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Calibration Transfer from Micro NIR Spectrometer to Hyperspectral Imaging: a Case Study on Predicting Soluble Solids Content of Bananito Fruit (Musa acuminata)

机译:从微型NIR光谱仪到高光谱成像的校准转移:预测香蕉水果(Musa Acuminata)可溶性固体含量的案例研究

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摘要

Calibration transfer from a handheld micro NIR spectrometer (NIR-point, 939-1602 nm, 6.2 nm) to a desktop hyperspectral imaging (NIR-HSI) for predicting soluble solids content (SSC) of bananito flesh was investigated in the study. Different spectral pre-processing and standardization methods were employed for correcting spectra so as to minimise spectral differences between NIR-point and NIR-HSI. Results show that application of standard normal variate (SNV) reduced spectral differences from 31.49 to 8.96%. The best standardization method was developed based on piecewise direct standardization (PDS) algorithm using ten transfer samples. The developed PLS model yielded a high prediction performance (R (2) (p) = 0.922 and RMSEP = 1.451%) for predicting SSC of validation samples using the NIR-point spectra. After SNV and standardization, the model was successfully transferred to NIR-HSI data, giving a comparable prediction accuracy of R (2) (p) = 0.925 and RMSEP = 1.592%. The results illustrated the potential of transferring calibration models from a simple and easy-available micro NIR spectrometer to a more expensive and sophisticated hyperspectral imaging system, when the spatial distribution of quality information is required.
机译:在研究中,研究了从手持式微荧光谱仪(NIR-POIND,939-1602nm,6.2nm)的校准转移到桌面高光谱成像(NIR-HSI),用于预测BANANITO肉体的可溶性固体含量(SSC)。采用不同的光谱预处理和标准化方法来校正光谱,以便最小化NIR点和NIR-HSI之间的光谱差异。结果表明,标准正常变化(SNV)的应用降低了31.49〜8.96%的光谱差异。基于使用10个传输样本的分段直接标准化(PDS)算法开发了最佳标准化方法。开发的PLS模型产生了高预测性能(R(2)(P)= 0.922和RMSEP = 1.451%),用于使用NIR点光谱预测验证样品的SSC。在SNV和标准化之后,模型成功转移到NIR-HSI数据,从而具有R(2)(P)= 0.925和RMSEP = 1.592%的可比预测精度。结果说明了当需要质量信息的空间分布时,将校准模型从简单易用的微型NIR光谱仪转移到更昂贵和复杂的高光谱成像系统。

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