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视觉与机器人

3D 视觉

三维重建、NeRF、Gaussian Splatting、点云和空间智能。

今日/当前日期收录 1 信号源:cs.CV, cs.GR, cs.RO
2606.20455 2026-06-19 cs.CV 新提交 95%

PCFootprint: A Large-Scale Dataset and Benchmark for Vectorized Building Footprint Extraction from Aerial LiDAR Point Clouds

PCFootprint:用于从航空LiDAR点云中提取矢量化建筑足迹的大规模数据集与基准

Haoyuan Shen, Kuihao Wang, Ruisheng Wang, Yujun Liu

发表机构 * School of Architecture and Urban Planning, Shenzhen University(深圳大学建筑与城市规划学院)

专题命中 点云 :从航空LiDAR点云提取建筑足迹,核心是点云处理

AI总结 提出首个大规模航空激光扫描点云建筑足迹提取数据集PCFootprint,含33000个瓦片及跨域测试集,通过评估主流方法揭示复杂地理环境下的挑战。

Comments 14 pages, 9 figures

详情
AI中文摘要

建筑足迹提取是摄影测量、遥感和计算机视觉中的基本任务。近年来,基于图像的方法在高分辨率光学影像的矢量化足迹提取方面取得了显著进展。然而,光学影像本质上易受遮挡、透视畸变和残余地形位移的影响,导致足迹提取不完整或错位。此外,缺乏显式高程信息限制了其在细节层次建筑建模中的直接适用性。本文提出PCFootprint,这是首个用于从机载激光扫描点云中提取足迹的大规模公共数据集。PCFootprint包含来自爱沙尼亚土地和空间发展局的33000个瓦片,覆盖多样化的城市和乡村景观。每个瓦片大小为128×128米,并配有与点云对齐的系统性矢量化足迹。该数据集包括一个3000个瓦片的跨域测试集,用于评估跨地理区域的泛化能力。我们通过评估主流方法建立了全面的基准。实验结果表明,在复杂地理环境中存在高类内方差、数据不平衡和噪声等显著挑战。我们相信PCFootprint将推动建筑建模、城市场景理解和地理空间分析的未来研究。PCFootprint数据集公开于:https://this https URL。

英文摘要

Building footprint extraction is a fundamental task in photogrammetry, remote sensing, and computer vision. Recent image-based methods have achieved remarkable progress in extracting vectorized footprints from high-resolution optical imagery. However, optical imagery inherently susceptible to occlusions, perspective distortions, and residual relief displacement, yielding incomplete or misaligned footprint extraction. Furthermore, the lack of explicit elevation information limits its direct applicability to Level of Detail building modeling. In this paper, we present PCFootprint, the first large-scale public dataset for footprint extraction from airborne laser scanning point clouds. PCFootprint comprises \num{33000} tiles derived from the Estonian Land and Spatial Development Board, covering diverse urban and rural landscapes. Each tile spans \qtyproduct{128 x 128}{\m} with systematically aligned vectorized footprints aligned to point clouds. The dataset includes a \num{3000} tiles cross-domain test set for evaluating generalization across geographic regions. We establish comprehensive benchmarks by evaluating mainstream methods. Experimental results reveal significant challenges including high intra-class variance, data imbalance, and noise across complex geospatial environments. We believe PCFootprint will advance future research in building modeling, urban scene understanding, and geospatial analysis. The PCFootprint dataset is publicly available at \url{https://huggingface.co/datasets/Haoyuan-Shen/PCFootprint}.