利用热核特征的非定常流场可视化

K. Jiang, M. Berger, J. Levine
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引用次数: 0

摘要

我们介绍了一种利用形状分析的概念来可视化复杂流动现象的新技术。我们的方法使用的技术是通过它们的热核来检查流形的内在几何形状,以获得等程不变和多尺度的流形的表示。这些表示允许我们计算流形上每个点的热核签名,并且我们可以使用这些签名作为识别具有相似结构属性的点的分类和分割的特征。我们的方法通过制定形状的概念来适应非定常流,其中路径是观察生活在高维空间中的流形。我们使用这个空间来计算和可视化与每个路径相关的热核签名。除了能够捕获路径的结构特征外,热核签名还允许通过形状匹配管道对来自不同流量数据集的路径进行比较。我们通过比较(1)来自同一非定常流动的不同时间步长以及(2)来自不同模拟参数的集成模拟的流动数据集来证明热核特征的分析能力。我们的分析只需要路径本身,因此它不直接利用底层向量场。我们对路径线做了最小的假设:当我们假设它们是从连续的、不稳定的流动中采样时,我们的计算可以容忍具有不同密度和潜在未知边界的路径线。我们通过各种二维非定常流的可视化来评估我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization of Unsteady Flow Using Heat Kernel Signatures
We introduce a new technique to visualize complex flowing phenomena by using concepts from shape analysis. Our approach uses techniques that examine the intrinsic geometry of manifolds through their heat kernel, to obtain representations of such manifolds that are isometry-invariant and multi-scale. These representations permit us to compute heat kernel signatures of each point on that manifold, and we can use these signatures as features for classification and segmentation that identify points that have similar structural properties. Our approach adapts heat kernel signatures to unsteady flows by formulating a notion of shape where pathlines are observations of a manifold living in a high-dimensional space. We use this space to compute and visualize heat kernel signatures associated with each pathline. Besides being able to capture the structural features of a pathline, heat kernel signatures allow the comparison of pathlines from different flow datasets through a shape matching pipeline. We demonstrate the analytic power of heat kernel signatures by comparing both (1) different timesteps from the same unsteady flow as well as (2) flow datasets taken from ensemble simulations with varying simulation parameters. Our analysis only requires the pathlines themselves, and thus it does not utilize the underlying vector field directly. We make minimal assumptions on the pathlines: while we assume they are sampled from a continuous, unsteady flow, our computations can tolerate pathlines that have varying density and potential unknown boundaries. We evaluate our approach through visualizations of a variety of two-dimensional unsteady flows.
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