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Robustness-Based Simplification of 2D Steady and Unsteady Vector Fields

机译:基于稳健性的二维稳态和非稳态矢量场的简化

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Vector field simplification aims to reduce the complexity of the flow by removing features in order of their relevance and importance, to reveal prominent behavior and obtain a compact representation for interpretation. Most existing simplification techniques based on the topological skeleton successively remove pairs of critical points connected by separatrices, using distance or area-based relevance measures. These methods rely on the stable extraction of the topological skeleton, which can be difficult due to instability in numerical integration, especially when processing highly rotational flows. In this paper, we propose a novel simplification scheme derived from the recently introduced topological notion of robustness which enables the pruning of sets of critical points according to a quantitative measure of their stability, that is, the minimum amount of vector field perturbation required to remove them. This leads to a hierarchical simplification scheme that encodes flow magnitude in its perturbation metric. Our novel simplification algorithm is based on degree theory and has minimal boundary restrictions. Finally, we provide an implementation under the piecewise-linear setting and apply it to both synthetic and real-world datasets. We show local and complete hierarchical simplifications for steady as well as unsteady vector fields.
机译:向量场简化旨在通过按特征的相关性和重要性顺序删除特征来减少流程的复杂性,以揭示突出的行为并获得用于解释的紧凑表示。大多数现有的基于拓扑骨架的简化技术都使用基于距离或基于区域的相关性度量来连续删除由分离关系连接的关键点对。这些方法依赖于拓扑骨架的稳定提取,由于数值积分的不稳定性,尤其是在处理高旋转流量时,这可能很困难。在本文中,我们提出了一种新的简化方案,该方案是从最近引入的稳健性拓扑概念派生而来的,该方案能够根据对关键点集的稳定性(即去除所需的最小矢量场扰动的数量)进行修剪,从而对关键点集进行修剪他们。这导致了一种分层的简化方案,该方案以其扰动度量对流量大小进行编码。我们新颖的简化算法基于度论,具有最小的边界约束。最后,我们提供了分段线性设置下的实现,并将其应用于合成数据集和实际数据集。我们显示了稳定和不稳定矢量场的局部和完整层次简化。

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