Implementing artificial intelligence to measure meat quality parameters in local market traceability processes

The application of computer technologies associated with sensors and artificial intelligence (AI) in the quantification and qualification of quality parameters of meat products of various domestic species is an area of research, development, and innovation of great relevance in the agri-food industr...

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Autores principales: Alvarez García, Wuesley Yusmein, Mendoza, Laura, Muñoz Vílchez, Yudith Yohany, Casanova Núñez Melgar, David, Quilcate Pairazaman, Carlos
Formato: Artículo
Lenguaje:Inglés
Publicado: John Wiley & Sons Inc. 2024
Materias:
Acceso en línea:https://hdl.handle.net/20.500.12955/2589
https://doi.org/10.1111/ijfs.17546
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author Alvarez García, Wuesley Yusmein
Mendoza, Laura
Muñoz Vílchez, Yudith Yohany
Casanova Núñez Melgar, David
Quilcate Pairazaman, Carlos
author_browse Alvarez García, Wuesley Yusmein
Casanova Núñez Melgar, David
Mendoza, Laura
Muñoz Vílchez, Yudith Yohany
Quilcate Pairazaman, Carlos
author_facet Alvarez García, Wuesley Yusmein
Mendoza, Laura
Muñoz Vílchez, Yudith Yohany
Casanova Núñez Melgar, David
Quilcate Pairazaman, Carlos
author_sort Alvarez García, Wuesley Yusmein
collection Repositorio INIA
description The application of computer technologies associated with sensors and artificial intelligence (AI) in the quantification and qualification of quality parameters of meat products of various domestic species is an area of research, development, and innovation of great relevance in the agri-food industry. This review covers the most recent advances in this area, highlighting the importance of computer vision, artificial intelligence, and ultrasonography in evaluating quality and efficiency in meat products’ production and monitoring processes. Various techniques and methodologies used to evaluate quality parameters such as colour, water holding capacity (WHC), pH, moisture, texture, and intramuscular fat, among others related to animal origin, breed and handling, are discussed. In addition, the benefits and practical applications of the technology in the meat industry are examined, such as the automation of inspection processes, accurate product classification, traceability, and food safety. While the potential of artificial intelligence associated with sensor development in the meat industry is promising, it is crucial to recognize that this is an evolving field. This technology offers innovative solutions that enable efficient, cost effective, and consumer-oriented production. However, it also underlines the urgent need for further research and development of new techniques and tools such as artificial intelligence algorithms, the development of more sensitive and accurate multispectral sensors, advances in computer vision for 3D image analysis and automated detection, and the integration of advanced ultrasonography with other technologies. Also crucial is the development of autonomous robotic systems for the automation of inspection processes, the implementation of real-time monitoring systems for traceability and food safety, and the creation of intuitive interfaces for human-machine interaction. In addition, the automation of sensory analysis and the optimisation of sustainability and energy efficiency are key areas that require immediate attention to address the current challenges in this agri-food and agri-industrial sector, highlighting and emphasising the importance of ongoing innovation in the field.
