Tea Research Institute Chinese Academy of Agricultural Sciences, Key Laboratory of Tea Biology and Resources Utilization, Ministry of Agriculture, Hangzhou, 310008, China.
College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, 832003, China.
Sci Rep. 2018 Jul 12;8(1):10535. doi: 10.1038/s41598-018-28767-2.
Fermentation is the key process to produce the special color of congou black tea. The machine vision technology is applied to detect the color space changes of black tea's color in RGB, Lab and HSV, and to find out its relevance to black tea's fermentation quality. And then the color feature parameter is used as input to establish physicochemical indexes (TFs, TRs, and TBs) and sensory features' linear and non-linear quantitative evaluation model. Results reveal that color features are significantly correlated to quality indices. Compared with the other two color models (RGB and HSV), CIE Lab model can better reflect the dynamic variation features of quality indices and foliage color information of black tea. The predictability of non-linear models (RF and SVM) is superior to PLS linear model, while RF model presents a slight advantage over the classic SVM model since RF model can better represent the quantitative analytical relationship between image information and quality indices. This research has proved that computer image color features and non-linear method can be used to quantitatively evaluate the changes of quality indices (e.g. sensory quality) and the pigment during black tea's fermentation. Besides, the test is simple, fast, and nondestructive.
发酵是形成工夫红茶特有颜色的关键工序。采用机器视觉技术检测红茶在 RGB、Lab 和 HSV 颜色空间的颜色变化,找出其与红茶发酵品质的相关性。然后将颜色特征参数作为输入,建立理化指标(TFs、TRs 和 TBs)和感官特征的线性和非线性定量评价模型。结果表明,颜色特征与品质指标显著相关。与其他两种颜色模型(RGB 和 HSV)相比,CIE Lab 模型能更好地反映品质指标和红茶叶色的动态变化特征。非线性模型(RF 和 SVM)的预测能力优于 PLS 线性模型,而 RF 模型相对于经典的 SVM 模型略有优势,因为 RF 模型可以更好地表示图像信息与品质指标之间的定量分析关系。本研究证明,计算机图像颜色特征和非线性方法可用于定量评估红茶发酵过程中品质指标(如感官品质)和色素的变化。此外,该测试简单、快速、无损。