Back to Search Start Over

Capturing, Reconstructing, and Simulating: the UrbanScene3D Dataset

Authors :
Lin, Liqiang
Liu, Yilin
Hu, Yue
Yan, Xingguang
Xie, Ke
Huang, Hui
Publication Year :
2021

Abstract

We present UrbanScene3D, a large-scale data platform for research of urban scene perception and reconstruction. UrbanScene3D contains over 128k high-resolution images covering 16 scenes including large-scale real urban regions and synthetic cities with 136 km^2 area in total. The dataset also contains high-precision LiDAR scans and hundreds of image sets with different observation patterns, which provide a comprehensive benchmark to design and evaluate aerial path planning and 3D reconstruction algorithms. In addition, the dataset, which is built on Unreal Engine and Airsim simulator together with the manually annotated unique instance label for each building in the dataset, enables the generation of all kinds of data, e.g., 2D depth maps, 2D/3D bounding boxes, and 3D point cloud/mesh segmentations, etc. The simulator with physical engine and lighting system not only produce variety of data but also enable users to simulate cars or drones in the proposed urban environment for future research.<br />Comment: ECCV 2022 camera ready; Project page: https://vcc.tech/UrbanScene3D/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2107.04286
Document Type :
Working Paper