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Identification of Different Concentrations Pesticide Residues of Dimethoate on Spinach Leaves by Hyperspectral Image Technology

机译:高光谱成像技术鉴定菠菜叶中乐果中不同浓度的农药残留

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Taking spinach leaves with different concentrations of dimethoate as the research object, the feasibility of identifying spinach leaves containing different concentrations of dimethoate pesticide residues based on hyperspectral imaging and machine learning algorithms was discussed. The band range of hyperspectral images between 900 to 1700mm were scanned by hyperspectral imaging system. The region of interest (ROIs) of the leaves were selected by ENVI and corrected by multiple scatter correction (MSC). The principal component analysis (PCA) was used to analyze the spectral data, and the results showed that the PCA can effectively discriminate spinach samples with different concentrations at the visual level. In addition, the chi-square test feature selection algorithm was combined with support vectors classification (SVC), K nearest neighbor (KNN), random forest algorithm (RF), and linear discriminant analysis (LDA) respectively. The average and standard deviation of the prediction accuracy of the 10-fold cross-validation was chosen as evaluation methods. By comparison, chi-square test combined with LDA was the optimal model and the selected characteristic wavelengths were 1445.8, 1449, 1452.3, 1455.5, 1458.7, 1462, 1465.2 and 1468.4nm. The prediction accuracy and standard deviation of the model were 0.997, 0.008. The results showed that spinach leaves containing different concentrations of dimethoate pesticide residues could be accurately identified based on hyperspectral imaging.
机译:以不同乐果浓度的菠菜叶为研究对象,讨论了基于高光谱成像和机器学习算法鉴定含不同农药残留浓度的菠菜叶的可行性。通过高光谱成像系统扫描了900至1700mm之间的高光谱图像的波段范围。通过ENVI选择叶片的目标区域(ROI),并通过多重散射校正(MSC)进行校正。用主成分分析法(PCA)对光谱数据进行分析,结果表明,PCA可以在视觉上有效地区分不同浓度的菠菜样品。此外,卡方检验特征选择算法分别与支持向量分类(SVC),K最近邻(KNN),随机森林算法(RF)和线性判别分析(LDA)相结合。选择10倍交叉验证的预测准确性的平均和标准偏差作为评估方法。相比之下,卡方检验与LDA组合是最佳模型,所选特征波长为1445.8、1449、1452.3、1455.5、1458.7、1462、1465.2和1468.4nm。该模型的预测精度和标准偏差分别为0.997、0.008。结果表明,基于高光谱成像可以准确鉴定出含有不同浓度乐果农药残留的菠菜叶。

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