Massari Juliana Maria, de Moura Daniella Jorge, de Alencar Nääs Irenilza, Pereira Danilo Florentino, Branco Tatiane
College of Agricultural Engineering, State University of Campinas, 501 Candido Rondon Avenue, Campinas, São Paulo 13083-875, Brazil.
Graduate Program in Production Engineering, Universidade Paulista, 1212 Dr. Bacelar Street, São Paulo 04026-002, Brazil.
Animals (Basel). 2022 Mar 28;12(7):846. doi: 10.3390/ani12070846.
Computer-vision systems for herd detection and monitoring are increasingly present in precision livestock. This technology provides insights into how environmental variations affect the group's movement pattern. We hypothesize that the cluster and unrest indexes based on computer vision (CV) can simultaneously assess the movement variation of reared broilers under different environmental conditions. The present study is a proof of principle and was carried out with twenty broilers (commercial strain Cobb), housed in a controlled-environment chamber. The birds were divided into two groups, one housed in an enriched environment and the control. Both groups were subjected to thermal comfort conditions and heat stress. Image analysis of individual or group behavior is the basis for generating animal-monitoring indexes, capable of creating real-time alert systems, predicting welfare, health, environment, and production status. The results obtained in the experiment in a controlled environment allowed the validation of the simultaneous application of cluster and unrest indexes by monitoring the movement of the group of broilers under different environmental conditions. Observational results also suggest that research in more significant proportions should be carried out to evaluate the potential positive impact of environmental enrichment in poultry production. The complexity of the environment is a factor to be considered in creating alert systems for detecting heat stress in broiler production. In large groups, birds' movement and grouping patterns may differ; therefore, the CV system and indices will need to be recalibrated.
用于畜群检测和监测的计算机视觉系统在精准畜牧领域越来越普遍。这项技术能深入了解环境变化如何影响群体的运动模式。我们假设基于计算机视觉(CV)的聚类和不安指数可以同时评估不同环境条件下饲养肉鸡的运动变化。本研究是一项原理验证,使用了20只肉鸡(商业品种科宝),饲养在可控环境舱中。这些鸡被分为两组,一组饲养在丰富环境中,另一组为对照组。两组都经历了热舒适条件和热应激。对个体或群体行为的图像分析是生成动物监测指标的基础,这些指标能够创建实时警报系统,预测福利、健康、环境和生产状况。在可控环境中进行的实验所获得的结果,通过监测不同环境条件下肉鸡群体的运动,验证了聚类和不安指数的同时应用。观察结果还表明,应该进行更大规模的研究,以评估环境富集对家禽生产的潜在积极影响。环境的复杂性是在创建用于检测肉鸡生产中热应激的警报系统时需要考虑的一个因素。在大群体中,鸡的运动和分组模式可能会有所不同;因此,计算机视觉系统和指数需要重新校准。