A Survey on Point Cloud Generation for 3D Scene Reconstruction

Edgar Mauricio Munoz-Silva, Gonzalo Gonzalez-Murillo, M. Antonio-Cruz, J. I. Vasquez-Gomez, Carlos Alejandro Merlo-Zapata
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引用次数: 2

Abstract

With the intention of providing a general idea of the process and computational problems to recover a 3D scene from a point cloud, this paper presents a state-of-the-art review on point cloud generation from images for 3D scene reconstruction, including applications with unmanned aerial vehicles. This review is oriented to higher education beginners, both in computer vision and learning algorithms, which are looking for the comprehension of the general literature in order to propose a technological and educational innovation project. The review is focused on the seven stages related with the point cloud generation from images, which are picture extraction, picture matching, camera motion estimation, sparse 3D reconstruction, model parameters correction, absolute scale recovery, and dense 3D reconstruction. As the first five stages are known as Structure from Motion (SfM), the papers were presented in three groups: i) One dealing with one, some or the whole stages of SfM. ii) Another centered on absolute scale recovery. iii) One more related to dSfM (dense SfM) and dense 3D reconstruction. Then, a discussion on the problems faced in reported literature is provided, identifying complex computational problems in each group, such as overstock for images, lack of depth, lack of detail, high processing time, and big size of the point cloud. Lastly, a conclusion regarding the benefits and limitations of the reviewed contributions is given.
三维场景重建中点云生成研究进展
为了提供从点云恢复3D场景的过程和计算问题的总体思路,本文介绍了用于3D场景重建的图像点云生成的最新进展,包括无人机的应用。这篇综述是面向高等教育的初学者,无论是在计算机视觉和学习算法,他们正在寻找一般文献的理解,以提出一个技术和教育创新项目。重点介绍了图像生成点云的七个阶段,即图像提取、图像匹配、摄像机运动估计、稀疏三维重建、模型参数校正、绝对尺度恢复和密集三维重建。由于前五个阶段被称为运动结构(SfM),论文分为三组:i)一个处理SfM的一个,一些或整个阶段。ii)另一个以绝对规模恢复为中心。iii)另一个与dSfM(密集SfM)和密集3D重建有关。然后,对文献报道中面临的问题进行了讨论,确定了每组中复杂的计算问题,如图像积压、深度不足、缺乏细节、处理时间长、点云规模大等。最后,对所审查的贡献的优点和局限性进行了总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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