测绘学报 ›› 2026, Vol. 55 ›› Issue (5): 838-849.doi: 10.11947/j.AGCS.2026.20250445

• 地图学与地理信息 • 上一篇    下一篇

融合矢量结构特征的复杂建筑物形状识别方法

周旭升1,2,3,4(), 谭永滨1,2,3,4(), 于忠海5, 王维1,2,3,4, 肖青云2   

  1. 1.东华理工大学江西省流域生态过程与信息重点实验室,江西 南昌 330013
    2.东华理工大学测绘与空间信息工程学院,江西 南昌 330013
    3.东华理工大学自然资源部环鄱阳湖区域矿山环境监测与治理重点实验室,江西 南昌 330013
    4.东华理工大学南昌市景观过程与国土空间生态修复重点实验室,江西 南昌 330013
    5.济南市勘察测绘研究院,山东 济南 250101
  • 收稿日期:2025-10-23 修回日期:2026-04-20 出版日期:2026-06-23 发布日期:2026-06-23
  • 通讯作者: 谭永滨 E-mail:2022120416@ecut.edu.cn;tyb@ecut.edu.cn
  • 作者简介:周旭升(2000—),男,硕士,研究方向为城市地理空间智能与空间信息可视化。 E-mail:2022120416@ecut.edu.cn
  • 基金资助:
    国家自然科学基金(42361067; 42261078)

A complex building shape recognition method integrating vector structural features

Xusheng ZHOU1,2,3,4(), Yongbin TAN1,2,3,4(), Zhonghai YU5, Wei WANG1,2,3,4, Qingyun XIAO2   

  1. 1.Jiangxi Key Laboratory of Watershed Ecological Process and Information, East China University of Technology, Nanchang 330013, China
    2.School of Surveying and Spatial Informatics Engineering, East China University of Technology, Nanchang 330013, China
    3.Key Laboratory of Mine Environmental Monitoring and Improving around Poyang Lake of Ministry of Natural Resources, East China University of Technology, Nanchang 330013, China
    4.Nanchang Key Laboratory of Landscape Process and Territorial Spatial Ecological Restoration, East China University of Technology, Nanchang 330013, China
    5.Jinan Geotechnical Investigation and Surveying Research Institute, Jinan 250101, China
  • Received:2025-10-23 Revised:2026-04-20 Online:2026-06-23 Published:2026-06-23
  • Contact: Yongbin TAN E-mail:2022120416@ecut.edu.cn;tyb@ecut.edu.cn
  • About author:ZHOU Xusheng (2000—), male, master, majors in urban geospatial intelligence and spatial information visualization. E-mail: 2022120416@ecut.edu.cn
  • Supported by:
    The National Natural Science Foundation of China(42361067; 42261078)

摘要:

建筑物形状识别与分类作为城市空间分析、智能制图与三维城市建模的关键环节,对高精度地图构建和智慧城市治理具有重要意义。然而,现有方法在应对复杂多样的建筑形态时仍面临显著挑战。基于人工定义几何特征的方法普遍存在泛化能力不足的问题;而采用栅格化处理的方法则容易引入几何失真,难以准确保留建筑矢量轮廓的拓扑结构与精细特征。为此,本文提出一种面向矢量建筑物轮廓的端到端自动特征学习方法。该方法将建筑轮廓抽象为角点图结构,以实现建筑物轮廓的结构化表示;并设计结构特征模块嵌入图卷积网络(GCN)中,用于捕获凹凸转折、分支等形态特征,从而增强模型对复杂几何结构的判别能力。试验结果显示,该方法在公开及其扩展数据集上的准确率分别为99.20%和99.03%,Kappa系数均超过0.989,展现出优异的性能。试验误判分析表明,模型混淆主要集中于几何或拓扑高度相似的类别(如E/U形、X/O形),反映出其在细粒度结构建模与全局语义融合方面仍有提升空间。本文为矢量建筑轮廓的高精度识别提供了一种无须人工特征、具备良好泛化性的解决方法。

关键词: 建筑物形状分类, 矢量轮廓, 图神经网络, 自动特征学习, 城市空间分析

Abstract:

Building shape recognition and classification serve as pivotal components in urban spatial analysis, intelligent cartography, and 3D city modeling, playing a critical role in high-precision map construction and smart city governance. However, existing approaches still face significant challenges when dealing with the complex and diverse morphologies of buildings. Methods based on handcrafted geometric features often suffer from limited generalization capability, while rasterization-based approaches tend to introduce geometric distortions and struggle to preserve the topological structure and fine details of vectorized building outlines. To address these issues, this paper proposes an end-to-end automatic feature learning framework tailored for vectorized building contours. The method represents building outlines as corner-point graph structures to achieve a structured representation of building shapes. Furthermore, a dedicated structural feature module is integrated into a graph convolutional network (GCN) to effectively capture morphological characteristics such as concave-convex transitions and branching patterns, thereby enhancing the model's discriminative power for complex geometric structures. Experimental results demonstrate that the proposed method achieves classification accuracies of 99.20% and 99.03% on public and extended datasets, respectively, with Kappa coefficients exceeding 0.989, indicating superior performance. Error analysis reveals that misclassifications primarily occur between geometrically or topologically highly similar categories (e.g., E/U-shaped or X/O-shaped buildings), suggesting room for improvement in fine-grained structural modeling and global semantic integration. This study provides a robust, fully automatic, and generalizable solution for high-precision recognition of vectorized building contours without reliance on manual feature engineering.

Key words: building shape classification, vector outline, graph neural network, automatic feature learning, urban spatial analysis

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