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Anisotropic Noise Samples

机译:各向异性噪声样本

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摘要

We present a practical approach to generate stochastic anisotropic samples with Poisson-disk characteristic over a two-dimensional domain. In contrast to isotropic samples, we understand anisotropic samples as non-overlapping ellipses whose size and density match a given anisotropic metric. Anisotropic noise samples are useful for many visualization and graphics applications. The spot samples can be used as input for texture generation, e.g., line integral convolution (LIC), but can also be used directly for visualization. The definition of the spot samples using a metric tensor makes them especially suitable for the visualization of tensor fields that can be translated into a metric. Our work combines ideas from sampling theory and mesh generation. To generate these samples with the desired properties we construct a first set of non-overlapping ellipses whose distribution closely matches the underlying metric. This set of samples is used as input for a generalized anisotropic Lloyd relaxation to distribute noise samples more evenly. Instead of computing the Voronoi tessellation explicitly, we introduce a discrete approach which combines the Voronoi cell and centroid computation in one step. Our method supports automatic packing of the elliptical samples, resulting in textures similar to those generated by anisotropic reaction-diffusion methods. We use Fourier analysis tools for quality measurement of uniformly distributed samples.
机译:我们提出了一种实用的方法来在二维域上生成具有泊松圆盘特征的随机各向异性样本。与各向同性样本相反,我们将各向异性样本理解为不重叠的椭圆,其大小和密度与给定的各向异性度量匹配。各向异性噪声样本对于许多可视化和图形应用很有用。点样本可以用作纹理生成的输入,例如,线积分卷积(LIC),但也可以直接用于可视化。使用度量张量定义斑点样本使它们特别适合可视化可转换为度量的张量场。我们的工作结合了采样理论和网格生成的思想。为了生成具有所需属性的这些样本,我们构造了第一组不重叠的椭圆,其分布与基础度量紧密匹配。这组样本用作广义各向异性劳埃德弛豫的输入,以更均匀地分布噪声样本。代替显式地计算Voronoi细分,我们引入了一种离散方法,该方法将Voronoi单元和质心计算一步结合在一起。我们的方法支持自动填充椭圆形样品,从而产生类似于各向异性反应扩散方法所产生的纹理。我们使用傅立叶分析工具对均匀分布的样品进行质量测量。

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