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使用深度学习方法检测猪的运动和攻击行为。

Detection of Pig Movement and Aggression Using Deep Learning Approaches.

作者信息

Wei Jiacheng, Tang Xi, Liu Jinxiu, Zhang Zhiyan

机构信息

State Key Laboratory for Pig Genetic Improvement and Production Technology, Jiangxi Agricultural University, Nanchang 330045, China.

出版信息

Animals (Basel). 2023 Sep 30;13(19):3074. doi: 10.3390/ani13193074.

Abstract

Motion and aggressive behaviors in pigs provide important information for the study of social hierarchies in pigs and can be used as a selection indicator for pig health and aggression parameters. However, relying only on visual observation or surveillance video to record the number of aggressive acts is time-consuming, labor-intensive, and lasts for only a short period of time. Manual observation is too short compared to the growth cycle of pigs, and complete recording is impractical in large farms. In addition, due to the complex process of assessing the intensity of pig aggression, manual recording is highly influenced by human subjective vision. In order to efficiently record pig motion and aggressive behaviors as parameters for breeding selection and behavioral studies, the videos and pictures were collected from typical commercial farms, with each unit including 820 pigs in 725 m space; they were bred in stable social groups and a video was set up to record the whole day's activities. We proposed a deep learning-based recognition method for detecting and recognizing the movement and aggressive behaviors of pigs by recording and annotating head-to-head tapping, head-to-body tapping, neck biting, body biting, and ear biting during fighting. The method uses an improved EMA-YOLOv8 model and a target tracking algorithm to assign a unique digital identity code to each pig, while efficiently recognizing and recording pig motion and aggressive behaviors and tracking them, thus providing statistics on the speed and duration of pig motion. On the test dataset, the average precision of the model was 96.4%, indicating that the model has high accuracy in detecting a pig's identity and its fighting behaviors. The model detection results were highly correlated with the manual recording results (R of 0.9804 and 0.9856, respectively), indicating that the method has high accuracy and effectiveness. In summary, the method realized the detection and identification of motion duration and aggressive behavior of pigs under natural conditions, and provided reliable data and technical support for the study of the social hierarchy of pigs and the selection of pig health and aggression phenotypes.

摘要

猪的运动和攻击行为为研究猪的社会等级制度提供了重要信息,并且可以用作猪健康和攻击参数的选择指标。然而,仅依靠视觉观察或监控视频来记录攻击行为的次数既耗时又费力,而且持续时间短。与猪的生长周期相比,人工观察时间过短,在大型农场中进行完整记录不切实际。此外,由于评估猪攻击强度的过程复杂,人工记录受人类主观视觉影响很大。为了高效记录猪的运动和攻击行为作为育种选择和行为研究的参数,从典型的商业农场收集了视频和图片,每个单元在7至25米的空间内饲养8至20头猪;它们以稳定的社会群体饲养,并设置了一个视频来记录一整天的活动。我们提出了一种基于深度学习的识别方法,通过记录和标注打斗过程中的头部对头部轻拍、头部对身体轻拍、颈部撕咬、身体撕咬和耳部撕咬来检测和识别猪的运动和攻击行为。该方法使用改进的EMA - YOLOv8模型和目标跟踪算法为每头猪分配唯一的数字身份代码,同时高效地识别、记录猪的运动和攻击行为并对其进行跟踪,从而提供猪运动速度和持续时间的统计数据。在测试数据集上,该模型的平均精度为96.4%,表明该模型在检测猪的身份及其打斗行为方面具有较高的准确性。模型检测结果与人工记录结果高度相关(分别为R = 0.9804和0.9856),表明该方法具有较高的准确性和有效性。总之,该方法实现了在自然条件下对猪运动持续时间和攻击行为的检测与识别,为猪社会等级制度的研究以及猪健康和攻击表型的选择提供了可靠的数据和技术支持。

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