Smart City Gnosys

Smart city article details

Title Building3D: An Urban-Scale Dataset And Benchmarks For Learning Roof Structures From Point Clouds
ID_Doc 13123
Authors Wang R.; Huang S.; Yang H.
Year 2023
Published Proceedings of the IEEE International Conference on Computer Vision
DOI http://dx.doi.org/10.1109/ICCV51070.2023.01837
Abstract Urban modeling from LiDAR point clouds is an important topic in computer vision, computer graphics, photogrammetry and remote sensing. 3D city models have found a wide range of applications in smart cities, autonomous navigation, urban planning and mapping etc. However, existing datasets for 3D modeling mainly focus on common objects such as furniture or cars. Lack of building datasets has become a major obstacle for applying deep learning technology to specific domains such as urban modeling. In this paper, we present an urban-scale dataset consisting of more than 160 thousands buildings along with corresponding point clouds, mesh and wireframe models, covering 16 cities in Estonia about 998 Km2. We extensively evaluate performance of state-of-the-art algorithms including handcrafted and deep feature based methods. Experimental results indicate that Building3D has challenges of high intra-class variance, data imbalance and large-scale noises. The Building3D is the first and largest urban-scale building modeling benchmark, allowing a comparison of supervised and self-supervised learning methods. We believe that our Building3D will facilitate future research on urban modeling, aerial path planning, mesh simplification, and semantic/part segmentation etc. © 2023 IEEE.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
27797 View0.907Ortega S.; Santana J.M.; Wendel J.; Trujillo A.; Murshed S.M.Generating 3D City Models From Open Lidar Point Clouds: Advancing Towards Smart City ApplicationsLecture Notes in Intelligent Transportation and Infrastructure, Part F1384 (2021)
11278 View0.903Nys G.-A.; Billen R.; Poux F.Automatic 3D Buildings Compact Reconstruction From Lidar Point CloudsInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, 43, B2 (2020)
15252 View0.9Zhang W.; Chen J.; Tan G.Complex Roof Structure Reconstruction By 3D Primitive Fitting From Point Clouds; [基于 3D 基元拟合的复杂屋顶点云三维重建]Journal of Geo-Information Science, 25, 8 (2023)
186 View0.899Cheolhwan K.; Youngmok K.; Wonjun C.; Eunkwan L.; Hong-Gyoo S.3D Urban Building Reconstruction Through Neural Rendering And Uav ImageryJournal of the Korean Society of Surveying, Geodesy, Photogrammetry and Cartography, 41, 5 (2023)
117 View0.893Liu W.; Zang Y.; Xiong Z.; Bian X.; Wen C.; Lu X.; Wang C.; Marcato J., Jr.; Gonçalves W.N.; Li J.3D Building Model Generation From Mls Point Cloud And 3D Mesh Using Multi-Source Data FusionInternational Journal of Applied Earth Observation and Geoinformation, 116 (2023)
13030 View0.889Zhang Y.; Wang T.; Lin X.; Zhao Z.; Wang X.Building Extraction From Lidar Point Clouds Based On Revised Randla-NetInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives, 48, 1 (2024)
25925 View0.887Huang Y.; Zang Y.; Jiang Q.; Mi W.Extraction Of Building Outlines From Airborne Lidar Point Clouds Using Line-Cnn Based On Deep Network; [采用 Line-Cnn 深度学习网络的机载点云建筑轮廓线提取]Journal of Geo-Information Science, 26, 9 (2024)
13121 View0.886Jovanovic, D; Milovanov, S; Ruskovski, I; Govedarica, M; Sladic, D; Radulovic, A; Pajic, VBuilding Virtual 3D City Model For Smart Cities Applications: A Case Study On Campus Area Of The University Of Novi SadISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 9, 8 (2020)
13602 View0.882Akhavi Zadegan A.; Vivet D.; Hadachi A.Challenges And Advancements In Image-Based 3D Reconstruction Of Large-Scale Urban Environments: A Review Of Deep Learning And Classical MethodsFrontiers in Computer Science, 7 (2025)
1779 View0.882Zuo Z.; Li Y.A Framework For Reconstructing Building Parametric Models With Hierarchical Relationships From Point CloudsInternational Journal of Applied Earth Observation and Geoinformation, 119 (2023)