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Early and non-intrusive lameness detection in dairy cows using 3-dimensional video

机译:使用三维视频的乳制品奶牛早期和非侵入性跛行检测

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摘要

Lameness is a major issue in dairy herds and its early and automated detection offers animal welfare benefits together with potentially high commercial savings for farmers. Current advancements in automated detection have not achieved a sensitive measure for classifying early lameness. A novel proxy for lameness using 3-dimensional (3D) depth video data to analyse the animal's gait asymmetry is introduced. This dynamic proxy is derived from the height variations in the hip joint during walking. The video capture setup is completely covert and it facilitates an automated process. The animals are recorded using an overhead 3D depth camera as they walk freely in single file after the milking session. A 3D depth image of the cow's body is used to automatically track key regions such as the hooks and the spine. The height movements are calculated from these regions to form the locomotion signals of this study, which are analysed using a Hilbert transform. Our results using a 1-5 locomotion scoring (LS) system on 22 Holstein Friesian dairy cows, a threshold could be identified between LS 1 and 2 (and above). This boundary is important as it represents the earliest point in time at which a cow is considered lame, and its early detection could improve intervention outcome thereby minimising losses and reducing animal suffering. Using a linear Support Vector Machine (SVM) binary classification model, the threshold achieved an accuracy of 95.7% with a 100% sensitivity (detecting lame cows) and 75% specificity (detecting non-lame cows). (c) 2016 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:跛脚是乳制品牛群的主要问题,其早期和自动化检测提供了动物福利,以及农民的潜在高商业储蓄。自动检测中的当前进步尚未实现对分类早期跛足的敏感措施。介绍了使用三维(3D)深度视频数据来分析动物的步态不对称的跛足的新颖性代理。这种动态代理源自行走期间髋关节的高度变化。视频捕获设置完全隐蔽,它有助于自动化过程。使用架空3D深度相机记录动物,因为它们在挤奶会议后自由行走。母牛体的3D深度图像用于自动跟踪诸如钩子和脊柱的关键区域。从这些区域计算高度运动以形成本研究的运动量信号,其使用Hilbert变换进行分析。我们的结果在荷斯坦·弗里斯奶牛22艘荷斯坦·弗里斯奶牛(Holstein Friesian奶牛)使用1-5个机置评分(LS)系统,可以在LS 1和2(及以上)之间识别阈值。这种边界很重要,因为它代表了牛被认为是跛脚的最早时间点,其早期检测可以提高干预结果,从而最大限度地减少损失和减少动物痛苦。使用线性支持向量机(SVM)二进制分类模型,阈值达到了95.7%的精度,100%灵敏度(检测跛脚牛)和75%的特异性(检测非跛脚牛)。 (c)2016年IAGRE。 elsevier有限公司出版。保留所有权利。

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