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Integrating multiple data to identify building functions in China's urban villages

机译:整合多个数据以识别中国城市村庄的建筑功能

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China’s urban villages have distinct characteristics compared with the ones in western countries. Identifying urban villages provides a basis for policymakers to evaluate and improve the effectiveness of urban planning in China and other developing countries. However, perhaps due to limitations of data acquisition among others, few urban studies have successfully identified urban villages at the building level. To fill the research gap, this paper has fused multiple sources of data and utilized a three-stage model to identify urban villages in Haizhu District (Guangzhou, China). The first stage discriminates residential buildings, offices, shops, and restaurants based on various peak times of bike trajectories in different types of buildings. However, the first stage could not distinguish the regular residential buildings (in cities) and residential buildings within urban villages due to the similarity of human activities between them. It then utilized a second stage to identify residential buildings within urban villages based on the area, height, and density of buildings. In the third stage, we used correction rules to identify buildings with mixed-use and single-use buildings within urban villages. The results showed that urban villages were mainly concentrated in the western and central regions of the Haizhu District. Most of them were adjacent to shopping buildings or high-rise residential buildings. Building height and density played critical roles in the characterization of residential buildings in urban villages. Our accuracy rate was around 85% when verified against ground-truth data.
机译:与西方国家的城市村庄相比,中国的城市村庄具有明显的特点。识别城市村庄为政策制定者提供了基础,以评估和提高中国和其他发展中国家城市规划的有效性。然而,也许由于数据采集的限制等,很少有城市研究在建筑层面上成功地确定了城市村庄。为了填补研究差距,本文融合了多种数据来源,并利用了一个三阶段模型来识别海珠区(中国广州)的城市村庄。第一阶段根据不同类型的建筑物的自行车轨迹的各种高峰时间歧视住宅建筑,办公室,商店和餐馆。但是,由于它们之间的人类活动的相似性,第一阶段无法区分城市村庄内的常规住宅建筑物(在城市)和住宅建筑物。然后,它利用了第二阶段,以基于建筑物的面积,高度和密度来识别城市村庄内的住宅建筑。在第三阶段,我们使用惩教规则来识别城市村庄中的混合使用和单用建筑物的建筑物。结果表明,城市村庄主要集中在海珠区西部和中部地区。其中大多数与购物建筑或高层住宅建筑相邻。建设高度和密度在城市村庄的住宅建筑物中表现出关键作用。当验证对地面真实数据时,我们的准确率约为85%。

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