Segmentation of 3D Objects from MRI Volume Data Using Constrained Elastic Deformations of Flexible Fourier Surface Models

نویسندگان

  • Gábor Székely
  • András Kelemen
  • Christian Brechbühler
  • Guido Gerig
چکیده

This paper describes a new model-based segmentation technique combining desirable properties of physical models (snakes, 2]), shape representation by Fourier parametrization (Fourier snakes, 12]), and modelling of natural shape variability (eigenmodes, 7, 10]). Flexible shape models are represented by a parameter vector describing the mean contour and by a set of eigenmodes of the parameters characterizing the shape variation with respect to a small set of stable landmarks (AC-PC in our application) and explaining the remaining variability among a series of images with the model exibility. Although straightforward, the extension to 3-D is severely impeded by nding a proper surface parametrization for arbitrary objects with spherical topology. We apply a newly developed surface parametrization 16, 17] which achieves a uniform mapping between object surface and parameter space. The 3D model building and Fourier-snake procedure are demonstrated by segmenting deep structures of the human brain from MR volume data.

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تاریخ انتشار 1995