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Variety Identification of Chinese Cabbage Seeds Using Visible and Near-Infrared Spectroscopy

机译:大白菜种子的可见和近红外光谱鉴定

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Visible and near-infrared reflectance spectroscopy was applied to identify varieties of Chinese cabbage seeds. Chemometrics was used to establish the identification models from a total of 120 samples, 20 samples from each of the six varieties. Soft independent modeling of a class analogy (SIMCA) models were established based on principal component analysis, and a good identification result of about 94% was achieved based on the calibration set of 40 samples. Partial least-squares discriminant analysis (PLS-DA) and least-squares support vector machine (LS-SVM) were used to further improve the correct answer rate. A correct answer rate higher than 97% was reached by LS-SVM based on the calibration set of 40 samples, better than that of PLS-DA (81%). The generalization ability of the LS-SVM model was evaluated based on calibration sets with different numbers of samples. A correct answer rate of 100% was obtained when the number of samples for the calibration was 80. Based on the resulting coefficients and loading weights from PLS-DA, sensitive wavelength regions were screened, and five sensitive wavelengths (412, 421, 469, 681, and 717 nm) were proposed. LS-SVM identification models using these five wavelengths obtained a 98% correct answer rate based on a calibration set of 40 samples. The result shows that visible and near-infrared reflectance spectroscopy is a fast and effective technique to identify the varieties of Chinese cabbage seeds.
机译:可见和近红外反射光谱法用于鉴定大白菜种子的品种。使用化学计量学从总共120个样品中建立了鉴定模型,六个品种中的每一个都有20个样品。在主成分分析的基础上建立了类比的软独立建模模型(SIMCA),基于40个样品的校正集,获得了约94%的良好识别结果。偏最小二乘判别分析(PLS-DA)和最小二乘支持向量机(LS-SVM)用于进一步提高正确答案率。基于40个样本的校准集,LS-SVM的正确答案率达到97%以上,优于PLS-DA的正确答案率(81%)。 LS-SVM模型的泛化能力是根据具有不同样本数量的校准集进行评估的。当校准样本数为80时,正确答案率为100%。根据从PLS-DA得到的系数和负载权重,筛选出敏感波长区域,并选择了五个敏感波长(412、421、469,提出了681和717 nm)。使用这五个波长的LS-SVM识别模型基于40个样本的校准集获得了98%的正确应答率。结果表明,可见光和近红外反射光谱法是一种快速有效的鉴定大白菜种子品种的技术。

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