:hal.inria.fr:inria-00072028
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  • Soumis le : Mardi 23 Mai 2006, 19:36:15
  • Dernière modification le : Mercredi 31 Mai 2006, 14:24:26