College of Information Engineering, Zhejiang University of Technology, Hangzhou, PR China.
Appl Spectrosc. 2011 Aug;65(8):931-8. doi: 10.1366/11-06270.
Nondestructive in situ measurement of tomato fruits is essential to determine growing stages and to assist in automatic picking of fruits. This study evaluates the applicability of visible and near-infrared (Vis-NIR) spectroscopy for in situ determination of growing stages and harvest time of three cultivars of tomato fruits. A mobile fiber-type AgroSpec Vis-NIR spectrophotometer (Tec5 Co., Germany) with a spectral range of 350-2200 nm was used to measure tomato spectra in reflection mode. A new growing stage (GS) index defined as the ratio of the current growing age in days to the on-vine duration before harvest in days was proposed. After dividing spectra into a calibration set (70%) and an independent prediction set (30%), spectra in the calibration set were subjected to a partial least squares regression (PLSR) with leave-one-out cross-validation to establish calibration models relating GS to the spectra of tomato fruits. Separate models were developed for each tomato cultivar and compared with a general model that used combined spectra of all three cultivars. The results show that PLSR based on the new GS is successful and robust in predicting the growing stages and harvest time of tomato fruits. Validation of calibration models on the independent prediction set indicates that successful prediction of GS can be achieved using the three models developed separately for each cultivar with a coefficient of determination (R(2)) of 0.91-0.92, root mean square error of prediction (RMSEP) of 0.081-0.097, and residual prediction deviation (RPD) of 3.29-3.70. General calibration using the combined spectra produces good prediction performance, although less accurate than that for the three individual cultivar models. The analysis of regression coefficient plots resulting from PLSR analysis indicates consistent assignment of important wavelengths for individual cultivar spectra and combined spectra. It is concluded that the Vis-NIR PLSR based on GS index can be adopted successfully for in situ determination of growing stages and harvest time of on-vine tomato fruits, which allows for automatic picking of fruits by a horticultural robot.
非破坏性的番茄果实原位测量对于确定生长阶段和协助果实自动采摘至关重要。本研究评估了可见和近红外(Vis-NIR)光谱法在原位确定三个番茄品种果实生长阶段和收获时间的适用性。使用带有 350-2200nm 光谱范围的移动光纤型 AgroSpec Vis-NIR 分光光度计(Tec5 Co.,德国)以反射模式测量番茄光谱。提出了一个新的生长阶段(GS)指数,定义为当前生长天数与收获前在藤上的持续时间之比。将光谱分为校准集(70%)和独立预测集(30%)后,在校准集中对光谱进行偏最小二乘回归(PLSR),并采用留一法交叉验证建立与番茄果实光谱相关的 GS 校准模型。为每个番茄品种分别建立模型,并与使用所有三个品种组合光谱的通用模型进行比较。结果表明,基于新 GS 的 PLSR 成功且稳健,可预测番茄果实的生长阶段和收获时间。在独立预测集中对校准模型进行验证表明,使用分别为每个品种开发的三个模型可以成功预测 GS,决定系数(R(2))为 0.91-0.92,预测均方根误差(RMSEP)为 0.081-0.097,残差预测偏差(RPD)为 3.29-3.70。使用组合光谱进行一般校准可产生良好的预测性能,尽管不如三个个别品种模型准确。PLSR 分析产生的回归系数图分析表明,个别品种光谱和组合光谱的重要波长分配一致。结论是,基于 GS 指数的 Vis-NIR PLSR 可成功用于在线番茄果实生长阶段和收获时间的原位确定,从而实现园艺机器人对果实的自动采摘。