Brazil stands out among coffee-growing countries worldwide. The use of precision agri-culture to monitor coffee plants after transplantation has become an important step in the coffee production chain. The objective of this study was to assess how coffee plants respond after transplant-ing seedlings grown in different containers, based on multispectral images acquired by Unmanned Aerial Vehicles (UAV). The study was conducted in Santo Antônio do Amparo, Minas Gerais, Brazil. The coffee plants were imaged by UAV, and their height, crown diameter, and chlorophyll content were measured in the field. The vegetation indices were compared to the field measurements through graphical and correlation analysis. According to the results, no significant differences were found between the studied variables. However, the area transplanted with seedlings grown in perforated bags showed a lower percentage of mortality than the treatment with root trainers (6.4% vs. 11.7%). Additionally, the vegetation indices, including normalized difference red-edge, normalized difference vegetation index, and canopy planar area calculated by vectorization (cm2), were strongly correlated with biophysical parameters. Linear models were successfully developed to predict biophysical parameters, such as the leaf area index. Moreover, UAV proved to be an effective tool for monitoring coffee using this approach.

UAV-Based Vegetation Indices to Evaluate Coffee Crop Response after Transplanting Seedlings Grown in Different Containers / Barata, Rafael Alexandre Pena; Ferraz, Gabriel Araújo e Silva; Bento, Nicole Lopes; Santana, Lucas Santos; Marin, Diego Bedin; Mattos, Drucylla Guerra; Schwerz, Felipe; Rossi, Giuseppe; Conti, Leonardo; Bambi, Gianluca. - In: AGRICULTURE. - ISSN 2077-0472. - ELETTRONICO. - 14:(2024), pp. 0-0. [10.3390/agriculture14030356]

UAV-Based Vegetation Indices to Evaluate Coffee Crop Response after Transplanting Seedlings Grown in Different Containers

Marin, Diego Bedin;Rossi, Giuseppe
Methodology
;
Conti, Leonardo
Data Curation
;
Bambi, Gianluca
Data Curation
2024

Abstract

Brazil stands out among coffee-growing countries worldwide. The use of precision agri-culture to monitor coffee plants after transplantation has become an important step in the coffee production chain. The objective of this study was to assess how coffee plants respond after transplant-ing seedlings grown in different containers, based on multispectral images acquired by Unmanned Aerial Vehicles (UAV). The study was conducted in Santo Antônio do Amparo, Minas Gerais, Brazil. The coffee plants were imaged by UAV, and their height, crown diameter, and chlorophyll content were measured in the field. The vegetation indices were compared to the field measurements through graphical and correlation analysis. According to the results, no significant differences were found between the studied variables. However, the area transplanted with seedlings grown in perforated bags showed a lower percentage of mortality than the treatment with root trainers (6.4% vs. 11.7%). Additionally, the vegetation indices, including normalized difference red-edge, normalized difference vegetation index, and canopy planar area calculated by vectorization (cm2), were strongly correlated with biophysical parameters. Linear models were successfully developed to predict biophysical parameters, such as the leaf area index. Moreover, UAV proved to be an effective tool for monitoring coffee using this approach.
2024
14
0
0
Barata, Rafael Alexandre Pena; Ferraz, Gabriel Araújo e Silva; Bento, Nicole Lopes; Santana, Lucas Santos; Marin, Diego Bedin; Mattos, Drucylla Guerra...espandi
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1350792
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