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Classification of Aflatoxin B1 Concentration of Single Maize Kernel Based on Near-Infrared Hyperspectral Imaging and Feature Selection

机译:基于近红外高光谱成像和特征选择的单玉米内核的Aflatoxin B1浓度的分类

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摘要

A rapid and nondestructive method is greatly important for the classification of aflatoxin B1 (AFB1) concentration of single maize kernel to satisfy the ever-growing needs of consumers for food safety. A novel method for classification of AFB1 concentration of single maize kernel was developed on the basis of the near-infrared (NIR) hyperspectral imaging (1100–2000 nm). Four groups of AFB1 samples with different concentrations (10, 20, 50, and 100 ppb) and one group of control samples were prepared, which were preprocessed with Savitzky–Golay (SG) smoothing and first derivative (FD) algorithms for their raw NIR spectra. A key wavelength selection method, combining the variance and order of average spectral intensity, was proposed on the basis of pretreated spectra. Moreover, principal component analysis (PCA) was conducted to reduce the dimensionality of hyperspectral data. Finally, a classification model for AFB1 concentrations was developed through linear discriminant analysis (LDA), combined with five key wavelengths and the first three PCs. The results show that the proposed method achieved an ideal performance for classifying AFB1 concentrations in a single maize kernel with overall accuracy, with an F1-score and Kappa values of 95.56%, 0.9554, and 0.9444, respectively, as well as the test accuracy yield of 88.67% for independent validation samples. The combinations of variance and order of average spectral intensity can be used for key wavelength selection which, combined with PCA, can achieve an ideal dimensionality reduction effect for model development. The findings of this study have positive significance for the classification of AFB1 concentration of maize kernels.
机译:一种快速和无损的方法对于单玉米核的Aflatoxin B1(AFB1)浓度的分类非常重要,以满足消费者的不断增长的食品安全需求。基于近红外线(NIR)高光谱成像(1100-2000nm),开发了一种新的单玉米内核的AFB1浓度的分类方法。制备具有不同浓度(10,20,50和100ppb)的四组AFB1样品和一组对照样品,其预处理为SAVITZKY-GOLAY(SG)平滑,第一个衍生(FD)算法为原始NIR光谱。基于预处理光谱提出了一种关键波长选择方法,组合平均光谱强度的方差和顺序。此外,进行了主成分分析(PCA)以降低高光谱数据的维度。最后,通过线性判别分析(LDA)开发了AFB1浓度的分类模型,与五个关键波长和前三个PC组合。结果表明,该方法达到了在单一玉米核中分类AFB1浓度的理想性能,整体准确性,分别为F1分和κ值95.56%,0.9554和0.9444,以及测试精度产量独立验证样本为88.67%。平均光谱强度的差异和顺序的组合可用于关键波长选择,其与PCA结合,可以实现模型开发的理想维度降低效果。该研究的结果对AFB1浓度的玉米粒浓度的分类具有积极意义。

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