Nondestructive freshness prediction of large yellow croaker (Pseudosciaena crocea) using computer vision and machine learning techniques based on pupil color.

IF 3.2 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Xudong Wu, Qingxiang Zhang, Zhiqiang Wang, Zongmin Wang, Hongbo Yan, Lanlan Zhu, Jie Chang
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Abstract

Conventional methods for evaluating of fish freshness based on physiological and biochemical methods are often destructive, complicated, and costly. This study aimed to predict the freshness of large yellow croaker which was sampled every second day in 9 consecutive days at 4°C, using computer vision technology combined with pupil color parameters and different machine learning algorithms (back propagation neural network, BPNN; radial basis function neural network; support vector regression; and random forest regression, RFR). In the process of model building, the RFR model provided the most accurate prediction for the value of total volatile basic nitrogen (TVB-N), with the R-square of the test set ( R p 2 $R^{2}_p $ ) of 0.993. The BPNN model exhibited the best fit for predicting the value of thiobarbituric acid (TBA), with R p 2 $R^{2}_p $ of 0.959. Additionally, the RFR model was the most effective in forecasting total viable count (TVC), with R p 2 $R^{2}_p $ of 0.935. After validation, the root mean square error values of the RFR model for predicting TVB-N value, TBA value, and TVC value were the lowest, which were 0.764, 0.067, and 0.219, respectively. It demonstrated the applicability and good predictive performance of the RFR model for predicting biochemical and microbiological indicators. These findings also demonstrated that monitoring the changes in pupil color could successfully predict the freshness of chilled fish. PRACTICAL APPLICATION: Application Scenario: Quality inspectors detect changes in the freshness of large yellow croaker in real time from the beginning of distribution to the selling site.

利用基于瞳孔颜色的计算机视觉和机器学习技术对大黄鱼(Pseudosciaena crocea)进行无损新鲜度预测。
基于生理和生化方法评估鱼类新鲜度的传统方法通常具有破坏性、复杂性和高成本性。本研究旨在利用计算机视觉技术,结合瞳孔颜色参数和不同的机器学习算法(反向传播神经网络 BPNN、径向基函数神经网络、支持向量回归和随机森林回归 RFR),预测连续 9 天在 4°C 下每隔一天采样的大黄鱼的新鲜度。在建立模型的过程中,RFR 模型对总挥发性碱氮(TVB-N)值的预测最为准确,测试集的 R 方(R p 2 $R^{2}_p $)为 0.993。BPNN 模型在预测硫代巴比妥酸(TBA)值时表现出最佳拟合度,R p 2 $R^{2}_p $ 为 0.959。此外,RFR 模型在预测总存活计数 (TVC) 方面最为有效,R p 2 $R^{2}_p $ 为 0.935。经过验证,RFR 模型预测 TVB-N 值、TBA 值和 TVC 值的均方根误差值最小,分别为 0.764、0.067 和 0.219。这表明 RFR 模型适用于预测生化和微生物指标,并具有良好的预测性能。这些研究结果还表明,监测瞳孔颜色的变化可以成功预测冷冻鱼的新鲜度。实际应用:应用场景:质量检验员实时检测大黄鱼从配送开始到销售现场的新鲜度变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Food Science
Journal of Food Science 工程技术-食品科技
CiteScore
7.10
自引率
2.60%
发文量
412
审稿时长
3.1 months
期刊介绍: The goal of the Journal of Food Science is to offer scientists, researchers, and other food professionals the opportunity to share knowledge of scientific advancements in the myriad disciplines affecting their work, through a respected peer-reviewed publication. The Journal of Food Science serves as an international forum for vital research and developments in food science. The range of topics covered in the journal include: -Concise Reviews and Hypotheses in Food Science -New Horizons in Food Research -Integrated Food Science -Food Chemistry -Food Engineering, Materials Science, and Nanotechnology -Food Microbiology and Safety -Sensory and Consumer Sciences -Health, Nutrition, and Food -Toxicology and Chemical Food Safety The Journal of Food Science publishes peer-reviewed articles that cover all aspects of food science, including safety and nutrition. Reviews should be 15 to 50 typewritten pages (including tables, figures, and references), should provide in-depth coverage of a narrowly defined topic, and should embody careful evaluation (weaknesses, strengths, explanation of discrepancies in results among similar studies) of all pertinent studies, so that insightful interpretations and conclusions can be presented. Hypothesis papers are especially appropriate in pioneering areas of research or important areas that are afflicted by scientific controversy.
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