食品科学 ›› 2024, Vol. 45 ›› Issue (2): 299-307.doi: 10.7506/spkx1002-6630-20230418-177

• 安全检测 • 上一篇    下一篇

基于近红外光谱特征的冷冻小龙虾鲜度快速检测方法

占可,陈季旺,徐言,倪杨帆,刘言,邹圣碧   

  1. (1.武汉轻工大学食品科学与工程学院,湖北 武汉 430023;2.农产品加工与转化湖北省重点实验室(武汉轻工大学),湖北 武汉 430023;3.国家小龙虾加工技术研发分中心(潜江),湖北 潜江 433100;4.武汉农业检测中心,湖北 武汉 430016)
  • 出版日期:2024-01-25 发布日期:2024-02-05
  • 基金资助:
    “十三五”国家重点研发计划“食品安全关键技术研发”重点专项(2019YFC1606001)

A Rapid Detection Method for Freshness of Frozen Crayfish Based on Near-Infrared Spectroscopy

ZHAN Ke, CHEN Jiwang, XU Yan, NI Yangfan, LIU Yan, ZOU Shengbi   

  1. (1. College of Food Science and Engineering, Wuhan Polytechnic University, Wuhan 430023, China; 2. Hubei Key Laboratory for Processing and Transformation of Agricultural Products (Wuhan Polytechnic University), Wuhan 430023, China; 3. National Research & Development Branch Center for Crayfish Processing (Qianjiang), Qianjiang 433100, China; 4. Wuhan Agricultural Inspection Center, Wuhan 430016, China)
  • Online:2024-01-25 Published:2024-02-05

摘要: 为建立快速检测冷冻小龙虾鲜度的近红外光谱模型,采集解冻的小龙虾虾尾、虾仁及虾糜的近红外光谱,分别利用一阶导数、多元散射校正、小波变换(wavelet transform,WT)和标准正态变换进行预处理,并利用偏最小二乘(partial least squares,PLS)与卷积神经网络(convolutional neural network,CNN)算法将预处理前后的光谱数据分别与总挥发性盐基氮(total volatile basic nitrogen,TVB-N)含量关联,构建定量预测模型并比较建模效果,选取较佳模型,探究模型预测准确度和适用性。结果显示,预处理方法明显影响了建立模型的精度,光谱经预处理建立的CNN模型与PLS模型相比,具备更好地预测小龙虾TVB-N含量的能力。其中,虾仁光谱经WT预处理建立的CNN模型对验证集的预测准确度最高,校正集与验证集的相关系数分别为0.97、0.96,校正集与验证集的均方根误差分别为1.26、0.93 mg/100 g。近红外光谱的准确度、精密度与灵敏度均在合理范围内,方法学验证结果良好。综合考虑实际应用中快速、准确、低损伤等需求,确定WT-CNN-虾仁模型为预测冷冻小龙虾中TVB-N含量的最优模型。这些结果表明,WT-CNN-虾仁模型在预测冷冻小龙虾TVB-N含量、快速评价新鲜度方面具有巨大潜力。

关键词: 近红外光谱;小龙虾;总挥发性盐基氮;快速检测;卷积神经网络;小波变换

Abstract: To establish a model based on near-infrared (NIR) spectra for quickly detecting the freshness of frozen crayfish, NIR spectra of thawed crayfish (tail, meat, and mince) were collected, and data were pretreated by first derivative, multiple scattering correction, wavelet transform (WT), or standard normal transform. The original and pretreated spectral data were correlated to total volatile basic nitrogen (TVB-N) contents using partial least squares (PLS) or convolutional neural network (CNN), and different quantitative prediction models were established and compared. The best model was selected to investigate its accuracy and applicability. The results showed that pretreatment methods had a significant influence on the accuracy of the model, and the CNN model established after spectral preprocessing had a better ability to predict the TVB-N content of crayfish compared with the PLS model. The CNN model based on the WT pretreated spectra of crayfish meat had the highest prediction accuracy for the validation set with correlation coefficients of 0.97 and 0.96, and root mean square errors of 1.26 and 0.93 mg/100 g for the calibration set and validation set, respectively. Moreover, the accuracy, precision, and sensitivity of the NIR method were within reasonable limits, and it had good figures of merit. According to the requirements of fast operation, accurate results, and low damage in practice, the WT-CNN-crayfish meat model was determined as the optimal model for predicting the TVB-N content in frozen crayfish. These results suggested that the WT-CNN-crayfish meat model have a great potential for predicting the TVB-N content and rapidly evaluating the freshness of frozen crayfish.

Key words: near-infrared spectroscopy; crayfish; total volatile basic nitrogen; rapid detection; convolutional neural network; wavelet transform

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