Classification using radial-basis neural networks based on thermographic assessment of Botrytis cinerea infected cut rose flowers treated with methyl jasmonate

Q3 Agricultural and Biological Sciences
M. Jafari, S. Minaei, N. Safaie, F. Torkamani-Azar, M. Sadeghi
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引用次数: 4

Abstract

Many environmental and physiological factors affect plant temperature. The objective of this study was to use thermal imagery to investigate robust features for early diagnosis of Botrytis cinerea infection in cut rose flowers under the postharvest application of Methyl Jasmonate (MeJA). Three cases treated with different concentrations of MeJA (0.1, 0.2, and 0.3 μl.l), a control (0 μl.l MeJA) and an ethanol-treated case (20 μl.l ethanol) were considered as five treatments in this study. Infrared images of MeJA-treated and non-treated flowers were captured during five consecutive days. Eight days after inoculation, disease severity in all concentrations of MeJA was significantly lower than that of control and ethanol treatments. Maximum temperature difference (MTD) index and median temperature could be used to diagnose the existence and growth of fungal pathogen, at least a day before any significant visual symptoms appear. To identify some robust features for classifying the infected and non-infected flowers, analysis of temperature frequency distribution was implemented. Laplace and normal distributions were considered as the best fitted probability distributions based on the shape of thermal histograms. Parameters of normal and Laplace probability density functions were estimated and the most effective attributes were selected. A radial-basis-function neural network with 60 neurons in the hidden layer was designed to classify and distinguish the infected flowers from the healthy ones. Results showed that the network can classify the infected and non-infected flowers with a 96.4% correct estimation rate.
基于径向神经网络的茉莉酸甲酯处理玫瑰切花灰霉病热成像分类
影响植物温度的环境和生理因素很多。本研究的目的是利用热成像技术研究采后施用茉莉酸甲酯(MeJA)对月季切花灰霉病的早期诊断。用不同浓度的MeJA(0.1、0.2、0.3 μl)处理3例,对照组(0 μl)处理1例。1 MeJA)和乙醇处理组(20 μl)。L乙醇)作为5种处理。连续5天拍摄meja处理和未处理花的红外图像。接种后8 d,各浓度MeJA处理的疾病严重程度均显著低于对照和乙醇处理。最高温差(MTD)指数和中位温度可用于诊断真菌病原体的存在和生长,至少在任何明显的视觉症状出现前一天。为了识别一些鲁棒性特征,对感染花和未感染花进行了温度频率分布分析。基于热直方图的形状,认为拉普拉斯分布和正态分布是最适合的概率分布。估计正态和拉普拉斯概率密度函数的参数,选择最有效的属性。设计了一种包含60个隐层神经元的径向基函数神经网络,用于对感染花和健康花进行分类和区分。结果表明,该网络对感染花卉和未感染花卉进行分类,正确率为96.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Crop Protection
Journal of Crop Protection Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
1.20
自引率
0.00%
发文量
0
审稿时长
10 weeks
期刊介绍: Journal of Crop Protection is one of the TMU Press journals that is published by the responsibility of its Editor-in-Chief and Editorial Board in the determined scopes. Journal of Crop Protection (JCP) is an international peer-reviewed research journal published quarterly for the purpose of advancing the scientific studies. It covers fundamental and applied aspects of plant pathology and entomology in agriculture and natural resources. The journal will consider submissions from all over the world, on research works not being published or submitted for publication as full paper, review article and research note elsewhere. The Papers are published in English with an extra abstract in Farsi language.
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