TubeTK: Difference between revisions

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<br>
<b>[http://public.kitware.com/Wiki/TubeTK Home]</b>
<b>[http://public.kitware.com/Wiki/TubeTK Home]</b>
*[[TubeTK/About | About]]
*[[TubeTK/About | About]]

Revision as of 14:51, 20 December 2010


TubeTK Header.jpg


Home




For Users




For Developers



The Team

  • Kitware
  • Brigham and Women's Hospital
  • Duke University
  • BrainLAB

Overview

TubeTK is being developed to host algorithms for applications involving images of tubes. By focusing on the geometry of tubes we can accomplish grand challenges in image analysis in a subset of significant cases.

Features

  • Centerline vascular segmentation
  • Vascular atlas formation
  • Vascular network to image registration
  • Organ segmentation
  • Vascular-ness measures
  • Multi-modality support

Driving Applications

Technical Focus

  • Vascular pattern analysis is the characterization and comparison of individuals and populations based on "spatial graphs" as representations of vascular networks.
  • Sliding organ registration are methods for registering images of multiple organs in which the organs may have shifted, expanded, or compressed independently.
  • Intra-operative ultrasound registration is the grand challenge of real-time transcription of pre-operative surgical plans into intra-operative ultrasound images.