基于CSR方法的建筑屋顶重建数据融合

J. Jaw, Chieh-Chung Cheng
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摘要

三维建筑建模已经成为许多城市规划和地理信息相关应用的研究和发展的焦点。三维建筑屋顶作为三维建筑模型的基本要素,在几何层面上表现为最抽象的形式。本研究的重点是展示一种新的建筑屋顶重建算法,称为CSR (Construct-Shape-Refine)。该算法的目的是单纯利用三维线特征或整合现有数据的三维和二维线特征重建建筑屋顶模型。特别是后一种集成,涉及多个数据源的融合,增强了三维建筑屋顶的可靠性和精度。企业社会责任方法可以分为三个阶段。在Construct阶段进行几何推理,建立三维线条特征的拓扑关系,通过Shape过程调整和估计屋角的三维坐标,并补偿隐藏的边界(如果有)。两种融合流的效率,包括来自不同来源的三维线特征的融合或三维线特征与摄影测量线特征的融合,通过Refine工作流提高了建筑屋顶质量。构造-形状阶段的实验表明,该方法与建筑物屋顶类型无关,但受当前考虑的多边形以及基于三维线特征的建筑物屋顶重建是否完整的限制。此外,与只考虑单一数据集的情况相比,细化阶段提供了更多最新和令人满意的建筑屋顶重建结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Fusion towards building roof reconstruction based on CSR approach
3D building modeling has emerged as a focus of research as well as development for many urban planning and geo-information related applications. To its most abstract form on geometric level, 3D building roofs are regarded as the fundamental elements to present outlines of 3D building models. The emphasis of this study is to demonstrate a novel algorithm of building roof reconstruction, termed CSR (Construct-Shape-Refine). The proposed algorithm aims at reconstructing building roof models purely by employing 3D line features or integrating 3D and 2D line features from existing data. In particular, the latter integration involving fusion from multiple data sources strengthens the reliability as well as the precision of 3D building roofs. The CSR approach is characterized through three stages. Geometric inferences are imposed at the stage of Construct where topological relationship of the 3D line features is established while 3D coordinates of roof corners are adjusted and estimated through Shape processes, apart from compensating the hidden boundaries, if any. The efficiencies of two fusion streams, including fusion of 3D line features that result from different sources or fusing 3D line features with photogrammetric line features, are gained as promoting the building roof quality via Refine workflow. Experiments of the Construct-Shape stages show that the proposed method is independent of building roof types, however constrained in polygons under current consideration, as well as whether 3D line features are complete for both successful and efficient performance of building roof reconstruction on a 3D line feature basis. Moreover, the Refine stage offers more up-to-date and satisfactory building roof reconstruction results as compared to the situation when only one single data set is considered.
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