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Title: | Remotely piloted aircraft system and machine learning for detection of coffeeplants subjected to foliar application of chitosan. |
Authors: | BENTO, N. L.![]() ![]() FERRAZ, G. A. e S. ![]() ![]() OLIVEIRA, M. de L. ![]() ![]() CAMPOS, A. A. V. ![]() ![]() CARVALHO, M. A. de F. ![]() ![]() CASTANHEIRA, D. T. ![]() ![]() SOUZA, A. C. de ![]() ![]() PIRES, T. de P. ![]() ![]() ROSSI, G. ![]() ![]() BECCIOLINI, V. ![]() ![]() |
Affiliation: | NICOLE LOPES BENTO, UNIVERSIDADE FEDERAL DE LAVRAS; GABRIEL ARAÚJO E SILVA FERRAZ, UNIVERSIDADE FEDERAL DE LAVRAS; MIRIAN DE LOURDES OLIVEIRA, UNIVERSIDADE FEDERAL DE LAVRAS; ALISSON ANDRÉ VICENTE CAMPOS, UNIVERSIDADE FEDERAL DE LAVRAS; MILENE ALVES DE FIGUEIREDO CARVALHO, CNPCA; DALYSE TOLEDO CASTANHEIRA, UNIVERSIDADE FEDERAL DE LAVRAS; ANA CRISTINA DE SOUZA, UNIVERSIDADE FEDERAL DE LAVRAS; TULIO DE PAULA PIRES, UNIVERSIDADE FEDERAL DE LAVRAS; GIUSEPPE ROSSI, UNIVERSITY OF FLORENCE; VALENTINA BECCIOLINI, UNIVERSITY OF FLORENCE. |
Date Issued: | 2025 |
Citation: | European Journal of Remote Sensing, v. 58, n. 1, 2025. |
Pages: | 11 p. |
Description: | Considered a biostimulant, chitosan can affect the physiological responses of plants to waterdeficit, acting as an antitranspirant under agricultural stress. Currently, images obtained byRemotely Piloted Aircraft Systems (RPAS), together with machine learning techniques, aid inresolving agricultural problems, including water issues. Therefore, the objective of this studywas to differentiate between coffee plants subjected to the foliar application of chitosan andthose not subjected to it, based on spectral data extracted from RPAS-acquired images andclassification via machine learning. For this purpose, the random forest (RF) classifier wasapplied to two coffee cultivars (Catucaí Amarelo 2SL and Catuaí Vermelho IAC 99) over twoyears of study (2021 and 2022). The images were obtained by a 3DR SOLO aircraft with a ParrotSequoia sensor, processed in PIX4D Mapper software and analysed in QGIS and RStudiosoftware. The results showed good performance metrics for differentiating between coffeeplants subjected and not subjected to the foliar application of chitosan, indicating that thismethod is a valid approach for modelling the presence of the biostimulant in coffee plants,thus confirming that the model can efficiently support the practices of precision agriculture. |
NAL Thesaurus: | Remote sensing Aircraft Foliar application Chitosan |
Keywords: | Digital agriculture |
DOI: | https://doi.org/10.1080/22797254.2025.2476632 |
Type of Material: | Artigo de periódico |
Access: | openAccess |
Appears in Collections: | Artigo em periódico indexado (SAPC)![]() ![]() |
Files in This Item:
File | Description | Size | Format | |
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Remotely-piloted-aircraft.pdf | 6.54 MB | Adobe PDF | ![]() View/Open |