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应用多光谱图像技术获取黄瓜叶片含氮量及叶面积指数 被引量:16

Application of Multi-Spectral Imaging Technique for Acquisition of Cucumber Growing Information
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摘要 为了快速准确地获取黄瓜叶片的含氮量和叶面积指数等生长信息,提出了采用多光谱图像技术对黄瓜生长信息进行检测的新方法。利用标定板建立黄瓜叶片光谱反射率同图像灰度值之间的线性公式。通过多光谱相机对样本在绿光、红光和近红外三个通道的图像进行处理,获得叶片样本在每一通道的灰度值,然后根据标定板所建立的灰度值与反射率间的经验线性公式将对应的灰度值转为反射率值,并由反射率值计算出黄瓜的植被指数。采用最小二乘-支持向量机(LS-SVM)建立植被指数同叶片含氮景以及叶面积指数问的拟合模型。结果表明植被指数同叶片含氮量和叶面积指数的拟合相关系数分别为0.8665和0.8553。表明植被指数与黄瓜的叶片含氮量和叶面积指数具有紧密的相关性,也为快速采集黄瓜生长信息提供了一种新方法。 In order to rapidly and accurately acquire cucumber leaf area index (LAI), a multi-spectral imaging technique was growing information, such as the nitrogen content and investigated. The linear relation between reflectance and image gray value was developed using the calibration board. The gray value of leaf sample was achieved by image processing of green, red and near infrared channels obtained by a three-channel CCD camera. Then the gray value of the leaf sample was transferred into reflectance value by aforementioned experiential linear function. The reflectance value was used for the calculation of vegetation index. Least squares-support vector machines (LS-SVM) model was developed for the relation between vegetation index and nitrogen content, vegetation index and leaf area index. The results indicate that the correlation coefficients of vegetation index and nitrogen content, vegetation index and LAI are 0. 8665 and 0. 8553, respectively. The overall results demonstrate that there is a close relation between the vegetation index and growing information of cucumber, and the multi-spectral imaging technique is a new powerful method for the acquisition of cucumber growing information. "
出处 《光学学报》 EI CAS CSCD 北大核心 2009年第6期1616-1620,共5页 Acta Optica Sinica
基金 国家863计划(2007AA10Z210) 国家自然科学基金(30671213) 浙江省自然科学基金(Y307158)资助项目
关键词 医用光学与生物技术 多光谱图像技术 黄瓜 含氮量 叶面积指数 最小二乘-支持向量机 optics and biotechnology multi-spectral imaging technique cucumber nitrogen content leaf area index (LAI) least squares-support vector machines (LS-SVM)
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