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Octree-based region growing for point cloud segmentation

机译:基于八进制的区域增长以进行点云分割

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This paper introduces a novel, region-growing algorithm for the fast surface patch segmentation of three-dimensional point clouds of urban environments. The proposed algorithm is composed of two stages based on a coarse-to-fine concept. First, a region-growing step is performed on an octree-based voxelized representation of the input point cloud to extract major (coarse) segments. The output is then passed through a refinement process. As part of this, there are two competing factors related to voxel size selection. To balance the constraints, an adaptive octree is created in two stages. Empirical studies on real terrestrial and airborne laser scanning data for complex buildings and an urban setting show the proposed approach to be at least an order of magnitude faster when compared to a conventional region growing method and able to incorporate semantic-based feature criteria, while achieving precision, recall, and fitness scores of at least 75% and as much as 95%. (c) 2015 Published by Elsevier B.V. on behalf of International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS).
机译:本文介绍了一种新颖的区域增长算法,用于城市环境的三维点云的快速表面斑块分割。所提出的算法由两个阶段组成,该阶段基于从粗到精的概念。首先,对输入点云的基于八叉树的体素化表示执行区域增长步骤,以提取主要(粗略)片段。然后将输出通过优化过程。作为其一部分,有两个与体素大小选择有关的竞争因素。为了平衡约束,分两个阶段创建了一个自适应八叉树。对复杂建筑物和城市环境中实际地面和机载激光扫描数据的经验研究表明,与传统的区域生长方法相比,该方法至少快一个数量级,并且能够结合基于语义的特征标准,同时实现准确性,召回率和健身得分至少为75%,甚至高达95%。 (c)2015年由Elsevier B.V.代表国际摄影测量与遥感学会(ISPRS)发行。

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