A review of hyperspectral image analysis techniques for plant disease detection and identification

被引:25
作者
Chelhkova, A. F. [1 ]
机构
[1] Russian Acad Sci, Siberian Fed Sci Ctr AgroBioTechnol, Krasnoobsk, Novosibirsk Reg, Russia
来源
VAVILOVSKII ZHURNAL GENETIKI I SELEKTSII | 2022年 / 26卷 / 02期
基金
俄罗斯科学基金会;
关键词
hyperspectral technologies; plant diseases; image analysis; spectral analysis; WINTER-WHEAT; REFLECTANCE MEASUREMENTS; WAVELET FEATURES; POWDERY MILDEW; YELLOW RUST; VEGETATION; SENSORS; CAMERA; DIFFERENTIATION; QUANTIFICATION;
D O I
10.18699/VJGB-22-25
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Plant diseases cause significant economic losses in agriculture around the world. Early detection, quantification and identification of plant diseases are crucial for targeted application of plant protection measures in crop production. Recently, intensive research has been conducted to develop innovative methods for diagnosing plant diseases based on hyperspectral technologies. The analysis of the reflection spectrum of plant tissue makes it possible to classify healthy and diseased plants, assess the severity of the disease, differentiate the types of pathogens, and identify the symptoms of biotic stresses at early stages, including during the incubation period, when the symptoms are not visible to the human eye. This review describes the basic principles of hyperspectral measurements and different types of available hyperspectral sensors. Possible applications of hyperspectral sensors and platforms on different scales for diseases diagnosis are discussed and evaluated. Hyperspectral analysis is a new subject that combines optical spectroscopy and image analysis methods, which make it possible to simultaneously evaluate both physiological and morphological parameters. The review describes the main steps of the hyperspectral data analysis process: image acquisition and preprocessing; data extraction and processing; modeling and analysis of data. The algorithms and methods applied at each step are mainly summarized. Further, the main areas of application of hyperspectral sensors in the diagnosis of plant diseases are considered, such as detection, differentiation and identification of diseases, estimation of disease severity, phenotyping of disease resistance of genotypes. A comprehensive review of scientific publications on the diagnosis of plant diseases highlights the benefits of hyperspectral technologies in investigating interactions between plants and pathogens at various measurement scales. Despite the encouraging progress made over the past few decades in monitoring plant diseases based on hyperspectral technologies, some technical problems that make these methods difficult to apply in practice remain unresolved. The review is concluded with an overview of problems and prospects of using new technologies in agricultural production.
引用
收藏
页码:202 / 213
页数:12
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