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Surface Extraction from Multi-field Particle Volume Data Using Multi-dimensional Cluster Visualization

机译:使用多维聚类可视化从多场粒子体积数据中提取表面

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摘要

Data sets resulting from physical simulations typically contain a multitude of physical variables. It is, therefore, desirable that visualization methods take into account the entire multi-field volume data rather than concentrating on one variable. We present a visualization approach based on surface extraction from multi-field particle volume data. The surfaces segment the data with respect to the underlying multi-variate function. Decisions on segmentation properties are based on the analysis of the multi-dimensional feature space. The feature space exploration is performed by an automated multi-dimensional hierarchical clustering method, whose resulting density clusters are shown in the form of density level sets in a 3D star coordinate layout. In the star coordinate layout, the user can select clusters of interest. A selected cluster in feature space corresponds to a segmenting surface in object space. Based on the segmentation property induced by the cluster membership, we extract a surface from the volume data. Our driving applications are smoothed particle hydrodynamics (SPH) simulations, where each particle carries multiple properties. The data sets are given in the form of unstructured point-based volume data. We directly extract our surfaces from such data without prior resampling or grid generation. The surface extraction computes individual points on the surface, which is supported by an efficient neighborhood computation. The extracted surface points are rendered using point-based rendering operations. Our approach combines methods in scientific visualization for object-space operations with methods in information visualization for feature-space operations.
机译:物理模拟得出的数据集通常包含大量物理变量。因此,希望可视化方法考虑整个多场体数据而不是集中于一个变量。我们提出了一种基于从多场粒子体积数据中提取表面的可视化方法。曲面针对基础多元函数对数据进行了细分。分割属性的决策基于对多维特征空间的分析。通过自动的多维层次聚类方法执行特征空间探索,其结果密度簇以3D星坐标布局中的密度级别集的形式显示。在星形坐标布局中,用户可以选择感兴趣的簇。特征空间中的选定聚类对应于对象空间中的分割表面。基于聚类隶属关系引起的分割特性,我们从体数据中提取表面。我们的驱动应用是平滑粒子流体动力学(SPH)模拟,其中每个粒子都具有多种属性。数据集以非结构化的基于点的体数据形式给出。我们直接从此类数据中提取表面,而无需事先重新采样或生成网格。曲面提取可计算曲面上的各个点,这由有效的邻域计算支持。使用基于点的渲染操作来渲染提取的表面点。我们的方法将用于对象空间操作的科学可视化方法与用于特征空间操作的信息可视化方法相结合。

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