来自太空的贫困:使用高分辨率卫星图像估算经济福利

R. Engstrom, J. Hersh, David Newhouse
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引用次数: 129

摘要

从高空间分辨率卫星图像中提取的特征能否准确估计贫困和经济状况?本文通过从斯里兰卡的卫星图像中提取对象和纹理特征来研究这个问题,这些图像用于估计1,291个行政单位(Grama Niladhari区划)的贫困率和平均木材消耗量。提取的特征包括建筑物的数量和密度、阴影的流行程度、汽车的数量、道路的密度和长度、农业类型、屋顶材料,以及使用非重叠盒方法计算的一套纹理和光谱特征。一个简单的线性回归模型,仅使用这些输入作为解释变量,可以解释近60%的贫困人口率和平均木材消费量。相比之下,使用夜间灯光建立的模型只能解释15%的贫困或收入差异。当将样本限制在较差的Gram Niladhari分裂时,预测仍然准确。两个样本应用,将预测外推到邻近地区,并使用人为减少的人口普查估计当地贫困,证实了样本外的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poverty from Space: Using High-Resolution Satellite Imagery for Estimating Economic Well-Being
Can features extracted from high spatial resolution satellite imagery accurately estimate poverty and economic well-being? This paper investigates this question by extracting object and texture features from satellite images of Sri Lanka, which are used to estimate poverty rates and average log consumption for 1,291 administrative units (Grama Niladhari divisions). The features that were extracted include the number and density of buildings, prevalence of shadows, number of cars, density and length of roads, type of agriculture, roof material, and a suite of texture and spectral features calculated using a nonoverlapping box approach. A simple linear regression model, using only these inputs as explanatory variables, explains nearly 60 percent of poverty headcount rates and average log consumption. In comparison, models built using night-time lights explain only 15 percent of the variation in poverty or income. The predictions remain accurate when restricting the sample to poorer Gram Niladhari divisions. Two sample applications, extrapolating predictions into adjacent areas and estimating local area poverty using an artificially reduced census, confirm the out-of-sample predictive capabilities.
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