Thompson Robin, Matheson Stephanie M, Plötz Thomas, Edwards Sandra A, Kyriazakis Ilias
School of Agriculture, Food and Rural Development, Newcastle University, Newcastle upon Tyne, UK; Open Lab, Newcastle University, Newcastle upon Tyne, UK.
School of Agriculture, Food and Rural Development, Newcastle University, Newcastle upon Tyne, UK.
Comput Electron Agric. 2016 Sep;127:521-530. doi: 10.1016/j.compag.2016.07.017.
This paper presents a novel approach to automated classification and quantification of sow postures and posture transitions that may enable large scale and accurate continuous behaviour assessment on farm. Automatic classification and quantification of postures and posture transitions in domestic animals has substantial potential to enhance their welfare and productivity. Analysis of such behaviours in farrowing sows can highlight the need for human intervention or lead to the prediction of movement patterns that are potentially dangerous for their piglets, such as crushing when the sow lies down. Data were recorded by a tri-axial accelerometer secured to the hind-end of each sow, in a deployment that involved six sows over the period around parturition. The posture state (standing, sitting, lateral and sternal lying) was automatically classified for the full dataset with a mean score (a measure of predictive performance between 0 and 1) of 0.78. Sitting was shown to present a greater challenge to classification with a score of 0.54, compared to the lateral lying postures, which were classified with an average score of 0.91. Posture transitions were detected with a score of 0.79. We automatically extracted and visualized a range of features that characterise the manner in which the sows changed posture in order to provide comparative descriptors of sow activity and lying style that can be used to assess the influence of genetics or housing design. The methodology presented in this paper can be applied in large scale deployments with potential for enhancing animal welfare and productivity on farm.
本文提出了一种新颖的方法,用于对母猪姿势及其转换进行自动分类和量化,这可能有助于在农场进行大规模且准确的连续行为评估。对家畜的姿势及其转换进行自动分类和量化,在提升其福利和生产力方面具有巨大潜力。对分娩母猪的此类行为进行分析,可凸显人工干预的必要性,或预测出对其仔猪有潜在危险的运动模式,比如母猪躺下时压死仔猪的情况。通过固定在每头母猪后端的三轴加速度计记录数据,此次部署在分娩前后期间涉及六头母猪。对整个数据集自动分类姿势状态(站立、坐、侧卧和腹卧),平均得分(预测性能的一种度量,范围在0到1之间)为0.78。结果显示,与平均得分0.91的侧卧姿势相比,坐的姿势在分类上更具挑战性,其得分为0.54。姿势转换的检测得分是0.79。我们自动提取并可视化了一系列表征母猪姿势变化方式的特征,以便提供母猪活动和躺卧方式的比较描述符,可用于评估遗传因素或饲养设计的影响。本文介绍的方法可应用于大规模部署,具有提升农场动物福利和生产力的潜力。