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Potential of Hyperspectral Remote Sensing on Estimating Foliar Chemistry and Predicting the Quality of Tea (Camellia Sinensis)

机译:高光谱遥感在估计叶片化学和预测茶叶质量方面的潜力

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In this study, we monitored the quality of fresh tea leaves as raw materials of tea products by hyperspectral technology, as a way to explore the potential of hyperspectral remote sensing to detect the taste-related chemical components with low concentration in living plants. At leaf scale, empirical models have been established to find the relationships between quality-related chemicals in fresh tea leaves and foliar spectral data. Tea polyphenols (TP) and amino acid (AA) and water-soluble protein (SP) are three target chemicals in this paper. Near infrared spectroscopy (NIRS) was also been applied to estimate these chemicals for dried and ground leaves in laboratory. They are compared in terms of retrieval precision. Two main methodologies have been employed for modelling: (a) two bands normalized ratio index (NRI), (b) partial least squares (PLS) regression. The PLS method was performed using the original and transformed spectra: mean centred spectra, standard first derivative and standard normal variate (SNV) transformed spectra. The results demonstrated that the biochemical parameters related to the quality of tea can be estimated with satisfactory accuracy both at dried powder and fresh leaf scales.
机译:在这项研究中,我们通过高光谱技术监测了作为茶产品原料的新鲜茶叶的质量,以此来探索高光谱遥感技术在活植物中检测低浓度味觉相关化学成分的潜力。在叶尺度上,建立了经验模型以发现新鲜茶叶中与质量相关的化学物质与叶光谱数据之间的关系。茶多酚(TP),氨基酸(AA)和水溶性蛋白质(SP)是本文的三种目标化学品。近红外光谱(NIRS)也被用于评估实验室中干燥和磨碎叶片的这些化学物质。根据检索精度对它们进行比较。两种主要的建模方法已用于建模:(a)两个频带归一化比率指数(NRI),(b)偏最小二乘(PLS)回归。使用原始光谱和变换光谱执行PLS方法:平均居中光谱,标准一阶导数和标准正态变量(SNV)变换光谱。结果表明,无论是干粉还是鲜叶鳞片,与茶品质有关的生化参数都可以以令人满意的精度进行估算。

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