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Hyperspectral imaging technique for determination of pork freshness attributes

机译:高光谱成像技术,用于测定猪肉新鲜属性

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Freshness of pork is an important quality attribute, which can vary greatly in storage and logistics. The specific objectives of this research were to develop a hyperspectral imaging system to predict pork freshness based on quality attributes such as total volatile basic-nitrogen (TVB-N), pH value and color parameters (L*,a*,b*). Pork samples were packed in seal plastic bags and then stored at 4°C. Every 12 hours. Hyperspectral scattering images were collected from the pork surface at the range of 400 nm to 1100 nm. Two different methods were performed to extract scattering feature spectra from the hyperspectral scattering images. First, the spectral scattering profiles at individual wavelengths were fitted accurately by a three-parameter Lorentzian distribution (LD) function; second, reflectance spectra were extracted from the scattering images. Partial Least Square Regression (PLSR) method was used to establish prediction models to predict pork freshness. The results showed that the PLSR models based on reflectance spectra was better than combinations of LD "parameter spectra" in prediction of TVB-N with a correlation coefficient (r) = 0.90, a standard error of prediction (SEP) = 7.80 mg/100g. Moreover, a prediction model for pork freshness was established by using a combination of TVB-N, pH and color parameters. It could give a good prediction results with r = 0.91 for pork freshness. The research demonstrated that hyperspectral scattering technique is a valid tool for real-time and nondestructive detection of pork freshness.
机译:猪肉的新鲜度是一个重要的质量属性,它可以在储存和物流中有很大差异。该研究的具体目标是开发高光谱成像系统,以预测基于质量属性的猪肉新鲜度,例如总挥发性碱性氮(TVB-N),pH值和颜色参数(L *,A *,B *)。猪肉样品填充在密封塑料袋中,然后储存在4℃。每12小时一次。从猪肉表面收集高光谱散射图像,在400nm至1100nm的范围内。进行两种不同的方法以从超细散射图像提取散射特征光谱。首先,通过三参数Lorentzian分布(LD)功能精确地安装各个波长处的光谱散射轮廓;其次,从散射图像中提取反射光谱。部分最小二乘回归(PLSR)方法用于建立预测模型以预测猪肉新鲜度。结果表明,基于反射光谱的PLSR模型比LD“参数光谱”的组合在预测TVB-N的预测中,具有相关系数(R)= 0.90,预测标准误差(SEP)= 7.80 mg / 100g 。此外,通过使用TVB-N,pH和颜色参数的组合建立了猪肉新鲜度的预测模型。它可以给出猪肉新鲜r = 0.91的良好预测结果。该研究表明,高光谱散射技术是实时和无损检测猪肉新鲜度的有效工具。

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