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Large-Scale Accurate Reconstruction of Buildings Employing Point Clouds Generated from UAV Imagery

机译:利用从无人机影像生成的点云的建筑物的大规模准确重建

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High-density point clouds are valuable and detailed sources of data for different processes related to photogrammetry. We explore the knowledge-based generation of accurate large-scale three-dimensional (3D) models of buildings employing point clouds derived from UAV-based photogrammetry. A new two-level segmentation approach based on efficient RANdom SAmple Consensus (RANSAC) shape detection is developed to segment potential facades and roofs of the buildings and extract their footprints. In the first level, the cylinder primitive is implemented to trim point clouds and split buildings, and the second level of the segmentation produces planar segments. The efficient RANSAC algorithm is enhanced in sizing up the segments via point-based analyses for both levels of segmentation. Then, planar modelling is carried out employing contextual knowledge through a new constrained least squares method. New evaluation criteria are proposed based on conceptual knowledge. They can examine the abilities of the approach in reconstruction of footprints, 3D models, and planar segments in addition to detection of over/under segmentation. Evaluation of the 3D models proves that the geometrical accuracy of LoD3 is achieved, since the average horizontal and vertical accuracy of the reconstructed vertices of roofs and footprints are better than (0.24, 0.23) m, (0.19, 0.17) m for the first dataset, and (0.35, 0.37) m, (0.28, 0.24) m for the second dataset.
机译:对于与摄影测量有关的不同过程,高密度点云是有价值的详细数据源。我们探索基于知识的建筑物的精确大规模三维(3D)模型的生成,这些模型采用从基于无人机的摄影测量法中得出的点云。开发了一种基于有效的随机抽样共识(RANSAC)形状检测的新的两级分割方法,以分割建筑物的潜在外墙和屋顶并提取其足迹。在第一级中,圆柱图元被实现为修剪点云和分割建筑物,而第二级分割产生平面段。高效的RANSAC算法通过针对两个细分级别的基于点的分析提高了细分的大小。然后,通过新的约束最小二乘法使用上下文知识进行平面建模。基于概念知识提出了新的评估标准。他们不仅可以检测过度分割/不足分割,还可以检查该方法在构建覆盖区,3D模型和平面段中的能力。 3D模型的评估证明了LoD3的几何精度,因为第一个数据集的屋顶和覆盖区重构顶点的平均水平和垂直精度优于(0.24,0.23)m,(0.19,0.17)m ,以及第二个数据集的(0.35,0.37)m,(0.28,0.24)m。

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