• DocumentCode
    6460
  • Title

    Supervised Variational Model With Statistical Inference and Its Application in Medical Image Segmentation

  • Author

    Changyang Li ; Xiuying Wang ; Eberl, Stefan ; Fulham, Michael ; Yong Yin ; Feng, David Dagan

  • Author_Institution
    Biomed. & Multimedia Inf. Technol. Res. Group, Univ. of Sydney, Sydney, NSW, Australia
  • Volume
    62
  • Issue
    1
  • fYear
    2015
  • fDate
    Jan. 2015
  • Firstpage
    196
  • Lastpage
    207
  • Abstract
    Automated and general medical image segmentation can be challenging because the foreground and the background may have complicated and overlapping density distributions in medical imaging. Conventional region-based level set algorithms often assume piecewise constant or piecewise smooth for segments, which are implausible for general medical image segmentation. Furthermore, low contrast and noise make identification of the boundaries between foreground and background difficult for edge-based level set algorithms. Thus, to address these problems, we suggest a supervised variational level set segmentation model to harness the statistical region energy functional with a weighted probability approximation. Our approach models the region density distributions by using the mixture-of-mixtures Gaussian model to better approximate real intensity distributions and distinguish statistical intensity differences between foreground and background. The region-based statistical model in our algorithm can intuitively provide better performance on noisy images. We constructed a weighted probability map on graphs to incorporate spatial indications from user input with a contextual constraint based on the minimization of contextual graphs energy functional. We measured the performance of our approach on ten noisy synthetic images and 58 medical datasets with heterogeneous intensities and ill-defined boundaries and compared our technique to the Chan-Vese region-based level set model, the geodesic active contour model with distance regularization, and the random walker model. Our method consistently achieved the highest Dice similarity coefficient when compared to the other methods.
  • Keywords
    image segmentation; inference mechanisms; medical image processing; variational techniques; Chan-Vese region based level set model; automated medical image segmentation; contextual graphs energy functional; density distribution; general medical image segmentation; mixture-of-mixtures Gaussian model; random walker model; statistical inference; statistical region energy functional; supervised variational model; weighted probability approximation; Biomedical imaging; Educational institutions; Image edge detection; Image segmentation; Level set; Minimization; Probability; Image segmentation; PDE; level set; mixture-of-mixtures Gaussian model;
  • fLanguage
    English
  • Journal_Title
    Biomedical Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9294
  • Type

    jour

  • DOI
    10.1109/TBME.2014.2344660
  • Filename
    6868997