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首页> 外文期刊>Transactions of the ASABE >Application of time series hyperspectral imaging (TS-HSI) for determining water content within tea leaves during drying.
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Application of time series hyperspectral imaging (TS-HSI) for determining water content within tea leaves during drying.

机译:时间序列高光谱成像(TS-HSI)在确定干燥过程中茶叶中的水分含量中的应用。

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This research investigated the feasibility of using time series hyperspectral imaging (TS-HSI) for rapid and nondestructive determination of water content in tea leaves. Hyperspectral images of tea leaves were obtained at different periods of drying across the wavelength region of 380 to 1030 nm. The reflectance value of the region of interest (ROI) was extracted with ENVI 4.7 software. Different preprocessing methods were applied to determine the best method based on the root mean square error of calibration (RMSEC), root mean square error of prediction (RMSEP), residual predictive deviation (RPD), and coefficient of determination (R2) of the partial least squares regression (PLSR) model. The successive projections algorithm (SPA) was then used to identify the most important wavelengths and reduce the high dimensionality of the spectral data. On the basis of the four effective wavelengths (542, 709, 752, and 971 nm), an SPA-PLSR model was established. Among the different PLSR models, the multiplicative scatter correction-PLSR (MSC-PLSR) model performed best with the highest values of R2cal, R2val, R2pre, and RPD (0.979, 0.961, 0.968, and 5.616, respectively) and the lowest values of RMSEC, RMSEV, and RMSEP (0.033, 0.045, and 0.040, respectively). However, the SPA-PLSR mode, with only four input variables, was considered to be preferable for determining water content in tea leaves. The SPA-PLSR model obtained R2cal, R2val, R2pre, and RPD values of 0.938, 0.935, 0.946, and 4.292, respectively, and RMSEC, RMSEV, and RMSEP values of 0.055, 0.057, and 0.052, respectively. The results showed that the TS-HSI technique has potential to be a rapid and nondestructive method to detect water content in tea leaves at different drying periods.
机译:这项研究调查了使用时间序列高光谱成像(TS-HSI)快速,无损测定茶叶中水分的可行性。茶叶的高光谱图像是在380至1030 nm波长区域的不同干燥时期获得的。使用ENVI 4.7软件提取感兴趣区域(ROI)的反射率值。根据校准的均方根误差(RMSEC),预测的均方根误差(RMSEP),残留预测偏差(RPD)和确定系数(R 2),应用了不同的预处理方法来确定最佳方法)。然后,使用连续投影算法(SPA)来识别最重要的波长并减少光谱数据的高维。基于四个有效波长(542、709、752和971 nm),建立了SPA-PLSR模型。在不同的PLSR模型中,乘积散射校正PLSR(MSC-PLSR)模型在R 2 cal ,R 2 val ,R 2 pre 和RPD(分别为0.979、0.961、0.968和5.616)和RMSEC的最小值, RMSEV和RMSEP(分别为0.033、0.045和0.040)。但是,只有四个输入变量的SPA-PLSR模式被认为是确定茶叶中水含量的首选方法。 SPA-PLSR模型获得R 2 cal ,R 2 val ,R 2 pre 和RPD值分别为0.938、0.935、0.946和4.292,RMSEC,RMSEV和RMSEP值分别为0.055、0.057和0.052。结果表明,TS-HSI技术可能是一种快速,无损的方法,可以检测出不同干燥时期的茶叶中的水分。

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