We demonstrate a working prototype for the monitoring of cow welfare by automatically analysing the animal behaviours. Deep learning models have been developed and tested with videos acquired in a farm, and a precision of 81.2\% has been achieved for cow identification. An accuracy of 84.4\% has been achieved for the detection of drinking events, and 94.4\% for the detection of grazing events. Experimental results show that the proposed deep learning method can be used to identify the behaviours of individual animals to enable automated farm provenance. Our raw and ground-truth dataset will be released as the first public video dataset for cow identification and action recognition. Recommendations for further development are also provided.
翻译:通过自动分析动物行为,我们展示了一个监测牛福利的工作原型; 开发了深度学习模型,并用在农场获得的视频进行了测试; 已经为牛的识别工作取得了81.2 ⁇ 的精确度; 已经为检测饮酒事件和检测放牧事件实现了84.4 ⁇ 的准确度; 实验结果表明,可以利用拟议的深层次学习方法确定个体动物的行为,以便实现农场自动出产; 我们的原始和地面真象数据集将作为第一个用于识别牛和确认行动的公开视频数据集发布; 还提出了进一步开发的建议。