基于机器视觉的茶叶微波杀青中品质变化与预测研究

吴鑫, 宋飞虎, 裴永胜, 朱冠宇, 姜乐兵, 宁文楷, 李臻峰, 刘本英

茶叶科学 ›› 2021, Vol. 41 ›› Issue (6) : 854-864.

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茶叶科学 ›› 2021, Vol. 41 ›› Issue (6) : 854-864.
研究报告

基于机器视觉的茶叶微波杀青中品质变化与预测研究

  • 吴鑫1,3, 宋飞虎1, 裴永胜1, 朱冠宇1, 姜乐兵1, 宁文楷1,3, 李臻峰1,*, 刘本英2,*
作者信息 +

Study on the Tea Quality Changes and Predictions during the Microwave Fixation Process by Machine Vision

  • WU Xin1,3, SONG Feihu1, PEI Yongsheng1, ZHU Guanyu1, JIANG Lebing1, NING Wenkai1,3, LI Zhenfeng1,*, LIU Benying2,*
Author information +
文章历史 +

摘要

茶多酚、氨基酸、含水率是茶叶品质的重要指标,传统检测方法周期长且过程复杂。本研究利用机器视觉对微波杀青过程中茶叶的色泽和纹理特征实时监测,在线检测含水率,同时检测茶多酚和氨基酸含量。结果表明,色泽、纹理特征与含水率、茶多酚、氨基酸含量均呈规律性变化且显著相关。对色泽和纹理特征进行主成分分析,以前3个主成分为输入建立极限学习机(ELM)、遗传神经网络(GA-BP)、卷积神经网络(CNN)模型对品质成分含量进行预测。结果表明,ELM、GA-BP、CNN模型分别适用于含水率、茶多酚含量和氨基酸含量的预测,精度均在0.99以上。研究表明,通过实时监测茶叶的色泽和纹理特征来预测其在杀青过程中含水率、茶多酚和氨基酸含量是可行的。

Abstract

Tea polyphenol, amino acid and moisture contents are important indicators of tea quality. Traditional detection methods have long cycles and complex processes. In this paper, machine vision was used to monitor the color and texture of tea leaves in real time during the microwave fixation process. The moisture content was detected online and the tea polyphenol and amino acid contents were also measured. The results show that the color, texture features and moisture content, tea polyphenol, amino acid contents all showed regular changes during the fixation process and had significant correlations. The principal component analysis was used to analyze the color and texture features and the first 3 principal components were taken to establish extreme learning machine (ELM), genetic neural network (GA-BP), and convolutional neural network (CNN) models to predict the quality. The results show that ELM, GA-BP and CNN models were more suitable for the prediction of moisture, tea polyphenol and amino acid contents, respectively, and their accuracies were all above 0.99. The research results show that it is feasible to predict the moisture, tea polyphenol and amino acid contents during the fixation process by monitoring the color and texture features of tea in real time.

关键词

氨基酸 / 茶多酚 / 含水率 / 机器视觉 / 微波杀青 / 预测模型

Key words

amino acids / machine vision / microwave fixation / moisture content / prediction model / tea polyphenols

引用本文

导出引用
吴鑫, 宋飞虎, 裴永胜, 朱冠宇, 姜乐兵, 宁文楷, 李臻峰, 刘本英. 基于机器视觉的茶叶微波杀青中品质变化与预测研究[J]. 茶叶科学. 2021, 41(6): 854-864
WU Xin, SONG Feihu, PEI Yongsheng, ZHU Guanyu, JIANG Lebing, NING Wenkai, LI Zhenfeng, LIU Benying. Study on the Tea Quality Changes and Predictions during the Microwave Fixation Process by Machine Vision[J]. Journal of Tea Science. 2021, 41(6): 854-864
中图分类号: S571.1   

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基金

国家自然科学基金(51508229)、江苏省普通高校自然科学研究计划项目(KYCX19_1862)、云南省茶学重点实验室开放基金(2021YNCX004)

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