Simanungkalit Gamaliel, Barwick Jamie, Cowley Frances, Dobos Robin, Hegarty Roger
Ruminant Research Group (RRG), School of Environmental and Rural Science, University of New England, Armidale, NSW 2351, Australia.
Precision Agriculture Research Group (PARG), School of Science and Technology, University of New England, Armidale, NSW 2351, Australia.
Animals (Basel). 2021 Apr 17;11(4):1153. doi: 10.3390/ani11041153.
Identifying the licking behaviour in beef cattle may provide a means to measure time spent licking for estimating individual block supplement intake. This study aimed to determine the effectiveness of tri-axial accelerometers deployed in a neck-collar and an ear-tag, to characterise the licking behaviour of beef cattle in individual pens. Four, 2-year-old Angus steers weighing 368 ± 9.3 kg (mean ± SD) were used in a 14-day study. Four machine learning (ML) algorithms (decision trees [DT], random forest [RF], support vector machine [SVM] and -nearest neighbour [kNN]) were employed to develop behaviour classification models using three different ethograms: (1) licking vs. eating vs. standing vs. lying; (2) licking vs. eating vs. inactive; and (3) licking vs. non-licking. Activities were video-recorded from 1000 to 1600 h daily when access to supplement was provided. The RF algorithm exhibited a superior performance in all ethograms across the two deployment modes with an overall accuracy ranging from 88% to 98%. The neck-collar accelerometers had a better performance than the ear-tag accelerometers across all ethograms with sensitivity and positive predictive value (PPV) ranging from 95% to 99% and 91% to 96%, respectively. Overall, the tri-axial accelerometer was capable of identifying licking behaviour of beef cattle in a controlled environment. Further research is required to test the model under actual grazing conditions.
识别肉牛的舔舐行为可能提供一种测量舔舐时间的方法,以估计个体对块状补充饲料的摄入量。本研究旨在确定部署在颈圈和耳标的三轴加速度计在表征个体围栏中肉牛舔舐行为方面的有效性。在一项为期14天的研究中,使用了4头体重为368±9.3千克(平均值±标准差)的2岁安格斯阉牛。采用四种机器学习(ML)算法(决策树[DT]、随机森林[RF]、支持向量机[SVM]和k近邻[kNN]),使用三种不同的行为图谱开发行为分类模型:(1)舔舐与进食与站立与躺卧;(2)舔舐与进食与不活动;(3)舔舐与非舔舐。每天10:00至16:00提供补充饲料时,对活动进行视频记录。在两种部署模式下,RF算法在所有行为图谱中均表现出卓越的性能,总体准确率在88%至98%之间。在所有行为图谱中,颈圈加速度计的性能优于耳标加速度计,灵敏度和阳性预测值(PPV)分别在95%至99%和91%至96%之间。总体而言,三轴加速度计能够在受控环境中识别肉牛的舔舐行为。需要进一步研究以在实际放牧条件下测试该模型。