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首页> 外文期刊>Archives of Animal Nutrition >Validation of the RumiWatch Converter V0.7.4.5 classification accuracy for the automatic monitoring of behavioural characteristics in dairy cows
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Validation of the RumiWatch Converter V0.7.4.5 classification accuracy for the automatic monitoring of behavioural characteristics in dairy cows

机译:RumiWatch转换器v0.7.4.4的验证乳制奶牛自动监测行为特征的分类准确性

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摘要

The objective of the present study was to validate the accuracy of algorithms, implemented in the currently available RumiWatch Converter (RWC) version V0.7.4.5 of the RumiWatch System (RWS), for the classification of behavioural characteristics from jaw and head movements which are monitored by a noseband halter comprising a pressure sensor and a triaxial accelerometer. The accurate classification of behavioural characteristics in different time resolutions is critical for the usage of the RWS for scientific and practical purposes as chewing behaviour provides essential indicators for the assessment of diet adequacy in dairy cows. To validate the RWC V0.7.4.5 classification accuracy for behavioural characteristics of rumination, eating, drinking, other activity and ruminating chews per bolus by direct observation as reference method, 14 dairy cows participated in the trial. Concordance between the consolidated 1-min and 1-h classification results was assessed. The RWC V0.7.4.5 classified only rumination and ruminating chews per bolus precisely, whereas an algorithm optimisation for the classification of eating, drinking and other activity is required. Additionally, classification results from the 1-min and 1-h time summaries were not in agreement with each other except for rumination.
机译:本研究的目的是验证在Rumiwatch系统(RWS)的当前可用的RumiPatch转换器(RWC)V0.7.4中实现的算法的准确性,用于从下颚和头部移动的行为特征分类由带有压力传感器和三轴加速度计的鼻带斜背监测。在不同时间分辨率中的性行为特征的准确分类对于使用科学和实际目的的rws的使用是关键,因为咀嚼行为提供了评估奶牛饮食充足性的基本指标。验证RWC V0.7.4.4.4的分类准确性,用于通过直接观察作为参考方法直接观察,每次推注进行谣言,进食,饮用,其他活动和反刍咀嚼的分类准确性,14名乳制品奶牛参加了试验。综合1分钟和1小时分类结果之间的一致性得到了评估。 RWC v0.7.4.4.5只分类了每次推注的摩擦力和反刍咀嚼,而需要对进食,饮酒和其他活动进行分类的算法优化。此外,除了谣言之外,1分钟和1小时时间摘要的分类结果并不符合彼此。

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