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自动预警猪咬尾:3D 摄像机可在爆发前检测到下降的尾巴姿势。

Automatic early warning of tail biting in pigs: 3D cameras can detect lowered tail posture before an outbreak.

机构信息

SRUC, Edinburgh, United Kingdom.

Royal (Dick) School of Veterinary Studies, University of Edinburgh, Easter Bush, Midlothian, United Kingdom.

出版信息

PLoS One. 2018 Apr 4;13(4):e0194524. doi: 10.1371/journal.pone.0194524. eCollection 2018.

Abstract

Tail biting is a major welfare and economic problem for indoor pig producers worldwide. Low tail posture is an early warning sign which could reduce tail biting unpredictability. Taking a precision livestock farming approach, we used Time-of-flight 3D cameras, processing data with machine vision algorithms, to automate the measurement of pig tail posture. Validation of the 3D algorithm found an accuracy of 73.9% at detecting low vs. not low tails (Sensitivity 88.4%, Specificity 66.8%). Twenty-three groups of 29 pigs per group were reared with intact (not docked) tails under typical commercial conditions over 8 batches. 15 groups had tail biting outbreaks, following which enrichment was added to pens and biters and/or victims were removed and treated. 3D data from outbreak groups showed the proportion of low tail detections increased pre-outbreak and declined post-outbreak. Pre-outbreak, the increase in low tails occurred at an increasing rate over time, and the proportion of low tails was higher one week pre-outbreak (-1) than 2 weeks pre-outbreak (-2). Within each batch, an outbreak and a non-outbreak control group were identified. Outbreak groups had more 3D low tail detections in weeks -1, +1 and +2 than their matched controls. Comparing 3D tail posture and tail injury scoring data, a greater proportion of low tails was associated with more injured pigs. Low tails might indicate more than just tail biting as tail posture varied between groups and over time and the proportion of low tails increased when pigs were moved to a new pen. Our findings demonstrate the potential for a 3D machine vision system to automate tail posture detection and provide early warning of tail biting on farm.

摘要

咬尾是全球室内养猪生产者面临的一个主要福利和经济问题。尾巴低垂是一种早期预警信号,可以降低咬尾的不可预测性。采用精准养殖方法,我们使用飞行时间 3D 摄像机,通过机器视觉算法处理数据,实现了猪尾巴姿势的自动测量。3D 算法的验证结果表明,检测低尾与非低尾的准确率为 73.9%(敏感性 88.4%,特异性 66.8%)。23 组每组 29 头未去尾(未去尾)的猪在典型商业条件下分 8 批饲养。15 组发生了咬尾事件,随后在猪圈中添加了丰富的环境,将咬尾者和/或受害者移除并进行了治疗。来自爆发组的 3D 数据显示,低尾检测比例在爆发前增加,爆发后下降。爆发前,随着时间的推移,低尾的增加呈递增趋势,爆发前一周(-1)的低尾比例高于爆发前两周(-2)。在每一批中,确定了一个爆发组和一个非爆发对照组。与对照组相比,爆发组在周-1、+1 和+2 时的 3D 低尾检测次数更多。将 3D 尾巴姿势和尾巴受伤评分数据进行比较,更多的低尾与更多受伤的猪有关。低尾可能不仅仅是咬尾的表现,因为尾巴姿势在组间和时间上都有所不同,而且当猪被转移到新猪圈时,低尾的比例会增加。我们的研究结果表明,3D 机器视觉系统具有自动检测尾巴姿势和在农场提前预警咬尾的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c535/5884497/215cc1ca5bd1/pone.0194524.g001.jpg

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