2023
DOI: 10.1029/2022jg007342
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Toward Cloud‐Native, Machine Learning Base Detection of Crop Disease With Imaging Spectroscopy

Abstract: Developing actionable early detection and warning systems for agricultural stakeholders is crucial to reduce the annual $200B USD losses and environmental impacts associated with crop diseases. Agricultural stakeholders primarily rely on labor‐intensive, expensive scouting and molecular testing to detect disease. Spectroscopic imagery (SI) can improve plant disease management by offering decision‐makers accurate risk maps derived from Machine Learning (ML) models. However, training and deploying ML requires si… Show more

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