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潜育期小麦条锈菌的高光谱定性识别
引用本文:刘琦,王翠翠,王睿,谷医林,李薇,马占鸿.潜育期小麦条锈菌的高光谱定性识别[J].植物保护学报,2018,45(1):153-160.
作者姓名:刘琦  王翠翠  王睿  谷医林  李薇  马占鸿
作者单位:新疆农业大学农学院植物病理学系, 农林有害生物监测与安全防控重点实验室, 乌鲁木齐 830052;中国农业大学植物保护学院植物病理学系, 农业部作物有害生物监测与绿色防控重点实验室, 北京 100193,中国农业大学植物保护学院植物病理学系, 农业部作物有害生物监测与绿色防控重点实验室, 北京 100193,中国农业大学开封实验站, 河南 开封 475004,中国农业大学植物保护学院植物病理学系, 农业部作物有害生物监测与绿色防控重点实验室, 北京 100193,中国农业大学植物保护学院植物病理学系, 农业部作物有害生物监测与绿色防控重点实验室, 北京 100193,中国农业大学植物保护学院植物病理学系, 农业部作物有害生物监测与绿色防控重点实验室, 北京 100193
基金项目:国家重点研发计划(2017YFD0200400,2016YFD0300702),新疆农业大学作物学博士后项目,新疆农业大学作物学重点学科项目
摘    要:小麦条锈病的发生流行严重影响小麦的生产安全,其早期的监测预警对病害发生的防控具有重要作用。本研究利用Hand Held 2地物光谱仪获取不同浓度小麦条锈菌胁迫下的潜育期小麦冠层高光谱数据,基于定性偏最小二乘(discriminant partial least squares,DPLS)、人工神经网络(artificial neural networks,ANN)和支持向量机(support vector machine,SVM)3种方法建立识别潜育期小麦条锈菌的模型,并分析接菌间隔日、建模比及光谱特征的差异对模型效果的影响。结果显示,在全波段(325~1 075 nm)建模,SVM识别效果优于ANN,而ANN优于DPLS,其中以一阶导数为光谱特征所建模型识别效果最优,在不同建模比下其识别准确率均可达到100.00%。

关 键 词:潜育期  小麦条锈菌  小麦条锈病  高光谱遥感  数学模型
收稿时间:2017/9/4 0:00:00

Hyperspectral qualitative identification on latent period of wheat stripe rust
Liu Qi,Wang Cuicui,Wang Rui,Gu Yilin,Li Wei and Ma Zhanhong.Hyperspectral qualitative identification on latent period of wheat stripe rust[J].Acta Phytophylacica Sinica,2018,45(1):153-160.
Authors:Liu Qi  Wang Cuicui  Wang Rui  Gu Yilin  Li Wei and Ma Zhanhong
Institution:Key Laboratory of the Pest Monitoring and Safety Control of Crops and Forests, Department of Plant Pathology, College of Agronomy, Xinjiang Agricultural University, Urumqi 830052, Xinjiang Uygur Autonomous Region, China;Department of Plant Pathology, MOA Key Lab of Pest Monitoring and Green Management, College of Plant Protection, China Agricultural University, Beijing 100193, China,Department of Plant Pathology, MOA Key Lab of Pest Monitoring and Green Management, College of Plant Protection, China Agricultural University, Beijing 100193, China,Kaifeng Experimental Station of China Agricultural University, Kaifeng 475004, Henan Province, China,Department of Plant Pathology, MOA Key Lab of Pest Monitoring and Green Management, College of Plant Protection, China Agricultural University, Beijing 100193, China,Department of Plant Pathology, MOA Key Lab of Pest Monitoring and Green Management, College of Plant Protection, China Agricultural University, Beijing 100193, China and Department of Plant Pathology, MOA Key Lab of Pest Monitoring and Green Management, College of Plant Protection, China Agricultural University, Beijing 100193, China
Abstract:Wheat stripe rust seriously affects the safety of wheat production. The early monitoring and warning of this disease is of great significance to control the disease epidemic and ensure the quality and safety of wheat production. It is available to use the canopy hyperspectral reflectance which obtained from spectrograph HandHeld 2 to differentiate the different Pst concentrations in latent period. The effects of different inoculation days, different modeling ratios and different spectral features were assessed with the DPLS, ANN and SVM methods. The results showed that in the spectral region of 325-1 075 nm, the models accuracy based on ANN was better than the DPLS, and the SVM was the best. The model with the spectral feature of 1st derivative of reflectance had better accuracy than others, and the accuracy rate could be up to 100.00%.
Keywords:latent period  Puccinia striiformis f  sp  tritici  wheat stripe rust  hyperspectral remote sensing  mathematical model
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