具有同胚水平集的多隔室分割框架。

Xian Fan, Pierre-Louis Bazin, Jerry L Prince
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引用次数: 30

摘要

多目标的同时分割是许多成像和计算机视觉应用中的一个重要问题。人们提出了水平集分割技术对多目标的各种扩展;然而,没有一种方法可以维持对象关系、保持拓扑结构、计算效率高,并提供与对象相关的内力和外力能力。在本文中,提出了一个分割多个对象的框架,该框架允许在保持对象拓扑和关系的同时对不同的边界施加不同的力。由于这个框架,支持多个对象的分割,每个对象都有多个隔室,并且不会产生重叠或真空。该方法的计算复杂度与分割对象的数量无关,因此可以同时分割大量的组件。该方法的特性以及与现有方法的比较使用了各种图像,包括合成的和真实的。
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A Multi-Compartment Segmentation Framework With Homeomorphic Level Sets.

The simultaneous segmentation of multiple objects is an important problem in many imaging and computer vision applications. Various extensions of level set segmentation techniques to multiple objects have been proposed; however, no one method maintains object relationships, preserves topology, is computationally efficient, and provides an object-dependent internal and external force capability. In this paper, a framework for segmenting multiple objects that permits different forces to be applied to different boundaries while maintaining object topology and relationships is presented. Because of this framework, the segmentation of multiple objects each with multiple compartments is supported, and no overlaps or vacuums are generated. The computational complexity of this approach is independent of the number of objects to segment, thereby permitting the simultaneous segmentation of a large number of components. The properties of this approach and comparisons to existing methods are shown using a variety of images, both synthetic and real.

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