AgriEngineering (Jun 2024)

Remote Monitoring of Coffee Leaf Miner Infestation Using Machine Learning

  • Emerson Ferreira Vilela,
  • Gabriel Dumbá Monteiro de Castro,
  • Diego Bedin Marin,
  • Charles Cardoso Santana,
  • Daniel Henrique Leite,
  • Christiano de Sousa Machado Matos,
  • Cileimar Aparecida da Silva,
  • Iza Paula de Carvalho Lopes,
  • Daniel Marçal de Queiroz,
  • Rogério Antonio Silva,
  • Giuseppe Rossi,
  • Gianluca Bambi,
  • Leonardo Conti,
  • Madelaine Venzon

DOI
https://doi.org/10.3390/agriengineering6020098
Journal volume & issue
Vol. 6, no. 2
pp. 1697 – 1711

Abstract

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The coffee leaf miner (Leucoptera coffeella) is a key pest in coffee-producing regions in Brazil. The objective of this work was to evaluate the potential of machine learning algorithms to identify coffee leaf miner infestation by considering the assessment period and Sentinel-2 satellite images generated on the Google Earth Engine platform. Coffee leaf miner infestation in the field was measured monthly from 2019 to 2023. Images were selected from the Sentinel-2 satellite to determine 13 vegetative indices. The selection of images and calculations of the vegetation indices were carried out using the Google Earth Engine platform. A database was generated with information on coffee leaf miner infestation, vegetation indices, and assessment times. The database was separated into training data and testing data. Nine machine learning algorithms were used, including Linear Discriminant Analysis, Random Forest, Support Vector Machine, k-nearest neighbors, and Logistic Regression, and a principal component analysis was conducted for each algorithm. After optimizing the hyperparameters, the testing data were used to validate the model. The best model to estimate miner infestation was RF, which had an accuracy of 0.86, a kappa index of 0.64, and a precision of 0.87. The developed models were capable of monitoring coffee leaf miner infestation.

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