Multiphase geometric couplings for the segmentation of neural processes

Amelio Vázquez Reina, E. Miller, H. Pfister
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引用次数: 50

Abstract

The ability to constrain the geometry of deformable models for image segmentation can be useful when information about the expected shape or positioning of the objects in a scene is known a priori. An example of this occurs when segmenting neural cross sections in electron microscopy. Such images often contain multiple nested boundaries separating regions of homogeneous intensities. For these applications, multiphase level sets provide a partitioning framework that allows for the segmentation of multiple deformable objects by combining several level set functions. Although there has been much effort in the study of statistical shape priors that can be used to constrain the geometry of each partition, none of these methods allow for the direct modeling of geometric arrangements of partitions. In this paper, we show how to define elastic couplings between multiple level set functions to model ribbon-like partitions. We build such couplings using dynamic force fields that can depend on the image content and relative location and shape of the level set functions. To the best of our knowledge, this is the first work that shows a direct way of geometrically constraining multiphase level sets for image segmentation. We demonstrate the robustness of our method by comparing it with previous level set segmentation methods.
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神经过程分割的多相几何耦合
约束可变形模型的几何形状以进行图像分割的能力在先验地知道场景中物体的预期形状或定位信息时是有用的。在电子显微镜中分割神经横截面就是一个例子。这样的图像通常包含多个嵌套的边界来分隔均匀强度的区域。对于这些应用,多相水平集提供了一个分区框架,允许通过组合几个水平集函数来分割多个可变形对象。尽管在统计形状先验的研究中已经付出了很多努力,这些先验可以用来约束每个分区的几何形状,但这些方法都不允许对分区的几何排列进行直接建模。在本文中,我们展示了如何定义多个水平集函数之间的弹性耦合来模拟带状分区。我们使用动态力场来构建这样的耦合,动态力场可以依赖于图像内容和水平集函数的相对位置和形状。据我们所知,这是第一个展示了用于图像分割的几何约束多相水平集的直接方法的工作。通过与以前的水平集分割方法进行比较,我们证明了该方法的鲁棒性。
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