基于高光谱成像技术的蒙顶山茶品种鉴别方法研究

Yao Li, Zhiliang Kang
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引用次数: 1

摘要

针对传统茶叶分类方法耗时费力的缺点,本文以四川省雅安市蒙定山黄崖茶、竹叶青茶、甘露茶为对象,提出了一种结合光谱和图像特征的茶叶品种分类算法。首先利用“GaiaSorter”高光谱分选仪采集茶叶样品的高光谱图像。预处理后,根据光谱曲线提取红边位置、吸收面积、吸收深度等18个光谱特征参数,根据图像提取平均灰度、一致性、熵等28个图像特征。采用主成分分析法对融合特征进行降维处理,然后采用C-SVM算法对融合特征进行分类识别。实验结果表明,当选择输入主成分为3时,可以快速实现对3个茶叶品种的分类,识别准确率可达100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hyperspectral imaging technology based method for identifying the variety of mengding mountain tea
Aiming at disadvantages of labor and time consuming of traditional tea classification method, this paper proposes a tea variety classification algorithm that integrates spectral and image characteristics with Mengding Mountain Huangya tea, Zhuyeqing tea and Ganlu tea of Ya'an City, Sichuan Province as objects. It firstly collected the hyperspectral images of tea samples with “GaiaSorter” hyperspectral sorter. After performing relevant pretreatment, 18 spectral characteristic parameters including red-edge position, absorbing area and absorbing depth were extracted according to the spectral curves and 28 image characteristics including average gray scale, consistency and entropy were extracted according to the images. The confluent characteristics were carried out dimensionality reduction with PCA (principal component analysis) method before they are classified and identified with C-SVM algorithm. Experimental results showed that classification of three varieties of tea can be realized rapidly when the input principal component is selected as 3 and the accuracy rate of identification is up to 100%.
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