| Literature DB >> 31661932 |
Hongze Lin1, Zejian Li2,3, Huajin Lu4, Shujuan Sun5, Fengnong Chen6, Kaihua Wei7, Dazhou Ming8.
Abstract
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.Entities:
Keywords: EEM; LED; classification; convolutional neural network; fluorescence; tea; variety
Year: 2019 PMID: 31661932 DOI: 10.3390/s19214687
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576