基于YOLOX和OC-SORT的高效奶牛行为识别攀爬运动检测系统

Li Yu, NamHo Kim
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引用次数: 0

摘要

在本研究中,我们提出了一种基于YOLOX和OC-SORT的奶牛行为识别系统。YOLOX可以实时检测目标,并提供奶牛的位置和行为信息。OC-SORT模块跟踪视频中的奶牛并分配唯一的id。定量分析模块分析奶牛的行为和位置信息。实验结果表明,该系统具有较高的目标检测和跟踪精度。YOLOX的平均准确率(AP)为82.2%,平均召回率(AR)为85.5%,参数个数为54.15M,计算量为194.16GFLOPs。OC-SORT能够在复杂环境和遮挡情况下保持高精度的实时目标跟踪。通过分析奶牛运动的变化和骑牛行为的频率,我们的系统可以帮助更准确地识别奶牛的发情行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A climbing movement detection system through efficient cow behavior recognition based on YOLOX and OC-SORT
In this study, we propose a cow behavior recognition system based on YOLOX and OC-SORT. YOLOX detects targets in real-time and provides information on cow location and behavior. The OC-SORT module tracks cows in the video and assigns unique IDs. The quantitative analysis module analyzes the behavior and location information of cows. Experimental results show that our system demonstrates high accuracy and precision in target detection and tracking. The average precision (AP) of YOLOX was 82.2%, the average recall (AR) was 85.5%, the number of parameters was 54.15M, and the computation was 194.16GFLOPs. OC-SORT was able to maintain high-precision real-time target tracking in complex environments and occlusion situations. By analyzing changes in cow movement and frequency of mounting behavior, our system can help more accurately discern the estrus behavior of cows.
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