• DocumentCode
    1346798
  • Title

    Inversion of large-support ill-posed linear operators using a piecewise Gaussian MRF

  • Author

    Nikolova, Mila ; Idier, Jerome ; Mohammad-Djafari, Ali

  • Author_Institution
    Lab. des Signaux et Syst., CNRS, Gif-sur-Yvette, France
  • Volume
    7
  • Issue
    4
  • fYear
    1998
  • fDate
    4/1/1998 12:00:00 AM
  • Firstpage
    571
  • Lastpage
    585
  • Abstract
    We propose a method for the reconstruction of signals and images observed partially through a linear operator with a large support (e.g., a Fourier transform on a sparse set). This inverse problem is ill-posed and we resolve it by incorporating the prior information that the reconstructed objects are composed of smooth regions separated by sharp transitions. This feature is modeled by a piecewise Gaussian (PG) Markov random field (MRF), known also as the weak-string in one dimension and the weak-membrane in two dimensions. The reconstruction is defined as the maximum a posteriori estimate. The prerequisite for the use of such a prior is the success of the optimization stage. The posterior energy corresponding to a PG MRF is generally multimodal and its minimization is particularly problematic. In this context, general forms of simulated annealing rapidly become intractable when the observation operator extends over a large support. Global optimization is dealt with by extending the graduated nonconvexity (GNC) algorithm to ill-posed linear inverse problems. GNC has been pioneered by Blake and Zisserman (1987) in the field of image segmentation. The resulting algorithm is mathematically suboptimal but it is seen to be very efficient in practice. We show that the original GNC does not correctly apply to ill-posed problems. Our extension is based on a proper theoretical analysis, which provides further insight into the GNC. The performance of the proposed algorithm is corroborated by a synthetic example in the area of diffraction tomography
  • Keywords
    Gaussian processes; Markov processes; computerised tomography; image reconstruction; image segmentation; inverse problems; linear systems; mathematical operators; maximum likelihood estimation; minimisation; random processes; simulated annealing; Fourier transform; Markov random field; diffraction tomography; global optimization; graduated nonconvexity algorithm; ill-posed linear inverse problems; image reconstruction; image segmentation; large-support ill-posed linear operators; mathematically suboptimal algorithm; maximum a posteriori estimate; minimization; observation operator; performance; piecewise Gaussian MRF; posterior energy; sharp transitions; signal reconstruction; simulated annealing; smooth regions; sparse set; weak-membrane; weak-string; Context modeling; Diffraction; Fourier transforms; Image reconstruction; Image segmentation; Inverse problems; Markov random fields; Maximum a posteriori estimation; Signal resolution; Simulated annealing;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/83.663502
  • Filename
    663502