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基于多光谱图像的水稻叶片叶绿素和籽粒氮素含量检测研究
引用本文:张浩,姚旭国,张小斌,祝利莉,叶少挺,郑可锋,胡为群.基于多光谱图像的水稻叶片叶绿素和籽粒氮素含量检测研究[J].中国水稻科学,2008,22(5):555-558.
作者姓名:张浩  姚旭国  张小斌  祝利莉  叶少挺  郑可锋  胡为群
作者单位:浙江省农业科学院 数字农业研究中心, 浙江 杭州 310021
基金项目:浙江省重大科技攻关项目 , 浙江省农业科学院博士启动项目 , 浙江省农业科学院重点实验室资助项目  
摘    要:先利用常规技术分析了水稻的叶片叶绿素和籽粒氮素含量,然后用包含绿(G)、红(R)和近红外(NIR)三波段通道的电荷耦合器件(CCD)成像技术对水稻叶片和籽粒进行了无损检测。试验结果显示,水稻叶片叶绿素a、叶绿素b分别与G、NIR通道图像灰度呈极显著线性相关,叶绿素(a+b)含量则与上述两通道图像灰度呈显著线性相关;而且,水稻籽粒氮素含量与G、NIR通道、归一化植被指数(NDVI)灰度呈显著线性相关。由此建立了水稻叶片叶绿素和籽粒氮素含量的多光谱图像预测模型,并分别用21个样本对模型进行检验,其中线性显著相关的7个模型的相对误差RE(%)介于9.36%~157%,实现了对水稻叶片叶绿素和籽粒氮素含量的快速、准确、非破坏性检测。

关 键 词:多光谱成像  光谱反射率  水稻  植被指数  遥感  
收稿时间:1900-01-01;

Measurement of Rice Leaf Chlorophyll and Seed Nitrogen Contents by Using Multi-Spectral Imagine
ZHANG Hao,YAO Xu-guo,ZHANG Xiao-bin,ZHU Li-li,YE Shao-ting,ZHENG Ke-feng,HU Wei-qun.Measurement of Rice Leaf Chlorophyll and Seed Nitrogen Contents by Using Multi-Spectral Imagine[J].Chinese Journal of Rice Science,2008,22(5):555-558.
Authors:ZHANG Hao  YAO Xu-guo  ZHANG Xiao-bin  ZHU Li-li  YE Shao-ting  ZHENG Ke-feng  HU Wei-qun
Abstract:To determine rice leaf chlorophyll and seed nitrogen contents,a multi-spectral sensor which assesses the biochemical content of rice by means of gray values sensed using three channels (green,red,near-infrared) of the multi-spectral camera was used. The results showed that there were extremely significant correlations between the chlorophyll a content,chlorophyll b content in leaves and the gray values of green channel,near-infrared channel respectively and significant correlation between the chlorophyll (a b) content in leaves and the gray values of green channel,near-infrared channel. Similarly,there was a significant correlation between the seed nitrogen content and the gray values of green channel,near-infrared channel and normalized difference vegetation index. Moreover,regression equations between gray values of multi-spectral imagine and leaf chlorophyll content or seed nitrogen content were verified with 21 samples and the relative error of 7 models ranged from 9.36% to 15.7%. Thus,the rapid,accurate and non-destructive estimations of leaf chlorophyll and seed nitrogen contents were realized.
Keywords:multi-spectral imagery  spectra characteristics  rice  vegetation index  remote sensing
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