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spelling INIA25892025-05-26T01:11:05Z Implementing artificial intelligence to measure meat quality parameters in local market traceability processes Alvarez García, Wuesley Yusmein Mendoza, Laura Muñoz Vílchez, Yudith Yohany Casanova Núñez Melgar, David Quilcate Pairazaman, Carlos Artificial Intelligence Computer vision Hyperspectral imaging Meat quality Ohmic Ultrasound https://purl.org/pe-repo/ocde/ford#4.02.01 Artificial Intelligence Inteligencia artificial Multispectral imagery Imagen multiespectral Meat quality Calidad de la carne Ultrasound Ultrasonido The application of computer technologies associated with sensors and artificial intelligence (AI) in the quantification and qualification of quality parameters of meat products of various domestic species is an area of research, development, and innovation of great relevance in the agri-food industry. This review covers the most recent advances in this area, highlighting the importance of computer vision, artificial intelligence, and ultrasonography in evaluating quality and efficiency in meat products’ production and monitoring processes. Various techniques and methodologies used to evaluate quality parameters such as colour, water holding capacity (WHC), pH, moisture, texture, and intramuscular fat, among others related to animal origin, breed and handling, are discussed. In addition, the benefits and practical applications of the technology in the meat industry are examined, such as the automation of inspection processes, accurate product classification, traceability, and food safety. While the potential of artificial intelligence associated with sensor development in the meat industry is promising, it is crucial to recognize that this is an evolving field. This technology offers innovative solutions that enable efficient, cost effective, and consumer-oriented production. However, it also underlines the urgent need for further research and development of new techniques and tools such as artificial intelligence algorithms, the development of more sensitive and accurate multispectral sensors, advances in computer vision for 3D image analysis and automated detection, and the integration of advanced ultrasonography with other technologies. Also crucial is the development of autonomous robotic systems for the automation of inspection processes, the implementation of real-time monitoring systems for traceability and food safety, and the creation of intuitive interfaces for human-machine interaction. In addition, the automation of sensory analysis and the optimisation of sustainability and energy efficiency are key areas that require immediate attention to address the current challenges in this agri-food and agri-industrial sector, highlighting and emphasising the importance of ongoing innovation in the field. To Project CUI 2432072: ‘Mejoramiento de la disponibilidad de material genético de ganado bovino con alto valor a nivel nacional. 7 departamentos’ of the Ministry of Agrarian Development and Irrigation – Peru. 2024-09-30T19:04:59Z 2024-09-30T19:04:59Z 2024-09-20 info:eu-repo/semantics/article Alvarez-García, W.Y.; Mendoza, L.; Muñoz-Vílchez, Y.Y.; Nuñez-Melgar, D.C.; & Quilcate-Pairazaman, C. (2024). Implementing artificial intelligence to measure meat quality parameters in local market traceability processes. International Journal of Food Science and Technology (2024). doi:10.1111/ijfs.17546 1365-2621 https://hdl.handle.net/20.500.12955/2589 https://doi.org/10.1111/ijfs.17546 eng urn:issn:1365-2621 International Journal of Food Science and Technology info:eu-repo/semantics/openAccess https://creativecommons.org/licenses/by/4.0/ application/pdf application/pdf John Wiley & Sons Inc. GB Instituto Nacional de Innovación Agraria Repositorio Institucional - INIA
spellingShingle Artificial Intelligence
Computer vision
Hyperspectral imaging
Meat quality
Ohmic
Ultrasound
https://purl.org/pe-repo/ocde/ford#4.02.01
Artificial Intelligence
Inteligencia artificial
Multispectral imagery
Imagen multiespectral
Meat quality
Calidad de la carne
Ultrasound
Ultrasonido
Alvarez García, Wuesley Yusmein
Mendoza, Laura
Muñoz Vílchez, Yudith Yohany
Casanova Núñez Melgar, David
Quilcate Pairazaman, Carlos
Implementing artificial intelligence to measure meat quality parameters in local market traceability processes
title Implementing artificial intelligence to measure meat quality parameters in local market traceability processes
title_full Implementing artificial intelligence to measure meat quality parameters in local market traceability processes
title_fullStr Implementing artificial intelligence to measure meat quality parameters in local market traceability processes
title_full_unstemmed Implementing artificial intelligence to measure meat quality parameters in local market traceability processes
title_short Implementing artificial intelligence to measure meat quality parameters in local market traceability processes
title_sort implementing artificial intelligence to measure meat quality parameters in local market traceability processes
topic Artificial Intelligence
Computer vision
Hyperspectral imaging
Meat quality
Ohmic
Ultrasound
https://purl.org/pe-repo/ocde/ford#4.02.01
Artificial Intelligence
Inteligencia artificial
Multispectral imagery
Imagen multiespectral
Meat quality
Calidad de la carne
Ultrasound
Ultrasonido
url https://hdl.handle.net/20.500.12955/2589
https://doi.org/10.1111/ijfs.17546
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