Predictive modeling of nutritional quality in Urochloa pastures from multispectral sensors and images using machine learning approaches

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Camelo-Munevar, R.A.; Hernández, L.M.; Jauregui, R.; Cardoso-Arango, J.A. (2023) Predictive modeling of nutritional quality in Urochloa pastures from multispectral sensors and images using machine learning approaches. Poster prepared for African Plant Breeders Association 2023 Conference - Leveraging Genetic Innovation for Resilient African Food Systems in the wake of Global Shocks. Benguerir, Morocco, 23-26 October 2023. Cali (Colombia): International Center for Tropical Agriculture. 1 p.

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Contributes to SDGs

SDG 2 - Zero hunger
SDG 3 - Good health and well-being
SDG 8 - Decent work and economic growth
SDG 12 - Responsible consumption and production
SDG 13 - Climate action
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