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Data Reduction of Indoor Point Clouds

机译:室内点云的数据减少

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摘要

The reconstruction and visualization of three-dimensional point-cloud models, obtained by terrestrial laser scanners, is interesting to many research areas. This paper presents an algorithm to decimate redundant information in real-world indoor point-cloud scenes. The key idea is to recognize planar segments from the point-cloud and to decimate their inlier points by the triangulation of the boundary, describing the shape. To achieve this RANSAC, normal vector filtering, statistical clustering, alpha shape boundary recognition and the constrained Delaunay triangulation are used. The algorithm is tested on various large dense point-clouds and is capable of reduction rates from approximately 75-95%.
机译:通过地面激光扫描仪获得的三维点云模型的重建和可视化是许多研究领域的有趣。本文介绍了一种算法,用于堆积现实世界室内云云场景中的冗余信息。关键的想法是识别来自点云的平面段,并通过边界的三角测量来占据其Inlier点,描述形状。为了实现这一RANSAC,使用常规矢量滤波,统计聚类,α形边界识别和约束DELAUNAI三角测量。该算法在各种大密集点云上进行测试,能够减少约75-95%的速率。

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