基于部分匹配约束的形状图配准新变分模型

Yashil Sukurdeep, Martin Bauer, N. Charon
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引用次数: 6

摘要

本文介绍了黎曼弹性曲线匹配的一种新扩展,它适用于一类一般的几何结构,我们称之为(加权)形状图,它允许具有部分匹配约束和拓扑不一致的形状配准。加权形状图是欧几里德空间中任意数量的具有边界点之间潜在连通性约束的分量曲线的并集,以及在每个分量曲线上定义的权函数。高阶不变索博列夫度量的框架特别适合于构造非参数化曲线之间的距离和测地线的概念。将该框架用于形状图的设置的主要困难是缺乏拓扑一致性,这通常会导致对两个形状图之间精确匹配的搜索不足。我们通过定义任意底层拓扑的(加权)形状图之间匹配问题的不精确变分公式来克服这一障碍,依靠由变形给出的方便测度表示来放松精确匹配约束。然后,当我们选择具有充分正则性的Sobolev度量和权函数的全变分(TV)正则化时,我们证明了该变分问题的最小化存在。我们提出了一种数值优化方法,该方法采用平滑快速迭代收缩阈值(SFISTA)算法来处理TV范数最小化问题,并允许我们将匹配问题简化为求解一系列光滑无约束最小化问题。最后,我们通过几个例子来说明我们的新模型的功能,展示了它处理部分观察到的和拓扑变化的数据的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Variational Model for Shape Graph Registration with Partial Matching Constraints
This paper introduces a new extension of Riemannian elastic curve matching to a general class of geometric structures, which we call (weighted) shape graphs, that allows for shape registration with partial matching constraints and topological inconsistencies. Weighted shape graphs are the union of an arbitrary number of component curves in Euclidean space with potential connectivity constraints between some of their boundary points, together with a weight function defined on each component curve. The framework of higher order invariant Sobolev metrics is particularly well suited for constructing notions of distances and geodesics between unparametrized curves. The main difficulty in adapting this framework to the setting of shape graphs is the absence of topological consistency, which typically results in an inadequate search for an exact matching between two shape graphs. We overcome this hurdle by defining an inexact variational formulation of the matching problem between (weighted) shape graphs of any underlying topology, relying on the convenient measure representation given by varifolds to relax the exact matching constraint. We then prove the existence of minimizers to this variational problem when we choose Sobolev metrics of sufficient regularity and a total variation (TV) regularization on the weight function. We propose a numerical optimization approach which adapts the smoothed fast iterative shrinkage-thresholding (SFISTA) algorithm to deal with TV norm minimization and allows us to reduce the matching problem to solving a sequence of smooth unconstrained minimization problems. We finally illustrate the capabilities of our new model through several examples showcasing its ability to tackle partially observed and topologically varying data.
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