Department of Biological Engineering, Jinan University, Huangpu Road West 601, Tianhe District, Guangzhou 510632, China.
Department of Optoelectronic Engineering, Jinan University, Huangpu Road West 601, Tianhe District, Guangzhou 510632, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2019 Aug 5;219:179-185. doi: 10.1016/j.saa.2019.03.105. Epub 2019 Mar 29.
The rapid and non-destructive discriminant analysis of rice seeds has great significance for large-scale agriculture. Using near-infrared (NIR) diffuse-reflectance spectroscopy with partial least squares-discriminant analysis (PLS-DA), a variety identification method of multi-grain rice seeds was developed. The equidistant combination method was adopted for large-range wavelength screening. A step-by-step phase-out method was proposed to eliminate interference wavelengths and improve the predicted effect. The optimal wavelength model was a combination of 54 wavelengths within 808-974 nm of the short-NIR region. One type of pure rice variety (Y Liangyou 900) was used for identification (negative). Positive samples included the other four pure varieties and contamination of Y Liangyou 900 by the above four varieties. The recognition-accuracy rates for positive, negative and total validation samples reached 93.1%, 95.1%, and 94.3%, respectively. In the long-NIR region, the local optimal wavelength model was a combination of 49 wavelengths within 1188-1650 nm, and the recognition-accuracy rates for positive, negative and total validation samples were 90.3%, 94.1%, and 92.5%, respectively. Results confirmed the feasibility of NIR spectroscopy for variety identification of multi-grain rice seeds. The proposed two discrete-wavelength models located in the short- and long-NIR regions can provide valuable reference to a dedicated spectrometer.
利用近红外漫反射光谱结合偏最小二乘判别分析(PLS-DA),建立了一种多品种稻谷种子的快速无损判别分析方法。采用等距组合法进行大范围波长筛选,提出逐步淘汰法消除干扰波长,提高预测效果。最佳波长模型是短近红外区 808-974nm 内 54 个波长的组合。一种纯稻种(Y Liangyou 900)用于识别(阴性)。正样本包括其他四个纯品种和 Y Liangyou 900 被上述四个品种污染的情况。正、负和总验证样本的识别准确率分别达到 93.1%、95.1%和 94.3%。在长近红外区,局部最佳波长模型是 1188-1650nm 内 49 个波长的组合,正、负和总验证样本的识别准确率分别达到 90.3%、94.1%和 92.5%。结果证实了近红外光谱法用于多品种稻谷种子品种鉴定的可行性。提出的位于短近红外区和长近红外区的两个离散波长模型可为专用光谱仪提供有价值的参考。