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A robust multigrid approach for variational image registration models

机译:可变图像配准模型的稳健多网格方法

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摘要

Variational registration models are non-rigid and deformable imaging techniques for accurate registration of two images. As with other models for inverse problems using the Tikhonov regularization, they must have a suitably chosen regularization term as well as a data fitting term. One distinct feature of registration models is that their fitting term is always highly nonlinear and this nonlinearity restricts the class of numerical methods that are applicable. This paper first reviews the current state-of-the-art numerical methods for such models and observes that the nonlinear fitting term is mostly 'avoided' in developing fast multigrid methods. It then proposes a unified approach for designing fixed point type smoothers for multigrid methods. The diffusion registration model (second-order equations) and a curvature model (fourth-order equations) are used to illustrate our robust methodology. Analysis of the proposed smoothers and comparisons to other methods are given. As expected of a multigrid method, being many orders of magnitude faster than the unilevel gradient descent approach, the proposed numerical approach delivers fast and accurate results for a range of synthetic and real test images.
机译:变体配准模型是用于对两个图像进行精确配准的非刚性和变形成像技术。与使用Tikhonov正则化的其他反问题模型一样,它们必须具有适当选择的正则化项以及数据拟合项。配准模型的一个显着特征是它们的拟合项始终是高度非线性的,并且这种非线性限制了适用的数值方法的类别。本文首先回顾了此类模型的最新技术数值方法,并观察到在开发快速多网格方法中,非线性拟合项在大多数情况下是“可避免的”。然后提出了一种统一的方法来为多网格方法设计定点型平滑器。扩散配准模型(二阶方程)和曲率模型(四阶方程)用于说明我们的鲁棒方法。分析了所提出的平滑器并与其他方法进行了比较。正如多网格方法所期望的那样,它比单级梯度下降方法要快许多个数量级,提出的数值方法可以为一系列合成和真实测试图像提供快速而准确的结果。

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