School of Electrical and Information Engineering of Jiangsu Univ., Zhenjiang, 212013, China.
J Food Sci. 2019 Aug;84(8):2234-2241. doi: 10.1111/1750-3841.14706. Epub 2019 Jul 17.
In order to rapidly and nondestructively identify tea grades, fluorescence hyperspectral imaging (FHSI) technology was proposed in this paper. A total of 309 Tieguanyin tea samples with three different grades were collected and the fluorescence hyperspectral data was acquired by hyperspectrometer (400 to 1000 nm). The characteristic wavelengths were respectively selected by Bootstrapping Soft Shrinkage (BOSS), Variable Iterative Space Shrinkage Approach (VISSA) and Model Adaptive Space Shrinkage (MASS) algorithms. Then, Support Vector Machine (SVM) was applied to establishing the relationship between the characteristic peaks, the full spectra, three characteristic spectra and the labels of tea grades. The results showed that VISSA-SVM model had the best classification performance, but the model precision can still be improved. Thus, Artificial Bee Colony (ABC) algorithm was introduced to optimize the parameters of SVM model. The accuracy and Kappa coefficient of test set of VISSA-ABC-SVM model were improved to 97.436% and 0.962, respectively. Therefore, the combination of fluorescence hyperspectra with VISSA-ABC-SVM model can accurately identify the grade of Tieguanyin tea. PRACTICAL APPLICATION: The rapid and accurate nondestructive tea grade identification method contributes to the construction of the tea online grade detection system. FHSI technology can solve the shortcomings of the reported methods and improved the identification accuracy of tea grades. It can be applied to the rapid detection of tea quality by tea companies, tea market, tea farmers and other demanders.
为了快速无损地鉴别茶叶等级,本文提出了荧光高光谱成像(FHSI)技术。共采集了 309 个不同等级的铁观音茶样本,使用高光谱仪(400 至 1000nm)获取荧光高光谱数据。分别采用 Bootstrapping Soft Shrinkage(BOSS)、Variable Iterative Space Shrinkage Approach(VISSA)和 Model Adaptive Space Shrinkage(MASS)算法选择特征波长。然后,应用支持向量机(SVM)建立特征峰、全谱、三个特征谱与茶叶等级标签之间的关系。结果表明,VISSA-SVM 模型的分类性能最好,但模型精度仍有待提高。因此,引入了人工蜂群(ABC)算法来优化 SVM 模型的参数。VISSA-ABC-SVM 模型的测试集准确率和 Kappa 系数分别提高到 97.436%和 0.962。因此,荧光高光谱与 VISSA-ABC-SVM 模型的结合可以准确识别铁观音茶的等级。实际应用:快速准确的无损茶叶等级识别方法有助于建立茶叶在线等级检测系统。FHSI 技术可以解决已有方法的缺点,提高茶叶等级的识别精度。它可以应用于茶企、茶叶市场、茶农等需求者对茶叶质量的快速检测。