A Self-Supervised Pretraining Framework for Context-Aware Building Edge Extraction From 3-D Point Clouds

Hongxin Yang;Shanshan Xu;Sheng Xu
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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.
基于上下文感知的三维点云建筑边缘提取的自监督预训练框架
边缘点作为基本的几何特征,对于推进智慧城市计划和确保三维结构的精确重建至关重要。然而,现有的方法很难有效地设计点到边缘的距离约束,以准确地识别建筑边缘点。在这封信中,我们提出了一个新的基于自监督学习(SSL)的预训练框架,该框架集成了一个创新的边缘点识别损失函数,用于提取建筑物边缘点。具体来说,我们使用基于ssl的特征提取器,利用掩码自动编码器从输入生成点云的点向特征。这些特征随后由所提出的边缘点识别模块进行处理,该模块优化了三个关键的基于距离的损失函数:任意输入点与最近边缘之间的距离,候选边缘点与输入点投影之间的距离,以及候选边缘点与边缘本身之间的距离。该框架在部分和完整数据集的边缘点提取方面表现出优异的性能,优于现有的边缘点识别方法。
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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