UseGeo - A UAV-based multi-sensor dataset for geospatial research

F. Nex , E.K. Stathopoulou , F. Remondino , M.Y. Yang , L. Madhuanand , Y. Yogender , B. Alsadik , M. Weinmann , B. Jutzi , R. Qin
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引用次数: 0

Abstract

3D reconstruction is a long-standing research topic in the photogrammetric and computer vision communities; although a plethora of open-source and commercial solutions for 3D reconstruction have been released in the last few years, several open challenges and limitations still exist. Undoubtedly, deep learning algorithms have demonstrated great potential in several remote sensing tasks, including image-based 3D reconstruction. State-of-the-art monocular and stereo algorithms leverage deep learning techniques and achieve increased performance in depth estimation and 3D reconstruction. However, one of the limitations of such methods is that they highly rely on large training sets that are often tedious to obtain; even when available, they typically refer to indoor, close-range scenarios and low-resolution images. Especially while considering UAV (Unmanned Aerial Vehicle) scenarios, such data are not available and domain adaptation is not a trivial challenge. To fill this gap, the UAV-based multi-sensor dataset for geospatial research (UseGeo - https://usegeo.fbk.eu/home) is introduced in this paper. It contains both image and LiDAR data and aims to support relevant research in photogrammetry and computer vision with a useful training set for both stereo and monocular 3D reconstruction algorithms. In this regard, the dataset provides ground truth data for both point clouds and depth maps. In addition, UseGeo can be also a valuable dataset for other tasks such as feature extraction and matching, aerial triangulation, or image and LiDAR co-registration. The paper introduces the UseGeo dataset and validates some state-of-the-art algorithms to assess their usability for both monocular and multi-view 3D reconstruction.

UseGeo - 用于地理空间研究的无人机多传感器数据集
三维重建是摄影测量和计算机视觉领域一个由来已久的研究课题;尽管在过去几年中发布了大量用于三维重建的开源和商业解决方案,但仍存在一些公开的挑战和限制。毫无疑问,深度学习算法在多项遥感任务(包括基于图像的三维重建)中展现出了巨大的潜力。最先进的单目和立体算法利用深度学习技术提高了深度估计和三维重建的性能。然而,这些方法的局限性之一是它们高度依赖于大型训练集,而这些训练集的获取往往十分繁琐;即使可以获得,它们通常也是针对室内、近距离场景和低分辨率图像的。特别是在考虑无人机(UAV)场景时,此类数据不可用,领域适应性也不是一个小挑战。为了填补这一空白,本文介绍了用于地理空间研究的基于无人机的多传感器数据集(UseGeo - https://usegeo.fbk.eu/home)。该数据集包含图像和激光雷达数据,旨在为摄影测量和计算机视觉领域的相关研究提供支持,为立体和单目三维重建算法提供有用的训练集。在这方面,数据集为点云和深度图提供了地面实况数据。此外,UseGeo 数据集还是其他任务(如特征提取和匹配、航空三角测量或图像和激光雷达协同配准)的重要数据集。本文介绍了 UseGeo 数据集,并验证了一些最先进的算法,以评估它们在单目和多目三维重建中的可用性。
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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