• DocumentCode
    384278
  • Title

    Relational graph labelling using learning techniques and Markov random fields

  • Author

    Rivière, D. ; Mangin, J.E. ; Martinez, J.-M. ; Tupin, F. ; Papadopoulos-Orfanos, D. ; Frouin, V.

  • Author_Institution
    Service Hospitalier Frederic Joliot, CEA, Orsay, France
  • Volume
    2
  • fYear
    2002
  • fDate
    2002
  • Firstpage
    172
  • Abstract
    This paper introduces an approach for handling complex labelling problems driven by local constraints. The purpose is illustrated by two applications: detection of the road network on radar satellite images, and recognition of the cortical sulci on MRI images. Features must be initially extracted from the data to build a "feature graph" with structural relations. The goal is to endow each feature with a label representing either a specific object (recognition), or a class of objects (detection). Some contextual constraints have to be respected during this labelling. They are modelled by Markovian potentials assigned to the labellings of "feature clusters". The solution of the labelling problem is the minimum of the energy defined by the sum of the local potentials. This paper develops a method for learning these local potentials using "congregation" of neural networks and supervised learning.
  • Keywords
    Markov processes; biomedical MRI; feature extraction; graph theory; learning (artificial intelligence); neural nets; object recognition; remote sensing; Markov random fields; complex labelling problems; feature extraction; feature graph; local potential learning; medical MRI images; neural networks; object recognition; radar satellite images; relational graph labelling; road network; supervised learning; Image recognition; Labeling; Magnetic resonance imaging; Markov random fields; Radar applications; Radar detection; Radar imaging; Roads; Satellites; Spaceborne radar;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Pattern Recognition, 2002. Proceedings. 16th International Conference on
  • ISSN
    1051-4651
  • Print_ISBN
    0-7695-1695-X
  • Type

    conf

  • DOI
    10.1109/ICPR.2002.1048265
  • Filename
    1048265