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Optimal sample size for predicting viability of cabbage and radish seeds based on near infrared spectra of single seeds

机译:基于单个种子的近红外光谱预测白菜和萝卜种子活力的最佳样本量

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摘要

The effects of the number of seeds in a training sample set on the ability to predict the viability of cabbage or radish seeds are presented and discussed. The supervised classification method extended canonical variates analysis (ECVA) was used to develop a classification model. Calibration sub-sets of different sizes were chosen randomly with several iterations and using the spectral-based sample selection algorithms DUPLEX and CADEX. An independent test set was used to validate the developed classification models. The results showed that 200 seeds were optimal in a calibration set for both cabbage and radish data. The misclassification rates at optimal sample size were 8%, 6% and 7% for cabbage and 3%, 3% and 2% for radish respectively for random method (averaged for 10 iterations), DUPLEX and CADEX algorithms. This was similar to the misclassification rate of 6% and 2% for cabbage and radish obtained using all 600 seeds in the calibration set. Thus, the number of seeds in the calibration set can be reduced by up to 67% without significant loss of classification accuracy, which will effectively enhance the cost-effectiveness of NIR spectral analysis. Wavelength regions important for the discrimination between viable and non-viable seeds were identified using interval ECVA (iECVA) models, ECVA weight plots and the mean difference spectrum for viable and non-viable seeds.
机译:介绍并讨论了训练样本集中的种子数量对预测白菜或萝卜种子生存能力的影响。使用监督分类法扩展典范变量分析(ECVA)来建立分类模型。通过几次迭代并使用基于光谱的样本选择算法DUPLEX和CADEX随机选择不同大小的校准子集。使用独立的测试集来验证开发的分类模型。结果表明,对于白菜和萝卜数据,在校准集中最佳200粒种子。对于随机方法(平均10次迭代),DUPLEX和CADEX算法,在最佳样本量下,白菜的错误分类率为8%,白菜的错误分类率为3%,萝卜的错误分类率分别为3%,3%和2%。这与使用校准集中的所有600颗种子获得的白菜和萝卜的错误分类率分别为6%和2%。因此,可以将校准集中的种子数量减少多达67%,而不会显着降低分类精度,这将有效地提高NIR光谱分析的成本效益。使用间隔ECVA(iECVA)模型,ECVA权重图以及有活力和无活力种子的平均差异谱,确定了对于区分有活力和无活力种子而言重要的波长区域。

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