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葡萄叶片组织结构高光谱响应特征及相关性分析
引用本文:胡钰炜,卢艳丽,杨俐苹,杨国顺,刘昆玉,王磊. 葡萄叶片组织结构高光谱响应特征及相关性分析[J]. 植物营养与肥料学报, 2021, 27(7): 1213-1221. DOI: 10.11674/zwyf.20571
作者姓名:胡钰炜  卢艳丽  杨俐苹  杨国顺  刘昆玉  王磊
作者单位:1.湖南农业大学园艺学院,湖南长沙 410128
基金项目:国家重点研发计划项目(2018YFD201303)
摘    要:[目的]研究不同葡萄品种叶片组织结构特征及其光谱响应差异,揭示葡萄叶片光谱反射率差异的主要影响因素,为提高葡萄叶片营养光谱诊断精度提供参考.[方法]在河北廊坊葡萄园,采集夏黑、意大利、红宝石、秋黑4个葡萄品种的叶片,用Fieldspec FR2500光谱仪测定叶片光谱数据,常规化学方法测定叶片含氮量,通过扫描电镜(SU...

关 键 词:葡萄  高光谱  扫描电镜(SEM)  氮素  叶片结构
收稿时间:2020-11-26

Hyperspectral response characteristics and correlation analysis of grape leaf tissue structure
HU Yu-wei,LU Yan-li,YANG Li-ping,YANG Guo-shun,LIU Kun-yu,WANG Lei. Hyperspectral response characteristics and correlation analysis of grape leaf tissue structure[J]. Plant Nutrition and Fertilizer Science, 2021, 27(7): 1213-1221. DOI: 10.11674/zwyf.20571
Authors:HU Yu-wei  LU Yan-li  YANG Li-ping  YANG Guo-shun  LIU Kun-yu  WANG Lei
Affiliation:1.College of Horticulture, Hunan Agricultural University, Changsha, Hunan 410128, China
Abstract:  【Objectives】  The spectral response of leaf tissue structure in different grape cultivars was investigated. The study aimed to identify the main factors responsible for spectral differences in grape leaves and advance spectral diagnosis accuracy in leaf nutrition.  【Methods】  The experiment was conducted in Langfang vineyard, Hebei Province. The leaves of four grape cultivars, Summer Black, Italia, Ruby Seedless and Autumn Black, were sampled regularly during the study period. The spectral data and N content were determined synchronously using FieldSpec FR2500 spectrometer and chemical method, respectively. The leaf tissue structures were observed and measured using scanning electron microscopy (SU8010) cryopreservation technology. The correlation between the spectrum and tissue structure of the leaves was calculated.   【Results】  The spectral difference between the leaf′s front and back was caused by the distribution of stomata in the reverse side of the grape leaves. In the visible band, the leaf back′s spectral reflectance was higher than that of the leaf front. However, it is the opposite in the near-infrared band, and the leaf front's spectral reflectance was higher than that of the leaf back. The cultivars exhibited differences in spectral reflectance when leaf N content was similar due to variation in the number and distribution of stomata on the leaf surface, the thickness of palisade tissue cells, and the thickness of sponge tissues. The correlation between the red edge parameters λred of the front (i.e., the wavelength at which the first differential value of spectral reflectance reaches the maximum range in 660–770 nm) and the leaf thickness of the different varieties was significantly different. In addition, there was a strong correlation between the spectral red edge parameters and other leaf structural parameters, among which the thickness of palisade tissue and spongy tissue was a non-negligible factor in the spectral response of the grape varieties.  【Conclusions】  The differences in cell morphology on the front and back surfaces of the leaves, internal structure of leaves and their correlation with spectral characteristics are determined. We find that the red edge parameter λred can show the leaf thickness of different grape varieties. If the variety factor is considered, some parameters with better correlation can also be selected for each variety. These results provided a basis for establishing and optimising the leaf nutrient diagnosis spectral model in grape. For improving the accuracy of the leaf nitrogen diagnostic model, the influence of leaf structure should be considered when using the spectral technique to diagnose leaf nutrition.
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