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Probabilistic Diffeomorphic Registration: Representing Uncertainty

机译:概率扩散注册:代表不确定性

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This paper presents a novel mathematical framework for representing uncertainty in large deformation diffeomorphic image registration. The Bayesian posterior distribution over the deformations aligning a moving and a fixed image is approximated via a variational formulation. A stochastic differential equation (SDE) modeling the deformations as the evolution of a time-varying velocity field leads to a prior density over deformations in the form of a Gaussian process. This permits estimating the full posterior distribution in order to represent uncertainty, in contrast to methods in which the posterior is approximated via Monte Carlo sampling or maximized in maximum a-posteriori (MAP) estimation. The framework is demonstrated in the case of landmark-based image registration, including simulated data and annotated pre and intra-operative 3D images.
机译:本文提出了一种新的数学框架,用于代表大变形扩散图像配准的不确定性。通过变分制剂对准移动和固定图像的变形上的贝叶斯后部分布。将变形的随机微分方程(SDE)为时变速场的演化来建立变形,导致高斯工艺形式的变形的先前密度。这允许估计完整的后部分布以表示不确定性,与后后部通过Monte Carlo采样或最大化在最大A-BouthiOri(MAP)估计中最大化的方法相反。在基于地标的图像配准的情况下,包括模拟数据和注释的预先操作3D图像的框架。

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