使用部分极值初始化的快速变分分割

J. E. Solem, N. C. Overgaard, Markus Persson, A. Heyden
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引用次数: 2

摘要

本文研究了一种基于区域的二维和三维图像的变分分割方法,其保真度项为两个积分的商。用户经常避免使用商函数,即使它们看起来是最自然的选择,这可能是因为相应的梯度下降偏微分方程是非局部的,因此需要计算全局属性。这里展示了如何通过使用保真度项的欧拉-拉格朗日方程的结构来构造梯度下降PDE的良好初始化来克服这个问题,然后该初始化将迅速收敛到所需的(局部)最小值。初始化器是通过在与保真度项相关的函数的水平集中进行一维搜索来找到的,选择最小化分割函数的水平集。在MR图像的速度和强度数据的医学分割问题上,对这种部分极值初始化进行了测试。在这个特殊的应用程序中,与直接梯度下降相比,部分极值初始化将分割速度提高了两个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Variational Segmentation using Partial Extremal Initialization
In this paper we consider region-based variational segmentation of two- and three-dimensional images by the minimization of functionals whose fidelity term is the quotient of two integrals. Users often refrain from quotient functionals, even when they seem to be the most natural choice, probably because the corresponding gradient descent PDEs are nonlocal and hence require the computation of global properties. Here it is shown how this problem may be overcome by employing the structure of the Euler-Lagrange equation of the fidelity term to construct a good initialization for the gradient descent PDE, which will then converge rapidly to the desired (local) minimum. The initializer is found by making a one-dimensional search among the level sets of a function related to the fidelity term, picking the level set which minimizes the segmentation functional. This partial extremal initialization is tested on a medical segmentation problem with velocity- and intensity data from MR images. In this particular application, the partial extremal initialization speeds up the segmentation by two orders of magnitude compared to straight forward gradient descent.
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