基于多通道高效注意机制的猪行为跟踪方法

Qifeng Li , Zhenyuan Zhuo , Ronghua Gao , Rong Wang , Na Zhang , Yan Shi , Tonghui Wu , Weihong Ma
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引用次数: 0

摘要

猪的行为反映了猪的健康状况,对猪的行为进行持续、精确的监测对有效的健康管理和福利保护具有重要意义。为了减少在分析视频片段时可能出现的跟踪故障,我们引入了一种新的多目标猪跟踪方法,该方法由检测和跟踪组件组成。利用高效的注意机制和跨阶段部分暗网骨干网增强了检测模型,显著提高了检测精度。跟踪组件使用Bytetrack算法精确跟踪单个猪的运动轨迹。这些组件组合在一起,形成了Dual-YOLOX-Tiny-ByteTrack (DYTB)模型,与之前发表的方法相比,该模型在自动监测猪的行为方面表现出了卓越的性能。我们建立了包含180321张图像的多目标猪跟踪数据集来评估该方法。DYTB方法的猪检测准确率为98.3%,跟踪准确率为95.3%和97.1%。与yox - tiny - bytetrack基础模型相比,DYTB在多目标跟踪精度方面提高了3.4%,使其成为一种非接触式智能猪健康监测的鲁棒方法,为精准畜牧业的发展做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A pig behavior-tracking method based on a multi-channel high-efficiency attention mechanism
Given that the pig behavior reflects their health status, continuous and precise monitoring of behavior is important for effective health management and welfare protection. To mitigate potential tracking failures during analysis of video footage, we introduced a novel multi-target pig tracking method that consisted of detection and tracking components. The detection model was enhanced with an efficient attention mechanism and a Cross Stage Partial Darknet backbone network, which significantly improved detection accuracy. The tracking component used the Bytetrack algorithm to accurately track the movement trajectories of individual pigs. Together, these components were combined into the Dual-YOLOX-Tiny-ByteTrack (DYTB) model, which demonstrated superior performance in automatic monitoring of pig behaviors compared to previously published approaches. We established multi-object pig tracking datasets with 180,321 images to evaluate this method. The DYTB method achieved a pig detection accuracy of 98.3% and tracking accuracies of 95.3% and 97.1%. Compared to the YOLOX-Tiny-ByteTrack base model, DYTB showed a 3.4% improvement in multiple object tracking accuracy, making it a robust method for non-contact, intelligent monitoring of pig health and contributing to advances in precision livestock farming.
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