Application of Deep Learning in Food Safety Detection and Risk Early Warning

The application of deep learning in food safety detection and risk early warning is becoming more and more extensive, thus providing new opportunities for improving food safety, quality control and authenticity identification. This paper first introduces the basic concept of deep learning and its cu...

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Main Author: DING Haohan, WANG Long, HOU Haoke, XIE Zhenqi, HAN Yu, CUI Xiaohui
Format: Article
Language:English
Published: China Food Publishing Company 2025-03-01
Series:Shipin Kexue
Subjects:
Online Access:https://www.spkx.net.cn/fileup/1002-6630/PDF/2025-46-6-033.pdf
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author DING Haohan, WANG Long, HOU Haoke, XIE Zhenqi, HAN Yu, CUI Xiaohui
author_facet DING Haohan, WANG Long, HOU Haoke, XIE Zhenqi, HAN Yu, CUI Xiaohui
author_sort DING Haohan, WANG Long, HOU Haoke, XIE Zhenqi, HAN Yu, CUI Xiaohui
collection DOAJ
description The application of deep learning in food safety detection and risk early warning is becoming more and more extensive, thus providing new opportunities for improving food safety, quality control and authenticity identification. This paper first introduces the basic concept of deep learning and its current development in the field of food safety, and discusses the application of convolutional neural network (CNN), recursive neural network (RNN), transformer architecture and graph neural network (GNN) in food safety detection and risk prediction. Although deep learning performs well in improving the efficiency and accuracy of food safety detection, its practical application still faces challenges such as poor data quality, weak privacy protection capacity and lack of model interpretability. Next, this paper analyzes potential risks that could be brought about by these problems and proposes possible solutions such as promoting data standardization, strengthening privacy protection, and promoting the formulation of policies regarding artificial intelligence. In the future, the combination of deep learning with the Internet of Things (IoT) and blockchain technology and further development of generative artificial intelligence will promote the digital transformation of the food industry and enable the whole-process traceability of food safety monitoring.
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institution OA Journals
issn 1002-6630
language English
publishDate 2025-03-01
publisher China Food Publishing Company
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series Shipin Kexue
spelling doaj-art-ae82e4c0cc6a410097884fc2281b10212025-08-20T02:27:06ZengChina Food Publishing CompanyShipin Kexue1002-66302025-03-0146629530810.7506/spkx1002-6630-20241011-062Application of Deep Learning in Food Safety Detection and Risk Early WarningDING Haohan, WANG Long, HOU Haoke, XIE Zhenqi, HAN Yu, CUI Xiaohui0(1. Science Center for Future Foods, Jiangnan University, Wuxi 214122, China; 2. School of Artificial Intelligence and Computer Science, Jiangnan University, Wuxi 214122, China; 3. School of Cyber Science and Engineering, Wuhan University, Wuhan 430072, China)The application of deep learning in food safety detection and risk early warning is becoming more and more extensive, thus providing new opportunities for improving food safety, quality control and authenticity identification. This paper first introduces the basic concept of deep learning and its current development in the field of food safety, and discusses the application of convolutional neural network (CNN), recursive neural network (RNN), transformer architecture and graph neural network (GNN) in food safety detection and risk prediction. Although deep learning performs well in improving the efficiency and accuracy of food safety detection, its practical application still faces challenges such as poor data quality, weak privacy protection capacity and lack of model interpretability. Next, this paper analyzes potential risks that could be brought about by these problems and proposes possible solutions such as promoting data standardization, strengthening privacy protection, and promoting the formulation of policies regarding artificial intelligence. In the future, the combination of deep learning with the Internet of Things (IoT) and blockchain technology and further development of generative artificial intelligence will promote the digital transformation of the food industry and enable the whole-process traceability of food safety monitoring.https://www.spkx.net.cn/fileup/1002-6630/PDF/2025-46-6-033.pdffood safety; deep learning; food detection; risk early warning
spellingShingle DING Haohan, WANG Long, HOU Haoke, XIE Zhenqi, HAN Yu, CUI Xiaohui
Application of Deep Learning in Food Safety Detection and Risk Early Warning
Shipin Kexue
food safety; deep learning; food detection; risk early warning
title Application of Deep Learning in Food Safety Detection and Risk Early Warning
title_full Application of Deep Learning in Food Safety Detection and Risk Early Warning
title_fullStr Application of Deep Learning in Food Safety Detection and Risk Early Warning
title_full_unstemmed Application of Deep Learning in Food Safety Detection and Risk Early Warning
title_short Application of Deep Learning in Food Safety Detection and Risk Early Warning
title_sort application of deep learning in food safety detection and risk early warning
topic food safety; deep learning; food detection; risk early warning
url https://www.spkx.net.cn/fileup/1002-6630/PDF/2025-46-6-033.pdf
work_keys_str_mv AT dinghaohanwanglonghouhaokexiezhenqihanyucuixiaohui applicationofdeeplearninginfoodsafetydetectionandriskearlywarning