Unit-level LoD2 Building Reconstruction from Satellite-derived Digital Surface Model and Orthophoto

Shengxi Gui, P. Schuegraf, K. Bittner, Rongjun Qin
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Abstract

Abstract. Recent advancements in deep learning have enabled the possibility to identify unit-level building sections from very high resolution satellite images. By learning from the examples, deep models can capture patterns from the low-resolution roof textures to separate building units from duplex buildings. This paper demonstrates that such unit-level segmentation can further advance level of details (LoD)2 modeling. We extend a building boundary regularization method by adapting noisy unit-level segmentation results. Specifically, we propose a novel polygon composition approach to ensure the individually segmented units within a duplex building or dense adjacent buildings are consistent in their shared boundaries. Results of the experiments show that, our unit-level LoD2 modeling has favorably outperformed the state-of-the-art LoD2 modeling results from satellite images.
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根据卫星数字地表模型和正射影像重建单元级 LoD2 建筑物
摘要深度学习的最新进展使得从高分辨率卫星图像中识别单元级建筑剖面成为可能。通过从实例中学习,深度模型可以从低分辨率的屋顶纹理中捕捉模式,从而将建筑单元从复式楼中分离出来。本文证明,这种单元级分割可以进一步推进细节级(LoD)2 建模。我们通过调整噪声单元级分割结果来扩展建筑边界正则化方法。具体来说,我们提出了一种新颖的多边形构成方法,以确保复式楼或密集相邻楼宇内单独分割的单元在共享边界上保持一致。实验结果表明,我们的单元级 LoD2 建模结果优于最先进的卫星图像 LoD2 建模结果。
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