Abstract

Withering is the first step in the processing of congou black tea. With respect to the deficiency of traditional water content detection methods, a machine vision based NDT (Non Destructive Testing) method was established to detect the moisture content of withered leaves. First, according to the time sequences using computer visual system collected visible light images of tea leaf surfaces, and color and texture characteristics are extracted through the spatial changes of colors. Then quantitative prediction models for moisture content detection of withered tea leaves was established through linear PLS (Partial Least Squares) and non-linear SVM (Support Vector Machine). The results showed correlation coefficients higher than 0.8 between the water contents and green component mean value (G), lightness component mean value (L*) and uniformity (U), which means that the extracted characteristics have great potential to predict the water contents. The performance parameters as correlation coefficient of prediction set (Rp), root-mean-square error of prediction (RMSEP), and relative standard deviation (RPD) of the SVM prediction model are 0.9314, 0.0411 and 1.8004, respectively. The non-linear modeling method can better describe the quantitative analytical relations between the image and water content. With superior generalization and robustness, the method would provide a new train of thought and theoretical basis for the online water content monitoring technology of automated production of black tea.

Highlights

  • Machine vision is an instrument detection method using computer, camera, and other related equipment to identify, track, and measure the target; it includes graphic processing[11]

  • Image acquisition system is applied in this research to obtain the visible light image of withering leaves, and to extract the texture and color features; linear method of PLS and BN and nonlinear method of BP-ANN, SVM and Random Forest (RF) are used for the establishment of moisture quantitative characterization model for withering tea leaves

  • Except blue component mean value (B) and hue mean value (H) variables, all the image indicators were significantly correlated with moisture content (p < 0.01)

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Summary

Nonlinear Method

Gaozhen Liang[2], Chunwang Dong[1], Bin Hu2, Hongkai Zhu[3], Haibo Yuan[1], Yongwen Jiang1 & Guoshuang Hao[4]. The machine vision system can be used to obtain the images of tea leaves, and to extract tea leaves’ color and texture features. The current researches are focusing on tea leaves’ surface color changes during withering, which ignore the external shape texture features caused by moisture loss. The aim of this research is to realize quick and nondestructive examination of moisture content during tea processing To achieve this goal, image acquisition system is applied in this research to obtain the visible light image of withering leaves, and to extract the texture and color features; linear method of PLS and BN and nonlinear method of BP-ANN, SVM and RF are used for the establishment of moisture quantitative characterization model for withering tea leaves. This research can provide theoretical support for the feedback control technology and the online moisture testing during the automated production of black tea

Results and Analysis
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