Real-Time Discrimination and Quality Evaluation of Black Tea Fermentation Quality Using a Homemade Simple Machine Vision System

IF 3.3 3区 农林科学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Chongshan Yang, Ting An, Dandan Qi, Changbo Yuan, Chunwang Dong
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Abstract

Fermentation is a key link in determining the quality and flavor formation of black tea. However, during the actual production, the judgment of black tea fermentation quality mainly relies on the sensory evaluation of the tea maker, which is more subjective and prone to cause inconsistency in tea quality. Traditional testing methods, such as physical and chemical analyses, are time-consuming, laborious, and costly and are unable to meet the needs of the actual production. In this study, a self-developed machine vision system was used to quickly and accurately identify the degree of black tea fermentation by acquiring color and texture information on the surface of fermented leaves. To accurately control the quality of black tea fermentation and to understand the dynamic changes in key endoplasmic components in the fermented leaves, a quantitative prediction model of the key endoplasmic components in the fermentation process of black tea was constructed. The experiments proved that the system achieved 100% accuracy in discriminating the degree of fermentation of black tea, and the prediction accuracy of catechin components and thearubigin content reached more than 0.895. This system overcomes the defects of accurate measurement of multiple sensors coupled together, reduces the detection cost, and optimizes the experimental process. It can meet the needs of online monitoring in actual production.
国产简易机器视觉系统对红茶发酵质量的实时判别与质量评价
发酵是决定红茶品质和风味形成的关键环节。但在实际生产中,对红茶发酵品质的判断主要依靠制茶者的感官评价,比较主观,容易造成茶叶品质的不一致。传统的检测方法,如物理和化学分析,耗时,费力,成本高,不能满足实际生产的需要。本研究利用自主开发的机器视觉系统,通过获取发酵茶叶表面的颜色和纹理信息,快速准确地识别红茶发酵程度。为准确控制红茶发酵质量,了解发酵叶片中关键内质成分的动态变化,构建了红茶发酵过程中关键内质成分的定量预测模型。实验证明,该系统对红茶发酵程度的判别准确率达到100%,对儿茶素成分和茶红素含量的预测准确率达到0.895以上。该系统克服了多个传感器耦合在一起精确测量的缺陷,降低了检测成本,优化了实验过程。可以满足实际生产中在线监控的需要。
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来源期刊
Fermentation-Basel
Fermentation-Basel BIOTECHNOLOGY & APPLIED MICROBIOLOGY-
CiteScore
3.80
自引率
18.90%
发文量
594
审稿时长
7 weeks
期刊介绍: Fermentation-Basel is an international open access journal published by MDPI, focusing on fermentation-related research, including new and emerging products, processes and technologies, such as biopharmaceuticals and biotech drugs. The journal enjoys a good reputation in the academic community and provides a high-impact forum for researchers in the field of bioengineering and applied microbiology.
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