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Classification of rapeseed colors using Fourier transform mid-infrared photoacoustic spectroscopy

机译:使用傅里叶变换中红外光声光谱技术对油菜色进行分类

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Fourier transform mid-infrared photoacoustic spectroscopy (FTIR-PAS) combined with multivariate discriminant analysis was employed to classify colors of rapeseeds. A total of 129 rapeseed varieties representing three colors (black, reddish and mottled-yellow) were scanned in the range of 500-4000 cm~(-1). A Savitzky-Golay algorithm was used for the spectral pretreatment. Principal components analysis (PCA) gave an overview of sample distribution in the score space of principal components. The whole sample set was divided into calibration and prediction sets, according to the Kennard-Stone algorithm. Classification models were developed using linear discriminant analysis combined with principal components analysis (PCA-LDA), partial least square discriminant analysis (PLS-DA), and support vector machine (SVM). Results showed that the best accuracy was achieved by the SVM model, with the overall error rates (ERs) of 1.1% and 2.5%, in calibration and prediction sets, respectively. Besides, the PLS-DA model performed slightly better than the PCA-LDA model. This work had demonstrated the good potential of FTIR-PAS to classify rapeseed colors.
机译:傅里叶变换中红外光声光谱技术(FTIR-PAS)与多元判别分析相结合,用于对油菜籽颜色进行分类。在500-4000 cm〜(-1)范围内,共扫描了129种代表三种颜色(黑色,微红色和杂色黄色)的油菜品种。 Savitzky-Golay算法用于光谱预处理。主成分分析(PCA)概述了主成分得分空间中的样本分布。根据Kennard-Stone算法,将整个样本集分为校准集和预测集。使用线性判别分析结合主成分分析(PCA-LDA),偏最小二乘判别分析(PLS-DA)和支持向量机(SVM)来开发分类模型。结果表明,通过SVM模型可获得最佳的准确性,在校准和预测集中的总错误率(ER)分别为1.1%和2.5%。此外,PLS-DA模型的性能略优于PCA-LDA模型。这项工作证明了FTIR-PAS对油菜籽颜色进行分类的良好潜力。

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