Neethirajan Suresh
Farmworx, Animal Sciences Department, Wageningen University & Research, Wageningen, Netherlands.
Front Vet Sci. 2021 Aug 2;8:715261. doi: 10.3389/fvets.2021.715261. eCollection 2021.
In order to promote the welfare of farm animals, there is a need to be able to recognize, register and monitor their affective states. Numerous studies show that just like humans, non-human animals are able to feel pain, fear and joy amongst other emotions, too. While behaviorally testing individual animals to identify positive or negative states is a time and labor consuming task to complete, artificial intelligence and machine learning open up a whole new field of science to automatize emotion recognition in production animals. By using sensors and monitoring indirect measures of changes in affective states, self-learning computational mechanisms will allow an effective categorization of emotions and consequently can help farmers to respond accordingly. Not only will this possibility be an efficient method to improve animal welfare, but early detection of stress and fear can also improve productivity and reduce the need for veterinary assistance on the farm. Whereas affective computing in human research has received increasing attention, the knowledge gained on human emotions is yet to be applied to non-human animals. Therefore, a multidisciplinary approach should be taken to combine fields such as affective computing, bioengineering and applied ethology in order to address the current theoretical and practical obstacles that are yet to be overcome.
为了促进农场动物的福利,需要能够识别、记录和监测它们的情感状态。大量研究表明,与人类一样,非人类动物也能够感受疼痛、恐惧和喜悦等多种情绪。虽然通过行为测试个体动物来识别其积极或消极状态是一项耗时费力的任务,但人工智能和机器学习开辟了一个全新的科学领域,可实现生产动物情感识别的自动化。通过使用传感器并监测情感状态变化的间接指标,自学习计算机制将能够有效地对情绪进行分类,从而帮助农民做出相应反应。这种可能性不仅是改善动物福利的有效方法,而且早期发现压力和恐惧还可以提高生产力,并减少农场对兽医援助的需求。尽管情感计算在人类研究中受到了越来越多的关注,但关于人类情感的知识尚未应用于非人类动物。因此,应采取多学科方法,将情感计算、生物工程和应用动物行为学等领域结合起来,以解决目前尚未克服的理论和实际障碍。