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首页> 外文期刊>International Journal of Agricultural and Biological Engineering >LW-NIR hyperspectral imaging for rapid prediction of TVC in chicken flesh
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LW-NIR hyperspectral imaging for rapid prediction of TVC in chicken flesh

机译:LW-NIR高光谱成像可快速预测鸡肉中的TVC

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摘要

Total viable count (TVC) is often used as an important indicator for chicken freshness evaluation. In this study, 112 fresh chicken flesh samples were acquired after slaughtered and their hyperspectral images were collected in the LW-NIR (900-1700 nm) range. The full LW-NIR spectra (486 wavebands) within the images were extracted and applied to related to reference TVC values measured in different storage period, using partial least squares regression (PLSR) algorithm, resulting in high correlation coefficients (R) and low root mean square errors (RMSE), for either raw spectra or pretreatment spectra. By using regression coefficients (RC) method, 20, 18, 17 and 20 optimal wavebands were respectively selected from raw spectra, baseline correction (BC) spectra, Savitzky-Golay convolution smoothing (SGCS) spectra and standard normal variate (SNV) spectra and applied for the optimization of original full waveband PLSR model. By comparison, RC-PLSR model based on the SGCS spectra showed a better performance in TVC prediction with RC of 0.98 and RMSEC of 0.35 log10 CFU/g in calibration set, and RP of 0.98 and RMSEP of 0.44 log10 CFU/g in prediction set. At last, by transferring the best RC-PLSR model, the dynamic TVC change during the storage was visualized by color maps to indicate the TVC spoilage degree. The overall study revealed that LW-NIR hyperspectral imaging combined with PLSR could be used to predict the freshness of chicken flesh.
机译:总存活数(TVC)通常用作评估鸡肉新鲜度的重要指标。在这项研究中,屠宰后采集了112个新鲜的鸡肉样品,并在LW-NIR(900-1700 nm)范围内收集了它们的高光谱图像。使用偏最小二乘回归(PLSR)算法,提取图像中的完整LW-NIR光谱(486个波段)并将其应用于在不同存储周期中测量的参考TVC值,从而获得高相关系数(R)和低根值原始光谱或预处理光谱的均方误差(RMSE)。使用回归系数(RC)方法,分别从原始光谱,基线校正(BC)光谱,Savitzky-Golay卷积平滑(SGCS)光谱和标准正变量(SNV)光谱中分别选择20、18、17和20个最佳波段应用于原始全波段PLSR模型的优化。相比之下,基于SGCS光谱的RC-PLSR模型在TVC预测中表现出更好的性能,校正集中的RC为0.98,RMSEC为0.35 log10 CFU / g,预测集中的RP为0.98,RMSEP为0.44 log10 CFU / g 。最后,通过转移最佳的RC-PLSR模型,通过颜色图将存储过程中的动态TVC变化可视化,以指示TVC损坏程度。整体研究表明,LW-NIR高光谱成像与PLSR结合可用于预测鸡肉的新鲜度。

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