一种基于二维活动轮廓和三维混合模型的分支圆柱结构分割协同框架

Thomas O'Donnell, M. Jolly, Alok Gupta
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引用次数: 25

摘要

混合模型是恢复的强大工具,因为它们同时提供了对象的总体参数和详细描述。然而,由于混合模型不能保证在横截面上找到最优边界,因此在分割过程中很难直接使用混合模型。另一方面,从一个切片到另一个切片传播二维活动轮廓来描绘对象的边界通常是有效的,但当对象的拓扑变化时,例如在分岔处甚至在高曲率区域,可能会遇到问题。在这里,我们提出了一个合作框架,以利用3D混合模型和2D主动轮廓方法的积极方面进行分割和恢复。在该框架中,用户自定义的3D混合模型参数组件为活动轮廓执行的一组2D分割提供了约束。然后将相同的混合模型参数化地和局部地拟合到该分割中。对于混合模型拟合,我们采用了几种物理驱动范式的新变体,以寻求在保证稳定性的同时加速恢复。这些变化的副产品是通过消除一些特别参数而增加了方法的通用性。我们将我们的合作框架应用于从三维图像体中恢复分支圆柱形结构。我们采用的混合动力模型具有一种新颖的参数分量,即单个汽缸的融合。这些圆柱体的脊是任意空间曲线和横截面,可以是任何星形平面曲线。
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A cooperative framework for segmentation using 2D active contours and 3D hybrid models as applied to branching cylindrical structures
Hybrid models are powerful tools for recovery in that they simultaneously provide a gross parametric as well as a detailed description of an object. However, it is difficult to directly employ hybrid models in the segmentation process since they are not guaranteed to locate the optimal boundaries in cross-sectional slices. Propagating 2D active contours from slice to slice, on the other hand, to delineate an object's boundaries is often effective, but may run into problems when the object's topology changes, such as at bifurcations or even in areas of high curvature. Here, we present a cooperative framework to exploit the positive aspects of both 3D hybrid model and 2D active contour approaches for segmentation and recovery. In this framework the user-defined parametric component of a 3D hybrid model provides constraints for a set of 2D segmentations performed by active contours. The same hybrid model is then fit both parametrically and locally to this segmentation. For the hybrid model fit we employ several new variations on the physically-motivated paradigm which seek to speed recovery while guaranteeing stability. A by-product of these variations is an increased generality of the method via the elimination, of some of its ad hoc parameters. We apply our cooperative framework to the recovery of branching cylindrical structures from 3D image volumes. The hybrid model we employ has a novel parametric component which is a fusion of individual cylinders. These cylinders have spines that are arbitrary space curves and cross-sections which may be any star shaped planar curve.
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