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首页> 外文期刊>Journal of food process engineering >Classification of oolong tea varieties based on hyperspectral imaging technology and BOSS-LightGBM model
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Classification of oolong tea varieties based on hyperspectral imaging technology and BOSS-LightGBM model

机译:基于高光谱成像技术和BOSS-LightGBM模型的乌龙茶品种分类

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摘要

A fast and nondestructive detection method based on hyperspectral imaging technology (HSI) was investigated in this study to discriminate different oolong tea varieties. Five varieties of oolong tea were taken as the research object. Multiplicative scatter correction was used to reduce the influence of noise in the raw spectra. Then competitive adaptive reweighted sampling and bootstrapping soft shrinkage (BOSS) were applied, respectively, to select characteristic wavelengths. Extreme gradient boosting (XGBoost) and light gradient boosting machine (LightGBM) were individually utilized to establish classification models. Finally, the BOSS-LightGBM model for discriminating tea varieties achieved the best performance, with the accuracy of 100% in the training set and 97.33% in the prediction set. Therefore, it is feasible to use HSI technology coupled with the BOSS-LightGBM model for the classification of oolong tea varieties. Practical applications Tieguanyin tea is a high value commodity in the tea market. Replacing Tieguanyin tea with cheaper oolong tea varieties is a common way utilized by illegal traders to maximize profit. Traditional methods for identifying tea varieties are time-consuming and destructive, and are thus unable to meet the requirements of modern agriculture. In this study, hyperspectral imaging technology (HSI) was applied to realize the fast and nondestructive detection of tea varieties. The final results show that using HSI technology to discriminate different oolong tea varieties is feasible, and also provide a theoretical basis for the design of a portable tea variety detection device.
机译:本研究研究了一种基于高光谱成像技术(HSI)的快速无损检测方法,以区分不同的乌龙茶品种。以乌龙茶五个品种为研究对象。乘法散射校正用于减少原始光谱中噪声的影响。然后分别应用竞争性自适应加权加权采样和自举软收缩(BOSS)来选择特征波长。分别使用极限梯度增强(XGBoost)和光梯度增强机(LightGBM)建立分类模型。最后,用于区分茶品种的BOSS-LightGBM模型取得了最佳性能,训练集中的准确度为100%,预测集中的准确度为97.33%。因此,将HSI技术与BOSS-LightGBM模型结合使用来对乌龙茶品种进行分类是可行的。实际应用铁观音茶是茶市场上的高价值商品。用便宜的乌龙茶品种代替铁观音茶是非法交易者最大程度获利的常用方法。传统的茶种鉴定方法既费时又具有破坏性,因此无法满足现代农业的要求。在这项研究中,高光谱成像技术(HSI)被用于实现茶树品种的快速无损检测。最终结果表明,采用HSI技术区分不同的乌龙茶品种是可行的,也为便携式茶叶品种检测装置的设计提供了理论依据。

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