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Consolidation of unorganized point clouds for surface reconstruction

机译:合并无组织的点云以进行曲面重建

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We consolidate an unorganized point cloud with noise, outliers, non-uniformities, and in particular interference between close-by surface sheets as a preprocess to surface generation, focusing on reliable normal estimation. Our algorithm includes two new developments. First, a weighted locally optimal projection operator produces a set of denoised, outlier-free and evenly distributed particles over the original dense point cloud, so as to improve the reliability of local PCA for initial estimate of normals. Next, an iterative framework for robust normal estimation is introduced, where a priority-driven normal propagation scheme based on a new priority measure and an orientation-aware PCA work complementarily and iteratively to consolidate particle normals. The priority setting is reinforced with front stopping at thin surface features and normal flipping to enable robust handling of the close-by surface sheet problem. We demonstrate how a point cloud that is well-consolidated by our method steers conventional surface generation schemes towards a proper interpretation of the input data.
机译:我们将杂乱无章的点云与噪声,离群值,非均匀性,特别是附近的表面薄板之间的干扰整合在一起,作为表面生成的预处理,重点是可靠的法线估计。我们的算法包括两个新的发展。首先,加权局部最优投影算子在原始密集点云上产生一组去噪,无异常值和均匀分布的粒子,以提高局部PCA对法线的初始估计的可靠性。接下来,介绍了用于鲁棒法线估计的迭代框架,其中基于新优先级测度和方向感知的PCA的优先级驱动法线传播方案互补并迭代地工作,以巩固粒子法线。通过在薄表面特征处的前挡和正常翻转增强了优先级设置,从而能够可靠地处理附近的表面薄板问题。我们演示了通过我们的方法充分整合的点云如何引导常规的曲面生成方案,以正确解释输入数据。

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