Overlapped Pedestrian Detection Based on YOLOv5 in Crowded Scenes

Wei-wu Guo, Nanbo Shen, Tingjuan Zhang
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Abstract

Pedestrian detection in a crowded environment is challenging for vehicle intelligent driving systems. At present, pedestrian detection algorithms have achieved great performance in detecting well-separated figures. However, pedestrians are generally overlapped in crowded scenes, resulting in slow detection speed, low detection accuracy, and poor robustness in pedestrian detection technology. In this paper, the YOLOv5 algorithm is used for pedestrian detection. In the aspect of data pretreatment, Mosaic data enhancement, unified image size, adaptive anchor frame calculation, and other processing are carried out for data.YOLOv5 can detect targets at multiple scales, and CIOU_Loss and DIOU_nms are applied to the YOLOv5 algorithm. It can improve the recognition ability of the occlusion target and has a good detection effect on the detection of the occlusion pedestrian target through the training network of amplified data set. The verification experiment shows that the pedestrian detection model based on YOLOv5 has great detection accuracy and recall rate in detecting covered pedestrians.
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基于YOLOv5的拥挤场景重叠行人检测
拥挤环境下的行人检测对车辆智能驾驶系统来说是一个挑战。目前,行人检测算法在检测分离良好的人物方面已经取得了很好的效果。然而,在拥挤的场景中,行人普遍重叠,导致行人检测技术的检测速度慢,检测精度低,鲁棒性差。本文采用YOLOv5算法进行行人检测。在数据预处理方面,对数据进行了马赛克数据增强、统一图像尺寸、自适应锚帧计算等处理。YOLOv5可以对多个尺度的目标进行检测,并将CIOU_Loss和DIOU_nms应用到YOLOv5算法中。它可以提高遮挡目标的识别能力,通过放大数据集的训练网络对遮挡行人目标的检测有很好的检测效果。验证实验表明,基于YOLOv5的行人检测模型在检测有遮挡行人时具有较高的检测准确率和召回率。
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