Automated Building Footprint and 3D Building Model Generation from Lidar Point Cloud Data

F. T. Kurdi, M. Awrangjeb, Alan Wee-Chung Liew
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引用次数: 3

Abstract

Although much effort has been spent in developing a stable algorithm for 3D building modelling from Lidar data, this topic still attracts a lot of attention in the literature. A key task of this problem is the automatic building roof segmentation. Due to the great diversity of building typology, and the noisiness and heterogeneity of point cloud data, the building roof segmentation result needs to be verified/rectified with some geometric constrains before it is used to generate the 3D building models. Otherwise, the generated building model may suffer from undesirable deformations. This paper suggests the generation of 3D building model from Lidar data in two steps. The first step is the automatic 2D building modelling and the second step is the automatic conversion of a 2D building model into 3D model. This approach allows the 2D building model to be refined before starting the 3D building model generation. Furthermore, this approach allows getting the 2D and 3D building models simultaneously. The first step of the proposed algorithm is the generation of the 2D building model. Then after enhancing and fitting the roof planes, the roof plane boundaries are converted into 3D by analysing the relationships between neighbouring planes. This is followed by the adjustment of the 3D roof vertices. Experiment indicated that the proposed algorithm is accurate and robust in generating 3D building models from Lidar data.
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基于激光雷达点云数据的自动建筑足迹和3D建筑模型生成
尽管人们已经花费了大量的精力来开发一种稳定的基于激光雷达数据的三维建筑建模算法,但这一主题在文献中仍然引起了很多关注。该问题的一个关键任务是建筑物屋顶的自动分割。由于建筑类型的多样性,以及点云数据的噪声和异构性,在生成三维建筑模型之前,需要对建筑屋顶分割结果进行一些几何约束的验证/校正。否则,生成的建筑模型可能会出现不希望出现的变形。本文提出了利用激光雷达数据生成三维建筑模型的两步方法。第一步是自动进行二维建筑建模,第二步是将二维建筑模型自动转换为三维模型。这种方法允许在开始生成3D建筑模型之前对2D建筑模型进行细化。此外,这种方法允许同时获得2D和3D建筑模型。该算法的第一步是生成二维建筑模型。然后对屋顶平面进行增强和拟合,通过分析相邻平面之间的关系,将屋顶平面边界转化为三维空间。接下来是3D屋顶顶点的调整。实验结果表明,该算法在利用激光雷达数据生成三维建筑模型方面具有较好的准确性和鲁棒性。
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