4.7 Article

Tea Category Identification Using Wavelet Signal Reconstruction of Hyperspectral Imagery and Machine Learning

Journal

AGRICULTURE-BASEL
Volume 12, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/agriculture12081085

Keywords

redundant discrete wavelet transform; tea; convolutional neural network; classification

Categories

Funding

  1. Major Science and Technology Projects in Anhui Province [202203a06020007]
  2. Opening Project of Key Laboratory of Power Electronics and Motion Control of Anhui Higher Education Institutions [PEMC2001]
  3. Open Fund of State Key Laboratory of Tea Plant Biology and Utilization [SKLTOF20200116]

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This research proposes a method for tea recognition based on a lightweight convolutional neural network and support vector machine, utilizing wavelet feature figures. The results demonstrate that this method outperforms other techniques, achieving an accuracy rate of 98.7%. This study has important practical significance for the grading and quality assessment of tea.
Accurately distinguishing the types of tea is of great significance to the pricing, production, and processing of tea. The similarity of the internal spectral characteristics and appearance characteristics of different types of tea greatly limits further research on tea identification. However, wavelet transform can simultaneously extract time domain and frequency domain features, which is a powerful tool in the field of image signal processing. To address this gap, a method for tea recognition based on a lightweight convolutional neural network and support vector machine (L-CNN-SVM) was proposed, aiming to realize tea recognition using wavelet feature figures generated by wavelet time-frequency signal decomposition and reconstruction. Firstly, the redundant discrete wavelet transform was used to decompose the wavelet components of the hyperspectral images of the three teas (black tea, green tea, and yellow tea), which were used to construct the datasets. Secondly, improve the lightweight CNN model to generate a tea recognition model. Finally, compare and evaluate the recognition results of different models. The results demonstrated that the results of tea recognition based on the L-CNN-SVM method outperformed MobileNet v2+RF, MobileNet v2+KNN, MobileNet v2+AdaBoost, AlexNet, and MobileNet v2. For the recognition results of the three teas using reconstruction of wavelet components LL + HL + LH, the overall accuracy rate reached 98.7%, which was 4.7%, 3.4%, 1.4%, and 2.0% higher than that of LH + HL + HH, LL + HH + HH, LL + LL + HH, and LL + LL + LL. This research can provide new inspiration and technical support for grade and quality assessment of cross-category tea.

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