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Multi-data UAV Images for Large Scale Reconstruction of Buildings

机译:用于大规模建筑物的多数据UAV图像

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In this paper, a new energy function is proposed that can aggregate the mesh model generated by the point cloud extracted from the UAV and supplement it with contextual semantics to accurately segment the building, which maximizes the consistency of the extracted buildings to restore detail. The semantic information is also used to improve the consistency of the labels between the semantic segments of the extracted input model to ensure the validity of the separation results. A new method of reconstructing polygon and arc models using unstructured models is proposed to improve large scale reconstruction. It can robustly discover the set of adjacency relations and repairs appropriately the non-watertight model due to point cloud loss. The experimental results show that the proposed large scale reconstruction algorithm is suitable for the modeling of complex urban buildings.
机译:在本文中,提出了一种新的能量函数,其可以聚合由从UAV提取的点云产生的网状模型,并用上下文语义补充,以准确地段构建,这最大化提取的建筑物恢复细节的一致性。语义信息还用于提高提取的输入模型的语义段之间标签的一致性,以确保分离结果的有效性。建议使用非结构化模型重建多边形和电弧模型的新方法,以改善大规模的重建。它可以强大地发现邻接关系集,并根据点云丢失适当地修理非水密模型。实验结果表明,建议的大规模重建算法适用于复杂城市建筑的建模。

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