Estimating the catechin concentrations of new shoots in green tea fields using ground-based hyperspectral imagery

Food Chem. 2022 Feb 15:370:130987. doi: 10.1016/j.foodchem.2021.130987. Epub 2021 Aug 31.

Abstract

Hyperspectral imagery was applied to estimating non-galloyl (EC, EGC) and galloyl (ECG, EGCG) types of catechins in new shoots of green tea. Partial least squares regression models were developed to consider the effects of commercial fertilizer (CF) and organic fertilizer (OF). The models could explain each type of catechin with a precision of more than 0.79, with a few exceptions. When the CF model was applied to the OF hyperspectral reflectance and the OF model was applied to the CF hyperspectral reflectance for mutual prediction, the prediction accuracy was better with the OF models than CF models. The prediction models using both CF and OF data (hyperspectral reflectances, and concentrations of catechins) had a precision of more than 0.76 except for the non-galloyl-type catechins as a group and EGC alone. These results provide useful data for maintaining and improving the quality of green tea.

Keywords: Catechin; Epicatechin (PubChem CID 72276); Epicatechin gallate (PubChem CID 107905); Epigallocatechin (PubChem CID 72277); Epigallocatechin gallate (PubChem CID 65064); Fertilizer; Green tea; Hyperspectral imagery; Partial least squares regression.

MeSH terms

  • Catechin* / analysis
  • Tea*

Substances

  • Tea
  • Catechin