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首页> 外文期刊>Sensors >A Dynamic Multi-Projection-Contour Approximating Framework for the 3D Reconstruction of Buildings by Super-Generalized Optical Stereo-Pairs
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A Dynamic Multi-Projection-Contour Approximating Framework for the 3D Reconstruction of Buildings by Super-Generalized Optical Stereo-Pairs

机译:动态多投影轮廓近似框架,用于超广义光学立体对的3D重建。

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摘要

In this paper, a novel framework of the 3D reconstruction of buildings is proposed, focusing on remote sensing super-generalized stereo-pairs (SGSPs). As we all know, 3D reconstruction cannot be well performed using nonstandard stereo pairs, since reliable stereo matching could not be achieved when the image-pairs are collected at a great difference of views, and we always failed to obtain dense 3D points for regions of buildings, and cannot do further 3D shape reconstruction. We defined SGSPs as two or more optical images collected in less constrained views but covering the same buildings. It is even more difficult to reconstruct the 3D shape of a building by SGSPs using traditional frameworks. As a result, a dynamic multi-projection-contour approximating (DMPCA) framework was introduced for SGSP-based 3D reconstruction. The key idea is that we do an optimization to find a group of parameters of a simulated 3D model and use a binary feature-image that minimizes the total differences between projection-contours of the building in the SGSPs and that in the simulated 3D model. Then, the simulated 3D model, defined by the group of parameters, could approximate the actual 3D shape of the building. Certain parameterized 3D basic-unit-models of typical buildings were designed, and a simulated projection system was established to obtain a simulated projection-contour in different views. Moreover, the artificial bee colony algorithm was employed to solve the optimization. With SGSPs collected by the satellite and our unmanned aerial vehicle, the DMPCA framework was verified by a group of experiments, which demonstrated the reliability and advantages of this work.
机译:本文针对建筑物的3D重建提出了一个新颖的框架,重点是遥感超通用立体声对(SGSP)。众所周知,使用非标准立体对不能很好地执行3D重建,因为当以不同的视角收集图像对时,无法实现可靠的立体匹配,并且我们始终无法获得3D区域的密集3D点。建筑物,并且无法进行进一步的3D形状重建。我们将SGSP定义为以较少约束的视图但覆盖相同建筑物收集的两个或多个光学图像。 SGSP使用传统框架来重建建筑物的3D形状甚至更加困难。结果,为基于SGSP的3D重建引入了动态多投影轮廓近似(DMPCA)框架。关键思想是,我们进行了优化以找到一组模拟3D模型的参数,并使用二进制特征图像将SGSP中建筑物的投影轮廓与模拟3D模型中的投影轮廓之间的总差异最小化。然后,由参数组定义的模拟3D模型可以近似建筑物的实际3D形状。设计了典型建筑物的某些参数化3D基本单元模型,并建立了模拟投影系统以获取不同视图下的模拟投影轮廓。此外,采用人工蜂群算法进行优化。通过卫星和我们的无人飞行器收集的SGSP,通过一组实验验证了DMPCA框架,从而证明了这项工作的可靠性和优势。

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