离散建筑骨架结构的分层提取

IF 1 4区 地球科学 Q3 GEOGRAPHY Cartographic Journal Pub Date : 2021-07-03 DOI:10.1080/00087041.2020.1852512
Xiao Wang, D. Burghardt
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引用次数: 1

摘要

摘要地图综合是一个对特征进行分层重组的过程,从而可以在不同的尺度上转移原始数据集的全局形状。我们提出了一种基于笔划和中心性的方法来分层提取建筑物的骨架结构,旨在支持泛化。首先,从细化的邻近图网络中生成笔划。接下来,通过将笔划视为对偶图,为每个笔划计算三个中心性指数,从而创建一个积分因子来测量笔划的重要性水平。最后,通过不同的选择比例,根据笔划的重要程度提取层次骨架结构。通过将建筑物分类为不同的类别,根据其特点选择不同的泛化算子。实验结果表明,提取的层次骨架结构可以表示整个区域的全局形状。通过这种支持,可以保留原始建筑的全局和局部图案。
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Hierarchical Extraction of Skeleton Structures from Discrete Buildings
ABSTRACT Map generalization is a process of hierarchically reorganizing features whereby the global shape of the original datasets can be transferred in different scales. We propose a stroke and centrality-based method to hierarchically extract the skeleton structures from buildings aiming to support generalization. Firstly, the strokes are generated from refined proximity graph network. Next, by regarding the strokes as dual graph, three centrality indices are calculated for each stroke whereby an integrated factor is created to measure the importance level of the strokes. Finally, the hierarchical skeleton structures are extracted based on the stroke importance levels through different selection ratios. By classifying the buildings into different categories, different generalization operators are selected considering their characteristics. The experimental results demonstrate that the extracted hierarchical skeleton structures can represent the global shape of the entire region. Through this support, the global and local patterns of the original buildings can be both preserved.
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来源期刊
CiteScore
2.60
自引率
10.00%
发文量
26
期刊介绍: The Cartographic Journal (first published in 1964) is an established peer reviewed journal of record and comment containing authoritative articles and international papers on all aspects of cartography, the science and technology of presenting, communicating and analysing spatial relationships by means of maps and other geographical representations of the Earth"s surface. This includes coverage of related technologies where appropriate, for example, remote sensing, geographical information systems (GIS), the internet and global positioning systems. The Journal also publishes articles on social, political and historical aspects of cartography.
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