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国家自然科学基金(41101395)

作品数:6 被引量:159H指数:4
相关作者:杨小冬黄文江罗菊花袁琳杜世州更多>>
相关机构:国家农业信息化工程技术研究中心中国科学院浙江大学更多>>
发文基金:国家自然科学基金北京市自然科学基金国家重点基础研究发展计划更多>>
相关领域:农业科学自动化与计算机技术更多>>

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小麦倒伏的雷达极化特征及其遥感监测被引量:31
2014年
研究探索了雷达遥感大面积监测小麦倒伏状况的潜力。利用覆盖整个小麦生育期的5景时间序列Radarsat-2全极化影像数据,对比分析了倒伏小麦与正常小麦在不同时间、不同极化的雷达后向散射动态响应规律,发现雷达极化特征对小麦倒伏十分敏感,基于此提出利用雷达极化指数监测小麦倒伏的方法。并利用内蒙古额尔古纳市上库力农场春小麦抽穗灌浆期的实地调查数据,对提出方法进行验证,结果表明该方法能有效辨识和监测小麦倒伏。为大面积监测小麦倒伏提供了一种简单、快速、有效的手段。
杨浩杨贵军顾晓鹤李增元陈尔学冯琦杨小冬
关键词:雷达极化小麦倒伏极化指数多时相
Characterization of the Rice Canopy Infested with Brown Spot Disease Using Field Hyperspectral Data被引量:1
2012年
Based on the field hyperspectral data from the analytical spectral devices (ASD) spectrometer, we characterized the spectral properties of rice canopies infested with brown spot disease and selected spectral regions and bands sensitive to four severity degrees (severe, moderate, light, and healthy). The results show that the curves' variation on the original and the first- and second-order de- rivative curves are greatly different, but the spectral difference in the near-infrared region is the most obvious for each level. Specifically, the peaks are located at 822, 738, and 793 nm, while the valleys are located at 402, 570, and 753 run, respectively. The sensitive regions are between 430-520, 530-550, and 650-710 nm, and the bands are 498, 539, and 673 nm in the sensitivity analysis, while they are in the ranges of 401-530, 550-730 as well as at 498 nm and 678 nm in the continuum removal.
ZHAO JinlingZHANG DongyanLUO JuhuaDONG YingyingYANG HaoHUANG Wenjiang
A Bayesian Network Model for Yellow Rust Forecasting in Winter Wheat
Yellow rust(YR) is one of the most destructive diseases of wheat.We introduced the Bayesian network analysis a...
Xiaodong YangChenwei NieJingcheng ZhangHaikuan FengGuijun Yang
Spectroscopic Leaf Level Detection of Powdery Mildew for Winter Wheat Using Continuous Wavelet Analysis被引量:9
2012年
Powdery mildew (Blumeria graminis) is one of the most destructive crop diseases infecting winter wheat plants, and has devastated millions of hectares of farmlands in China. The objective of this study is to detect the disease damage of powdery mildew on leaf level by means of the hyperspectral measurements, particularly using the continuous wavelet analysis. In May 2010, the reflectance spectra and the biochemical properties were measured for 114 leaf samples with various disease severity degrees. A hyperspectral imaging system was also employed for obtaining detailed hyperspectral information of the normal and the pustule areas within one diseased leaf. Based on these spectra data, a continuous wavelet analysis (CWA) was carried out in conjunction with a correlation analysis, which generated a so-called correlation scalogram that summarizes the correlations between disease severity and the wavelet power at different wavelengths and decomposition scales. By using a thresholding approach, seven wavelet features were isolated for developing models in determining disease severity. In addition, 22 conventional spectral features (SFs) were also tested and compared with wavelet features for their efficiency in estimating disease severity. The multivariate linear regression (MLR) analysis and the partial least square regression (PLSR) analysis were adopted as training methods in model mildew on leaf level were found to be closely related with the development. The spectral characteristics of the powdery spectral characteristics of the pustule area and the content of chlorophyll. The wavelet features performed better than the conventional SFs in capturing this spectral change. Moreover, the regression model composed by seven wavelet features outperformed (R2=0.77, relative root mean square error RRMSE=0.28) the model composed by 14 optimal conventional SFs (R2---0.69, RRMSE--0.32) in estimating the disease severity. The PLSR method yielded a higher accuracy than the MLR method. A combination o
ZHANG Jing-chengYUAN LinWANG Ji-huaHUANG Wen-jiangCHEN Li-pingZHANGDong-yan
基于空间信息的农作物苗情监测系统被引量:8
2013年
以大面积、无损的农作物苗情监测为目标,采用GIS、RS、GPS等空间信息技术,结合计算机技术、网络技术设计开发了基于空间信息的农作物苗情监测系统。在前人研究基础上,筛选了能够表征作物长势、产量和品质的农学参量及遥感植被指数,提供自定义监测预报模型的方式实现对农作物长势、产量及品质监测。最终,以2012年北京地区冬小麦长势监测为例,展示了农作物长势分析过程,获得了同实际情况相吻合的监测结果。
于海洋刘艳梅董燕生杨小冬任东关强
关键词:农作物苗情监测空间信息
Exploring the Feasibility of Winter Wheat Freeze Injury by Integrating Grey System Model with RS and GIS被引量:3
2013年
Winter wheat freeze injury is one of the main agro-meteorological disasters affecting wheat production. In order to evaluate the severity of freeze injury on winter wheat systematically, we proposed a grey-system model (GSM) to monitor the degree and the distribution of the winter wheat freeze injury. The model combines remote sensing (RS) and geographic information system (GIS) technology. It gave examples of wheat freeze injury monitoring applications in Gaocheng and Jinzhou of Hebei Province, China. We carried out a quantitative evaluation method study on the severity of winter wheat freeze injury. First, a grey relational analysis (GRA) was conducted. At the same time, the weights of the stressful factors were determined. Then a wheat freezing injury stress multiple factor spatial matrix was constructed using spatial interpolation technology. Finally, a winter wheat freeze damage evaluation model was established through grey clustering algorithm (GCA), and classifying the study area into three sub-areas, affected by severe, medium or light disasters. The evaluation model were verified by the Kappa model, the overall accuracy reached 78.82% and the Kappa coefficient was 0.6754. Therefore, through integration of GSM with RS images as well as GIS analysis, quantitative evaluation and study of winter wheat freeze disasters can be conducted objectively and accurately, making the evaluation model more scientific.
WANG Hui-fangGUO weiWANG Ji-huaHUANG Wen-jiangGU Xiao-heDONG Ying-yingXUXin-gang
关键词:RSGISGCA
作物病虫害遥感监测研究进展被引量:111
2012年
农作物病虫害监测目前在数据采集上主要依靠植保人员田间调查、田间取样等传统方式,不仅耗时、费力,而且存在以点代面的代表性差、主观性强和时效性差等弊端,难以满足大范围病虫害实时监测的需求。近年来遥感技术的发展,为大面积、快速获取作物和环境信息提供了重要的手段,是未来大面积病虫害监测和预测预报与产量损失评估的重要手段。该文在阐述植物病虫害胁迫光谱响应的生理机制的基础上,对目前病虫害遥感监测中所常用的光谱敏感波段及植被指数进行了汇总、整理,并对病虫害识别、严重度监测和损失评估等方面所使用的算法进行了综述。在此基础上,指出了目前作物病虫害遥感监测中尚需解决的关键技术问题,并就如何实现大面积作物病虫害遥感监测提出了解决思路。
张竞成袁琳王纪华罗菊花杜世州黄文江
关键词:遥感虫害控制作物植被指数
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