CVIVNov 30, 2021

Predicting Poverty Level from Satellite Imagery using Deep Neural Networks

arXiv:2112.00011v11 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of estimating poverty in developing regions where traditional survey data is scarce, offering a potentially scalable alternative for resource allocation.

The paper tackles the problem of predicting poverty levels from satellite imagery using deep neural networks, achieving results that demonstrate the impact of data quantity and augmentation on accuracy and evaluating robustness across continents.

Determining the poverty levels of various regions throughout the world is crucial in identifying interventions for poverty reduction initiatives and directing resources fairly. However, reliable data on global economic livelihoods is hard to come by, especially for areas in the developing world, hampering efforts to both deploy services and monitor/evaluate progress. This is largely due to the fact that this data is obtained from traditional door-to-door surveys, which are time consuming and expensive. Overhead satellite imagery contain characteristics that make it possible to estimate the region's poverty level. In this work, I develop deep learning computer vision methods that can predict a region's poverty level from an overhead satellite image. I experiment with both daytime and nighttime imagery. Furthermore, because data limitations are often the barrier to entry in poverty prediction from satellite imagery, I explore the impact that data quantity and data augmentation have on the representational power and overall accuracy of the networks. Lastly, to evaluate the robustness of the networks, I evaluate them on data from continents that were absent in the development set.

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