Pedestrian Detection and Tracking with Deep Mutual Learning

Feng Xudong, Guo Xiaofeng, Kuang Ping, Liao Xianglong, Zhu Yalou
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Abstract

In the last decade, the application of pedestrian detection in computer vision has gradually increased, such as social distance detection in the epidemic era. In this paper, we improve the newly proposed YOLOv5 model, use the idea of deep mutual learning for training, compare the performance and accuracy of different parameters, and select a relatively good model. As for the application, after detecting an abnormal pedestrian or a designated pedestrian, we use the Deep SORT method to track the pedestrian via the pedestrian's ID. Experimental analysis shows that our model performs well in terms of mean average precision (mAP), total loss (TL), and frames per second (FPS).
基于深度相互学习的行人检测与跟踪
近十年来,计算机视觉中行人检测的应用逐渐增多,比如流行病时代的社会距离检测。本文对新提出的YOLOv5模型进行改进,利用深度相互学习的思想进行训练,比较不同参数的性能和准确率,选择一个相对较好的模型。在应用中,在检测到异常行人或指定行人后,我们使用Deep SORT方法通过行人的ID对行人进行跟踪。实验分析表明,我们的模型在平均精度(mAP)、总损耗(TL)和每秒帧数(FPS)方面表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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