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Recognition of building group patterns in topographic maps based on graph partitioning and random forest

机译:基于图划分和随机森林的地形图建筑群模式识别

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Recognition of building group patterns (i.e., the arrangement and form exhibited by a collection of buildings at a given mapping scale) is important to the understanding and modeling of geographic space and is hence essential to a wide range of downstream applications such as map generalization. Most of the existing methods develop rigid rules based on the topographic relationships between building pairs to identify building group patterns and thus their applications are often limited. This study proposes a method to identify a variety of building group patterns that allow for map generalization. The method first identifies building group patterns from potential building clusters based on a machine-learning algorithm and further partitions the building clusters with no recognized patterns based on the graph partitioning method. The proposed method is applied to the datasets of three cities that are representative of the complex urban environment in Southern China. Assessment of the results based on the reference data suggests that the proposed method is able to recognize both regular (e.g., the collinear, curvilinear, and rectangular patterns) and irregular (e.g., the L-shaped, H-shaped, and high-density patterns) building group patterns well, given that the correctness values are consistently nearly 90% and the completeness values are all above 91% for three study areas. The proposed method shows promises in automated recognition of building group patterns that allows for map generalization. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:识别建筑物组模式(即,在给定的地图比例下由建筑物集合显示的布置和形式)对于理解和建模地理空间非常重要,因此对于广泛的下游应用(例如地图综合)至关重要。大多数现有方法都基于建筑物对之间的地形关系来制定严格的规则,以识别建筑物组模式,因此,其应用通常受到限制。这项研究提出了一种方法,该方法可以识别允许地图综合的各种建筑群模式。该方法首先基于机器学习算法从潜在的建筑群中识别建筑群模式,然后基于图形划分方法对没有识别模式的建筑群进行划分。该方法适用于代表中国南方复杂城市环境的三个城市的数据集。基于参考数据对结果的评估表明,所提出的方法能够识别规则(例如共线,曲线和矩形模式)和不规则(例如L形,H形和高密度)模式)建立小组模式,因为三个研究领域的正确性值始终接近90%,完整性值均高于91%。所提出的方法显示了在自动识别建筑群模式方面的前景,从而可以进行地图综合。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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