Mapping Deprived Urban Areas Using Open Geospatial Data and Machine Learning in Africa

IF 2.1 Q3 ENVIRONMENTAL SCIENCES Urban science (Basel, Switzerland) Pub Date : 2023-11-08 DOI:10.3390/urbansci7040116
Maxwell Owusu, Ryan Engstrom, Dana Thomson, Monika Kuffer, Michael L. Mann
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Abstract

Reliable data on slums or deprived living conditions remain scarce in many low- and middle-income countries (LMICs). Global high-resolution maps of deprived areas are fundamental for both research- and evidence-based policies. Existing mapping methods are generally one-off studies that use proprietary commercial data or other physical or socio-economic data that are limited geographically. Open geospatial data are increasingly available for large areas; however, their unstructured nature has hindered their use in extracting useful insights to inform decision making. In this study, we demonstrate an approach to map deprived areas within and across cities using open-source geospatial data. The study tests this methodology in three African cities—Accra (Ghana), Lagos (Nigeria), and Nairobi (Kenya) using a three arc second spatial resolution. Using three machine learning classifiers, (i) models were trained and tested on individual cities to assess the scalability for large area application, (ii) city-to-city comparisons were made to assess how the models performed in new locations, and (iii) a generalized model to assess our ability to map across cities with training samples from each city was designed. Our best models achieved over 80% accuracy in all cities. The study demonstrates an inexpensive, scalable, and transferable approach to map deprived areas that outperforms existing large area methods.
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利用开放地理空间数据和机器学习在非洲绘制贫困城市地区地图
在许多低收入和中等收入国家,关于贫民窟或贫困生活条件的可靠数据仍然很少。贫困地区的全球高分辨率地图是研究和循证政策的基础。现有的制图方法通常是一次性研究,使用专有的商业数据或其他地理上有限的物理或社会经济数据。开放的地理空间数据越来越多地用于大面积;然而,它们的非结构化性质阻碍了它们在提取有用的见解以通知决策方面的使用。在本研究中,我们展示了一种利用开源地理空间数据绘制城市内部和城市之间贫困地区地图的方法。该研究在三个非洲城市——阿克拉(加纳)、拉各斯(尼日利亚)和内罗毕(肯尼亚)——使用三弧秒的空间分辨率测试了这种方法。使用三个机器学习分类器,(i)在单个城市上对模型进行训练和测试,以评估大面积应用的可扩展性,(ii)对城市进行比较,以评估模型在新地点的表现,以及(iii)设计了一个广义模型,以评估我们使用来自每个城市的训练样本绘制城市地图的能力。我们最好的模型在所有城市的准确率都超过80%。该研究展示了一种廉价、可扩展和可转移的方法来绘制贫困地区的地图,优于现有的大面积方法。
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CiteScore
4.30
自引率
0.00%
发文量
0
审稿时长
11 weeks
期刊最新文献
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