Li Guoming, Gates Richard S, Meyer Meaghan M, Bobeck Elizabeth A
Department of Poultry Science, The University of Georgia, Athens, GA 30602, USA.
Institute for Artificial Intelligence, The University of Georgia, Athens, GA 30602, USA.
Animals (Basel). 2023 Feb 17;13(4):717. doi: 10.3390/ani13040717.
Gait scoring is a useful measure for evaluating broiler production efficiency, welfare status, bone quality, and physiology. The research objective was to track and characterize spatiotemporal and three-dimensional locomotive behaviors of individual broilers with known gait scores by jointly using deep-learning algorithms, depth sensing, and image processing. Ross 708 broilers were placed on a platform specifically designed for gait scoring and manually categorized into one of three numerical scores. Normal and depth cameras were installed on the ceiling to capture top-view videos and images. Four birds from each of the three gait-score categories were randomly selected out of 70 total birds scored for video analysis. Bird moving trajectories and 16 locomotive-behavior metrics were extracted and analyzed via the developed deep-learning models. The trained model gained 100% accuracy and 3.62 ± 2.71 mm root-mean-square error for tracking and estimating a key point on the broiler back, indicating precise recognition performance. Broilers with lower gait scores (less difficulty walking) exhibited more obvious lateral body oscillation patterns, moved significantly or numerically faster, and covered more distance in each movement event than those with higher gait scores. In conclusion, the proposed method had acceptable performance for tracking broilers and was found to be a useful tool for characterizing individual broiler gait scores by differentiating between selected spatiotemporal and three-dimensional locomotive behaviors.
步态评分是评估肉鸡生产效率、福利状况、骨骼质量和生理机能的一项有用指标。本研究的目的是通过联合使用深度学习算法、深度传感和图像处理技术,跟踪和描述已知步态评分的个体肉鸡的时空和三维运动行为。将罗斯708肉鸡放置在专门设计用于步态评分的平台上,并手动分为三个数字评分等级之一。在天花板上安装了普通摄像头和深度摄像头,以捕捉顶视图视频和图像。在总共70只进行评分的肉鸡中,从三个步态评分等级中各随机选取4只鸡进行视频分析。通过开发的深度学习模型提取并分析鸡的移动轨迹和16个运动行为指标。训练后的模型在跟踪和估计肉鸡背部关键点时,准确率达到100%,均方根误差为3.62±2.71毫米,表明具有精确的识别性能。步态评分较低(行走困难较小)的肉鸡比步态评分较高的肉鸡表现出更明显的身体侧向摆动模式,移动速度明显更快或在数值上更快,并且在每个运动事件中覆盖的距离更远。总之,所提出的方法在跟踪肉鸡方面具有可接受的性能,并且被发现是通过区分选定的时空和三维运动行为来表征个体肉鸡步态评分的有用工具。