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Ground-based RGB imaging to determine the leaf water potential of potato plants.

机译:基于地面的RGB成像可确定马铃薯植株的叶片水势。

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摘要

The determination of plant water status from leaf water potential (Psi L) data obtained by conventional methods is impractical for meeting real time irrigation monitoring requirements. This research, undertaken first, in a greenhouse and then in the field, examined the use of artificial neural network (ANN) modeling of RGB (red green blue) images, captured by a ground-based, five mega pixel digital camera, to predict the leaf water potential of potato (Solanum tuberosum L). The greenhouse study examined cv. Russet Burbank, while the field study examined cv. Sangre. The protocol was similar in both studies: (1) images were acquired over different soil nitrate (N) and volumetric water content levels, (2) images were radiometrically calibrated, (3) green foliage was classified and extracted from the images, and (4) image transformations, and vegetation indices were calculated and transformed using principal components analysis (PCA). The findings from both studies were similar: (1) the R and G bands were more important than the B image band in the classification of green leaf pigment, (2) soil N showed an inverse linear relationship against leaf reflectance in the G image band, (3) the ANN model input neuron weights with more separation between soil N and PsiL were more important than other input neurons in predicting PsiL, and (4) the measured and predicted PsiL validation datasets were normally distributed with equal variances and means that were not significantly different. Based on these research findings, the ground-based digital camera proved to be an adequate sensor for image acquisition and a practical tool for acquiring data for predicting the PsiL of potato plants.;Keywords: nitrogen, IHS transformation, chromaticity transformation, principal components, vegetation indices, remote sensing, artificial neural network, digital camera.
机译:通过常规方法从叶水势(Psi L)数据确定植物水状态对于满足实时灌溉监控要求是不切实际的。这项研究首先在温室中进行,然后在野外进行,研究了使用人工神经网络(ANN)建模的RGB(红色绿色蓝色)图像的情况,该图像是由地面的5百万像素数码相机捕获的,用于预测马铃薯(Solanum tuberosum L)的叶水势。温室研究检查了简历。 Russet Burbank,而实地研究则考察了简历。 Sangre。两项研究中的方案相似:(1)在不同的土壤硝态氮(N)和体积水分含量水平上获取图像,(2)通过辐射度校准图像,(3)对绿叶进行分类并从图像中提取,(( 4)使用主成分分析(PCA)进行图像转换和植被指数计算和转换。两项研究的结果相似:(1)在绿色叶片色素的分类中,R和G谱带比B谱带重要,(2)土壤N与G谱带中的叶片反射率呈反线性关系。 ,(3)在土壤N和PsiL之间具有更大分离度的ANN模型输入神经元权重在预测PsiL方面比其他输入神经元更重要,并且(4)测量和预测的PsiL验证数据集呈正态分布,且方差相等,均值没有明显的不同。基于这些研究结果,地面数字相机被证明是用于图像采集的适当传感器,也是用于获取预测马铃薯植株PsiL数据的实用工具。关键词:氮,IHS转化,色度转化,主要成分,植被指数,遥感,人工神经网络,数码相机。

著录项

  • 作者

    Zakaluk, Robert F.;

  • 作者单位

    University of Manitoba (Canada).;

  • 授予单位 University of Manitoba (Canada).;
  • 学科 Engineering Agricultural.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 121 p.
  • 总页数 121
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;遥感技术;
  • 关键词

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