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2011
Conference Paper
Titel

Automatic construction of statistical shape models for vertebrae

Abstract
For segmenting complex structures like vertebrae, a priori knowledge by means of statistical shape models (SSMs) is often incorporated. One of the main challenges using SSMs is the solution of the correspondence problem. In this work we present a generic automated approach for solving the correspondence problem for vertebrae. We determine two closed loops on a reference shape and propagate them consistently to the remaining shapes of the training set. Then every shape is cut along these loops and parameterized to a rectangle. There, we optimize a novel combined energy to establish the correspondences and to reduce the unavoidable area and angle distortion. Finally, we present an adaptive resampling method to achieve a good shape representation. A qualitative and quantitative evaluation shows that using our method we can generate SSMs of higher quality than the ICP approach.
Author(s)
Becker, Meike
TU Darmstadt GRIS
Kirschner, Matthias
TU Darmstadt GRIS
Fuhrmann, Simon
TU Darmstadt GRIS
Wesarg, Stefan
TU Darmstadt GRIS
Hauptwerk
Medical image computing and computer-assisted intervention, MICCAI 2011. 14th international conference. Pt.2
Konferenz
International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI) 2011
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DOI
10.1007/978-3-642-23629-7_61
Language
English
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Fraunhofer-Institut für Graphische Datenverarbeitung IGD
Tags
  • statistical shape mod...

  • 3D model segmentation...

  • point correspondence

  • cutting

  • surface parameterizat...

  • Forschungsgruppe Medi...

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