离散曲面中主方向的精确估计

G. Agam, Xiaojing Tang
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引用次数: 3

摘要

离散曲面的精确局部几何估计是许多应用中的一个重要问题。主曲率和主方向可用于形状分析和识别、目标分割、自适应平滑、不规则网格的各向异性整光和各向异性纹理映射等应用。本文提出了一种在离散曲面上精确估计主方向的新方法。该方法基于曲面的局部方向曲线采样,采样频率可控制。该局部模型与已知的技术相比具有大量的自由度,因此可以更好地表示局部几何。对该方法进行了定量评价,并与已知的主方向估计技术进行了比较。为了在剔除平滑效应的情况下进行无偏评估,我们使用了一组随机生成的贝塞尔曲面补丁,其主方向可以解析计算。
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Accurate principal directions estimation in discrete surfaces
Accurate local surface geometry estimation in discrete surfaces is an important problem with numerous applications. Principal curvatures and principal directions can be used in applications such as shape analysis and recognition, object segmentation, adaptive smoothing, anisotropic fairing of irregular meshes, and anisotropic texture mapping. In this paper, a novel approach for accurate principal direction estimation in discrete surfaces is described. The proposed approach is based on local directional curve sampling of the surface where the sampling frequency can be controlled. This local model has a large number of degrees of freedoms compared with known techniques and so can better represent the local geometry. The proposed approach is quantitatively evaluated and compared with known techniques for principal direction estimation. In order to perform an unbiased evaluation in which smoothing effects are factored out, we use a set of randomly generated Bezier surface patches for which the principal directions can be computed analytically.
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