Ab'/> Using multi-source geospatial big data to identify the structure of polycentric cities
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Using multi-source geospatial big data to identify the structure of polycentric cities

机译:使用多源地理空间大数据来识别多中心城市的结构

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AbstractIdentifying the structure of a polycentric city is vital to various studies, such as urban sprawl and population movement dynamics. This paper presents an efficient and reliable method that uses multi-source geospatial big data, including nighttime light imagery and social media check-in maps, to locate the main center and subcenters of a polycentric city. Unlike traditional methods that rely on statistical data categorized by administrative units, the proposed method can effectively identify the boundaries of urban centers, and the data source guarantees a timely monitoring and update. Four main procedures are involved: 1) a new observation unit is developed using object-oriented segmentation; 2) main centers are located using cluster analysis (Local Moran's I); 3) subcenter candidates are selected using significant positive residuals from geographically weighted regression (GWR); and 4) final centers are filtered using global natural breaks classification (NBC). These steps can be reproduced in different regions. To evaluate the effectiveness, the method was applied to three rapidly developing Chinese cities: Beijing, Shanghai, and Chongqing with different natural and economic characteristics. The performance of the proposed method has been carefully evaluated with qualitative and quantitative analyses. Comparative experiments were also conducted across different datasets to prove the benefits of combining a social media check-in map with remotely sensed imagery in a human environment study.
机译:<![cdata [ 抽象 识别PolyCentric City的结构对于各种研究至关重要,例如城市蔓延和人口运动动态。本文介绍了一种有效可靠的方法,使用多源地理空间大数据,包括夜间光图像和社交媒体登记地图,以找到多中心城市的主中心和脚集。与依赖于管理单位分类的统计数据的传统方法不同,所提出的方法可以有效地识别城市中心的界限,数据源保证及时监控和更新。涉及四个主要程序:1)使用面向对象的分割开发新的观察单元; 2)主要中心位于群集分析(本地莫兰的I); 3)使用来自地理加权回归(GWR)的显着阳性残留物来选择沉蛋白候选者; 4)使用全球自然休息分类(NBC)过滤最终中心。这些步骤可以在不同的区域中再现。为了评估有效性,该方法适用于三个快速发展的中国城市:北京,上海和重庆,具有不同的自然和经济特征。已经用定性和定量分析仔细评估了所提出的方法的性能。在不同的数据集中也进行了比较实验,以证明在人类环境研究中将社交媒体登记地图组合的好处。

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