Machine Learning in the Hyperspectral Classification of Glycaspis brimblecombei (Hemiptera Psyllidae) Attack Severity in Eucalyptus

Author:

Gregori Gabriella Silva de1ORCID,de Souza Loureiro Elisângela1ORCID,Amorim Pessoa Luis Gustavo1ORCID,Azevedo Gileno Brito de1,Azevedo Glauce Taís de Oliveira Sousa1ORCID,Santana Dthenifer Cordeiro2,Oliveira Izabela Cristina de2ORCID,Oliveira João Lucas Gouveia de2,Teodoro Larissa Pereira Ribeiro1ORCID,Baio Fábio Henrique Rojo1ORCID,Silva Junior Carlos Antonio da3ORCID,Teodoro Paulo Eduardo1ORCID,Shiratsuchi Luciano Shozo4ORCID

Affiliation:

1. Campus of Chapadão do Sul, Federal University of Mato Grosso do Sul (UFMS), Chapadão do Sul 79560-000, MS, Brazil

2. Department of Agronomy, State University of São Paulo (UNESP), Ilha Solteira 15385-000, SP, Brazil

3. Department of Geography, State University of Mato Grosso (UNEMAT), Sinop 78550-000, MT, Brazil

4. LSU Agcenter, School of Plant, Environmental and Soil Sciences, Louisiana State University, 307 Sturgis Hall, Baton Rouge, LA 70726, USA

Abstract

Assessing different levels of red gum lerp psyllid (Glycaspis brimblecombei) can influence the hyperspectral reflectance of leaves in different ways due to changes in chlorophyll. In order to classify these levels, the use of machine learning (ML) algorithms can help process the data faster and more accurately. The objectives were: (I) to evaluate the spectral behavior of the G. brimblecombei attack levels; (II) find the most accurate ML algorithm for classifying pest attack levels; (III) find the input configuration that improves performance of the algorithms. Data were collected from a clonal eucalyptus plantation (clone AEC 0144—Eucalyptus urophilla) aged 10.3 months old. Eighty sample evaluations were carried out considering the following severity levels: control (no shells), low infestation (N1), intermediate infestation (N2), and high infestation (N3), for which leaf spectral reflectances were obtained using a spectroradiometer. The spectral range acquired by the equipment was 350 to 2500 nm. After obtaining the wavelengths, they were grouped into representative interval means in 28 bands. Data were submitted to the following ML algorithms: artificial neural networks (ANN), REPTree (DT) and J48 decision trees, random forest (RF), support vector machine (SVM), and conventional logistic regression (LR) analysis. Two input configurations were tested: using only the wavelengths (ALL) and using the spectral bands (SB) to classify the attack levels. The output variable was the severity of G. brimblecombei attack. There were differences in the hyperspectral behavior of the leaves for the different attack levels. The highest attack level shows the greatest distinction and the highest reflectance values. LR and SVM show better accuracy in classifying the severity levels of G. brimblecombei attack. For the correct classification percentage, the RL and SVM algorithms performed better, both with accuracy above 90%. Both algorithms achieved F-score values close to 0.90 and above 0.8 for Kappa. The entire spectral range guaranteed the best accuracy for both algorithms.

Funder

USDA

Patrick and Taylor Foundation

John Deere

Universidade Federal de Mato Grosso do Sul

Fundação de Apoio ao Desenvolvimento do Ensino

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior—Brazil

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference40 articles.

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4. Wylie, F.R., and Speight, M.R. (2012). Insect Pests in Tropical Forestry, CABI.

5. Susceptibility of Eucafyptus Spp. to an Induced Infestation of Red Gum Lerp Psyllid Glycaspis Brimblecombei Moore (Hemiptera: Psyllidae) in Santiago, Chile;Fuentes;Cienc. Investig. Agrar. Rev. Latinoam. Cienc. Agric.,2010

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