Visualizing Confidence Intervals for Critical Point Probabilities in 2D Scalar Field Ensembles

Dominik Vietinghoff, M. Böttinger, G. Scheuermann, Christian Heine
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引用次数: 2

Abstract

An important task in visualization is the extraction and highlighting of dominant features in data to support users in their analysis process. Topological methods are a well-known means of identifying such features in deterministic fields. However, many real-world phenom-ena studied today are the result of a chaotic system that cannot be fully described by a single simulation. Instead, the variability of such systems is usually captured with ensemble simulations that pro-duce a variety of possible outcomes of the simulated process. The topological analysis of such ensemble data sets and uncertain data, in general, is less well studied. In this work, we present an approach for the computation and visual representation of confidence intervals for the occurrence probabilities of critical points in ensemble data sets. We demonstrate the added value of our approach over existing methods for critical point prediction in uncertain data on a synthetic data set and show its applicability to a data set from climate research.
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二维标量场集合中临界点概率置信区间的可视化
可视化的一项重要任务是提取和突出显示数据中的主要特征,以支持用户的分析过程。拓扑方法是确定领域中识别此类特征的一种众所周知的方法。然而,当今研究的许多现实世界现象都是混沌系统的结果,单次模拟无法完全描述。相反,这些系统的可变性通常是通过产生模拟过程的各种可能结果的集成模拟来捕获的。一般来说,这种集成数据集和不确定数据的拓扑分析研究较少。在这项工作中,我们提出了一种计算和可视化表示集成数据集中临界点发生概率置信区间的方法。我们展示了我们的方法在不确定数据中对合成数据集进行临界点预测的现有方法的附加价值,并展示了其对气候研究数据集的适用性。
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