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On farm implementation of a fully automatic computer vision system for monitoring gait related measures indairy cows

机译:关于监测步态相关措施的全自动电脑视觉系统的农场实施空间奶牛

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The objective of this study was to implement a computer vision system for automatic monitoring of animal based measures relevant for lameness detection in a commercial dairy farm. The implementation procedure comprised the following steps: (1) start and stop of the video recordings, (2) identification of the cow in the video, and (3) video processing including the filtering of good quality images and the calculation of the back posture parameters used for classifying cows as lame or not lame. After implementation, the performance of the system was evaluated.All data were gathered from a Belgian commercial dairy farm. Between 20 September 2013 and 30 March 2014, 323 recording sessions were performed, together with 33 locomotion scoring events spread over time. The first step after recording the videos was identifying the cows in the video, which was successful for 79.2% +- 6.2% of the milked cows. In the second step of the video processing where the lameness related feature variables are extracted from the images, obtained an average analysis rate of 49.9%+- 11.3%. On average 80% of the individual cows were at least 5 times per week automatically scored. Based on 3130 complete cow observations spread over time, a group level analysis was performed in the form of a receiver operating characteristics curve.The back posture measure (BPM) and O_2 were the two feature variables that reached the level of a fair measure for lameness detection.
机译:本研究的目的是实施一种计算机视觉系统,用于自动监测用于在商业乳制品农场中的跛足检测相关的动物措施。实施过程包括以下步骤:(1)启动和停止视频录制,(2)识别视频中的母牛,(3)视频处理,包括良好质量图像的过滤和后姿势的计算用于将奶牛分类为跛脚或不跛脚的参数。实施后,评估系统的性能。从比利时商业奶牛场收集所有数据。 2013年9月20日至2014年3月30日期间,进行了3​​23个录制会议,以及33个机置评分活动随着时间的推移传播。录制视频后的第一步是识别视频中的奶牛,这是成功的79.2%+ - 6.2%的挤奶奶牛。在从图像中提取跛足相关特征变量的视频处理的第二步中,获得了49.9%±11.3%的平均分析率。平均每周80%的单个奶牛至少有5次得分。基于3130完成母牛观察随着时间的推移传播,以接收机操作特性曲线的形式进行组级分析。后姿势测量(BPM)和O_2是两个特征变量,达到跛行措施的公平措施水平检测。

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