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首页> 外文期刊>Industrial and organizational psychology >Nondestructive diagnostics of soluble sugar, total nitrogen and their ratio of tomato leaves in greenhouse by polarized spectra-hyperspectral data fusion
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Nondestructive diagnostics of soluble sugar, total nitrogen and their ratio of tomato leaves in greenhouse by polarized spectra-hyperspectral data fusion

机译:通过极化光谱 - 高光谱数据融合,番茄叶片的无损糖,总氮的无损诊断及其与番茄的比例

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Polarized spectra hyperspectral data fusion technique was used to estimate the soluble sugar (SS), total nitrogen (N), and their ratio (SS/N), of greenhouse tomato leaves. Fresh tomato leaves of five different growth stages (seedling, flowering, initial fruiting, mid-fruiting and picking stage) and five different nitrogen treatments (severe stress 25%, moderate stress 50%, mild stress 75%, normal 100%, and excess 150%) at every stage were collected for spectra acquisition and SS and N determination. Polarized reflectance spectra were acquired with a polarization reflectance spectrum spectro-goniophotometer system and four polarization degree features were extracted. Hyperspectral data were collected with a hyperspectral imaging system and four reflectance spectrum features and eight image features were extracted. Initially, models were built with polarization degree features, image features, and spectral features respectively. Linear and nonlinear fusion methods were comparatively used for modeling based on normalized data of the three sources. The results suggest that the performances of SS/N models are better than those of N and SS models, and the prediction capability of the Support Vector Machine (SVM) models of N and SS/N are superior to those obtained with single kind feature. This work indicates that the polarized spectrum-hyperspectral multidimensional information detecting method can feasibly judge the tomato nutrient stress conditions. Multi-features data fusion analysis technique can enhance the prediction accuracy of spectral diagnostics technology in precision agriculture.
机译:偏振光光谱数据融合技术用于估计温室番茄叶的可溶性糖(SS),总氮(N)及其比例(SS / N)。五种不同的生长阶段的新鲜番茄叶(幼苗,开花,初始果实,中果和拣选阶段)和五种不同的氮气治疗(严重应激25%,中等应力50%,轻度应力75%,正常100%,和过量收集每个阶段的150%)用于光谱习得和SS和N确定。利用偏振反射谱谱光谱 - 巨头光谱仪系统,提取偏振反射光谱偏振光谱,提取四个偏振度特征。用高光谱成像系统收集高光谱数据,提取四个反射谱特征和八个图像特征。最初,模型分别由偏振度特征,图像特征和光谱特征构成。线性和非线性融合方法比较用于基于三种源的标准化数据的建模。结果表明,SS / N型号的性能优于N和SS模型的性能,并且N和SS / N的支持向量机(SVM)模型的预测能力优于用单种特征获得的那些。这项工作表明,偏振频谱 - 超细多维信息检测方法可以是可行的番茄养分应力条件。多特色数据融合分析技术可以提高精密农业谱诊断技术的预测准确性。

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