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Título : Yield prediction of four bean (Phaseolus vulgaris) cultivars using vegetation indices based on multispectral images from UAV in an arid zone of Peru
Autor : Saravia Navarro, David
Valqui Valqui, Lamberto
Salazar Coronal, Wilian
Quille Mamani, Javier Alvaro
Barboza Castillo, Elgar
Porras Jorge, Zenaida Rossana
Injante Silva, Pedro Hugo
Arbizu Berrocal, Carlos Irvin
Fecha de publicación : 19-may-2023
Publicado en: Drones
Resumen : In Peru, common bean varieties adapt very well to arid zones, and it is essential to strengthen their evaluations accurately during their phenological stage by using remote sensors and UAV. However, this technology has not been widely adopted in the Peruvian agricultural system, causing a lack of information and precision data on this crop. Here, we predicted the yield of four beans cultivars by using multispectral images, vegetation indices (VIs) and multiple linear correlations (with 11 VIs) in 13 different periods of their phenological development. The multispectral images were analyzed with two methods: (1) a mask of only the crop canopy with supervised classification constructed with QGIS software; and (2) the grids corresponding to each plot (n = 48) without classification. The prediction models can be estimated with higher accuracy when bean plants reached maximum canopy cover (vegetative and reproductive stages), obtaining higher R2 for the c2000 cultivar (0.942) with the CIG, PCB, DVI, EVI and TVI indices with method 2. Similarly, with five VIs, the camanejo cultivar showed the highest R2 for both methods 1 and 2 (0.89 and 0.837) in the reproductive stage. The models better predicted the yield in the phenological stages V3–V4 and R6–R8 for all bean cultivars. This work demonstrated the utility of UAV tools and the use of multispectral images to predict yield before harvest under the Peruvian arid ecosystem.
Palabras clave : Multiple regression
Multispectral imaging
NDVI
Precision agriculture
Remote sensing
metadata.dc.subject.agrovoc: Multiple regression analysis
Análisis por regresión múltiple
Multispectral imagery
Imágenes multiespectrales
Normalized difference vegetation index
Indice normalizado diferencial de la vegetación
Precision agricultura
Agricultura de precisión
Teledetección
Editorial : MDPI
Citación : Saravia, D.; Valqui-Valqui, L.; Salazar, W.; Quille-Mamani, J.; Barboza, E.; Porras-Jorge, R.; ... & Arbizu, C. I. (2023). Yield prediction of four bean (Phaseolus vulgaris) cultivars using vegetation indices based on multispectral images from UAV in an arid zone of Peru. Drones, 7(5), 325. doi: 10.3390/drones7050325
URI : https://hdl.handle.net/20.500.12955/2168
metadata.dc.identifier.doi: https://doi.org/10.3390/drones7050325
ISSN : 2504-446X
metadata.dc.subject.ocde: https://purl.org/pe-repo/ocde/ford#4.01.06
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