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评估用于对牧场奶牛行为进行分类的不同传感器系统。

Evaluation of Different Sensor Systems for Classifying the Behavior of Dairy Cows on Pasture.

作者信息

Pichlbauer Barbara, Chapa Gonzalez Jose Maria, Bobal Martin, Guse Christian, Iwersen Michael, Drillich Marc

机构信息

Center for Veterinary Systems Transformation and Sustainability, Clinical Department for Farm Animals and Food System Science, University of Veterinary Medicine, 1210 Vienna, Austria.

Unit for Reproduction Medicine and Udder Health, Faculty of Veterinary Medicine, Freie Universität Berlin, 14163 Berlin, Germany.

出版信息

Sensors (Basel). 2024 Dec 3;24(23):7739. doi: 10.3390/s24237739.

Abstract

Monitoring animal behavior using sensor technologies requires prior testing under varying conditions because behaviors can differ significantly, such as between grazing and confined cows. This study aimed to validate several sensor systems for classifying rumination and lying behaviors in cows on pasture under different environmental conditions, compare the sensors' performance at different time resolutions, and evaluate a correction algorithm for rumination data. Ten Simmental dairy cows were monitored on pasture, each simultaneously equipped with an ear-tag accelerometer (ET), two different leg-mounted accelerometers (LMs), and a noseband sensor (NB). Indirect visual observations using drone-recorded video footage served as the gold standard for validation. The concordance correlation coefficient (CCC) for rumination time was very high for both the ET and NB (0.91-0.96) at a 10 min time resolution. Applying the correction algorithm to 1 min data improved the CCC for the NB from 0.68 to 0.89. For lying time, the CCC was moderate for the ET (0.55) but nearly perfect for both LMs (0.99). In conclusion, both sensors evaluated for classifying rumination are suitable for cows on pasture. We recommend using a correction algorithm for 1 min NB data. For the measurement of lying time, the LMs significantly outperformed the ET.

摘要

使用传感器技术监测动物行为需要事先在不同条件下进行测试,因为行为可能存在显著差异,例如放牧奶牛和圈养奶牛之间的行为差异。本研究旨在验证几种传感器系统,用于在不同环境条件下对牧场上奶牛的反刍和躺卧行为进行分类,比较传感器在不同时间分辨率下的性能,并评估反刍数据的校正算法。在牧场上对10头西门塔尔奶牛进行了监测,每头牛同时配备了一个耳标加速度计(ET)、两种不同的腿部安装加速度计(LM)和一个鼻带传感器(NB)。使用无人机录制的视频片段进行的间接视觉观察作为验证的金标准。在10分钟的时间分辨率下,ET和NB的反刍时间一致性相关系数(CCC)都非常高(0.91 - 0.96)。将校正算法应用于1分钟的数据,使NB的CCC从0.68提高到0.89。对于躺卧时间,ET的CCC适中(0.55),而两种LM的CCC几乎完美(0.99)。总之,评估用于分类反刍的两种传感器都适用于牧场上的奶牛。我们建议对1分钟的NB数据使用校正算法。对于躺卧时间的测量,LM的性能明显优于ET。

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