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Shape classification and normal estimation for non-uniformly sampled, noisy point data

机译:非均匀采样的噪声点数据的形状分类和法线估计

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摘要

We present ar algorithm for robustly analyzing point data arising from sampling a 2D surface embedded in 3D, even in the presence of noise and non-uniform sampling. The algorithm outputs, for each data point, a surface normal, a local surface approximation in the form of a one-ring, the local shape (flat, ridge, bowl, saddle, sharp edge, corner, boundary), the feature size, and a confidence value that can be used to determine areas where the sampling is poor or not surface-like. We show that the normal estimation out-performs traditional fitting approaches, especially when the data points are non-uniformly sampled and in areas of high curvature. We demonstrate surface reconstruction, parameterization, and smoothing using the one-ring neighborhood at each point as an approximation of the full mesh structure.
机译:我们提出了一种ar算法,即使在存在噪声和非均匀采样的情况下,也可以对从嵌入3D的2D表面进行采样产生的点数据进行鲁棒性分析。该算法为每个数据点输出一个表面法线,一个环的局部表面近似值,局部形状(平面,脊,碗,鞍形,锐边,角,边界),特征尺寸,置信度值可用于确定采样质量较差或不是表面样的区域。我们表明,法线估计优于传统的拟合方法,尤其是当数据点采样不均匀且在高曲率区域时。我们演示了在每个点使用单环邻域作为完整网格结构的近似值进行的表面重建,参数化和平滑处理。

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