Chen Shuya, Dai Fushuang, Guo Mengqi, Dong Chunwang
Tea Research Institute, Shandong Academy of Agricultural Sciences, Jinan 250033, China.
Shandong Guohe Industrial Technology Institute Co., Ltd., Jinan 250014, China.
Foods. 2025 Aug 22;14(17):2938. doi: 10.3390/foods14172938.
Focusing on the characteristic tea resource Zijuan tea, this study addresses the difficulty of grading on production lines and the complexity of quality evaluation. On the basis of the fusion of near-infrared (NIR) spectroscopy and visual features, a novel method is proposed for classifying different tenderness levels and quantitatively assessing key anthocyanin components in Zijuan tea fresh leaves. First, NIR spectra and visual feature data were collected, and anthocyanin components were quantitatively analyzed using UHPLC-Q-Exactive/MS. Then, four preprocessing techniques and three wavelength selection methods were applied to both individual and fused datasets. Tenderness classification models were developed using Particle Swarm Optimization-Support Vector Machine (PSO-SVM), Random Forest (RF), and Convolutional Neural Networks (CNNs). Additionally, prediction models for key anthocyanin content were established using linear Partial Least Squares Regression (PLSR), nonlinear Support Vector Regression (SVR) and RF. The results revealed significant differences in NIR spectral characteristics across different tenderness levels. Model combinations such as TEX + Medfilt + RF and NIR + Medfilt + CNN achieved 100% accuracy in both training and testing sets, demonstrating robust classification performance. The optimal models for predicting key anthocyanin contents also exhibited excellent predictive accuracy, enabling the rapid and nondestructive detection of six major anthocyanin components. This study provides a reliable and efficient method for intelligent tenderness classification and the rapid, nondestructive detection of key anthocyanin compounds in Zijuan tea, holding promising potential for quality control and raw material grading in the specialty tea industry.
本研究聚焦于特色茶叶资源紫娟茶,解决了生产线上分级困难以及质量评估复杂的问题。在近红外(NIR)光谱与视觉特征融合的基础上,提出了一种用于对紫娟茶鲜叶不同嫩度水平进行分类并定量评估关键花青素成分的新方法。首先,收集了近红外光谱和视觉特征数据,并使用超高效液相色谱-四极杆-静电场轨道阱高分辨质谱联用仪(UHPLC-Q-Exactive/MS)对花青素成分进行定量分析。然后,将四种预处理技术和三种波长选择方法应用于单个数据集和融合数据集。使用粒子群优化支持向量机(PSO-SVM)、随机森林(RF)和卷积神经网络(CNN)建立嫩度分类模型。此外,使用线性偏最小二乘回归(PLSR)、非线性支持向量回归(SVR)和RF建立关键花青素含量的预测模型。结果表明,不同嫩度水平的近红外光谱特征存在显著差异。TEX + 中值滤波 + RF和NIR + 中值滤波 + CNN等模型组合在训练集和测试集上的准确率均达到100%,展现出强大的分类性能。预测关键花青素含量的最优模型也表现出优异的预测准确性,能够快速无损检测六种主要花青素成分。本研究为紫娟茶的智能嫩度分类以及关键花青素化合物的快速无损检测提供了一种可靠且高效的方法,在特种茶行业的质量控制和原料分级方面具有广阔的应用前景。