4.7 Article

Kiwi Plant Canker Diagnosis Using Hyperspectral Signal Processing and Machine Learning: Detecting Symptoms Caused by Pseudomonas syringae pv. actinidiae

Journal

PLANTS-BASEL
Volume 11, Issue 16, Pages -

Publisher

MDPI
DOI: 10.3390/plants11162154

Keywords

actinidia; leaf bacterial canker; Pseudomonas syringae; plant pathology; in-situ diagnosis; hyperspectral spectroscopy; feature selection; support vector machine

Categories

Funding

  1. European Union [857202]
  2. Fundacao para a Ciencia e a Tecnologia (FCT) [SFRH/BD/146564/2019, SFRH/BD/145182/2019]
  3. Fundacao para a Ciencia e Tecnologia (FCT) [CEEIND/017801/2018]
  4. Fundação para a Ciência e a Tecnologia [SFRH/BD/145182/2019, SFRH/BD/146564/2019] Funding Source: FCT

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This study investigated the potential of hyperspectral UV-VIS reflectance for in-situ, non-destructive discrimination of bacterial canker on kiwi leaves. Various modeling approaches were tested and a combination of a support vector machine algorithm with a radial kernel and class weights was selected as the final model. The results showed that spectral point measurements acquired in situ can be used for crop disease diagnosis.
Pseudomonas syringae pv. actinidiae (Psa) has been responsible for numerous epidemics of bacterial canker of kiwi (BCK), resulting in high losses in kiwi production worldwide. Current diagnostic approaches for this disease usually depend on visible signs of the infection (disease symptoms) to be present. Since these symptoms frequently manifest themselves in the middle to late stages of the infection process, the effectiveness of phytosanitary measures can be compromised. Hyperspectral spectroscopy has the potential to be an effective, non-invasive, rapid, cost-effective, high-throughput approach for improving BCK diagnostics. This study aimed to investigate the potential of hyperspectral UV-VIS reflectance for in-situ, non-destructive discrimination of bacterial canker on kiwi leaves. Spectral reflectance (325-1075 nm) of twenty plants were obtained with a handheld spectroradiometer in two commercial kiwi orchards located in Portugal, for 15 weeks, totaling 504 spectral measurements. Several modeling approaches based on continuous hyperspectral data or specific wavelengths, chosen by different feature selection algorithms, were tested to discriminate BCK on leaves. Spectral separability of asymptomatic and symptomatic leaves was observed in all multi-variate and machine learning models, including the FDA, GLM, PLS, and SVM methods. The combination of a stepwise forward variable selection approach using a support vector machine algorithm with a radial kernel and class weights was selected as the final model. Its overall accuracy was 85%, with a 0.70 kappa score and 0.84 F-measure. These results were coherent with leaves classified as asymptomatic or symptomatic by visual inspection. Overall, the findings herein reported support the implementation of spectral point measurements acquired in situ for crop disease diagnosis.

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