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Application of hyperspectral imaging and chemometrics for variety classification of maize seeds

机译:高光谱成像和化学计量学在玉米种子品种分类中的应用

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Seed variety classification is important for assessing variety purity and increasing crop yield. A hyperspectral imaging system covering the spectral range of 874–1734 nm was applied for variety classification of maize seeds. A total of 12?900 maize seeds including 3 different varieties were evaluated. Spectral data of 975.01–1645.82 nm were extracted and preprocessed. Discriminant models were developed using a radial basis function neural network (RBFNN). The influence of calibration sample size on classification accuracy was studied. Results showed that with the expansion of calibration sample size, calibration accuracy varied slightly, but prediction accuracy changed from the increasing form to the stable form. Accordingly, the optimal size of the calibration set was determined. Optimal wavelength selection was conducted by loading of principal components (PCs). The RBFNN model developed on optimal wavelengths with the optimal size of the calibration set obtained satisfactory results, with calibration accuracy of 93.85% and prediction accuracy of 91.00%. Visualization of classification map of seed varieties was achieved by applying this RBFNN model on the average spectra of each sample. Besides, the procedure to determine the optimal sample quantity proposed in this study was verified by support vector machine (SVM). The overall results indicated that hyperspectral imaging was a potential technique for variety classification of maize seeds, and would help to develop a real-time detection system for maize seeds as well as other crop seeds.
机译:种子品种分类对于评估品种纯度和增加农作物产量很重要。将覆盖874-1734 nm光谱范围的高光谱成像系统用于玉米种子的品种分类。总共评估了12到900个玉米种子,包括3个不同的品种。提取并预处理了975.01–1645.82 nm的光谱数据。判别模型是使用径向基函数神经网络(RBFNN)开发的。研究了校准样本量对分类准确性的影响。结果表明,随着标定样本量的增加,标定精度略有变化,但预测精度由增加的形式变为稳定的形式。因此,确定了校准组的最佳尺寸。通过加载主成分(PC)进行最佳波长选择。在具有最佳校准集尺寸的最佳波长上开发的RBFNN模型获得令人满意的结果,校准准确度为93.85%,预测准确度为91.00%。通过将此RBFNN模型应用于每个样品的平均光谱,可以实现种子品种分类图的可视化。此外,通过支持向量机(SVM)验证了本研究中确定最佳样本量的程序。总体结果表明,高光谱成像是一种用于玉米种子品种分类的潜在技术,并且将有助于开发一种用于玉米种子以及其他农作物种子的实时检测系统。

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