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Mapping Block-Level Urban Areas for All Chinese Cities

机译:绘制所有中国城市的地块级城市区域

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As a vital indicator for measuring urban development, urban areas are expected to be identified explicitly and conveniently with widely available data sets, thereby benefiting planning decisions and relevant urban studies. Existing approaches to identifying urban areas are normally based on midresolution sensing data sets, lowresolution socioeconomic information (e.g., population density) in space (e.g., cells with several square kilometers or even larger towns or wards). Yet, few of these approaches pay attention to defining urban areas with high-resolution microdata for large areas by incorporating morphological and functional characteristics. This article investigates an automated framework to delineate urban areas at the block level, using increasingly available ordnance surveys for generating all blocks (or geounits) and ubiquitous points of interest (POIs) for inferring density of each block. A vector cellular automata model was adopted for identifying urban blocks from all generated blocks, taking into account density, neighborhood condition, and other spatial variables of each block. We applied this approach for mapping urban areas of all 654 Chinese cities and compared them with those interpreted from midresolution remote sensing images and inferred by population density and road intersections. Our proposed framework is proven to be more straightforward, time-saving, and fine-scaled compared with other existing ones. It asserts the need for consistency, efficiency, and availability in defining urban areas with consideration of omnipresent spatial and functional factors across cities.
机译:作为衡量城市发展的重要指标,预计将使用广泛可用的数据集来明确,方便地识别城市区域,从而有利于规划决策和相关的城市研究。识别城市区域的现有方法通常基于中分辨率感测数据集,空间(例如具有数平方千米甚至更大的城镇或病房的牢房)中的低分辨率社会经济信息(例如人口密度)。然而,这些方法中很少有方法通过结合形态和功能特征来关注使用大面积高分辨率微数据定义城市区域。本文研究了一种自动框架,用于在街区级别上划定城市区域,使用越来越多的可用兵器测量来生成所有街区(或地球单位)和普遍存在的兴趣点(POI),以推断每个街区的密度。考虑到每个区块的密度,邻域条件和其他空间变量,采用矢量元胞自动机模型从所有生成的区块中识别城市区块。我们将这种方法应用于中国所有654个城市的城市地图绘制,并将它们与根据中分辨率遥感影像解释并由人口密度和道路交叉口推断出的城市进行比较。与其他现有框架相比,我们提出的框架被证明是更简单,省时和精细的。它断言在定义城市区域时需要一致性,效率和可用性,同时要考虑到整个城市无处不在的空间和功能因素。

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