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arxiv 1903.03545 v2 pith:A32VBJHN submitted 2019-03-08 cs.CV cs.GR

Unsupervised Learning of Probabilistic Diffeomorphic Registration for Images and Surfaces

classification cs.CV cs.GR
keywords registrationlearning-basedclassicaldiffeomorphicmethodsprobabilisticdeformationfast
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Classical deformable registration techniques achieve impressive results and offer a rigorous theoretical treatment, but are computationally intensive since they solve an optimization problem for each image pair. Recently, learning-based methods have facilitated fast registration by learning spatial deformation functions. However, these approaches use restricted deformation models, require supervised labels, or do not guarantee a diffeomorphic (topology-preserving) registration. Furthermore, learning-based registration tools have not been derived from a probabilistic framework that can offer uncertainty estimates. In this paper, we build a connection between classical and learning-based methods. We present a probabilistic generative model and derive an unsupervised learning-based inference algorithm that uses insights from classical registration methods and makes use of recent developments in convolutional neural networks (CNNs). We demonstrate our method on a 3D brain registration task for both images and anatomical surfaces, and provide extensive empirical analyses. Our principled approach results in state of the art accuracy and very fast runtimes, while providing diffeomorphic guarantees. Our implementation is available at http://voxelmorph.csail.mit.edu.

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Cited by 1 Pith paper

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  1. Deformable Registration Using Average Geometric Transformations for Brain MR Images

    cs.CV 2019-07 unverdicted novelty 4.0

    The method augments VoxelMorph with Jacobian and curl channels plus an average-transformation atlas and reports higher Dice scores and more valid Jacobians than the original VoxelMorph on ADNI and MRBrainS18 data.