• DocumentCode
    30042
  • Title

    A Piecewise Monotone Subgradient Algorithm for Accurate {\\rm L}^{1} -TV Based Registration of Physical Slices With Discontinuities in Microscopy

  • Author

    Michalek, Josef ; Capek, Miloslav

  • Author_Institution
    Dept. of Biomath., Inst. of Physiol., Prague, Czech Republic
  • Volume
    32
  • Issue
    5
  • fYear
    2013
  • fDate
    May-13
  • Firstpage
    901
  • Lastpage
    918
  • Abstract
    Image registration tasks are often formulated in terms of minimization of a functional consisting of a data fidelity term penalizing the mismatch between the reference and the target image, and a term enforcing smoothness of shift between neighboring pairs of pixels (a min-sum problem). Most methods for deformable image registration use some form of interpolation between matching control points. The interpolation makes it impossible to account for isolated discontinuities in the deformation field that may appear, e.g., when a physical slice of a microscopy specimen is ruptured by the cutting tool. For registration of neighboring physical slices of microscopy specimens with discontinuities, Janácek proposed an L1-distance data fidelity term and a total variation (TV) smoothness term, and used a graph-cut (GC) based iterative steepest descent algorithm for minimization. The L1-TV functional is nonconvex; hence a steepest descent algorithm is not guaranteed to converge to the global minimum. Schlesinger presented transformation of max-sum problems to minimization of a dual quantity called problem power, which is - contrary to the original max-sum functional - convex. Based on Schlesinger´s solution to max-sum problems we developed an algorithm for L1-TV minimization by iterative multi-label steepest descent minimization of the convex dual problem. For Schlesinger´s subgradient algorithm we proposed a novel step control heuristics that considerably enhances both speed and accuracy compared with standard step size strategies for subgradient methods. It is shown experimentally that our subgradient scheme achieves consistently better image registration than GC in terms of lower values both of the composite L1-TV functional, and of its components, i.e., the L1 distance of the images and the transformation smoothness TV, and yields visually acceptable results even in cases where the GC based algorithm fails. - he new algorithm allows easy parallelization and can thus be sped up by running on multi-core graphic processing units.
  • Keywords
    biomedical optical imaging; convex programming; deformation; gradient methods; graphics processing units; image matching; image registration; interpolation; medical image processing; minimisation; optical microscopy; Schlesinger subgradient algorithm; accurate L1-TV-based registration; convex dual problem; data fidelity term; deformable image registration; deformation field; graph-cut based iterative steepest descent algorithm; image matching; interpolation; iterative multilabel steepest descent minimization; max-sum functional-convex; microscopy specimens; multicore graphic processing unit; nonconvex L1-TV functional; physical slices; piecewise monotone subgradient algorithm; total variation smoothness term; Embryo; Image registration; Interpolation; Microscopy; Minimization; Splines (mathematics); TV; Convex optimization; image registration; subgradient algorithm; total variation; Algorithms; Animals; Head; Image Processing, Computer-Assisted; Microscopy;
  • fLanguage
    English
  • Journal_Title
    Medical Imaging, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0278-0062
  • Type

    jour

  • DOI
    10.1109/TMI.2013.2242896
  • Filename
    6420958