Li Jinsong, Li Qijun, Luo Wei, Zeng Liang, Luo Liyong
Integrative Science Center of Germplasm Creation in Western China (CHONGQING) Science City, College of Food Science, Southwest University, Chongqing 400715, China.
Chongqing Key Laboratory of Speciality Food Co-Built by Sichuan and Chongqing, Southwest University, No. 2 Tiansheng Road, Beibei District, Chongqing 400715, China.
Foods. 2024 Aug 12;13(16):2516. doi: 10.3390/foods13162516.
Color characteristics are a crucial indicator of green tea quality, particularly in needle-shaped green tea, and are predominantly evaluated through subjective sensory analysis. Thus, the necessity arises for an objective, precise, and efficient assessment methodology. In this study, 885 images from 157 samples, obtained through computer vision technology, were used to predict sensory evaluation results based on the color features of the images. Three machine learning methods, Random Forest (RF), Support Vector Machine (SVM) and Decision Tree-based AdaBoost (DT-AdaBoost), were carried out to construct the color quality evaluation model. Notably, the DT-Adaboost model shows significant potential for application in evaluating tea quality, with a correct discrimination rate (CDR) of 98.50% and a relative percent deviation (RPD) of 14.827 in the 266 samples used to verify the accuracy of the model. This result indicates that the integration of computer vision with machine learning models presents an effective approach for assessing the color quality of needle-shaped green tea.
颜色特征是绿茶品质的关键指标,对于针形绿茶尤为如此,并且主要通过主观感官分析进行评估。因此,需要一种客观、精确且高效的评估方法。在本研究中,通过计算机视觉技术获取的来自157个样本的885张图像,被用于基于图像的颜色特征预测感官评价结果。采用了三种机器学习方法,即随机森林(RF)、支持向量机(SVM)和基于决策树的AdaBoost(DT-AdaBoost)来构建颜色品质评价模型。值得注意的是,在用于验证模型准确性的266个样本中,DT-Adaboost模型在评估茶叶品质方面显示出显著的应用潜力,正确判别率(CDR)为98.50%,相对偏差百分比(RPD)为14.827。这一结果表明,计算机视觉与机器学习模型的结合为评估针形绿茶的颜色品质提供了一种有效方法。