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Topological visualization of tensor fields using a generalized Helmholtz decomposition.

机译:使用广义Helmholtz分解对张量场进行拓扑可视化。

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摘要

Analysis and visualization of fluid flow datasets has become increasing important with the development of computer graphics. Even though many direct visualization methods have been applied in the tensor fields, those methods may result in much visual clutter. The Helmholtz decomposition has been widely used to analyze and visualize the vector fields, and it is also a useful application in the topological analysis of vector fields. However, there has been no previous work employing the Helmholtz decomposition of tensor fields. We present a method for computing the Helmholtz decomposition of tensor fields of arbitrary order and demonstrate its application. The Helmholtz decomposition can split a tensor field into divergence-free and curl-free parts. The curl-free part is irrotational, and it is useful to isolate the local maxima and minima of divergence (foci of sources and sinks) in the tensor field without interference from curl-based features. And divergence-free part is solenoidal, and it is useful to isolate centers of vortices in the tensor field. Topological visualization using this decomposition can classify critical points of two-dimensional tensor fields and critical lines of 3D tensor fields. Compared with several other methods, this approach is not dependent on computing eigenvectors, tensor invariants, or hyperstreamlines, but it can be computed by solving a sparse linear system of equations based on finite difference approximation operators. Our approach is an indirect visualization method, unlike the direct visualization which may result in the visual clutter. The topological analysis approach also generates a single separating contour to roughly partition the tensor field into irrotational and solenoidal regions. Our approach will make use of the 2nd order and the 4th order tensor fields. This approach can provide a concise representation of the global structure of the field, and provide intuitive and useful information about the structure of tensor fields. However, this method does not extract the exact locations of critical points and lines.
机译:随着计算机图形学的发展,流体流动数据集的分析和可视化变得越来越重要。即使在张量字段中应用了许多直接可视化方法,这些方法也可能导致很多视觉混乱。亥姆霍兹分解已被广泛用于矢量场的分析和可视化,它在矢量场的拓扑分析中也很有用。但是,以前没有使用张量场的亥姆霍兹分解的工作。我们提出了一种计算任意阶张量场的亥姆霍兹分解的方法,并演示了其应用。亥姆霍兹分解可以将张量场分成无散度和无卷曲的部分。无卷曲部分是无旋转的,在隔离张量场中局部的最大值和最小值(源和汇的焦点)时有用,而不会受到基于卷曲的特征的干扰。无散度部分是螺线管的,它对隔离张量场中的涡旋中心很有用。使用这种分解的拓扑可视化可以对二维张量场的临界点和3D张量场的临界线进行分类。与其他几种方法相比,该方法不依赖于计算特征向量,张量不变式或超流线,而可以通过基于有限差分近似算符求解稀疏线性方程组来计算。我们的方法是一种间接可视化方法,与可能导致视觉混乱的直接可视化不同。拓扑分析方法还生成单个分离轮廓,以将张量场大致划分为非旋转和螺线管区域。我们的方法将利用二阶和四阶张量字段。这种方法可以提供字段整体结构的简洁表示,并提供有关张量字段结构的直观和有用的信息。但是,此方法不能提取关键点和直线的确切位置。

著录项

  • 作者

    Zhu, Lierong.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2010
  • 页码 83 p.
  • 总页数 83
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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