• DocumentCode
    49095
  • Title

    Bayesian Blind Separation and Deconvolution of Dynamic Image Sequences Using Sparsity Priors

  • Author

    Tichy, Ondrej ; Smidl, Vaclav

  • Author_Institution
    Inst. of Inf. Theor. & Autom., Prague, Czech Republic
  • Volume
    34
  • Issue
    1
  • fYear
    2015
  • fDate
    Jan. 2015
  • Firstpage
    258
  • Lastpage
    266
  • Abstract
    A common problem of imaging 3-D objects into image plane is superposition of the projected structures. In dynamic imaging, projection overlaps of organs and tissues complicate extraction of signals specific to individual structures with different dynamics. The problem manifests itself also in dynamic tomography as tissue mixtures are present in voxels. Separation of signals specific to dynamic structures belongs to the category of blind source separation. It is an underdetermined problem with many possible solutions. Existing separation methods select the solution that best matches their additional assumptions on the source model. We propose a novel blind source separation method based on probabilistic model of dynamic image sequences assuming each source dynamics as convolution of an input function and a source specific kernel (modeling organ impulse response or retention function). These assumptions are formalized as a Bayesian model with hierarchical prior and solved by the Variational Bayes method. The proposed prior distribution assigns higher probability to sparse source images and sparse convolution kernels. We show that the results of separation are relevant to selected tasks of dynamic renal scintigraphy. Accuracy of tissue separation with simulated and clinical data provided by the proposed method outperformed accuracy of previously developed methods measured by the mean square and mean absolute errors of estimation of simulated sources and the sources separated by an expert physician. MATLAB implementation of the algorithm is available for download.
  • Keywords
    Bayes methods; biological organs; biological tissues; blind source separation; convolution; deconvolution; image segmentation; mean square error methods; medical image processing; radioisotope imaging; Bayesian blind separation; MATLAB; blind source separation method; dynamic image sequence deconvolution; dynamic renal scintigraphy; mean absolute errors; mean square errors; organ impulse response; organ retention function; probabilistic model; source specific kernel; sparse convolution kernel; sparse source image; sparsity priors; tissue separation; variational Bayes method; Bayes methods; Blind source separation; Convolution; Estimation; Kernel; Mathematical model; Vectors; Blind source separation; computer-aided detection and diagnosis; functional imaging; probabilistic and statistical methods;
  • fLanguage
    English
  • Journal_Title
    Medical Imaging, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0278-0062
  • Type

    jour

  • DOI
    10.1109/TMI.2014.2352791
  • Filename
    6887344