CYCVApr 25

A satellite foundation model for improved wealth monitoring

arXiv:2604.2316687.01 citationsHas Code
Predicted impact top 4% in CY · last 90 daysOriginality Incremental advance
AI Analysis

For policymakers and researchers in low- and middle-income countries, Tempov provides a scalable, low-cost method for high-resolution wealth monitoring from satellite imagery, reducing dependence on expensive surveys.

Tempov, a satellite foundation model pretrained on three million bi-temporal Landsat pairs, enables zero-shot nowcasting, hindcasting, and decadal change tracking of wealth, outperforming existing baselines and achieving competitive accuracy with only 10% of survey labels. It generalizes across countries and yields a unified Africa-wide model with strong performance (R²=0.63, r²=0.68).

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and middle-income countries, censuses and household surveys that collect these data are costly, infrequent, quickly outdated, and sometimes error-prone.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 decadal change tracking, while outperforming existing neural network and geospatial foundation-model baselines. In low-label regimes, Tempov achieves competitive accuracy with only 10% of survey samples, indicating substantially reduced dependence on expensive label collection. The model further generalizes across populous countries within and outside Africa, and scales to a unified Africa-wide model with strong continent-level performance ($R^2=0.63$, $r^2=0.68$), from which we generate high-resolution decadal maps of wealth and wealth changes for the African continent. Analysis of these maps shows large variation in recent economic performance both within and across countries. Our open-source approach provides a pathway to timely, scalable, low-cost monitoring of wealth and poverty from routinely collected satellite data.

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