基于改进YOLOv5n的遮挡行人检测

Qiuxin Zhang, Fanghua Yang, Qikai Zhou, Wei Zhang, Ruizhi Li
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引用次数: 0

摘要

针对行人检测中行人目标遮挡、多尺度误差和漏检问题,提出了一种基于改进EA-YOLOv5n的轻量级行人检测算法。该方法在骨干特征提取网络中引入ECA关注模块,通过学习信息学习行人图像的通道,提高遮挡情况下行人目标检测的精度,针对损失函数计算的缺点改进了边界盒损失函数的计算方法,采用EIoU loss并引入功率变换,获得更高的边界盒回归精度。实验结果表明,使用改进模型在Widerperson数据集上进行实验,mAP达到69.6%,比原算法提高2.0%,检测速度达到65FPS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occluded pedestrian detection based on improved YOLOv5n
Aiming at the problem of pedestrian targets occlusion and multi-scale error and missed detection in pedestrian detection, a lightweight pedestrian detection algorithm based on improved EA-YOLOv5n is proposed. This method introduces the ECA attention module into the backbone feature extraction network, and learns the channels of pedestrian images by learning Information, improve the accuracy of pedestrian object detection in the case of occlusion, improve the calculation method of Bounding box loss function for the disadvantages of loss function calculation, adopt EIoU Loss and introduce power transformation to obtain higher bounding box regression accuracy. The experimental results show that using the improved model to conduct experiments on the Widerperson dataset reaches 69.6% mAP, which is 2.0% higher than the original algorithm, and the detection speed reaches 65FPS.
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