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Monitoring Flue-Cured Tobacco Leaf Chlorophyll Content under Different Light Qualities by Hyperspectral Reflectance

机译:在高光谱反射率下监测不同轻质质量下的烤烟叶片叶绿素含量

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Rapid assessment of foliar chlorophyll content in tobacco is critical for assessment of growth and precise management to improve quality and yield while minimizing adverse environmental impact. Our objective is to develop a precise agricultural practice predicting tobacco-leaf chlorophyll-a content. Reflectance experiments have been conducted on flue-cured tobacco over 3 consecutive years under different light quality. Leaf hyperspectral reflectance and chlorophyll-a content data have been collected at 15-day intervals from 30 days after transplant until harvesting. We identified the central band that is sensitive to tobacco-leaf chlorophyll-a content and the optimum wavelength combinations for establishing new spectral indices (simple ratio index, RVI; normalized difference vegetation index, NDVI; and simple difference vegetation index, DVI). We then established linear and BackPropagation (BP) neural network models to estimate chlorophyll-a content. The central bands for leaf chlorophyll-a content are concentrated in the visible range (410 - 680 nm) in combination with the shortwave infrared range (1900 - 2400 nm). The optimum spectral range for the spectral band combinations RVI, NDVI, and DVI are 440 and 470 nm, 440 and 470 nm, and 440 and 460 nm, respectively. The linear RVI, NDVI, and DVI models, SMLR model and the BP neural network model have respective R~2 values of 0.76, 0.77, 0.69, 0.78 and 0.86, and root mean square error values of 0.63, 1.60, 1.59, 2.04 and 0.05 mg chlorophyll-a/g (fresh weight), respectively. Our results identified chlorophyll-a sensitive spectral regions and new indices facilitate a rapid, non-destructive field estimation of leaf chlorophyll-a content for tobacco.
机译:烟草中叶面叶绿素含量的快速评估对于评估生长和精确管理来说至关重要,以提高质量和产量,同时最大限度地减少不良环境影响。我们的目标是制定一个预测烟叶叶绿素-A含量的精确农业实践。在不同光质下连续3年连续3年在烤烟上进行反射率实验。叶高光谱反射率和叶绿素 - 在移植后30天以15天的间隔收集含量数据,直至收获。我们鉴定了对烟草叶绿素-A含量敏感的中心带和用于建立新的光谱指标的最佳波长组合(简单比率指数,RVI;归一化差异植被指数,NDVI;和简单的差异植被指数,DVI)。然后,我们建立了线性和背部化(BP)神经网络模型来估计叶绿素 - 一种内容。叶片叶绿素-A含量的中心带集中在可见范围(410-680nm)中,结合短波红外范围(1900-2400nm)。光谱频带组合RVI,NDVI和DVI的最佳光谱范围是440和470nm,440和470nm,440和460nm。线性RVI,NDVI和DVI模型,SMLR模型和BP神经网络模型的相应R〜2值为0.76,0.77,0.69,0.78和0.86,均均线误差值为0.63,1.60,1.59,2.04和0.05mg叶绿素-A / g(鲜重)分别。我们的结果确定了叶绿素 - 敏感谱区域和新的指数,促进了烟草叶片的快速,无损田间估计 - 烟草含量。

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