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基于机器视觉和工艺参数的针芽形绿茶外形品质评价

董春旺 朱宏凯 周小芬 袁海波 赵杰文 陈全胜

农业机械学报2017,Vol.48Issue(9):38-45,8.
农业机械学报2017,Vol.48Issue(9):38-45,8.DOI:10.6041/j.issn.1000-1298.2017.09.005

基于机器视觉和工艺参数的针芽形绿茶外形品质评价

Quality Evaluation for Appearance of Needle Green Tea Based on Machine Vision and Process Parameters

董春旺 1朱宏凯 2周小芬 2袁海波 3赵杰文 2陈全胜4

作者信息

  • 1. 江苏大学食品科学与食品工程学院,镇江212013
  • 2. 中国农业科学院茶叶研究所,杭州310008
  • 3. 哥本哈根大学食品科学系,菲特烈堡999017
  • 4. 武义县农业局,武义321200
  • 折叠

摘要

Abstract

Green tea has the largest consumption in China,and needle-shaped green tea is a typical type of green tea.The appearance of green tea is the key sensory evaluation index of green tea.However,it is hard to realize an accurate,objective and quantitative evaluation of green tea through manual evaluation on the characteristics as the color,stripe,tenderness and uniformity,etc.Based on internal and external factors such as quality forming process and visual morphology of tea,an intelligent sensory evaluation method of the appearance quality of tea was established.Firstly,collecting the process parameters of tea products and image characteristics of made tea,totally 17 process parameters,nine color features and six texture features were selected,conducting correlation analysis with expert sensory evaluation,and screening out remarkably correlated characteristic variables.In order to obtain an efficient evaluation model,based on process parameters and image characteristic parameters respectively,multiple quantitative evaluation models were established for needle-shaped green tea appearance senses by using three multivariate correction methods such as partial least squares (PLS),extreme learning machine (ELM) and strong predictor integration algorithm (ELM-AdaBoost).The comparison of the results showed that the ELM-AdaBoost model based on image characteristics had the best performance (RPD was more than 2).Its predictive performance was superior to other models,with smaller RMSEP (0.874),Bias (-0.148),SEP (0.226),and Cv(0.018) values of the prediction set,respectively.Meanwhile,non-linear model had better predictive performance than linear model,which can better represent the analytic relationship between process parameters,image information and sensory scores,and modeling faster (0.014 ~ 0.281 s).AdaBoost method,which was a hybrid integrated algorithm,can further promote the accuracy and generalization capability of the model.The above conclusions indicated that it was feasible to evaluate the quality of appearance of needle green tea based on machine vision and process.This study provided an effective technical method and idea for developing tea sensory quality evaluation methods,and laid theoretical basis and data supports on the development of expert process strategy supporting systems of tea quality,which had a broad industry prospect in tea processing,trading and refined blend technology.

关键词

针芽形绿茶/机器视觉/外形/感官品质/智能算法/非线性

Key words

needle green tea/machine vision/appearance/sensory quality/intelligent algorithm/non-linearity

分类

轻工纺织

引用本文复制引用

董春旺,朱宏凯,周小芬,袁海波,赵杰文,陈全胜..基于机器视觉和工艺参数的针芽形绿茶外形品质评价[J].农业机械学报,2017,48(9):38-45,8.

基金项目

国家自然科学基金项目(31271875)、浙江省自然科学基金项目(Y16C160009)和中央级公益性科研院所基本科研业务费专项(1610212016018) (31271875)

农业机械学报

OA北大核心CSCDCSTPCD

1000-1298

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