Difference between revisions of "Projects:StatisticalSegmentationSlicer2"

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* A statistically based flow for image segmentation, using Fast Marching
 
* A statistically based flow for image segmentation, using Fast Marching
  
<div class="thumb tright"><div style="width: 182px">[[Image:Gatech_SlicerModel2.jpg|[[Image:180px-Gatech_SlicerModel2.jpg|Figure 1:Screenshot from the Slicer Fast Marching module]]]]<div class="thumbcaption"><div class="magnify" style="float: right">[[Image:Gatech_SlicerModel2.jpg|[[Image:magnify-clip.png|Enlarge]]]]</div>Figure 1:Screenshot from the Slicer Fast Marching module</div></div></div>
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[[Image:Gatech_SlicerModel2.jpg|thumb|right|180px|Figure 1:Screenshot from the Slicer Fast Marching module]]
  
 
* The code has been integrated into the Slicer
 
* The code has been integrated into the Slicer

Revision as of 15:56, 20 December 2006

Home < Projects:StatisticalSegmentationSlicer2
Back to NA-MIC_Collaborations

Objective:

We want to add various statistical measures into our PDE flows for medical imaging. This will allow the incorporation of global image information into the locally defined PDE frameowrk.

Progress:

We developped flows which can separate the distributions inside and outside the evolving contour, and we have also been including shape information in the flows.

Completed:

  • A statistically based flow for image segmentation, using Fast Marching
Figure 1:Screenshot from the Slicer Fast Marching module
  • The code has been integrated into the Slicer
  • A user-oriented tutorial for the Fast Marching algorithm is available at:Slicer Module Tutorial

Key Investigators:

Delphine Nain, Eric Pichon, Oleg Michailovich, Yogesh Rathi, James Malcolm, Allen Tannenbaum

References:

  • Eric Pichon, Allen Tannenbaum, and Ron Kikinis. A statistically based surface evolution method for medical image segmentation: presentation and validation. In International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI), volume 2, pages 711-720, 2003. Note: Best student presentation in image segmentation award[1]

Links: