TL;DR
This paper introduces a shape-aware surface reconstruction method from sparse 3D point clouds using a statistical shape model and Gaussian Mixture Model, improving accuracy and robustness in medical imaging applications.
Contribution
It proposes a novel probabilistic surface reconstruction approach leveraging a statistical shape model and anisotropic GMM components, specifically designed for sparse medical data.
Findings
Outperforms ICP in accuracy on anatomical datasets
Demonstrates robustness with sparse data
Applicable to various medical shapes
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…
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