Department of Poultry Science, University of Georgia, Athens, GA 30602, USA.
Department of Poultry Science, University of Georgia, Athens, GA 30602, USA.
Poult Sci. 2024 Nov;103(11):104193. doi: 10.1016/j.psj.2024.104193. Epub 2024 Aug 11.
Chickens' behaviors and activities are important information for managing animal health and welfare in commercial poultry houses. In this study, convolutional neural networks (CNN) models were developed to monitor the chicken activity index. A dataset consisting of 1,500 top-view images was utilized to construct tracking models, with 900 images allocated for training, 300 for validation, and 300 for testing. Six different CNN models were developed, based on YOLOv5, YOLOv8, ByteTrack, DeepSORT, and StrongSORT. The final results demonstrated that the combination of YOLOv8 and DeepSORT exhibited the highest performance, achieving a multiobject tracking accuracy (MOTA) of 94%. Further application of the optimal model could facilitate the detection of abnormal behaviors such as smothering and piling, and enabled the quantification of flock activity into 3 levels (low, medium, and high) to evaluate footpad health states in the flock. This research underscores the application of deep learning in monitoring poultry activity index for assessing animal health and welfare.
鸡的行为和活动是管理商业家禽舍动物健康和福利的重要信息。在这项研究中,开发了卷积神经网络(CNN)模型来监测鸡的活动指数。利用包含 1500 张顶视图图像的数据集来构建跟踪模型,其中 900 张用于训练,300 张用于验证,300 张用于测试。基于 YOLOv5、YOLOv8、ByteTrack、DeepSORT 和 StrongSORT 开发了六个不同的 CNN 模型。最终结果表明,YOLOv8 和 DeepSORT 的组合表现出最高的性能,多目标跟踪精度(MOTA)达到 94%。最优模型的进一步应用可以促进对闷压和堆叠等异常行为的检测,并将鸡群活动量化为 3 个级别(低、中、高),以评估鸡群中脚垫的健康状况。这项研究强调了深度学习在监测家禽活动指数以评估动物健康和福利方面的应用。