FAO AGRIS - Système international des sciences et technologies agricoles

Accuracy of a smartphone-based object detection model, PlantVillage Nuru, in identifying the foliar symptoms of the viral diseases of cassava-CMD and CBSD

Mrisho, L. | Mbilinyi, N. | Ndalahwa, M. | Ramcharan, A. | Kehs, A.K. | McCloskey, P. | Murithi, H. | Hughes, D.P. | Legg, James P.


Informations bibliographiques
Volume 11 ISSN 1664-462X
Editeur
Frontiers Media
Langue
anglais
Licence
Open Access, CC-BY-4.0
Type
Journal Article; Journal Part
Source
Mrisho, L., Mbilinyi, N., Ndalahwa, M., Ramcharan, A., Kehs, A.K., McCloskey, P., ... & Legg, J. (2020). Accuracy of a smartphone-based object detection model, PlantVillage Nuru, in identifying the foliar symptoms of the viral diseases of cassava–CMD and CBSD. Frontiers in Plant Science, 11: 590889, 1-14.
Auteur institutionnelle
Bill & Melinda Gates Foundation
Schmidt Futures
Self Help Africa

2024-10-31
2026-03-17
MODS
Liens
Consulter Google Scholar
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