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今日/当前日期收录 1 信号源:cs.CV, cs.GR, cs.RO
2510.16486 2026-06-18 cs.GR 版本更新 70%

Region-Aware Wasserstein Distances of Persistence Diagrams and Merge Trees

区域感知的持久图与合并树的Wasserstein距离

Mathieu Pont, Christoph Garth

专题命中 其他3D视觉 :拓扑数据分析,与3D视觉弱相关

AI总结 提出一种利用输入域中拓扑特征区域的Wasserstein距离泛化方法,通过极值对齐区域的距离重新定义特征比较,实现更优判别力,并应用于时变集合跟踪和降维可视化。

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AI中文摘要

本文提出了针对第0持久图和合并树的Wasserstein距离的泛化方法[21],[68],该方法利用了输入域中拓扑特征区域的优势。具体而言,我们将拓扑特征的比较重新定义为它们的极值对齐区域值之间的距离。这产生了比经典Wasserstein距离更具判别力的度量,并通过一个输入参数调整区域属性在距离中的影响。我们提出了两种策略来控制方法的计算时间和内存存储:分别通过允许在计算中使用区域的子集,以及通过压缩区域属性以获得低内存表示。在公开可用的集合数据上的大量实验证明了我们方法的效率,平均运行时间在分钟量级。我们通过两个应用展示了我们贡献的实用性。首先,我们使用由我们的方法提供的拓扑特征之间的分配来跟踪它们在时变集合中的演化,并提出时间持久曲线以促进理解这些特征如何出现、消失和随时间变化。其次,我们的方法允许计算集合的距离矩阵,该矩阵可用于降维目的并在二维中直观地表示其所有成员,我们表明这样的距离矩阵还允许检测集合中的关键阶段。最后,我们提供了一个C++实现,可用于重现我们的结果。

英文摘要

This paper presents a generalization of the Wasserstein distance for both 0th persistence diagrams and merge trees [21], [68] that takes advantage of the regions of their topological features in the input domain. Specifically, we redefine the comparison of topological features as a distance between the values of their extrema-aligned regions. It results in a more discriminative metric than the classical Wasserstein distance and generalizes it through an input parameter adjusting the impact of the region properties in the distance. We present two strategies to control both computation time and memory storage of our method by respectively enabling the use of subsets of the regions in the computation, and by compressing the regions' properties to obtain low-memory representations. Extensive experiments on openly available ensemble data demonstrate the efficiency of our method, with running times on the orders of minutes on average. We show the utility of our contributions with two applications. First, we use the assignments between topological features provided by our method to track their evolution in time-varying ensembles and propose the temporal persistence curves to facilitate the understanding of how these features appear, disappear and change over time. Second, our method allows to compute a distance matrix of an ensemble that can be used for dimensionality reduction purposes and visually represent in 2D all its members, we show that such distance matrices also allow to detect key phases in the ensemble. Finally, we provide a C++ implementation that can be used to reproduce our results.