基于CIELAB颜色空间的机器学习牛肉质量评价

IF 6.3 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Somin Kim , Woo-Ju Kim , Hansol Doh
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引用次数: 0

摘要

本研究提出了一种基于python的机器学习方法,使用来自CIELAB颜色空间的非破坏性颜色测量来预测牛肉的腐败指标。采用了两阶段建模策略,在第一阶段用A *值预测的腐败指标作为第二阶段模型的输入特征来估计腐败率。首先,通过Pearson相关分析验证了a *值与腐败指标之间的强相关性,强调了颜色数据用于质量预测的可行性。在测试的回归模型中,随机森林(RF)回归模型表现出较好的性能,对肌红蛋白(Met.Mb)和过氧化值(PV)的R2分别为0.912和0.804。梯度增强(GB)回归对pH预测最有效,而k近邻(KNN)回归模型对硫代巴比妥酸反应物质(TBARS)的预测效果最好。然后,进一步优化RF回归模型,利用Met预测腐败率。Mb、pH、PV和TBARS作为输入特征,R2为0.988,RMSE为2.120。SHapley加性解释(SHAP)分析发现TBARS是影响最大的变量,其次是Met。这些发现证明了将机器学习模型与非破坏性实时牛肉质量评估方法相结合的潜力,为传统分析方法提供了一种实用且资源高效的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of beef quality using machine learning based on the CIELAB color space
This study presents a Python-based, machine learning approach to predict spoilage indicators of beef using non-destructive color measurements from the CIELAB color space. A two-stage modeling strategy was employed, where spoilage indicators predicted from a∗ values in the first-stage were used as input features in a second-stage model to estimate spoilage rate. First, a strong correlation between the a∗ value and spoilage indicators, validated through Pearson correlation analysis, highlights the feasibility of color data for quality prediction. Among the regression models tested, the random forest (RF) regression model demonstrated superior performance, achieving R2 values of 0.912 and 0.804 for metmyoglobin (Met.Mb) and peroxide value (PV), respectively. Gradient boosting (GB) regression was most effective for pH prediction, while the k-nearest neighbors (KNN) regression model excelled in thiobarbituric acid reactive substances (TBARS) estimation. Then, the RF regression model was further optimized to predict spoilage rates using Met.Mb, pH, PV, and TBARS as input features, achieving an R2 of 0.988 and RMSE of 2.120. SHapley Additive exPlanations (SHAP) analysis identified TBARS as the most influential variable, followed by Met.Mb and pH. These findings demonstrate the potential of combining machine learning models with non-destructive methods for real-time beef quality assessment, offering a practical and resource-efficient alternative to traditional analytical approaches.
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来源期刊
Food Control
Food Control 工程技术-食品科技
CiteScore
12.20
自引率
6.70%
发文量
758
审稿时长
33 days
期刊介绍: Food Control is an international journal that provides essential information for those involved in food safety and process control. Food Control covers the below areas that relate to food process control or to food safety of human foods: • Microbial food safety and antimicrobial systems • Mycotoxins • Hazard analysis, HACCP and food safety objectives • Risk assessment, including microbial and chemical hazards • Quality assurance • Good manufacturing practices • Food process systems design and control • Food Packaging technology and materials in contact with foods • Rapid methods of analysis and detection, including sensor technology • Codes of practice, legislation and international harmonization • Consumer issues • Education, training and research needs. The scope of Food Control is comprehensive and includes original research papers, authoritative reviews, short communications, comment articles that report on new developments in food control, and position papers.
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