首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >POINT CLOUD AND DIGITAL SURFACE MODEL GENERATION FROM HIGH RESOLUTION MULTIPLE VIEW STEREO SATELLITE IMAGERY
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POINT CLOUD AND DIGITAL SURFACE MODEL GENERATION FROM HIGH RESOLUTION MULTIPLE VIEW STEREO SATELLITE IMAGERY

机译:高分辨率多视角立体卫星影像生成点云和数字表面模型

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Nowadays, multiple-view stereo satellite imagery has become a valuable data source for digital surface model generation and 3D reconstruction. In 2016, a well-organized multiple view stereo publicly benchmark for commercial satellite imagery has been released by the John Hopkins University Applied Physics Laboratory, USA. This benchmark motivates us to explore the method that can generate accurate digital surface models from a large number of high resolution satellite images. In this paper, we propose a pipeline for processing the benchmark data to digital surface models. As a pre-procedure, we filter all the possible image pairs according to the incidence angle and capture date. With the selected image pairs, the relative bias-compensated model is applied for relative orientation. After the epipolar image pairs’ generation, dense image matching and triangulation, the 3D point clouds and DSMs are acquired. The DSMs are aligned to a quasi-ground plane by the relative bias-compensated model. We apply the median filter to generate the fused point cloud and DSM. By comparing with the reference LiDAR DSM, the accuracy, the completeness and the robustness are evaluated. The results show, that the point cloud reconstructs the surface with small structures and the fused DSM generated by our pipeline is accurate and robust.
机译:如今,多视图立体卫星图像已成为用于数字表面模型生成和3D重建的宝贵数据源。 2016年,美国约翰·霍普金斯大学应用物理实验室发布了组织良好的多视角立体声商业卫星影像公开基准。该基准激励我们探索可以从大量高分辨率卫星图像生成准确的数字表面模型的方法。在本文中,我们提出了用于将基准数据处理为数字表面模型的管道。作为预过程,我们根据入射角和捕获日期过滤所有可能的图像对。使用选定的图像对,将相对偏差补偿模型应用于相对方向。在生成对极图像对,密集图像匹配和三角剖分之后,将获取3D点云和DSM。 DSM通过相对偏置补偿模型对准准接地平面。我们应用中值滤波器生成融合点云和DSM。通过与基准LiDAR DSM进行比较,评估了准确性,完整性和鲁棒性。结果表明,该点云重建了具有较小结构的表面,并且由我们的管道生成的融合DSM是准确且健壮的。

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