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基于无人机数字图像与高光谱数据融合的小麦全蚀病等级的快速分类技术
引用本文:乔红波,师越,司海平,吴旭,郭伟,时雷,马新明,周益林.基于无人机数字图像与高光谱数据融合的小麦全蚀病等级的快速分类技术[J].植物保护,2015,41(6):157-162.
作者姓名:乔红波  师越  司海平  吴旭  郭伟  时雷  马新明  周益林
作者单位:1. 河南粮食作物协同创新中心/河南农业大学信息与管理科学学院,郑州 450002;2. 植物病虫害生物学国家重点实验室,北京 100093
基金项目:国家自然科学基金项目(31301604); 河南省科技攻关项目(122102110045); 植物病虫害生物学国家重点实验室开放课题(SKLOF201302)
摘    要:小麦全蚀病是检疫性的土传病害,对小麦生产危害极大,对其发生的监测是治理的根本。遥感技术可实时、宏观地监测病害发生发展,尤其是将光谱信息与高分辨率数字图像进行融合,可直观、精准地对病害识别和分类。本文基于计算机视觉技术,通过光谱数据与高分辨率数字图像结合的方法,对小麦全蚀病等级进行快速分类。首先,通过ASD非成像光谱仪获取小麦全蚀病的光谱信息,提取全蚀病特征光谱,建立光谱比。其次,利用无人机获取的实时田间数码图像,对其颜色特征进行重量化。最后,利用基于支持向量机的决策树分类对图像视场中的不同全蚀病等级进行分类。结果表明,4个全蚀病等级的分类精度均大于86%(Kappa0.81),平均运算时间小于30s。通过与实地调查的小麦全蚀病的白穗率等级做比对,验证分类结果的准确性,结果表明该方法基本可以实现对小麦全蚀病等级的实时监测。

关 键 词:小麦全蚀病  计算机视觉技术  快速多分类  颜色模型  支持向量机
收稿时间:2014/10/11 0:00:00
修稿时间:2015/1/13 0:00:00

Fast multi-classification of wheat take-all levels based on the fusion of unmanned aerial vehicle digital images and spectral data
Qiao Hongbo,Shi Yue,Si Haiping,Wu Xu,Guo Wei,Shi Lei,Ma Xinming,Zhou Yilin.Fast multi-classification of wheat take-all levels based on the fusion of unmanned aerial vehicle digital images and spectral data[J].Plant Protection,2015,41(6):157-162.
Authors:Qiao Hongbo  Shi Yue  Si Haiping  Wu Xu  Guo Wei  Shi Lei  Ma Xinming  Zhou Yilin
Institution:1. Collaborative Innovation Center of Henan Grain Crops, College of Information and Management Science, Henan Agriculture University, Zhengzhou 450002, China; 2. State Key Laboratory for Biology of Plant Diseases and Insect Pests, Beijing 100093, China
Abstract:Wheat take-all will lead to a disaster in wheat production without timely monitoring and management. Traditional remote sensing approaches in wheat take-all have failed to fast and accurately recognize the multi-level disease conditions due to relatively coarse spatial resolution and the experience-based features selection. This study developed a method to achieve the fast multi-classification of wheat take-all based on the computer vision and the data fusion technology. Firstly, ASD HandHeld sensor was used to extract the spectral feature ratio. Then the color model was established to quantify the UAV aerial photo. Finally, the wheat take-all were classified using the decision tree which based on the support vector machine (SVM). The results showed that an overall accuracy was greater than 86% (Kappa > 0.81) for classifying all of take-all levels, and computation rate was less than 30 seconds, which is meaningful for automatic real-time monitoring of take-all conditions.
Keywords:wheat take-all  computer vision technology  multi-classification  color model  SVM
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