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A Density-Based Clustering Method for Urban Scene Mobile Laser Scanning Data Segmentation

机译:基于密度的城市场景移动激光扫描数据分割聚类方法

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The segmentation of urban scene mobile laser scanning (MLS) data into meaningful street objects is a great challenge due to the scene complexity of street environments, especially in the vicinity of street objects such as poles and trees. This paper proposes a three-stage method for the segmentation of urban MLS data at the object level. The original unorganized point cloud is first voxelized, and all information needed is stored in the voxels. These voxels are then classified as ground and non-ground voxels. In the second stage, the whole scene is segmented into clusters by applying a density-based clustering method based on two key parameters: local density and minimum distance. In the third stage, a merging step and a re-assignment processing step are applied to address the over-segmentation problem and noise points, respectively. We tested the effectiveness of the proposed methods on two urban MLS datasets. The overall accuracies of the segmentation results for the two test sites are 98.3% and 97%, thereby validating the effectiveness of the proposed method.
机译:由于街道环境的场景复杂性,尤其是在电线杆和树木等街道物体附近,将城市场景移动激光扫描(MLS)数据分割成有意义的街道物体是一个巨大的挑战。本文提出了一种在目标层次上对城市MLS数据进行分割的三阶段方法。首先对原始的无组织点云进行体素化,并将所有需要的信息存储在体素中。然后将这些体素分类为地面体素和非地面体素。在第二阶段,通过应用基于密度的聚类方法,基于两个关键参数:局部密度和最小距离,将整个场景划分为聚类。在第三阶段中,合并步骤和重新分配处理步骤分别用于解决过度分割问题和噪声点。我们在两个城市MLS数据集上测试了所提方法的有效性。两个测试点的分割结果的总体准确度分别为98.3%和97%,从而验证了所提方法的有效性。

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