IEEE Trans Image Process. 2017 Jun;26(6):2618-2631. doi: 10.1109/TIP.2017.2682980. Epub 2017 Mar 15.
Level set methods are widely used for image segmentation because of their convenient shape representation for numerical computations and capability to handle topological changes. However, in spite of the numerous works in the literature, the use of level set methods in image segmentation still has several drawbacks. These shortcomings include formation of irregularities of the signed distance function, sensitivity to initialization, lack of locality, and expensive computational cost, which increases dramatically as the number of objects to be simultaneously segmented grows. 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 (multiobject) image segmentations. DNLS is a differentiable model formed by the union of polytopes, which themselves are created by intersections of half-spaces. We formulate the segmentation algorithm in a Bayesian framework and use a variational approach to minimize the energy with respect to the parameters of the model. The proposed DNLS can be considered as an open framework that allows the use of different appearance models and shape priors. Compared with the conventional level sets available in the literature, the proposed DNLS has the following major advantages: it requires significantly less computational time and memory, it naturally keeps the level set function regular during the evolution, it is more suitable for multiphase and local region-based image segmentations, and it is less sensitive to noise and initialization. The experimental results show the potential of the proposed method.
水平集方法因其在数值计算中方便的形状表示和处理拓扑变化的能力而被广泛用于图像分割。然而,尽管文献中有许多工作,但水平集方法在图像分割中的应用仍然存在几个缺点。这些缺点包括:符号距离函数的不规则性形成、对初始化的敏感性、缺乏局部性以及计算成本高,随着要同时分割的对象数量的增加,计算成本会急剧增加。在本文中,我们提出了一种新的参数水平集方法,称为不连续正态水平集 (DNLS),并将其应用于两相(单个对象)和多相(多对象)图像分割。DNLS 是由多面体组成的可微模型,而多面体本身是由半空间的交集形成的。我们在贝叶斯框架中构建分割算法,并使用变分方法最小化模型参数的能量。所提出的 DNLS 可以被认为是一个开放的框架,允许使用不同的外观模型和形状先验。与文献中现有的常规水平集相比,所提出的 DNLS 具有以下主要优点:它需要的计算时间和内存显著减少,它在演化过程中自然保持水平集函数的规则性,它更适合于多相和基于局部区域的图像分割,并且对噪声和初始化的敏感性较低。实验结果表明了该方法的潜力。