School of Automation, Hangzhou Dianzi University, Hangzhou 310018, China.
Alibaba-Zhejiang University Joint Institute of Frontier Technologies, Zhejiang University, Hangzhou 310027, China.
Sensors (Basel). 2019 Oct 28;19(21):4687. doi: 10.3390/s19214687.
A multi-channel light emitting diode (LED)-induced fluorescence system combined with a convolutional neural network (CNN) analytical method was proposed to classify the varieties of tea leaves. The fluorescence system was developed employing seven LEDs with spectra ranging from ultra-violet (UV) to blue as excitation light sources. The LEDs were lit up sequentially to induce a respective fluorescence spectrum, and their ability to excite fluorescence from components in tea leaves were investigated. All the spectral data were merged together to form a two-dimensional matrix and processed by a CNN model, which is famous for its strong ability in pattern recognition. Principal component analysis combined with k-nearest-neighbor classification was also employed as a baseline for comparison. Six grades of green tea, two types of black tea and one kind of white tea were verified. The result proved a significant improvement in accuracy and showed that the proposed system and methodology provides a fast, compact and robust approach for tea classification.
一种多通道发光二极管(LED)诱导荧光系统结合卷积神经网络(CNN)分析方法被提出用于茶叶品种的分类。荧光系统采用七种从紫外(UV)到蓝色的光谱范围的 LED 作为激发光源进行开发。LED 被顺序点亮以诱导各自的荧光光谱,并研究它们从茶叶成分中激发荧光的能力。所有的光谱数据被合并在一起形成一个二维矩阵,并由一个以其强大的模式识别能力而闻名的 CNN 模型进行处理。主成分分析结合 k-最近邻分类也被用作比较的基准。验证了六个等级的绿茶、两种红茶和一种白茶。结果证明了准确性的显著提高,表明所提出的系统和方法为茶叶分类提供了一种快速、紧凑和强大的方法。