Artificial intelligence (AI) and Deep Learning (DL), in particular, play a pivotal role in enhancing food traceability and safety across the food supply chain. With the increasing complexity and global nature of food systems, ensuring food safety and traceability has become a fundamental aspect for consumers, regulators, and producers alike. Artificial Intelligence technologies offer several key advantages in this domain. Firstly, AI-powered systems can efficiently track and trace food products from farm to fork, enabling stakeholders to identify the sources of contamination or foodborne illnesses more quickly and accurately. By analysing vast amounts of data, including production chemical analysis, production chain information, and sensors data. AI algorithms can in fact identify potential risks and mitigate them before they escalate into widespread outbreaks. Moreover, AI-driven predictive analytics can be used to forecast potential risks and trends, enabling measures to be taken to prevent contamination or adulteration of food products. Additionally, AI technologies such as machine learning and computer vision facilitate quality control and inspection processes by detecting anomalies, identifying defects, and ensuring compliance with food safety regulations. Through automation and real-time monitoring, moreover, AI empowers food manufacturers, retailers, and regulatory bodies to uphold the highest standards of food safety, bolster consumer confidence, and ultimately safeguard public health. As AI continues to advance, its integration into food traceability and safety systems promises to revolutionize the way we produce, distribute, and consume food, fostering a more transparent, efficient, and secure food supply chain.
As an example, in this context the PNRR funded Agritech (https://agritechcenter.it/it/) project was designed. Agritech is born to address global challenges such as climate change, environmental impact of agriculture, and the need to improve productivity and sustainability. The Research Center focuses on the application of enabling technologies in the Agrifood sector. Five main research objectives are addressed by the Agritech Center:
These objectives outline the focus of the Agritech Center and its mission of innovation and sustainability in the agricultural and food sectors.
Topic of the workshops are (not limited to):
WORKSHOP In Conjunction with the Conference WIRN 2024: The workshop will take place in conjunction with the conference WIRN 2024 (https://www.siren-neural-net.it/wirn-2024/). And will be in Vietri sul Mare, Salerno (Italy).
Submission Procedure: Authors are limited to one paper per registration, not exceeding 8-10 pages’ limit. Springer Paper format is on: http://www.springer.com/series/8767.
All manuscripts should be submitted through the Easy Chair conference system using the following link: https://easychair.org/account2/signin?l=8394956343902990881. When logged into Easy Chair please specify the name of the special session as: “Artificial Intelligence for Agriculture”.
Paper registration guidelines: Registration
Website of the Workshop: https://sites.google.com/unisi.it/wirnworkshop2024ai4agri
Prof. Marco Gori, DIISM, Università di Siena, Siena (Italy)
Prof. Stefano Chessa, Dipartimento di Informatica, Unipi, Pisa (Italy)
Prof. Carlo Morabito, DICEAM, Università Mediterranea di Reggio Calabria, Reggio Calabria (Italy)
Prof. Franco Scarselli, DIISM, Università di Siena, Siena (Italy)
WIRN 2024 è parzialmente finanziato da EU NextGeneration, PNRR Mission 4 Component 2 Investment 1.1 – D.D. 1409 del 14-09-2022 PRIN 2022 – Project code “P20222MYKE” – CUP: B53D23025980001, dal titolo “A Pilot analysIs of behavioRal and opeRational data for detEcting Socio-emotional PrEcursors of mild CogniTIVE impairments (MCI) and demEntia” (IRRESPECTIVE)