Xu Hui-rong, Yu Peng, Fu Xia-ping, Ying Yi-Bin
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310029, China.
J Zhejiang Univ Sci B. 2009 Feb;10(2):126-32. doi: 10.1631/jzus.B0820200.
The use of visible-near infrared (NIR) spectroscopy was explored as a tool to discriminate two new tomato plant varieties in China (Zheza205 and Zheza207). In this study, 82 top-canopy leaves of Zheza205 and 86 top-canopy leaves of Zheza207 were measured in visible-NIR reflectance mode. Discriminant models were developed using principal component analysis (PCA), discriminant analysis (DA), and discriminant partial least squares (DPLS) regression methods. After outliers detection, the samples were randomly split into two sets, one used as a calibration set (n=82) and the remaining samples as a validation set (n=82). When predicting the variety of the samples in validation set, the classification correctness of the DPLS model after optimizing spectral pretreatment was up to 93%. The DPLS model with raw spectra after multiplicative scatter correction and Savitzky-Golay filter smoothing pretreatments had the best satisfactory calibration and prediction abilities (correlation coefficient of calibration (R(c))=0.920, root mean square errors of calibration=0.196, and root mean square errors of prediction=0.216). The results show that visible-NIR spectroscopy might be a suitable alternative tool to discriminate tomato plant varieties on-site.
可见-近红外(NIR)光谱法被用作鉴别中国两个番茄新品种(浙杂205和浙杂207)的工具进行了探索。在本研究中,以可见-近红外反射模式测量了82片浙杂205的冠层顶部叶片和86片浙杂207的冠层顶部叶片。使用主成分分析(PCA)、判别分析(DA)和判别偏最小二乘法(DPLS)回归方法建立判别模型。在检测到异常值后,将样本随机分为两组,一组用作校准集(n = 82),其余样本用作验证集(n = 82)。在预测验证集中样本的品种时,优化光谱预处理后的DPLS模型的分类正确率高达93%。经过多元散射校正和Savitzky-Golay滤波平滑预处理后的原始光谱的DPLS模型具有最佳的校准和预测能力(校准相关系数(R(c))= 0.920,校准均方根误差 = 0.196,预测均方根误差 = 0.216)。结果表明,可见-近红外光谱法可能是一种适用于现场鉴别番茄品种的替代工具。