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Multispectral images for discrimination of sources and doses of fertilizer in coffee plants

Authors :
Camila Isabel Pereira Rezende
Gleice Aparecida de Assis
George Deroco Martins
Fábio Janoni Carvalho
Miguel Henrique Rosa Franco
Nathalia Oliveira de Araújo
Source :
Revista Ceres, Vol 70, Iss 3, Pp 54-63 (2023)
Publication Year :
2023
Publisher :
Universidade Federal De Viçosa, 2023.

Abstract

ABSTRACT Remote monitoring of the management of coffee crops is necessary as the demand in decision-making, where the aim is to rise production based on sustainable management is in a constant growth. In this work, it was evaluated the potential of images obtained by low-cost sensors in the discrimination of sources and doses of mineral and organomineral fertilizers in coffee. The experimental design was in randomized blocks, with five blocks and six treatments, as follows: (T1) - 100% of the organomineral treatment; (T2) - 70% of the organomineral treatment; (T3) - 50% of the organomineral treatment; (T4) - 100% of mineral fertilization; (T5) - standard treatment of the farm and (T6) - 70% of mineral fertilization. After management, we used the Mapir 3 Survey3W camera coupled to an ARP drone – Phantom4 to take images of the experiment over a 12-month vegetative period. Combined with image taking, it was collected agronomic parameters of coffee growth and productivity for two crops and concluded that different fertilization doses did not significantly affect the analyzed parameters. Based on the supervised classification of multispectral images, it was possible to discriminate treatments with a higher degree of accuracy (86.66% accuracy) than when analyzing coffee growth parameters.

Details

Language :
English, Portuguese
ISSN :
21773491 and 0034737x
Volume :
70
Issue :
3
Database :
Directory of Open Access Journals
Journal :
Revista Ceres
Publication Type :
Academic Journal
Accession number :
edsdoj.6bd08a3973fb40a2a27c3ea260684ece
Document Type :
article
Full Text :
https://doi.org/10.1590/0034-737x202370030006