利用卫星图像进行社会经济指标的时间预测

Chahat Bansal, Arpita Jain, Phaneesh Barwaria, Anuj Choudhary, Anupam Singh, Ayush Gupta, Aaditeshwar Seth
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引用次数: 12

摘要

人们积极研究基于卫星数据的机器学习模型,以作为预测社会经济发展指标的代理。然而,这些模型很少经过时间的可转移性测试,即根据某一年的数据学习的模型是否能够对另一年的数据做出准确的预测。使用2001年和2011年两个时间点的印度人口普查数据集,我们评估了一个简单的机器学习模型在次国家地区尺度上的时间可转移性,并提出了一种改进其性能的通用方法。当训练数据集较小时,这种方法尤其适用于训练稳健的预测模型。然后,我们进一步建立了地区一级的综合发展指数,与人类发展指数(HDI)类似,并证明了基于不同年份的卫星数据预测该指数的准确性。这可以用来构建应用程序,在精细的空间和时间尺度上指导数据驱动的政策制定,而不需要在实地进行频繁的昂贵的人口普查和调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Prediction of Socio-economic Indicators Using Satellite Imagery
Machine learning models based on satellite data have been actively researched to serve as a proxy for the prediction of socio-economic development indicators. Such models have however rarely been tested for transferability over time, i.e. whether models learned on data for a certain year are able to make accurate predictions on data for another year. Using a dataset from the Indian census at two time points, for the years 2001 and 2011, we evaluate the temporal transferability of a simple machine learning model at sub-national scales of districts and propose a generic method to improve its performance. This method can be especially relevant when training datasets are small to train a robust prediction model. Then, we go further to build an aggregate development index at the district-level, on the lines of the Human Development Index (HDI) and demonstrate high accuracy in predicting the index based on satellite data for different years. This can be used to build applications to guide data-driven policy making at fine spatial and temporal scales, without the need to conduct frequent expensive censuses and surveys on the ground.
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