| Literature DB >> 28282642 |
Florian Bernard1, Luis Salamanca2, Johan Thunberg2, Alexander Tack3, Dennis Jentsch3, Hans Lamecker4, Stefan Zachow4, Frank Hertel5, Jorge Goncalves2, Peter Gemmar6.
Abstract
The reconstruction of an object's shape or surface from a set of 3D points plays an important role in medical image analysis, e.g. in anatomy reconstruction from tomographic measurements or in the process of aligning intra-operative navigation and preoperative planning data. In such scenarios, one usually has to deal with sparse data, which significantly aggravates the problem of reconstruction. However, medical applications often provide contextual information about the 3D point data that allow to incorporate prior knowledge about the shape that is to be reconstructed. To this end, we propose the use of a statistical shape model (SSM) as a prior for surface reconstruction. The SSM is represented by a point distribution model (PDM), which is associated with a surface mesh. Using the shape distribution that is modelled by the PDM, we formulate the problem of surface reconstruction from a probabilistic perspective based on a Gaussian Mixture Model (GMM). In order to do so, the given points are interpreted as samples of the GMM. By using mixture components with anisotropic covariances that are "oriented" according to the surface normals at the PDM points, a surface-based fitting is accomplished. Estimating the parameters of the GMM in a maximum a posteriori manner yields the reconstruction of the surface from the given data points. We compare our method to the extensively used Iterative Closest Points method on several different anatomical datasets/SSMs (brain, femur, tibia, hip, liver) and demonstrate superior accuracy and robustness on sparse data.Entities:
Keywords: Expected conditional maximisation; Gaussian mixture model; Point distribution model; Sparse shape reconstruction; Statistical shape model
Mesh:
Year: 2017 PMID: 28282642 DOI: 10.1016/j.media.2017.02.005
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545