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Rapid and Non-destructive measurement of moisture content of peanut (Arachis hypogaea L.) kernel using a near-infrared hyperspectral imaging technique

机译:使用近红外高光谱成像技术的花生(Arachis Hypogaea L.)内核的水分含量快速和无损测量

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This study used a rapid and non-destructive way of determining and predicting the moisture content (MC) of peanut kernels using hyperspectral imaging in the near-infrared region (900-1700 nm). Using partial least square regression (PLSR), spectral data from the peanut kernel hyperspectral images were extracted to predict MC. The MC PLSR model displayed good performance with determination coefficient of calibration (R-c(2)), validation (R-v(2)) and prediction (R-p(2)) of 0.9309, 0.9083 and 0.9368, respectively. Also, the root-mean-square error of calibration (RMSEC), cross-validation (RMSEV), and prediction (RMSEP) of 1.6978, 1.9571, and 1.8715, respectively, were achieved. Optimization was done by selecting wavelengths with the highest absolute weighted regression coefficients; on this basis, 20 significant wavelengths were identified for further analysis. These wavelengths were used to build an optimized regression model which resulted in R-c(2) of 0.9357, R-v(2) of 0.9133, and R-p(2) of 0.9445 as well as RMSEC, RMSEV, and RMSEP of 1.6822, 1.8316 and 1.9519, respectively. The optimized model has applied to the peanut kernel hyperspectral images in a pixel-wise manner obtaining peanut kernel moisture content distribution map. Results show promising potential of the hyperspectral imaging system in the near-infrared region combined with partial least square regression (PLSR) for rapid and non- destructive prediction of moisture content of peanut kernels.
机译:本研究采用近红外区域(900-1700nm)的高光谱成像技术,采用快速、无损的方法测定和预测花生仁的水分含量(MC)。采用偏最小二乘回归(PLSR)方法,从花生仁高光谱图像中提取光谱数据,预测MC。MC-PLSR模型表现出良好的性能,其定标系数(R-c(2))、验证系数(R-v(2))和预测系数(R-p(2))分别为0.9309、0.9083和0.9368。此外,校准均方根误差(RMSEC)、交叉验证(RMSEV)和预测(RMSEP)分别达到1.6978、1.9571和1.8715。通过选择绝对加权回归系数最高的波长进行优化;在此基础上,确定了20个重要波长,以供进一步分析。这些波长被用于建立一个优化的回归模型,其结果是R-c(2)为0.9357,R-v(2)为0.9133,R-p(2)为0.9445,以及RMSEC、RMSEV和RMSEP分别为1.6822、1.8316和1.9519。将优化后的模型应用于花生仁高光谱图像,得到了花生仁水分分布图。结果表明,近红外高光谱成像系统与偏最小二乘回归(PLSR)相结合,在花生仁水分含量的快速无损预测方面具有很大的潜力。

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