Han Yuanxi, Li Liang, Jiang Siyuan, Sun Pengpeng, Wu Wenliang, Liu Zhendong
Food Science College, Xizang Agriculture & Animal Husbandry University, R&D Center of Agricultural Products with Xizang Plateau Characteristics, The Provincial and Ministerial Co-founded Collaborative Innovation Center for R&D in Xizang Characteristic Agricultural and Animal Husbandry Resources, Nyingchi 860000, China.
College of Information Engineering, Northwest A&F University, Shaanxi, Xianyang, 712100, China.
Food Chem X. 2025 Feb 19;26:102293. doi: 10.1016/j.fochx.2025.102293. eCollection 2025 Feb.
Commercial jerky counterfeiting is widespread in the market. This study combined visible-near-infrared and short-wave-near-infrared hyperspectral imaging along with multiple machine learning algorithms for non-destructive identification of five types of commercial jerky products, and explored the impact of different spectral bands, algorithm selection, and optimization methods on identification performance. After data preprocessing, all models' accuracies and stability improved. Specifically, the logistic regression model was best for jerky identification, with 85.78 %-100.00 % accuracy. With hyperparameter optimization, Support Vector Machine with linear kernel had highest accuracy (89.29 % and 95.29 % in two bands). Additionally, the artificial neural network with the hyperbolic tangent activation function had optimal training performance, exceeding 90.00 % accuracy. The findings demonstrate short-wave-near-infrared hyperspectral imaging combined with linear models (logistic regression and Support Vector Machine with linear kernel parameter settings) is better for identifying the types of jerky. This study provides reference for the band, model selection, and optimization of jerky type identification.
市售牛肉干造假现象在市场中普遍存在。本研究结合可见 - 近红外和短波 - 近红外高光谱成像技术以及多种机器学习算法,对五种市售牛肉干产品进行无损鉴别,并探讨了不同光谱波段、算法选择和优化方法对鉴别性能的影响。经过数据预处理后,所有模型的准确率和稳定性均有所提高。具体而言,逻辑回归模型最适合牛肉干鉴别,准确率在85.78% - 100.00%之间。通过超参数优化,线性核支持向量机准确率最高(在两个波段中分别为89.29%和95.29%)。此外,具有双曲正切激活函数的人工神经网络具有最优的训练性能,准确率超过90.00%。研究结果表明,短波 - 近红外高光谱成像结合线性模型(逻辑回归和线性核参数设置的支持向量机)更有利于鉴别牛肉干的种类。本研究为牛肉干种类鉴别的波段、模型选择及优化提供了参考。