Smart City Gnosys

Smart city article details

Title A Self-Supervised Pretraining Framework For Context-Aware Building Edge Extraction From 3-D Point Clouds
ID_Doc 4556
Authors Yang H.; Xu S.; Xu S.
Year 2025
Published IEEE Geoscience and Remote Sensing Letters, 22
DOI http://dx.doi.org/10.1109/LGRS.2024.3514857
Abstract Building edge points, as essential geometric features, are crucial for advancing smart city initiatives and ensuring the precise reconstruction of 3-D structures. However, existing methods struggle to effectively design point-to-edge distance constraints for accurate building edge point identification. In this letter, we propose a novel self-supervised learning (SSL)-based pretraining framework that integrates an innovative edge point identification loss function for extracting building edge points. Specifically, we use an SSL-based feature extractor, leveraging a masked autoencoder to generate pointwise features from the input building point clouds. These features are subsequently processed by the proposed edge point identification module, which optimizes three key distance-based loss functions: the distance between any input point and its nearest edge, the distance between candidate edge points and the projection of the input point, and the distance between candidate edge points and the edges themselves. The proposed framework demonstrates superior performance in edge point extraction across both partial and complete datasets, outperforming existing methods in edge point identification. © 2024 IEEE.
Author Keywords Edge point identification loss design; pretraining framework; self-supervised learning (SSL)-based edge point extraction


Similar Articles


Id Similarity Authors Title Published
48202 View0.942Yang H.; Wang R.Self-Supervised Pretraining Framework For Extracting Global Structures From Building Point Clouds Via CompletionIEEE Transactions on Geoscience and Remote Sensing, 62 (2024)
13123 View0.863Wang R.; Huang S.; Yang H.Building3D: An Urban-Scale Dataset And Benchmarks For Learning Roof Structures From Point CloudsProceedings of the IEEE International Conference on Computer Vision (2023)
25925 View0.853Huang 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)