RGB-based machine vision for enhanced pig disease symptoms monitoring and health management: a review.

IF 3.2 3区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Journal of Animal Science and Technology Pub Date : 2025-01-01 Epub Date: 2025-01-31 DOI:10.5187/jast.2024.e111
Md Nasim Reza, Kyu-Ho Lee, Eliezel Habineza, Samsuzzaman, Hyunjin Kyoung, Young Kyoung Choi, Gookhwan Kim, Sun-Ok Chung
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Abstract

The growing demands of sustainable, efficient, and welfare-conscious pig husbandry have necessitated the adoption of advanced technologies. Among these, RGB imaging and machine vision technology may offer a promising solution for early disease detection and proactive disease management in advanced pig husbandry practices. This review explores innovative applications for monitoring disease symptoms by assessing features that directly or indirectly indicate disease risk, as well as for tracking body weight and overall health. Machine vision and image processing algorithms enable for the real-time detection of subtle changes in pig appearance and behavior that may signify potential health issues. Key indicators include skin lesions, inflammation, ocular and nasal discharge, and deviations in posture and gait, each of which can be detected non-invasively using RGB cameras. Moreover, when integrated with thermal imaging, RGB systems can detect fever, a reliable indicator of infection, while behavioral monitoring systems can track abnormal posture, reduced activity, and altered feeding and drinking habits, which are often precursors to illness. The technology also facilitates the analysis of respiratory symptoms, such as coughing or sneezing (enabling early identification of respiratory diseases, one of the most significant challenges in pig farming), and the assessment of fecal consistency and color (providing valuable insights into digestive health). Early detection of disease or poor health supports proactive interventions, reducing mortality and improving treatment outcomes. Beyond direct symptom monitoring, RGB imaging and machine vision can indirectly assess disease risk by monitoring body weight, feeding behavior, and environmental factors such as overcrowding and temperature. However, further research is needed to refine the accuracy and robustness of algorithms in diverse farming environments. Ultimately, integrating RGB-based machine vision into existing farm management systems could provide continuous, automated surveillance, generating real-time alerts and actionable insights; these can support data-driven disease prevention strategies, reducing the need for mass medication and the development of antimicrobial resistance.

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基于rgb的机器视觉增强猪疾病症状监测和健康管理综述
对可持续、高效和有福利意识的养猪业日益增长的需求使采用先进技术成为必要。其中,RGB成像和机器视觉技术可能为先进养猪业的早期疾病检测和主动疾病管理提供有前途的解决方案。这篇综述探讨了通过评估直接或间接表明疾病风险的特征来监测疾病症状以及跟踪体重和整体健康的创新应用。机器视觉和图像处理算法能够实时检测猪的外观和行为的细微变化,这些变化可能预示着潜在的健康问题。关键指标包括皮肤病变、炎症、眼鼻分泌物以及姿势和步态的偏差,每一项都可以使用RGB相机进行无创检测。此外,当与热成像相结合时,RGB系统可以检测发烧,这是感染的可靠指标,而行为监测系统可以跟踪异常姿势、活动减少以及饮食习惯的改变,这些通常是疾病的前兆。该技术还有助于分析呼吸道症状,如咳嗽或打喷嚏(能够早期识别呼吸道疾病,这是养猪业面临的最大挑战之一),以及评估粪便的稠度和颜色(为消化系统健康提供有价值的见解)。早期发现疾病或健康状况不佳有助于采取积极干预措施,降低死亡率并改善治疗结果。除了直接的症状监测外,RGB成像和机器视觉还可以通过监测体重、摄食行为以及过度拥挤和温度等环境因素间接评估疾病风险。然而,需要进一步的研究来完善算法在不同农业环境中的准确性和鲁棒性。最终,将基于rgb的机器视觉集成到现有的农场管理系统中,可以提供连续的自动化监控,生成实时警报和可操作的见解;这些可以支持数据驱动的疾病预防战略,减少对大规模药物的需求和抗菌素耐药性的发展。
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来源期刊
Journal of Animal Science and Technology
Journal of Animal Science and Technology Agricultural and Biological Sciences-Food Science
CiteScore
4.50
自引率
8.70%
发文量
96
审稿时长
7 weeks
期刊介绍: Journal of Animal Science and Technology (J. Anim. Sci. Technol. or JAST) is a peer-reviewed, open access journal publishing original research, review articles and notes in all fields of animal science. Topics covered by the journal include: genetics and breeding, physiology, nutrition of monogastric animals, nutrition of ruminants, animal products (milk, meat, eggs and their by-products) and their processing, grasslands and roughages, livestock environment, animal biotechnology, animal behavior and welfare. Articles generally report research involving beef cattle, dairy cattle, pigs, companion animals, goats, horses, and sheep. However, studies involving other farm animals, aquatic and wildlife species, and laboratory animal species that address fundamental questions related to livestock and companion animal biology will also be considered for publication. The Journal of Animal Science and Technology (J. Anim. Technol. or JAST) has been the official journal of The Korean Society of Animal Science and Technology (KSAST) since 2000, formerly known as The Korean Journal of Animal Sciences (launched in 1956).
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