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Identification of adulterated beef based on near-infrared hyperspectral imaging technique

机译:基于近红外高光谱成像技术的掺杂牛肉的识别

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The main objective of this study was to establish a method for improving rapid detection of adulterated beef using hyperspectral imaging technology coupled with chemometrics. Beside 4 minced meat samples of pure beef and 4 of pure duck, 50 Minced beefsamples were adulterated with minced duck in the range 2% - 50% (w/w) at approximately 2% interval. Hyperspectral imaging was acquired in the reflectance mode. Band threshold was used to extract ROIs and four kinds of partitioning methods (Concentrationgradient-CG, Kennard Stone-KS, Sample set Partitioning based on joint x-y distances-SPXY, maximum linear independent method) were used to divide sample into calibration (N=38) and validation (N=12). The spectral data were preprocessed with multiple scattering correction and smoothing, then developed a partial least squares regression (PLSR) model to predict the level of adulteration in minced beef. Good PLS prediction model was obtained using the full spectral range (400-900 nm) with a coefficient of determination (Rc2) of 0.9717, standard error of calibration (RMSEC) of 0.0096, coefficient of determination (RP2) of 0.9558, and standard error from cross-validation (RMSECV) of 0.0239 by external-validation. Moreover, some important wavelengths (494, 539, 561, 585, 606, 646, 702, 770, 803nm) were selected by weighted regression coefficients(Bw) and PLS model was establish using these wavelengths. The model resulted in a coefficient of determination (Rc2) of 0.9536, RMSEC of 0.0156, coefficient of determination (RP2) of 0.9328, and RMSECV of 0.0213. This study demonstrated using near-infrared (NIR) hyperspectral imaging technology and chemometrics have potentially to predict beef adulterated with duck.
机译:本研究的主要目的是建立一种用于使用加上化学计量学超光谱成像技术提高掺假牛肉的快速检测。除了纯牛肉4个肉末样品和纯鸭4,50个碎beefsamples用切碎鸭取值范围为2%掺假 - 50%(重量/重量)在大约2%的时间间隔。高光谱成像是在反射模式获取的。带阈值用于提取的ROI和4种分区方法(Concentrationgradient-CG,肯纳德石KS,样本集合划分基于联合的xy距离-SPXY,最大线性独立的方法)来分样成校准(N = 38 )和验证(N = 12)。的光谱数据进行预处理以多次散射校正和平滑化,然后开发了一种偏最小二乘回归(PLSR)模型来预测在碎牛肉掺假的水平。使用全光谱范围内(400-900纳米)与确定的系数的0.9717(RC),标准误差校正的0.9558的0.0096(RMSEC),确定(RP2)的系数,以及标准误差,得到良好的PLS预测模型从由外部验证的0.0239交叉验证(RMSECV)。此外,一些重要的波长(494,539,561,585,606,646,702,770,803nm)通过加权回归系数(BW)和PLS模型选择是建立使用这些波长。该模型导致判定的0.9328的0.9536(RC),0.0156 RMSEC,确定(RP2)的系数的系数,以及0.0213 RMSECV。本研究中使用近红外(NIR)光谱成像技术和化学计量学证明具有潜在的预测牛肉鸭掺假。

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