Author
Listed:
- Christopher Yeh
(Stanford University)
- Anthony Perez
(Stanford University
AtlasAI)
- Anne Driscoll
(Stanford University)
- George Azzari
(AtlasAI
Stanford University)
- Zhongyi Tang
(Stanford University)
- David Lobell
(Stanford University
Stanford University
Stanford University)
- Stefano Ermon
(Stanford University)
- Marshall Burke
(Stanford University
Stanford University
Stanford University
National Bureau of Economic Research)
Abstract
Accurate and comprehensive measurements of economic well-being are fundamental inputs into both research and policy, but such measures are unavailable at a local level in many parts of the world. Here we train deep learning models to predict survey-based estimates of asset wealth across ~ 20,000 African villages from publicly-available multispectral satellite imagery. Models can explain 70% of the variation in ground-measured village wealth in countries where the model was not trained, outperforming previous benchmarks from high-resolution imagery, and comparison with independent wealth measurements from censuses suggests that errors in satellite estimates are comparable to errors in existing ground data. Satellite-based estimates can also explain up to 50% of the variation in district-aggregated changes in wealth over time, with daytime imagery particularly useful in this task. We demonstrate the utility of satellite-based estimates for research and policy, and demonstrate their scalability by creating a wealth map for Africa’s most populous country.
Suggested Citation
Christopher Yeh & Anthony Perez & Anne Driscoll & George Azzari & Zhongyi Tang & David Lobell & Stefano Ermon & Marshall Burke, 2020.
"Using publicly available satellite imagery and deep learning to understand economic well-being in Africa,"
Nature Communications, Nature, vol. 11(1), pages 1-11, December.
Handle:
RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-16185-w
DOI: 10.1038/s41467-020-16185-w
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