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Assessment of Visible Near-Infrared Hyperspectral Imaging as a Tool for Detection of Horsemeat Adulteration in Minced Beef

机译:评估可见近红外高光谱成像作为检测碎牛肉中的马蚕掺假的工具

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摘要

For the first time, a visible near-infrared (Vis-NIR) hyperspectral imaging system (400-1000 nm) was investigated for rapid and non-destructive detection of adulteration in minced beef meat. Minced beef meat samples were adulterated with horsemeat at levels ranging from 2 to 50 % (w/w), at approximately 2 % increments. Calibration model was developed and optimized using partial least-squares regression (PLSR) with internal full cross-validation and then validated by external validation using an independent validation set. Several spectral pre-treatment techniques including derivatives, standard normal variate (SNV), and multiplicative scatter correction (MSC) were applied to examine the influence of spectral variations for predicting adulteration in minced beef. The established PLSR models based on raw spectra had coefficients of determination (R (2)) of 0.99, 0.99, and 0.98, and standard errors of 1.14, 1.56, and 2.23 % for calibration, cross-validation, and prediction, respectively. Four important wavelengths (515, 595, 650, and 880 nm) were selected using regression coefficients resulting from the best PLSR model. By using these important wavelengths, an image processing algorithm was developed to predict the adulteration level in each pixel in whole surface of the samples. The results demonstrate that hyperspectral imaging coupled with multivariate analysis can be successfully applied as a rapid screening technique for adulterate detection in minced meat.
机译:首次,研究了可见的近红外(Vis-NIR)高光谱成像系统(400-1000nm),以快速和无损检测碎牛肉掺杂的掺假。碎牛肉样品掺入含量为2-50%(w / w)的水平,约2%的增量。使用与内部完全交叉验证的部分最小二乘回归(PLSR)开发和优化校准模型,然后使用独立的验证集进行外部验证验证。施加包括衍生物,标准正常变化(SNV)和乘法散射校正(MSC)的几种光谱预处理技术,以检查光谱变化对碎牛肉中掺杂的影响。基于原始光谱的已建立的PLSR模型具有0.99,0.99和0.98的0.99,0.99和0.98的测定系数,标准误差分别用于校准,交叉验证和预测的1.14,1.56和2.23%。使用最佳PLSR模型产生的回归系数选择四个重要的波长(515,595,650和880nm)。通过使用这些重要的波长,开发了一种图像处理算法以预测样本的整个表面中的每个像素中的掺杂水平。结果表明,与多变量分析相结合的高光谱成像可以成功地应用于用于掺假肉类中的掺假检测的快速筛选技术。

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