Foods (May 2024)

Online System for Monitoring the Degree of Fermentation of Oolong Tea Using Integrated Visible–Near-Infrared Spectroscopy and Image-Processing Technologies

  • Pengfei Zheng,
  • Selorm Yao-Say Solomon Adade,
  • Yanna Rong,
  • Songguang Zhao,
  • Zhang Han,
  • Yuting Gong,
  • Xuanyu Chen,
  • Jinghao Yu,
  • Chunchi Huang,
  • Hao Lin

DOI
https://doi.org/10.3390/foods13111708
Journal volume & issue
Vol. 13, no. 11
p. 1708

Abstract

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During the fermentation process of Oolong tea, significant changes occur in both its external characteristics and its internal components. This study aims to determine the fermentation degree of Oolong tea using visible–near–infrared spectroscopy (vis-VIS-NIR) and image processing. The preprocessed vis-VIS-NIR spectral data are fused with image features after sequential projection algorithm (SPA) feature selection. Subsequently, traditional machine learning and deep learning classification models are compared, with the support vector machine (SVM) and convolutional neural network (CNN) models yielding the highest prediction rates among traditional machine learning models and deep learning models with 97.14% and 95.15% in the prediction set, respectively. The results indicate that VIS-NIR combined with image processing possesses the capability for rapid non-destructive online determination of the fermentation degree of Oolong tea. Additionally, the predictive rate of traditional machine learning models exceeds that of deep learning models in this study. This study provides a theoretical basis for the fermentation of Oolong tea.

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