畜牧业数字化转型:利用人工智能实施新兴技术

IF 4.3 2区 农林科学 Q1 VETERINARY SCIENCES
S. Fuentes, Claudia Gonzalez Viejo, E. Tongson, F. Dunshea
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引用次数: 13

摘要

摘要牲畜福利评估有助于监测动物健康状况,以保持生产力,识别伤害和压力,避免恶化。它也成为一种重要的营销策略,因为它增加了消费者对动物治疗进行更人性化转变的压力。专业人员和兽医的常见视觉福利做法可能是主观的,成本高昂,需要训练有素的人员。遥感、计算机视觉和人工智能(AI)的最新进展有助于开发牲畜生物识别的新兴技术,以提取与动物福利相关的关键生理参数。这篇综述通过描述(i)用于健康和福利评估的生物识别技术,(ii)用于可追溯性的牲畜识别,以及(iii)机器和深度学习在牲畜中的应用来解决复杂问题,从而讨论畜牧业的数字化转型。这篇综述还包括对这些主题和迄今为止所做研究的批判性评估,提出了在商业农场部署人工智能模型的未来步骤。大多数研究都集中在没有应用程序或行业部署的模型开发上。此外,报告的生物特征方法、准确性和机器学习方法存在一些不一致性,阻碍了验证。因此,需要开发基于人工智能的更高效、非接触和可靠的方法来评估牲畜的健康、福利和生产力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The livestock farming digital transformation: implementation of new and emerging technologies using artificial intelligence
Abstract Livestock welfare assessment helps monitor animal health status to maintain productivity, identify injuries and stress, and avoid deterioration. It has also become an important marketing strategy since it increases consumer pressure for a more humane transformation in animal treatment. Common visual welfare practices by professionals and veterinarians may be subjective and cost-prohibitive, requiring trained personnel. Recent advances in remote sensing, computer vision, and artificial intelligence (AI) have helped developing new and emerging technologies for livestock biometrics to extract key physiological parameters associated with animal welfare. This review discusses the livestock farming digital transformation by describing (i) biometric techniques for health and welfare assessment, (ii) livestock identification for traceability and (iii) machine and deep learning application in livestock to address complex problems. This review also includes a critical assessment of these topics and research done so far, proposing future steps for the deployment of AI models in commercial farms. Most studies focused on model development without applications or deployment for the industry. Furthermore, reported biometric methods, accuracy, and machine learning approaches presented some inconsistencies that hinder validation. Therefore, it is required to develop more efficient, non-contact and reliable methods based on AI to assess livestock health, welfare, and productivity.
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来源期刊
Animal Health Research Reviews
Animal Health Research Reviews VETERINARY SCIENCES-
CiteScore
6.70
自引率
0.00%
发文量
8
期刊介绍: Animal Health Research Reviews provides an international forum for the publication of reviews and commentaries on all aspects of animal health. Papers include in-depth analyses and broader overviews of all facets of health and science in both domestic and wild animals. Major subject areas include physiology and pharmacology, parasitology, bacteriology, food and environmental safety, epidemiology and virology. The journal is of interest to researchers involved in animal health, parasitologists, food safety experts and academics interested in all aspects of animal production and welfare.
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