Mu Ye, Hu Jinghuan, Wang Heyang, Li Shijun, Zhu Hang, Luo Lan, Wei Jinfan, Ni Lingyun, Chao Hongli, Hu Tianli, Sun Yu, Gong He, Guo Ying
College of Information Technology, Jilin Agricultural University, Changchun 130118, China.
Jilin Province Agricultural Internet of Things Technology Collaborative Innovation Center, Changchun 130118, China.
Animals (Basel). 2024 Sep 27;14(19):2800. doi: 10.3390/ani14192800.
In modern animal husbandry, intelligent digital farming has become the key to improve production efficiency. This paper introduces a model based on improved YOLOv8, Cattle Behavior Recognition-YOLO (CBR-YOLO), which aims to accurately identify the behavior of cattle. We not only generate a variety of weather conditions, but also introduce multi-target detection technology to achieve comprehensive monitoring of cattle and their status. We introduce Inner-MPDIoU Loss and we have innovatively designed the Multi-Convolutional Focused Pyramid module to explore and learn in depth the detailed features of cattle in different states. Meanwhile, the Lightweight Multi-Scale Feature Fusion Detection Head module is proposed to take advantage of deep convolution, achieving a lightweight network architecture and effectively reducing redundant information. Experimental results prove that our method achieves an average accuracy of 90.2% with a reduction of 3.9 G floating-point numbers, an increase of 7.4%, significantly better than 12 kinds of SOTA object detection models. By deploying our approach on monitoring computers on farms, we expect to advance the development of automated cattle monitoring systems to improve animal welfare and farm management.
在现代畜牧业中,智能数字养殖已成为提高生产效率的关键。本文介绍了一种基于改进的YOLOv8的模型——牛行为识别-YOLO(CBR-YOLO),其旨在准确识别牛的行为。我们不仅生成多种天气条件,还引入多目标检测技术以实现对牛及其状态的全面监测。我们引入了内部平均精度交并比损失(Inner-MPDIoU Loss),并创新性地设计了多卷积聚焦金字塔模块,以深入探索和学习不同状态下牛的详细特征。同时,提出了轻量级多尺度特征融合检测头模块,利用深度卷积,实现了轻量级网络架构并有效减少了冗余信息。实验结果证明,我们的方法平均准确率达到90.2%,浮点运算数减少了3.9G,提升了7.4%,明显优于12种最优目标检测模型。通过在农场的监控计算机上部署我们的方法,我们期望推动自动化牛监测系统的发展,以改善动物福利和农场管理。