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首页> 外文期刊>RSC Advances >Application and interpretation of deep learning methods for the geographical origin identification of Radix Glycyrrhizae using hyperspectral imaging
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Application and interpretation of deep learning methods for the geographical origin identification of Radix Glycyrrhizae using hyperspectral imaging

机译:利用高光谱成像的地理原产地鉴定深层学习方法的应用与解释

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Radix Glycyrrhizae is used as a functional food and traditional medicine. The geographical origin of Radix Glycyrrhizae is a determinant factor influencing the chemical and physical properties as well as its medicinal and health effects. The visible/near-infrared (Vis/NIR) (376–1044 nm) and near-infrared (NIR) hyperspectral imaging (915–1699 nm) were used to identify the geographical origin of Radix Glycyrrhizae . Convolutional neural network (CNN) and recurrent neural network (RNN) models in deep learning methods were built using extracted spectra, with logistic regression (LR) and support vector machine (SVM) models as comparisons. For both spectral ranges, the deep learning methods, LR and SVM all exhibited good results. The classification accuracy was over 90% for the calibration, validation, and prediction sets by the LR, CNN, and RNN models. Slight differences in classification performances existed between the two spectral ranges. Further, interpretation of the CNN model was conducted to identify the important wavelengths, and the wavelengths with high contribution rates that affected the discriminant analysis were consistent with the spectral differences. Thus, the overall results illustrate that hyperspectral imaging with deep learning methods can be used to identify the geographical origin of Radix Glycyrrhizae , which provides a new basis for related research.
机译:Glycyrrhizae被用作功能性食品和传统医学。甘草甘草的地理来源是影响化学和物理性质以及其药用和健康效果的决定因素。可见/近红外(VI / NIR)(376-1044nm)和近红外(NIR)高光谱成像(915-1699nm)用于鉴定甘草糖尿病的地理来源。深度学习方法中的卷积神经网络(CNN)和经常性神经网络(RNN)模型是使用提取的光谱构建的,具有逻辑回归(LR)并支持向量机(SVM)模型作为比较。对于光谱范围,深度学习方法,LR和SVM都表现出良好的效果。 LR,CNN和RNN模型的校准,验证和预测集,分类准确度超过90%。在两个光谱范围之间存在分类性能的细微差异。此外,进行了对CNN模型的解释以识别重要的波长,并且影响判别分析的高贡献率的波长与光谱差异一致。因此,总体结果说明了具有深度学习方法的高光谱成像可用于识别甘草糖果的地理来源,为相关研究提供了新的基础。

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