Chicken Tracking and Individual Bird Activity Monitoring Using the BoT-SORT Algorithm

Allan Lincoln Rodrigues Siriani, Isabelly Beatriz de Carvalho Miranda, Saman Abdanan Mehdizadeh, Danilo Florentino Pereira
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Abstract

The analysis of chicken movement on the farm has several applications in evaluating the well-being and health of birds. Low locomotion may be associated with locomotor problems, and undesirable bird movement patterns may be related to environmental discomfort or fear. Our objective was to test the BoT-SORT object tracking architecture embedded in Yolo v8 to monitor the movement of cage-free chickens and extract measures to classify running, exploring, and resting behaviors, the latter of which includes all other behaviors that do not involve displacement. We trained a new model with a dataset of 3623 images obtained with a camera installed on the ceiling (top images) from an experiment with layers raised cage-free in small-scale aviaries and housed in groups of 20 individuals. The model presented a mAP of 98.5%, being efficient in detecting and tracking the chickens in the video. From the tracking, it was possible to record the movements and directions of individual birds, and we later classified the movement. The results obtained for a group of 20 chickens demonstrated that approximately 84% of the time, the birds remained resting, 10% of the time exploring, and 6% of the time running. The BoT-SORT algorithm was efficient in maintaining the identification of the chickens, and our tracking algorithm was efficient in classifying the movement, allowing us to quantify the time of each movement class. Our algorithm and the measurements we extract to classify bird movements can be used to assess the welfare and health of chickens and contribute to establishing standards for comparisons between individuals and groups raised in different environmental conditions.
基于BoT-SORT算法的鸡群跟踪和个体鸟活动监测
对养鸡场鸡群活动的分析在评估鸡群的健康状况方面有若干应用。低运动可能与运动问题有关,而不受欢迎的鸟类运动模式可能与环境不适或恐惧有关。我们的目标是测试嵌入在Yolo v8中的BoT-SORT对象跟踪架构,以监控散养鸡的运动,并提取对奔跑、探索和休息行为进行分类的措施,后者包括所有其他不涉及位移的行为。我们使用3623张图像的数据集训练了一个新模型,这些图像是由安装在天花板上的摄像机获得的,这些图像来自一个实验,这些实验是在小型鸟舍中饲养的,每20只饲养一组。该模型的mAP值为98.5%,能够有效地检测和跟踪视频中的鸡。通过追踪,我们可以记录每只鸟的运动和方向,然后我们对运动进行分类。对一组20只鸡的研究结果表明,大约84%的时间,这些鸡保持休息,10%的时间探索,6%的时间奔跑。BoT-SORT算法在保持鸡的识别方面是有效的,我们的跟踪算法在运动分类方面是有效的,允许我们量化每个运动类别的时间。我们的算法和我们提取的用于分类鸟类运动的测量值可用于评估鸡的福利和健康,并有助于建立在不同环境条件下饲养的个体和群体之间的比较标准。
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