利用高分辨率卫星图像数据进行立体建筑重建

Dong-Min Woo, Dong-Chul Park
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摘要

本文提出了一种基于卫星图像的建筑物检测与重建新方法。在我们的方法中,我们提出使用基于散度的质心神经网络来进行三维线段的分组。该系统通过将三维线段分组为构成三维屋顶模型的主要三维线段,大大减少了低层特征提取中不必要的线段。我们的分组过程包括两个步骤。我们进行了第一步的分组过程,将碎片或重复的3D线分组为主要的3D线,用于构建屋顶模型,并在第二步中构建彼此平行的线组。根据分组结果,通过最后的聚类过程重构三维屋顶模型。我们用高分辨率IKONOS立体图像对该方法进行了测试。实验结果证明了该方法在高分辨率卫星图像中重建直线型三维屋顶模型的有效性。
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Stereoscopic Building Reconstruction Using High-Resolution Satellite Image Data
This paper proposes a new method for building detection and reconstruction from satellite images. In our approach, we propose to use divergence-based centroid neural network to carry out the grouping of 3D line segments. By grouping 3D line segments into the principal 3D lines which can constitute 3D rooftop model, the system significantly reduces the unnecessary line segments from low level feature extraction. Our grouping process consists of two steps. We carry out the first grouping process to group fragmented or duplicated 3D lines into the principal 3D lines which can be used to construct the rooftop model, and construct the groups of lines that are parallel each other in the second step. From the grouping result, 3D rooftop models are reconstructed by the final clustering process. We test the proposed method with high-resolution IKONOS stereo images. The experimental result proved the efficiency of the proposed method in the reconstruction of the rectilinear type of 3D rooftop model from high-resolution satellite imagery.
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