论文标题
通过光学卫星图像从仿期重建到欧几里得重建的3D场景结构
Pursuing 3D Scene Structures with Optical Satellite Images from Affine Reconstruction to Euclidean Reconstruction
论文作者
论文摘要
如何使用多个光学卫星图像恢复3D场景结构是遥感领域中具有挑战性且重要的问题。基于经典的RPC(合理的多项式摄像机)模型,已经探索了文献中的大多数现有方法,该模型至少需要39个GCP(地面控制点),但是,在许多真实场景中获得如此大量的GCP并不是微不足道的。解决此问题时,我们提出了一个基于多个光学卫星图像的层次重建框架,该框架仅需要4个GCP。所提出的框架是由仿射密集的重建阶段组成的,随后是仿射到欧亚人升级阶段:在仿射密集的重建阶段,探索了一种仿射密集的重建方法,用于追求3D仿射场景结构,而无需从输入卫星图像中进行任何GCP。然后,在仿生至欧几里得升级阶段,获得的3D仿射结构被升级到具有4 GCP的欧几里得。两个公共数据集的实验结果表明,在大多数情况下,所提出的方法显着优于三种最新方法。
How to use multiple optical satellite images to recover the 3D scene structure is a challenging and important problem in the remote sensing field. Most existing methods in literature have been explored based on the classical RPC (rational polynomial camera) model which requires at least 39 GCPs (ground control points), however, it is not trivial to obtain such a large number of GCPs in many real scenes. Addressing this problem, we propose a hierarchical reconstruction framework based on multiple optical satellite images, which needs only 4 GCPs. The proposed framework is composed of an affine dense reconstruction stage and a followed affine-to-Euclidean upgrading stage: At the affine dense reconstruction stage, an affine dense reconstruction approach is explored for pursuing the 3D affine scene structure without any GCP from input satellite images. Then at the affine-to-Euclidean upgrading stage, the obtained 3D affine structure is upgraded to a Euclidean one with 4 GCPs. Experimental results on two public datasets demonstrate that the proposed method significantly outperforms three state-of-the-art methods in most cases.