Cates Joshua, Fletcher P Thomas, Styner Martin, Shenton Martha, Whitaker Ross
School of Computing, University of Utah, Salt Lake City UT, USA.
Inf Process Med Imaging. 2007;20:333-45. doi: 10.1007/978-3-540-73273-0_28.
This paper presents a new method for constructing compact statistical point-based models of ensembles of similar shapes that does not rely on any specific surface parameterization. The method requires very little preprocessing or parameter tuning, and is applicable to a wider range of problems than existing methods, including nonmanifold surfaces and objects of arbitrary topology. The proposed method is to construct a point-based sampling of the shape ensemble that simultaneously maximizes both the geometric accuracy and the statistical simplicity of the model. Surface point samples, which also define the shape-to-shape correspondences, are modeled as sets of dynamic particles that are constrained to lie on a set of implicit surfaces. Sample positions are optimized by gradient descent on an energy function that balances the negative entropy of the distribution on each shape with the positive entropy of the ensemble of shapes. We also extend the method with a curvature-adaptive sampling strategy in order to better approximate the geometry of the objects. This paper presents the formulation; several synthetic examples in two and three dimensions; and an application to the statistical shape analysis of the caudate and hippocampus brain structures from two clinical studies.
本文提出了一种构建相似形状集合的紧凑统计点基模型的新方法,该方法不依赖于任何特定的曲面参数化。该方法所需的预处理和参数调整极少,并且比现有方法适用于更广泛的问题,包括非流形曲面和任意拓扑的物体。所提出的方法是构建形状集合的基于点的采样,同时使模型的几何精度和统计简单性最大化。表面点样本(它们也定义了形状之间的对应关系)被建模为一组动态粒子,这些粒子被约束在一组隐式曲面上。通过在能量函数上进行梯度下降来优化样本位置,该能量函数平衡每个形状上分布的负熵与形状集合的正熵。我们还通过曲率自适应采样策略扩展了该方法,以便更好地逼近物体的几何形状。本文给出了公式;二维和三维中的几个合成示例;以及来自两项临床研究的对尾状核和海马体脑结构进行统计形状分析的应用。