Unsupervised classification of radar images using hidden Markov chains and hidden Markov random fields

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Abstract

Due to the enormous quantity of radar images acquired by satellites and through shuttle missions, there is an evident need for efficient automatic analysis tools. This paper describes unsupervised classification of radar images in the framework of hidden Markov models and generalized mixture estimation. Hidden Markov chain models, applied to a Hilbert-Peano scan of the image, constitute a fast and robust alternative to hidden Markov random field models for spatial regularization of image analysis problems, even though the latter provide a finer and more intuitive modeling of spatial relationships. We here compare the two approaches and show that they can be combined in a way that conserves their respective advantages. We also describe how the distribution families and parameters of classes with constant or textured radar reflectivity can be determined through generalized mixture estimation. Sample results obtained on real and simulated radar images are presented.

Original languageEnglish
Pages (from-to)675-686
Number of pages12
JournalIEEE Transactions on Geoscience and Remote Sensing
Volume41
Issue number3
DOIs
Publication statusPublished - 1 Mar 2003

Keywords

  • Generalized mixture estimation
  • Hidden Markov chains
  • Hidden Markov random fields
  • Radar images
  • Unsupervised classification

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