• DocumentCode
    980984
  • Title

    Hierarchical Bayesian Sparse Image Reconstruction With Application to MRFM

  • Author

    Dobigeon, Nicolas ; Hero, Alfred O. ; Tourneret, Jean-Yves

  • Author_Institution
    Dept. of Electr. Eng. & Comput. Sci., Univ. of Michigan, Ann Arbor, MI, USA
  • Volume
    18
  • Issue
    9
  • fYear
    2009
  • Firstpage
    2059
  • Lastpage
    2070
  • Abstract
    This paper presents a hierarchical Bayesian model to reconstruct sparse images when the observations are obtained from linear transformations and corrupted by an additive white Gaussian noise. Our hierarchical Bayes model is well suited to such naturally sparse image applications as it seamlessly accounts for properties such as sparsity and positivity of the image via appropriate Bayes priors. We propose a prior that is based on a weighted mixture of a positive exponential distribution and a mass at zero. The prior has hyperparameters that are tuned automatically by marginalization over the hierarchical Bayesian model. To overcome the complexity of the posterior distribution, a Gibbs sampling strategy is proposed. The Gibbs samples can be used to estimate the image to be recovered, e.g., by maximizing the estimated posterior distribution. In our fully Bayesian approach, the posteriors of all the parameters are available. Thus, our algorithm provides more information than other previously proposed sparse reconstruction methods that only give a point estimate. The performance of the proposed hierarchical Bayesian sparse reconstruction method is illustrated on synthetic data and real data collected from a tobacco virus sample using a prototype MRFM instrument.
  • Keywords
    Markov processes; Monte Carlo methods; biomedical MRI; exponential distribution; image reconstruction; microscopy; Gibbs sampling strategy; Markov chain Monte Carlo; additive white Gaussian noise; hierarchical Bayesian sparse image reconstruction; linear transformation; magnetic resonance force microscopy imaging; positive exponential distribution; posterior distribution estimation; synthetic data; tobacco virus sample; Bayesian inference; Markov chain Monte Carlo (MCMC) methods; deconvolution; magnetic resonance force microscopy (MRFM) imaging; sparse representation; Algorithms; Artificial Intelligence; Bayes Theorem; Image Processing, Computer-Assisted; Magnetic Resonance Spectroscopy; Markov Chains; Microscopy, Atomic Force; Monte Carlo Method; Tobacco Mosaic Virus;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/TIP.2009.2024067
  • Filename
    5033421