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Scatter Point Cloud Denoising Based on Self-Adaptive Optimal Neighborhood

机译:基于自适应最优邻域的散点云去噪

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We present a scatter point cloud denoising method, which can reduce noise effectively, while preserving mesh features such as sharp edges and corners. The method consists of two stages. Firstly, noisy points normal are filtered iteratively; second, location noises of points are reduced. How to select proper denoising neighbors is a key problem for scatter point cloud denoising operation. The local shape factor which related to the surface feature is proposed. By using the factor, we achieved the shape adaptive angle threshold and adaptive optimal denoising neighbor. Normal space and location space is denoising using improved trilateral filter in adaptive angle threshold. A series of numerical experiment proved the new denoising algorithm in this paper achieved more detail feature and smoother surface.
机译:我们提出了一种散射点云去噪方法,可以有效地减少噪音,同时保留诸如尖锐边缘和角落的网状特征。该方法包括两个阶段。首先,嘈杂的点正常被迭代过滤;其次,点的位置噪声减少。如何选择正确的去噪邻居是散射点云去噪运行的关键问题。提出了与表面特征有关的局部形状因子。通过使用该因素,我们实现了形状自适应角度阈值和自适应最佳去噪邻居。正常空间和位置空间正在使用改进的三边滤波器在自适应角度阈值下进行去噪。一系列数值实验证明了本文的新去噪算法实现了更多细节特征和更平滑的表面。

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