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Automated Reconstruction of Building LoDs from Airborne LiDAR Point Clouds Using an Improved Morphological Scale Space

机译:使用改进的形态比例空间从机载LiDAR点云自动重建建筑LoD

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摘要

Reconstructing building models at different levels of detail (LoDs) from airborne laser scanning point clouds is urgently needed for wide application as this method can balance between the user’s requirements and economic costs. The previous methods reconstruct building LoDs from the finest 3D building models rather than from point clouds, resulting in heavy costs and inflexible adaptivity. The scale space is a sound theory for multi-scale representation of an object from a coarser level to a finer level. Therefore, this paper proposes a novel method to reconstruct buildings at different LoDs from airborne Light Detection and Ranging (LiDAR) point clouds based on an improved morphological scale space. The proposed method first extracts building candidate regions following the separation of ground and non-ground points. For each building candidate region, the proposed method generates a scale space by iteratively using the improved morphological reconstruction with the increase of scale, and constructs the corresponding topological relationship graphs (TRGs) across scales. Secondly, the proposed method robustly extracts building points by using features based on the TRG. Finally, the proposed method reconstructs each building at different LoDs according to the TRG. The experiments demonstrate that the proposed method robustly extracts the buildings with details (e.g., door eaves and roof furniture) and illustrate good performance in distinguishing buildings from vegetation or other objects, while automatically reconstructing building LoDs from the finest building points.
机译:迫切需要从机载激光扫描点云重构不同细节级别(LoDs)的建筑模型,以广泛应用,因为这种方法可以在用户需求和经济成本之间取得平衡。先前的方法是从最佳3D建筑物模型而不是从点云中重建建筑物LoD,从而导致沉重的成本和不灵活的适应性。比例尺空间是从较粗的层次到较细的层次对对象进行多尺度表示的合理理论。因此,本文基于改进的形态学尺度空间,提出了一种从机载光探测与测距(LiDAR)点云重建不同LoD位置的建筑物的新方法。提出的方法首先在地面和非地面点分离之后提取建筑物候选区域。对于每个建筑物候选区域,所提出的方法通过随着规模的增加而迭代地使用改进的形态重构来生成规模空间,并跨尺度构建相应的拓扑关系图(TRG)。其次,提出的方法利用基于TRG的特征稳健地提取建筑点。最后,提出的方法根据TRG在不同的LoD位置重建每个建筑物。实验表明,所提出的方法可以稳健地提取具有细节的建筑物(例如门檐和屋顶家具),并在区分建筑物与植被或其他物体的同时表现出良好的性能,同时可以从最佳建筑物点自动重建建筑物LoD。

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