利用卫星图像绘制社会经济状况:发展中国家的计算机视觉方法

Arslan Arshad , Junaid Zulfiqar , Muhammad Hassan Zaib , Ahsan Khan , Muhammad Jahanzeb Khan
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引用次数: 0

摘要

巴基斯坦是一个发展中国家,超过四分之一的人口生活在贫困线以下。有关人口社会经济状况的数据很少,而且是零星的。政府、非政府组织和其他国际组织进行挨家挨户的调查来收集数据,但这些调查既昂贵又耗时。目前,关于巴基斯坦贫困的统计数字仅作为实地调查的估计数字存在,这些调查往往是非官方的和有限的。缺乏可靠的信息导致了无效的政策决定。这是与贫困等问题作斗争的最大挑战之一。因此,需要可靠的资料来统一和协调地指导发展活动。本文旨在建立一个计算机视觉系统,该系统可以从公开可用的高分辨率卫星图像中自动提取有关贫困的信息。拟议的系统输出是显示贫穷和发展水平的热图。这些热图可以叠加在数字地图上,便于可视化。我们建议使用迁移学习技术从高分辨率卫星图像中提取地理和人造结构特征等指标。训练后的模型学习过滤和区分各种地形和人造特征,如高速公路、建筑物和农田。我们表明,这些学习特征对于绘制社会经济变量非常有用,甚至接近于将预测数据与实地调查数据相匹配。对于像巴基斯坦这样的发展中国家来说,这篇论文是有用的,因为这种方法使用了可公开获得的数据,是传统调查的一种可扩展和廉价的替代方法。我们论文的结果可以帮助决策者和非政府组织将资金分配到最需要的地区,并更有效地制定和评估政策。
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Mapping socioeconomic conditions using satellite imagery: A computer vision approach for developing countries

Pakistan is a developing country with more than a quarter of its population living under the poverty line. Data relating to the socioeconomic conditions of the population is scarce and sporadic. Government, NGOs, and other interna- tional organizations perform door-to-door surveys to collect data, but these can be expensive and time-consuming to conduct. Currently, statistics about poverty in Pakistan exist only as estimates from field surveys, which are often unofficial and limited. This lack of reliable information leads to ineffective policy decisions. This is one of the biggest challenges in fighting issues such as poverty. Reliable information is thus needed for the unified and concerted direction of development activities. This thesis aims to build a computer vision system that can automat- ically extract information about poverty from publicly available high-resolution satellite imagery. The proposed system output is heat maps indicating poverty and development levels. These heat maps can be overlaid on digital maps for easy visualization. We propose to use transfer learning techniques to extract indica- tors such as geographical and man-made structural features from high-resolution satellite imagery. The trained model learns to filter and distinguish between vari- ous terrains and man-made features, such as highways, buildings, and farmlands. We show that these learned traits are quite useful for mapping socioeconomic variables and even come close to matching the prediction data with field survey data. For a developing country like Pakistan, this thesis is useful because the approach uses publicly available data and is a scalable and inexpensive alterna- tive to traditional surveys. The results from our thesis can aid policymakers and NGOs in distributing their funds to areas that are most deserving and enacting and assessing policies more effectively.

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