The reconstruction of accurate three-dimensional environment models is one of the most fundamental goals in the field of photogrammetry. Since satellite images provide suitable properties for obtaining large-scale environment reconstructions, there exist a variety of Stereo Matching based methods to reconstruct point clouds for satellite image pairs. Recently, the first Structure from Motion (SfM) based approach has been proposed, which allows to reconstruct point clouds from multiple satellite images. In this work, we propose an extension of this SfM based pipeline that allows us to reconstruct not only point clouds but watertight meshes including texture information. We provide a detailed description of several steps that are mandatory to exploit state-of-the-art mesh reconstruction algorithms in the context of satellite imagery. This includes a decomposition of finite projective camera calibration matrices, a skew correction of corresponding depth maps and input images as well as the recovery of real-world depth maps from reparameterized depth values. The paper presents an extensive quantitative evaluation on multi-date satellite images demonstrating that the proposed pipeline combined with current meshing algorithms outperforms state-of-the-art point cloud reconstruction algorithms in terms of completeness and median error. We make the source code of our pipeline publicly available.
翻译:重建精确的三维环境模型是摄影测量领域最根本的目标之一。由于卫星图像为大规模环境重建提供了适当的属性,因此存在各种基于静电匹配的基于方法来重建卫星图像配对的点云。最近,提出了第一个基于运动的结构(SfM)方法,以便能够从多个卫星图像中重建点云。在这项工作中,我们提议扩大这个基于SfM的管道,使我们不仅能够重建点云,而且能够重建水紧的网象,包括纹理信息。我们详细说明了在卫星图像中利用最新网格重建算法必须采取的若干步骤。这包括分解固定的投影相机校准矩阵,对相应的深度地图和输入图像进行斯凯夫式校正,以及从重新测量的深度值中恢复实际世界深度地图。本文件对多日期卫星图像进行了广泛的定量评估,表明拟议的管道与当前的网格算法结合了当前网格算法超越了目前状态的网象。我们用点重建的云层中位码提供了公共云流路路路的系统。