Semi-automatic Segmentation of the Patellar Cartilage in MRI

نویسندگان

  • Lorenz König
  • Martin Groher
  • Andreas Keil
  • Christian Glaser
  • Maximilian Reiser
  • Nassir Navab
چکیده

We introduce a software system for semi-automatic segmentation of the patellar cartilage. By providing tools for sub-pixel accurate edge tracing, automatic contour completion, and adequate visualization we achieve a remarkable speed-up of the physician’s segmentation process. Our results show the exactness that can be reached for cartilage segmentation if expertise and automation are merged in a meaningful way.

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تاریخ انتشار 2007