A Multiple Geometric Deformable Model Framework for Homeomorphic 3D Medical Image Segmentation.

Xian Fan, Pierre-Louis Bazin, John Bogovic, Ying Bai, Jerry L Prince
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Abstract

This paper presents a 3D segmentation framework for multiple objects or compartments embedded as level sets. Thanks to a compact representation of the level set functions of multiple objects, the framework guarantees no overlap and vacuum, and leads to a computationally efficient evolution scheme largely independent of the number of objects. Appropriate topology constraints ensure not only that the topology of each object remains the same, but that the relationship between objects is also maintained. The decomposition of objects makes the framework specifically attractive to the segmentation of related anatomical regions or the parcellation of an organ, where relationships must be maintained and different evolution forces are needed on different parts of the objects interface. Examples of 3D whole brain segmentation and thalamic parcellation demonstrate the potential of our method for such segmentation tasks.

一种多几何可变形模型框架用于同胚三维医学图像分割。
本文提出了一种以水平集形式嵌入多个物体或隔间的三维分割框架。由于多个对象的水平集函数的紧凑表示,该框架保证了无重叠和真空,并导致计算效率高的进化方案在很大程度上独立于对象的数量。适当的拓扑约束不仅可以确保每个对象的拓扑保持不变,而且还可以保持对象之间的关系。对象的分解使得框架对相关解剖区域的分割或器官的分割特别有吸引力,这些区域必须保持关系,并且在对象接口的不同部分需要不同的进化力。3D全脑分割和丘脑分割的例子证明了我们的方法在此类分割任务中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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