Recent advances of machine learning in the geographical origin traceability of food and agro-products: A review

IF 12 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Jiali Li, Jianping Qian, Jinyong Chen, Luis Ruiz-Garcia, Chen Dong, Qian Chen, Zihan Liu, Pengnan Xiao, Zhiyao Zhao
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引用次数: 0

Abstract

The geographical origin traceability of food and agro-products has been attracted worldwide. Especially with the rise of machine learning (ML) technology, it provides cutting-edge solutions to erstwhile intractable issues to identify the origin of food and agro-products. By utilizing advanced algorithms, ML can extract feature information of food and agro-products that is closely related to origin and, more accurately, identify and trace their origins, which is of great significance to the entire food and agriculture industry. This paper provides a comprehensive overview of the state-of-the-art applications of ML in the geographical origin traceability of food and agro-products. First, commonly used ML methods are summarized. The paper then outlines the whole process of preparation for modeling, model training as well as model evaluation for building traceability models–based ML. Finally, recent applications of ML combined with different traceability techniques in the field of food and agro-products are revisited. Although ML has made many achievements in solving the geographical origin traceability problem of food and agro-products, it still has great development potential. For example, the application of ML is yet insufficient in the geographical origin traceability using DNA or computer vision techniques. The ability of ML to predict the geographical origin of food and agro-products can be further improved, for example, by increasing model interpretability, incorporating data fusion strategies, and others.

机器学习在食品和农产品地理来源溯源中的最新进展综述
食品和农产品的原产地溯源问题一直受到世界各国的关注。特别是随着机器学习(ML)技术的兴起,它为识别食品和农产品来源等过去棘手的问题提供了前沿的解决方案。利用先进的算法,ML可以提取与原产地关系密切的食品和农产品的特征信息,更准确地识别和追溯其原产地,这对整个食品和农业行业具有重要意义。本文全面概述了ML在食品和农产品地理来源可追溯性方面的最新应用。首先,对常用的ML方法进行总结。然后概述了构建基于可追溯模型的机器学习的建模准备、模型训练和模型评估的整个过程。最后,回顾了机器学习与不同可追溯技术在食品和农产品领域的最新应用。ML虽然在解决食品和农产品的地理原产地溯源问题上取得了不少成果,但仍有很大的发展潜力。例如,ML在使用DNA或计算机视觉技术进行地理原产地溯源方面的应用尚显不足。机器学习预测食品和农产品地理来源的能力可以进一步提高,例如,通过增加模型可解释性,结合数据融合策略等。
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来源期刊
CiteScore
26.20
自引率
2.70%
发文量
182
期刊介绍: Comprehensive Reviews in Food Science and Food Safety (CRFSFS) is an online peer-reviewed journal established in 2002. It aims to provide scientists with unique and comprehensive reviews covering various aspects of food science and technology. CRFSFS publishes in-depth reviews addressing the chemical, microbiological, physical, sensory, and nutritional properties of foods, as well as food processing, engineering, analytical methods, and packaging. Manuscripts should contribute new insights and recommendations to the scientific knowledge on the topic. The journal prioritizes recent developments and encourages critical assessment of experimental design and interpretation of results. Topics related to food safety, such as preventive controls, ingredient contaminants, storage, food authenticity, and adulteration, are considered. Reviews on food hazards must demonstrate validity and reliability in real food systems, not just in model systems. Additionally, reviews on nutritional properties should provide a realistic perspective on how foods influence health, considering processing and storage effects on bioactivity. The journal also accepts reviews on consumer behavior, risk assessment, food regulations, and post-harvest physiology. Authors are encouraged to consult the Editor in Chief before submission to ensure topic suitability. Systematic reviews and meta-analyses on analytical and sensory methods, quality control, and food safety approaches are welcomed, with authors advised to follow IFIS Good review practice guidelines.
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