Ciminelli Giulia, Witham Claire, Bateson Melissa
Institute of Bioscience, Faculty of Medical Sciences, Henry Wellcome Building, Framlington Place, Newcastle University, Newcastle NE2 4HH, UK.
Centre for Macaques at Harwell, Medical Research Council, Salisbury, UK.
Anim Welf. 2024 Dec 9;33:e59. doi: 10.1017/awf.2024.65. eCollection 2024.
Environmental enrichment programmes are widely used to improve welfare of captive and laboratory animals, especially non-human primates. Monitoring enrichment use over time is crucial, as animals may habituate and reduce their interaction with it. In this study we aimed to monitor the interaction with enrichment items in groups of rhesus macaques (), each consisting of an average of ten individuals, living in a breeding colony. To streamline the time-intensive task of assessing enrichment programmes we automated the evaluation process by using machine learning technologies. We built two computer vision-based pipelines to evaluate monkeys' interactions with different enrichment items: a white drum containing raisins and a non-food-based puzzle. The first pipeline analyses the usage of enrichment items in nine groups, both when it contains food and when it is empty. The second pipeline counts the number of monkeys interacting with a puzzle across twelve groups. The data derived from the two pipelines reveal that the macaques consistently express interest in the food-based white drum enrichment, even several months after its introduction. The puzzle enrichment was monitored for one month, showing a gradual decline in interaction over time. These pipelines are valuable for assessing enrichment by minimising the time spent on animal observation and data analysis; this study demonstrates that automated methods can consistently monitor macaque engagement with enrichments, systematically tracking habituation responses and long-term effectiveness. Such advancements have significant implications for enhancing animal welfare, enabling the discontinuation of ineffective enrichments and the adaptation of enrichment plans to meet the animals' needs.
环境丰富化方案被广泛用于改善圈养动物和实验动物的福利,尤其是非人灵长类动物。随着时间的推移监测丰富化设施的使用情况至关重要,因为动物可能会产生习惯化并减少与之的互动。在本研究中,我们旨在监测恒河猴群体(每组平均由十只个体组成,生活在一个繁殖群体中)与丰富化设施的互动情况。为了简化评估丰富化方案这项耗时的任务,我们使用机器学习技术使评估过程自动化。我们构建了两条基于计算机视觉的流程来评估猴子与不同丰富化设施的互动:一个装有葡萄干的白色鼓状物和一个非食物类拼图。第一条流程分析九个组在丰富化设施装有食物和为空时的使用情况。第二条流程统计十二个组中与拼图互动的猴子数量。从这两条流程得出的数据显示,猕猴对基于食物的白色鼓状物丰富化设施一直表现出兴趣,即使在引入几个月后也是如此。对拼图丰富化设施进行了为期一个月的监测,结果显示随着时间的推移互动逐渐减少。这些流程对于通过最小化动物观察和数据分析所花费的时间来评估丰富化设施很有价值;本研究表明自动化方法可以持续监测猕猴与丰富化设施的互动情况,系统地跟踪习惯化反应和长期效果。此类进展对提高动物福利具有重大意义,能够停止无效的丰富化措施并调整丰富化计划以满足动物的需求。