Probabilistic 3D surface reconstruction from sparse MRI information
October 05, 2020 Β· Declared Dead Β· π International Conference on Medical Image Computing and Computer-Assisted Intervention
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Authors
KatarΓna TΓ³thovΓ‘, Sarah Parisot, Matthew Lee, Esther Puyol-AntΓ³n, Andrew King, Marc Pollefeys, Ender Konukoglu
arXiv ID
2010.02041
Category
cs.CV: Computer Vision
Cross-listed
cs.LG,
eess.IV
Citations
22
Venue
International Conference on Medical Image Computing and Computer-Assisted Intervention
Last Checked
3 months ago
Abstract
Surface reconstruction from magnetic resonance (MR) imaging data is indispensable in medical image analysis and clinical research. A reliable and effective reconstruction tool should: be fast in prediction of accurate well localised and high resolution models, evaluate prediction uncertainty, work with as little input data as possible. Current deep learning state of the art (SOTA) 3D reconstruction methods, however, often only produce shapes of limited variability positioned in a canonical position or lack uncertainty evaluation. In this paper, we present a novel probabilistic deep learning approach for concurrent 3D surface reconstruction from sparse 2D MR image data and aleatoric uncertainty prediction. Our method is capable of reconstructing large surface meshes from three quasi-orthogonal MR imaging slices from limited training sets whilst modelling the location of each mesh vertex through a Gaussian distribution. Prior shape information is encoded using a built-in linear principal component analysis (PCA) model. Extensive experiments on cardiac MR data show that our probabilistic approach successfully assesses prediction uncertainty while at the same time qualitatively and quantitatively outperforms SOTA methods in shape prediction. Compared to SOTA, we are capable of properly localising and orientating the prediction via the use of a spatially aware neural network.
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