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评价冰标腿传感器及其衍生模型在预测行为方面的表现,该模型使用的是牧场肉牛。

Evaluation of the IceTag leg sensor and its derivative models to predict behaviour, using beef cattle on rangeland.

机构信息

Department of Natural Resources, Institute of Plant Sciences, Agricultural Research Organization - The Volcani Center, 68 HaMaccabim Road, P.O.B. 15159, Rishon LeZion, 7505101, Israel.

Department of Natural Resources, Institute of Plant Sciences, Agricultural Research Organization - The Volcani Center, 68 HaMaccabim Road, P.O.B. 15159, Rishon LeZion, 7505101, Israel.

出版信息

J Neurosci Methods. 2018 Apr 15;300:127-137. doi: 10.1016/j.jneumeth.2017.06.001. Epub 2017 Jun 2.

Abstract

BACKGROUND

There is interest in using animal-mounted sensors to provide the detailed timeline of domesticated ruminant behaviour on rangelands.

NEW METHOD

Working with beef cattle, we evaluated the pedometer-like IceTag device (IceRobotics, Edinburgh, Scotland) that records step events, leg movement and body position (upright versus lying). We used partition analysis to compare behaviour as inferred from the device data with true behaviour as coded at high resolution from carefully synchronized video observations of 5-min duration.

RESULTS

Malfunctions reduced the target dataset by 7%. The correspondence between IceTag and video-coded step counts was excellent (r=0.97), and the device's indications of upright or lying corresponded well (error rate=1.4%) to the video-coded values. However, the proportion of steps that could be matched individually was relatively low (65% at a tolerance of 0.5s), and the indicated start of a lying bout was often triggered by leg movements of an upright animal. Partition analysis of Grazing versus Not-Grazing yielded an overall error rate of 22%. In both three- and four-way classifications of behaviour (Graze, Rest, Travel; Graze, Stand, Lie, Travel) error rates were low for non-graze behaviours, but only 25% of Graze observations were correctly classified; the overall error rate was 22%.

COMPARISON WITH EXISTING METHOD(S): The IceTag device performed well in mapping the diurnal patterns of animal position and step rate, but less well in separating grazing from upright resting.

CONCLUSIONS

Our results suggest that pedometry is not the ideal method for classifying behaviour when grazing is of paramount interest.

摘要

背景

人们对使用动物佩戴的传感器来提供家畜在牧场上的详细行为时间线很感兴趣。

新方法

我们与肉牛合作,评估了类似于计步器的 IceTag 设备(来自苏格兰爱丁堡的 IceRobotics),该设备记录步数、腿部运动和身体姿势(直立与躺下)。我们使用分区分析将设备数据推断的行为与通过精心同步的 5 分钟视频观察以高分辨率编码的真实行为进行比较。

结果

故障将目标数据集减少了 7%。IceTag 与视频编码步数的对应关系非常好(r=0.97),并且设备指示的直立或躺下与视频编码值非常吻合(错误率=1.4%)。然而,能够逐个匹配的步数比例相对较低(在 0.5s 的容差下为 65%),并且指示躺下开始的时间通常是由直立动物的腿部运动触发的。 Grazing 与 Not-Grazing 的分区分析得出总体错误率为 22%。在行为的三向和四向分类(Grazing、Rest、Travel;Grazing、Stand、Lie、Travel)中,非 Grazing 行为的错误率都很低,但只有 25%的 Grazing 观察结果被正确分类;总体错误率为 22%。

与现有方法的比较

IceTag 设备在绘制动物位置和步速的昼夜模式方面表现良好,但在区分放牧和直立休息方面表现不佳。

结论

我们的结果表明,当放牧是最关心的问题时,计步并不是分类行为的理想方法。

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