析取正态水平集:一种有效的参数隐式方法。

Fitsum Mesadi, Mujdat Cetin, Tolga Tasdizen
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引用次数: 5

摘要

水平集方法因其处理拓扑变化的能力而广泛应用于图像分割。本文提出了一种新的参数水平集方法——析取正态水平集(DNLS),并将其应用于两相(单目标)和多相(多目标)图像分割。多面体本身是由半空间的交点形成的,而多面体又是由半空间的交点形成的。与文献中可用的其他水平集方法相比,所提出的水平集框架具有以下主要优点。首先,使用DNLS的分割收敛速度快得多。第二,DNLS水平集函数在其演化过程中保持规律性。第三,本文提出的多相版本的DNLS对初始化的敏感性较低,并且随着需要同时分割的对象数量的增加,其计算成本和内存需求几乎保持不变。实验结果表明了该方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DISJUNCTIVE NORMAL LEVEL SET: AN EFFICIENT PARAMETRIC IMPLICIT METHOD.

DISJUNCTIVE NORMAL LEVEL SET: AN EFFICIENT PARAMETRIC IMPLICIT METHOD.

DISJUNCTIVE NORMAL LEVEL SET: AN EFFICIENT PARAMETRIC IMPLICIT METHOD.

DISJUNCTIVE NORMAL LEVEL SET: AN EFFICIENT PARAMETRIC IMPLICIT METHOD.

Level set methods are widely used for image segmentation because of their capability to handle topological changes. In this paper, we propose a novel parametric level set method called Disjunctive Normal Level Set (DNLS), and apply it to both two phase (single object) and multiphase (multi-object) image segmentations. The DNLS is formed by union of polytopes which themselves are formed by intersections of half-spaces. The proposed level set framework has the following major advantages compared to other level set methods available in the literature. First, segmentation using DNLS converges much faster. Second, the DNLS level set function remains regular throughout its evolution. Third, the proposed multiphase version of the DNLS is less sensitive to initialization, and its computational cost and memory requirement remains almost constant as the number of objects to be simultaneously segmented grows. The experimental results show the potential of the proposed method.

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