TeTrIS: Template Transformer Networks for Image Segmentation With Shape Priors.

Journal: IEEE transactions on medical imaging
Published Date:

Abstract

In this paper, we introduce and compare different approaches for incorporating shape prior information into neural network-based image segmentation. Specifically, we introduce the concept of template transformer networks, where a shape template is deformed to match the underlying structure of interest through an end-to-end trained spatial transformer network. This has the advantage of explicitly enforcing shape priors, and this is free of discretization artifacts by providing a soft partial volume segmentation. We also introduce a simple yet effective way of incorporating priors in the state-of-the-art pixel-wise binary classification methods such as fully convolutional networks and U-net. Here, the template shape is given as an additional input channel, incorporating this information significantly reduces false positives. We report results on synthetic data and sub-voxel segmentation of coronary lumen structures in cardiac computed tomography showing the benefit of incorporating priors in neural network-based image segmentation.

Authors

  • Matthew Chung Hai Lee
  • Kersten Petersen
  • Nick Pawlowski
  • Ben Glocker
    Kheiron Medical Technologies, London, UK.
  • Michiel Schaap
    HeartFlow, Redwood City, CA 94063, USA.