Cheng Haoran, Li Jinglei, Yang Yulong, Zhou Gang, Xu Baocai, Yang Liu
China Light Industry Key Laboratory of Meat Microbial Control and Utilization, Hefei University of Technology, Hefei, China.
School of Food and Biological Engineering, Hefei University of Technology, Hefei, China.
J Sci Food Agric. 2025 Jan 30;105(2):747-759. doi: 10.1002/jsfa.13865. Epub 2024 Sep 9.
Determining the freshness of chilled pork is of paramount importance to consumers worldwide. Established freshness indicators such as total viable count, total volatile basic nitrogen and pH are destructive and time-consuming. Color change in chilled pork is also associated with freshness. However, traditional detection methods using handheld colorimeters are expensive, inconvenient and prone to limitations in accuracy. Substantial progress has been made in methods for pork preservation and freshness evaluation. However, traditional methods often necessitate expensive equipment or specialized expertise, restricting their accessibility to general consumers and small-scale traders. Therefore, developing a user-friendly, rapid and economical method is of particular importance.
This study conducted image analysis of photographs captured by smartphone cameras of chilled pork stored at 4 °C for 7 days. The analysis tracked color changes, which were then used to develop predictive models for freshness indicators. Compared to handheld colorimeters, smartphone image analysis demonstrated superior stability and accuracy in color data acquisition. Machine learning regression models, particularly the random forest and decision tree models, achieved prediction accuracies of more than 80% and 90%, respectively.
Our study provides a feasible and practical non-destructive approach to determining the freshness of chilled pork. © 2024 Society of Chemical Industry.
确定冷却猪肉的新鲜度对全球消费者至关重要。诸如总活菌数、总挥发性盐基氮和pH值等既定的新鲜度指标具有破坏性且耗时。冷却猪肉的颜色变化也与新鲜度相关。然而,使用手持式色度计的传统检测方法昂贵、不便且准确性容易受限。在猪肉保鲜和新鲜度评估方法方面已经取得了重大进展。然而,传统方法通常需要昂贵的设备或专业知识,限制了普通消费者和小商贩的使用。因此,开发一种用户友好、快速且经济的方法尤为重要。
本研究对在4°C下储存7天的冷却猪肉用智能手机相机拍摄的照片进行了图像分析。该分析跟踪了颜色变化,然后用于开发新鲜度指标的预测模型。与手持式色度计相比,智能手机图像分析在颜色数据采集方面表现出更高的稳定性和准确性。机器学习回归模型,特别是随机森林和决策树模型,分别实现了超过80%和90%的预测准确率。
我们的研究提供了一种可行且实用的非破坏性方法来确定冷却猪肉的新鲜度。©2024化学工业协会。