Electric Bicycle Detection Based on Deep Learning

Jiakang Sun, Yuhan Zhang
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Abstract

In China's urban traffic, the number of electric bicycles is increasing. Therefore, it becomes particularly important to accurately detect the behavior of electric bicycles and their riders through road traffic monitoring and implement efficient supervision to provide technical support. In the actual traffic surveillance video, electric bicycles occupy a small video image area and are easy to block each other, resulting in inaccurate detection and missed detection. To solve these problems, based on the idea of YOLOv4 algorithm, an improved detection algorithm of electric bicycle is proposed in this paper: replace the original YOLOv4 backbone network CSPDarknet-53 with GhostNet to enhance the detection speed. ECA attention mechanism is introduced in front of the three-layer prediction network to enhance the detection accuracy. The SPP module is replaced by the enhanced receptive field RFB module to strengthen the feature extraction ability. The experimental results show that the detection accuracy of the improved YOLOv4 algorithm is increased by 1.53%, and the detection speed is increased by 14FPS.
基于深度学习的电动自行车检测
在中国的城市交通中,电动自行车的数量正在增加。因此,通过道路交通监控,准确检测电动自行车及其骑行者的行为,并实施高效的监管,为其提供技术支持就显得尤为重要。在实际的交通监控视频中,电动自行车占用的视频图像面积较小,容易相互遮挡,导致检测不准确,漏检。针对这些问题,本文基于YOLOv4算法的思想,提出了一种改进的电动自行车检测算法:将原有的YOLOv4骨干网CSPDarknet-53替换为GhostNet,提高检测速度。在三层预测网络前引入了ECA关注机制,提高了检测精度。用增强的感受野RFB模块代替SPP模块,增强特征提取能力。实验结果表明,改进后的YOLOv4算法检测精度提高了1.53%,检测速度提高了14FPS。
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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