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Estimating Catechin Concentration of New Shoots in the Green Tea Field Using Groud-based Hyperspectral Image

机译:使用基于团簇的高光谱图像估算绿茶田中新芽的儿茶素浓度

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Hyperspectral camera was applied to establish the models of catechin concentration for green tea. The possibility of improvement for the models was checked by the multi-year models and the mutual prediction. ECg, EGCg and the ester catechin (ECg & EGCg) decreased with the growth but EC, EGC and the free catechin (EC & EGC) were changed by the covering. In partial least square regression (PLSR) models for each catechin, R~2 (Relative Error for validation) was more than 0.785 (13.4%) for a single year data, 0.723 (13.3%) for two years data, and 0.756 (13.6%) for three years data except several catechins. It was possible to improve the precision and accuracy of models using the combination of catechin (free and ester type) or the combination of multi-year data. When each and each type of catechin model was predicted by the other year data, the accuracy of two years model improved comparing with it of a single year data. It means that the multi-year models might be more accurate than a single year models to predict the unknown data.
机译:应用高光谱相机建立了绿茶中儿茶素浓度的模型。通过多年模型和相互预测,检验了模型改进的可能性。 ECg,EGCg和酯儿茶素(ECg和EGCg)随着生长而降低,但EC,EGC和游离儿茶素(EC&EGC)被覆盖物改变。在每个儿茶素的偏最小二乘回归(PLSR)模型中,一年数据的R〜2(相对误差验证)大于0.785(13.4%),两年数据的R〜2大于0.723(13.3%),而数据为0.756(13.6) %)的三年数据,除了几种儿茶素。结合儿茶素(游离型和酯型)或多年数据,可以提高模型的精度和准确性。当用另一年的数据预测每种儿茶素模型的类型时,两年模型的准确性与一年数据相比有所提高。这意味着多年模型可能比一年模型更准确地预测未知数据。

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