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基于YOLOv8s的鸡群活动量异常监控方法

Anomaly monitoring method for chicken flock activity based on YOLOv8s

  • 摘要: 鸡活动量是反映其健康的重要指标,监控鸡群的活动量可以及时发现潜在的健康问题,避免疾病蔓延。提出基于YOLOv8s和BoT-SORT算法的鸡群活动量异常监控方法。该方法通过摄像头采集鸡活动视频,利用 YOLOv8s提取鸡外观和运动特征,并结合 BoT-SORT 算法实现多目标跟踪,分析运动轨迹量化每只鸡的活动量,与设定的活动量阈值自动比对,及时对异常状态进行预警。试验结果表明,该方法多目标跟踪精确度(MOTP)94.3%,可有效用于鸡群活动量监控并提前预警潜在问题。

     

    Abstract: Chicken activity level is an important indicator reflecting their health.By monitoring activity level of chicken flock, potential health issues can be identified in time to prevent disease spread.Therefore, an anomaly monitoring method for chicken flock activity based on YOLOv8s and BoT-SORT algorithm was proposed.Cameras were used to capture chicken activity videos, YOLOv8s was used to extract appearance and motion features of chickens, and BoT-SORT algorithm was integrated to achieve multi-object tracking.By analyzing movement trajectories, activity level of each chicken was quantified, and an automatic comparison with preset activity thresholds was done to provide timely alerts for abnormal conditions.Experimental results showed that method achieved a multi-object tracking precision(MOTP)of 94.33%, effectively monitoring chicken activity levels and providing early warnings for potential problems.

     

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