Visualizing linear neighborhoods in non-linear vector fields

Stefan Koch, Alexander Wiebel, Jens Kasten, M. Hlawitschka
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引用次数: 2

Abstract

Linear approximation plays an important role in many areas employing numerical algorithms. Particularly in the field of vector field visualization, it is the basis of widely used techniques. In this paper, we introduce two methods to extract areas in two- and three-dimensional vector fields that are connected to linear flow behavior. We propose a region-growing algorithm that extracts the linear neighborhood for a certain position. The region is characterized by linear flow behavior up to a user-defined approximation threshold. While this first method computes the size of a region given the mentioned threshold, our second method computes the quality of a linear approximation given a user-defined n-ring neighborhood. The scalar field resulting from the second method is, therefore, called affine linear approximation error. Isosurfaces of this field show regions of close-to-linear and non-linear flow behavior. We demonstrate the expressiveness and discuss the properties of the extracted regions using analytical examples and several datasets from the domain of computational fluid dynamics (CFD).
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可视化非线性向量场中的线性邻域
线性逼近在许多应用数值算法的领域起着重要的作用。特别是在矢量场可视化领域,它是广泛应用的技术的基础。在本文中,我们介绍了两种方法来提取二维和三维矢量场中与线性流动行为相关的区域。提出了一种提取特定位置的线性邻域的区域增长算法。该区域的特征是线性流动行为,可达到用户定义的近似阈值。当第一种方法计算给定阈值的区域大小时,我们的第二种方法计算给定用户定义的n环邻域的线性近似的质量。因此,由第二种方法得到的标量场称为仿射线性近似误差。该场的等值面显示出接近线性和非线性流动行为的区域。我们通过分析实例和计算流体动力学(CFD)领域的几个数据集来证明其可表达性,并讨论了提取区域的性质。
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