Estimation of Income Level in Individual Buildings Using Satellite Images and Household Survey Data

K. Okuda, A. Kawasaki, Ryuhei Hamaguchi
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Abstract

In developing countries, it is difficult to grasp the living condition of people because there is no detailed data on residential status. Especially, it is difficult to grasp the condition of poor people because some of them live in illegally occupied areas. In this research, therefore, the deep learning model to grasp the residence of poor people at the building level from satellite image and household survey data was developed. This model can classify buildings into three levels: poor, middle and rich. Three methods for creating labeled training data were considered and the influence of building area, land use and elevation data on estimation accuracy was also considered. The accuracy of the method with the highest estimation accuracy was 81.8%. The result can be visualized by using GIS and it helps people to understand where many poor or rich people live.
利用卫星图像和住户调查数据估算个别建筑物的收入水平
在发展中国家,由于没有关于居住状况的详细数据,很难掌握人们的生活状况。特别是,由于一些贫困人口居住在非法占领区,因此很难掌握他们的状况。因此,本研究开发了从卫星图像和入户调查数据中掌握建筑层面贫困人口居住情况的深度学习模型。该模型可以将建筑分为三个层次:贫穷、中等和富裕。考虑了三种生成标记训练数据的方法,并考虑了建筑面积、土地利用和高程数据对估计精度的影响。该方法的最高估计精度为81.8%。结果可以通过使用地理信息系统可视化,它可以帮助人们了解穷人或富人居住的地方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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