一种高效可靠的混合水平集图像分割方法

Seongjai Kim
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引用次数: 14

摘要

本文研究了一种水平集分割算法,该算法将基于梯度的方法与Mumford-Shah(无梯度)方法相结合,以达到高效可靠的分割效果。我们对互补函数upusmn引入了一种新的策略,该策略的计算使得它们的平均值与给定图像之间的差能够为水平集函数的演化引入可靠的驱动力。为了提高新模型的可靠性,提出了一种有效的背景减法。采用不完全(线性化)交替方向隐式(ADI)方法求解时间步进问题。为了快速收敛,我们还提出了有效的水平集函数初始化策略。结果表明,该算法在2-4次ADI迭代中可以令人满意地定位到所需的边缘
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid level set approach for efficient and reliable image segmentation
This article is concerned with a level set segmentation algorithm which hybridizes gradient-based methods and the Mumford-Shah (gradient-free) method, for an efficient and reliable segmentation. We introduce a new strategy for the complementary functions uplusmn , which is computed such that the difference between their average and the given image are able to introduce a reliable driving force for the evolution of the level set function. An effective method of background subtraction is suggested in order to improve reliability of the new model. An incomplete (linearized) alternating direction implicit (ADI) method is applied for an efficient time-stepping procedure. For a fast convergence, we also suggest effective initialization strategies for the level set function. The resulting algorithm has proved to locate the desired edges satisfactorily in 2-4 ADI iterations
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