利用空间聚类分析城市构成

Zechun Cao, Sujing Wang, G. Forestier, A. Puissant, C. Eick
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引用次数: 23

摘要

由于许多因素,例如快速的城市化和新的通信和交通方式,世界各地的城市都在不断发展。由于了解城市的组成是智慧城市化的关键,因此越来越需要开发城市计算和分析工具,以指导城市的有序发展,并促进城市的顺利和受益演变。本文提出了一种空间聚类方法来发现城市中具有不同功能的有趣区域和区域。空间聚类是对空间数据集中的对象进行分组,识别空间属性所在空间的连续区域。我们将在空间数据中寻找一致区域的任务正式定义为一个插件一致性度量的最大化问题,并引入了一个基于原型的聚类算法CLEVER来寻找这样的区域。此外,在本文提出的方法中,利用捕获空间聚类范围的多边形模型和直方图风格的分布签名来注释空间聚类的内容;它们在汇总空间数据集的组成方面起着关键作用。此外,还将介绍用于识别流行分布签名的算法和用于识别表达特定分布签名的区域的方法。所提出的方法在一个具有挑战性的现实世界的案例研究中进行了论证和评估,该研究以分析法国斯特拉斯堡市的组成为中心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing the composition of cities using spatial clustering
Cities all around the world are in constant evolution due to numerous factors, such as fast urbanization and new ways of communication and transportation. Since understanding the composition of cities is the key to intelligent urbanization, there is a growing need to develop urban computing and analysis tools to guide the orderly development of cities, as well as to enhance their smooth and beneficiary evolution. This paper presents a spatial clustering approach to discover interesting regions and regions which serve different functions in cities. Spatial clustering groups the objects in a spatial dataset and identifies contiguous regions in the space of the spatial attributes. We formally define the task of finding uniform regions in spatial data as a maximization problem of a plug-in measure of uniformity and introduce a prototype-based clustering algorithm named CLEVER to find such regions. Moreover, polygon models which capture the scope of a spatial cluster and histogram-style distribution signatures are used to annotate the content of a spatial cluster in the proposed methodology; they play a key role in summarizing the composition of a spatial dataset. Furthermore, algorithms for identifying popular distribution signatures and approaches for identifying regions which express a particular distribution signature will be presented. The proposed methodology is demonstrated and evaluated in a challenging real-world case study centering on analyzing the composition of the city of Strasbourg in France.
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