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Rapid and visual measurement of fat content in peanuts by using the hyperspectral imaging technique with chemometrics

机译:使用化学计量学的高光谱成像技术快速直观地测量花生中的脂肪含量

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Out of all fundamental nutrients in peanuts, the amount of fat is the largest. Fat content is regarded as an important factor that significantly affects the processing of peanuts into different products. In this study, the feasibility of hyperspectral imaging (HSI) for rapidly and non-destructively detecting fat content in peanuts is investigated. An appropriate method was adopted to extract spectral information from the hyperspectral images (900a€“1700 nm) of different peanut varieties. Based on the extracted spectral information and the corresponding chemical values of fat, the best pre-processing and modeling method was established by comparing different methods. For pretreatment, the methods included standard normal variate (SNV), derivative (der), detrend, etc. For modeling, they included multiple linear regression (MLR), principal component regression (PCR) and partial least squares (PLS). The 2nd-der-SNV-PLS model generated the best results with a regression coefficient and standard error squares of 0.95 and 0.99 in calibration and of 0.90 and 1.47 in prediction, respectively. A simplified 2nd-der-SNV-RC-PLS model was established using only twelve optimal wavelengths identified by the regression coefficient (RC). The results showed that the model had a high RP of 0.84 and a low SEP of 1.88. An image processing algorithm according to the 2nd-der-SNV-RC-PLS model was then utilized in transforming each pixel into hyperspectral images to obtain fat distribution maps. The results of rapid and non-destructive detection of fat content could be potentially used to visualize the distribution of fat content in peanuts.
机译:在花生的所有基本营养素中,脂肪的量最大。脂肪含量被认为是重要影响花生加工成不同产品的重要因素。在这项研究中,研究了高光谱成像(HSI)用于快速无损检测花生中脂肪含量的可行性。采用适当的方法从不同花生品种的高光谱图像(900a-1700 nm)中提取光谱信息。根据提取的光谱信息和相应的脂肪化学值,通过比较不同方法建立了最佳的预处理和建模方法。对于预处理,方法包括标准正态变量(SNV),导数(der),下降趋势等。对于建模,它们包括多元线性回归(MLR),主成分回归(PCR)和偏最小二乘(PLS)。第二代SNV-PLS模型产生的最佳结果是,回归系数和标准误差平方在校准中分别为0.95和0.99,在预测中分别为0.90和1.47。仅使用由回归系数(RC)标识的十二个最佳波长建立了简化的第二代SNV-RC-PLS模型。结果表明,该模型的高RP为0.84,低SEP为1.88。然后,使用根据第二代SNV-RC-PLS模型的图像处理算法将每个像素转换为高光谱图像,以获得脂肪分布图。快速无损检测脂肪含量的结果可潜在地用于可视化花生中脂肪含量的分布。

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