State Key Laboratory of Tea Plant Biology and Utilization, Anhui Agricultural University, China.
State Key Laboratory of Tea Plant Biology and Utilization, Anhui Agricultural University, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2022 Apr 15;271:120959. doi: 10.1016/j.saa.2022.120959. Epub 2022 Jan 29.
Withering is one of the most critical steps in the processing of black tea. The degree of withering affects the aroma quality of the finished tea. In this study, we used a pH indicator-based colorimetric sensor array in combination with hyperspectral imaging to intelligently evaluate the withering degree. After analyzing the difference between images taken before and after the reaction of pH indicators with withered leaves, six pH indicators were selected to build a sensor array. Then, the hyperspectral image of each pH indicator was obtained at wavelengths between 400 and 1000 nm. Nonlinear support vector machine (SVM) and least-squares (LS) SVM models were established to determine the degree of withering. Results revealed that the spectral information from single pH indicator failed to accurately evaluate the withering degree. The LS-SVM model achieved satisfactory discriminant results with the low-level data fusion of six pH indicators followed by principal component analysis for dimensionality reduction. The optimal model yielded accuracies of 93.75% and 90.00% for the calibration and prediction sets, respectively. The results indicated that colorimetric sensor array in combination with hyperspectral imaging can effectively determine the withering degree, thus providing a novel method for the intelligent processing of food and tea.
萎凋是红茶加工过程中最关键的步骤之一。萎凋程度会影响成茶的香气品质。本研究采用基于 pH 指示剂的比色传感器阵列结合高光谱成像技术对萎凋程度进行智能评估。在分析 pH 指示剂与萎凋叶片反应前后图像之间的差异后,选择了六种 pH 指示剂来构建传感器阵列。然后,在 400 至 1000nm 波长范围内获得每个 pH 指示剂的高光谱图像。建立了非线性支持向量机 (SVM) 和最小二乘 (LS) SVM 模型来确定萎凋程度。结果表明,单个 pH 指示剂的光谱信息无法准确评估萎凋程度。LS-SVM 模型通过对六个 pH 指示剂的低水平数据融合以及主成分分析进行降维处理,实现了令人满意的判别结果。最佳模型对校准集和预测集的准确率分别为 93.75%和 90.00%。结果表明,比色传感器阵列结合高光谱成像技术可有效确定萎凋程度,从而为食品和茶叶的智能加工提供了一种新方法。