Abstract

This study investigated the feasibility of using hyperspectral imaging technique for nondestructive measurement of color components (ΔL*, Δa* and Δb*) and classify tea leaves during different drying periods. Hyperspectral images of tea leaves at five drying periods were acquired in the spectral region of 380–1030 nm. The three color features were measured by the colorimeter. Different preprocessing algorithms were applied to select the best one in accordance with the prediction results of partial least squares regression (PLSR) models. Competitive adaptive reweighted sampling (CARS) and successive projections algorithm (SPA) were used to identify the effective wavelengths, respectively. Different models (least squares-support vector machine [LS-SVM], PLSR, principal components regression [PCR] and multiple linear regression [MLR]) were established to predict the three color components, respectively. SPA-LS-SVM model performed excellently with the correlation coefficient (rp) of 0.929 for ΔL*, 0.849 for Δa*and 0.917 for Δb*, respectively. LS-SVM model was built for the classification of different tea leaves. The correct classification rates (CCRs) ranged from 89.29% to 100% in the calibration set and from 71.43% to 100% in the prediction set, respectively. The total classification results were 96.43% in the calibration set and 85.71% in the prediction set. The result showed that hyperspectral imaging technique could be used as an objective and nondestructive method to determine color features and classify tea leaves at different drying periods.

Highlights

  • Tea is welcome by many people because of its healthy function

  • A total of 210 tea leaves at five different drying periods were studied. They were divided into the calibration set and the prediction set at a ratio of 2:1

  • Though the Partial least squares (PLS) model based on MSC preprocessing method obtained the result with the highest values of rc (0.949) and rp (0.799) for Da*, the lowest value of root mean square error of calibration (RMSEC) (0.611) and the second lowest value of root mean square error of prediction (RMSEP) (1.276), it did not performed well due to the big gap between the values of rc and rp

Read more

Summary

Introduction

Tea is welcome by many people because of its healthy function. It can prevent cancer and cardiovascular disease and cure chronic gastritis [1], [2]. Tea processing procedure, which is composed of a series of physical and chemical reactions, can affect tea’s quality directly [3]. The change of color values (DL*, Da* and Db*) of tea leaves play significant roles in tea processing procedure. Studying color parameters of tea leaves during drying periods can improve tea’s quality. In accordance with the previous studies, hyperspectral imaging technique is very efficient for knowing the process when the samples changes with time [7], [8]

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call