首页> 外文期刊>Journal of the Science of Food and Agriculture >Rapid prediction of chlorophylls and carotenoids content in tea leaves under different levels of nitrogen application based on hyperspectral imaging
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Rapid prediction of chlorophylls and carotenoids content in tea leaves under different levels of nitrogen application based on hyperspectral imaging

机译:基于高光谱成像的氮施氮量下茶叶中叶片叶绿素和类胡萝卜素含量的快速预测

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BACKGROUND Photosynthetic pigments perform critical physiological functions in tea plants. Their content is an essential indicator of photosynthetic efficiency and nutritional status. The present study aimed to predict chlorophyll a (Chl a), chlorophyll b (Chl b), total chlorophyll (total Chl), and carotenoid (Car) content in tea leaves under different levels of nitrogen treatment using hyperspectral imaging (HSI) in combination with variable selection algorithms. RESULTS A total of 150 samples were collected and scanned using the HSI system. The mean spectrum in the region of interest (ROI) was extracted, and the pigment content was measured by traditional chemical methods. Five and seven optimal wavelengths (OWs) were selected using the regression coefficients (RCs) of partial least squares regression (PLSR) and the second-derivative (2-Der), respectively. The optimal 2-Der-PLSR models for Chl a, Chl b, total Chl, and Car performed remarkably well based on seven OWs with correlation coefficients of prediction (R-P) of 0.9337, 0.9322, 0.9333 and 0.9036, root mean square errors in prediction (RMSEP) of 0.1100, 0.0511, 0.1620, and 0.0300 mg g(-1), respectively. CONCLUSION The results of this study revealed that HSI combined with variable selection method can be employed as a rapid and accurate method for predicting the content of pigments in tea plants. (c) 2018 Society of Chemical Industry
机译:背景光合作用颜料在茶叶植物中进行关键的生理功能。他们的内容是光合效率和营养状况的基本指标。本研究旨在在使用Hyperspectral成像(HSI)组合的不同水平下,在茶叶中预测叶绿素A(CHL A),叶绿素B(CHL B),总叶绿素(总CHL)和类胡萝卜素(汽车)含量具有可变选择算法。结果使用HSI系统收集并扫描总共150个样品。提取利息区域(ROI)的平均光谱,用传统化学方法测量颜料含量。使用部分最小二乘回归(PLSR)和第二衍生物(2-DER)的回归系数(RCS)选择五个和七个最佳波长(OWS)。用于CHL A,CHL B,总CHL和汽车的最佳2-DER-PLSR模型,基于七个OWS的预测系数(RP)为0.9337,0.9322,0.9333和0.9036,预测中的根均方误差是非常好的(RMSEP)分别为0.1100,0.0511,0.1620和0.0300mg(-1)。结论本研究的结果表明,HSI与可变选择方法结合,可以作为预测茶叶植物颜料含量的快速和准确的方法。 (c)2018化学工业协会

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