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Hyperspectral Remote Sensing for Early Detection of Wheat Leaf Rust Caused by Puccinia triticina

Anton Terentev, Vladimir Badenko, Е. L. Shaydayuk, D. V. Emelyanov, Danila Eremenko, Dmitriy Klabukov, Alexander Fedotov, В. И. Долженко

2023Agriculture23 citationsDOIOpen Access PDF

Abstract

Early crop disease detection is one of the most important tasks in plant protection. The purpose of this work was to evaluate the early wheat leaf rust detection possibility using hyperspectral remote sensing. The first task of the study was to choose tools for processing and analyze hyperspectral remote sensing data. The second task was to analyze the wheat leaf biochemical profile by chromatographic and spectrophotometric methods. The third task was to discuss a possible relationship between hyperspectral remote sensing data and the results from the wheat leaves, biochemical profile analysis. The work used an interdisciplinary approach, including hyperspectral remote sensing and data processing methods, as well as spectrophotometric and chromatographic methods. As a result, (1) the VIS-NIR spectrometry data analysis showed a high correlation with the hyperspectral remote sensing data; (2) the most important wavebands for disease identification were revealed (502, 466, 598, 718, 534, 766, 694, 650, 866, 602, 858 nm). An early disease detection accuracy of 97–100% was achieved from fourth dai (day/s after inoculation) using SVM.

Topics & Concepts

Hyperspectral imagingRemote sensingRust (programming language)Stripe rustComputer scienceEnvironmental sciencePattern recognition (psychology)Artificial intelligenceBiologyGeographyPlant disease resistanceBiochemistryProgramming languageGeneSpectroscopy and Chemometric AnalysesRemote Sensing in AgricultureSmart Agriculture and AI
Hyperspectral Remote Sensing for Early Detection of Wheat Leaf Rust Caused by Puccinia triticina | Litcius