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Building a Point Cloud Hierarchical Clustering Segmentation Algorithm Based on Multidimensional Characteristics

机译:基于多维特征构建点云分层聚类分割算法

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摘要

Point cloud segmentation is an essential step in the processing of terrestrial laser scanning data. Model reconstruction quality based on point cloud is highly dependent on the validity of the segmentation results. The segmentation is challenging because of the huge amount of points with different local densities, and lack explicit structure, especially in the presence of random noisy points. This paper presents a hierarchical clustering segmentation algorithm using multidimensional characteristics. First, an initial segmentation is established by means of notion of clusters based on point cloud density to discover clusters of arbitrary shape. The points that are relatively far away and dense can be grouped. Second, a building can be extracted from urban point cloud based on its spectral characteristics. Finally, a building can be further subdivided based on a collection of geometrical characteristics of point cloud. Experimental results demonstrate that the proposed method can not only extract building from the surrounding environment but also decompose it into different planes which lay a good foundation for building reconstruction.
机译:点云分割是处理地面激光扫描数据的重要步骤。基于点云的模型重建质量高度依赖于分段结果的有效性。由于具有不同局部密度的巨大点,并且缺乏明确的结构,细分是具有挑战性的,特别是在存在随机嘈杂的点。本文介绍了使用多维特征的分层聚类分段算法。首先,通过基于点云密度的簇的概念来建立初始分割,以发现任意形状的簇。相对较远和密集的点可以分组。其次,可以基于其光谱特性从城市点云中提取建筑物。最后,可以基于点云的几何特征的集合来进一步细分建筑物。实验结果表明,该方法不仅可以从周围环境中提取建筑物,还可以将其分解为不同的平面,这为建筑重建奠定了良好的基础。

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