A satellite foundation model for improved wealth monitoring
Zhuo Zheng, Iv\'an Higuera-Mendieta, Richard Lee, David Newhouse, Talip Kilic, Stefano Ermon, Marshall Burke, David B. Lobell

TL;DR
This paper introduces Tempov, a satellite foundation model trained on Landsat data, enabling scalable, high-resolution, and low-cost wealth monitoring and change detection across Africa and beyond.
Contribution
The paper presents Tempov, a self-supervised satellite foundation model that improves local wealth prediction, generalizes across countries, and reduces dependence on costly survey labels.
Findings
Tempov outperforms existing models in wealth prediction accuracy.
Achieves competitive results with only 10% of survey labels.
Generates high-resolution decadal wealth maps for Africa.
Abstract
Poverty statistics guide social policy, but in many low- and middle-income countries, censuses and household surveys that collect these data are costly, infrequent, quickly outdated, and sometimes error-prone. Satellite imagery offers global coverage and the possibility of predicting economic livelihoods at scale, yet existing approaches to predicting livelihoods with imagery or other non-traditional data often fail to reliably identify local-level variation and, as we show, degrade under temporal shift. Here we introduce Tempov, a satellite foundation model pretrained by self-supervision on three million bi-temporal Landsat pairs and adapted with parameter-efficient fine-tuning to sparse survey labels. The model enables large-scale, high-resolution wealth mapping and dynamic measurement, including zero-shot nowcasting up to a decade after observed labels, retrospective hindcasting, and…
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