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Monitoring Maize Yield Variability over Space and Time with Unsupervised Satellite Imagery Features
by
Cohen, Juliet
, Cognac, Steven
, Carleton, Tamma
, Molitor, Cullen
, Proctor, Jonathan
, Lewin, Grace
, Hadunka, Protensia
in
Agricultural production
/ Agriculture
/ Anomalies
/ Availability
/ Computational efficiency
/ Computer applications
/ Computing costs
/ Corn
/ Crop yield
/ Datasets
/ Deep learning
/ Drought
/ Droughts
/ Dry season
/ Earth resources technology satellites
/ Food security
/ Food supply
/ Ground truth
/ Harvest
/ Landsat
/ Learning algorithms
/ Low income groups
/ Machine learning
/ maize
/ Monitoring
/ MOSAIKS
/ Normalized difference vegetative index
/ Regression analysis
/ Regression models
/ Remote sensing
/ Satellite constellations
/ Satellite imagery
/ Satellites
/ Sentinel
/ Sub-Saharan Africa
/ Temporal variations
/ United States
/ Vegetation
/ Water availability
/ yield prediction
/ Zambia
2025
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Monitoring Maize Yield Variability over Space and Time with Unsupervised Satellite Imagery Features
by
Cohen, Juliet
, Cognac, Steven
, Carleton, Tamma
, Molitor, Cullen
, Proctor, Jonathan
, Lewin, Grace
, Hadunka, Protensia
in
Agricultural production
/ Agriculture
/ Anomalies
/ Availability
/ Computational efficiency
/ Computer applications
/ Computing costs
/ Corn
/ Crop yield
/ Datasets
/ Deep learning
/ Drought
/ Droughts
/ Dry season
/ Earth resources technology satellites
/ Food security
/ Food supply
/ Ground truth
/ Harvest
/ Landsat
/ Learning algorithms
/ Low income groups
/ Machine learning
/ maize
/ Monitoring
/ MOSAIKS
/ Normalized difference vegetative index
/ Regression analysis
/ Regression models
/ Remote sensing
/ Satellite constellations
/ Satellite imagery
/ Satellites
/ Sentinel
/ Sub-Saharan Africa
/ Temporal variations
/ United States
/ Vegetation
/ Water availability
/ yield prediction
/ Zambia
2025
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Monitoring Maize Yield Variability over Space and Time with Unsupervised Satellite Imagery Features
by
Cohen, Juliet
, Cognac, Steven
, Carleton, Tamma
, Molitor, Cullen
, Proctor, Jonathan
, Lewin, Grace
, Hadunka, Protensia
in
Agricultural production
/ Agriculture
/ Anomalies
/ Availability
/ Computational efficiency
/ Computer applications
/ Computing costs
/ Corn
/ Crop yield
/ Datasets
/ Deep learning
/ Drought
/ Droughts
/ Dry season
/ Earth resources technology satellites
/ Food security
/ Food supply
/ Ground truth
/ Harvest
/ Landsat
/ Learning algorithms
/ Low income groups
/ Machine learning
/ maize
/ Monitoring
/ MOSAIKS
/ Normalized difference vegetative index
/ Regression analysis
/ Regression models
/ Remote sensing
/ Satellite constellations
/ Satellite imagery
/ Satellites
/ Sentinel
/ Sub-Saharan Africa
/ Temporal variations
/ United States
/ Vegetation
/ Water availability
/ yield prediction
/ Zambia
2025
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Monitoring Maize Yield Variability over Space and Time with Unsupervised Satellite Imagery Features
Journal Article
Monitoring Maize Yield Variability over Space and Time with Unsupervised Satellite Imagery Features
2025
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Overview
Recent innovations in task-agnostic imagery featurization have lowered the computational costs of using machine learning to predict ground conditions from satellite imagery. These methods hold particular promise for the development of imagery-based monitoring systems in low-income regions, where data and computational resources can be limited. However, these relatively simple prediction pipelines have not been evaluated in developing-country contexts over time, limiting our understanding of their performance in practice. Here, we compute task-agnostic random convolutional features from satellite imagery and use linear ridge regression models to predict maize yields over space and time in Zambia, a country prone to severe droughts and crop failure. Leveraging Landsat and Sentinel 2 satellite constellations, in combination with district-level yield data, our model explains 83% of the out-of-sample maize yield variation from 2016 to 2021, slightly outperforming a model trained on Normalized Difference Vegetation Index (NDVI) features, a common remote sensing approach used by practitioners to monitor crop health. Our approach maintains an R2 score of 0.74 when predicting temporal variation alone, while the performance of the NDVI-based approach drops to an R2 of 0.39. Our findings imply that this task-agnostic featurization can be used to predict spatial and temporal variation in agricultural outcomes, even in contexts with limited ground truth data. More broadly, these results point to imagery-based monitoring as a promising tool for assisting agricultural planning and food security, even in contexts where computationally expensive methodologies remain out of reach.
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