基于深度学习的头盔违章检测系统

Namit Kharade, Saiel Mane, Jitender Raghav, Neha Alle, Amrut Khatavkar, G. Navale
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引用次数: 5

摘要

检测戴头盔和不戴头盔的摩托车手是必要的,以保护骑在路上的人的安全。头盔是为了在发生碰撞时保护司机头部的安全。如果骑自行车的人不戴头盔而发生事故,可能会导致死亡。大多数违反交通和安全法规的行为现在都是通过分析安全摄像头获取的交通记录来确定的。本文的重点是提供一种检测未戴头盔的摩托车手的技术。在这项研究中,我们使用深度学习算法来开发一种自动检测头盔和非头盔摩托车手的策略。本研究使用YOLOv4模型识别摩托车骑手,该模型是YOLO模型的增量版本,是一种前沿的目标检测算法。与现有的基于CNN的算法相比,该模型在交通视频上表现出良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep-learning based helmet violation detection system
The detection of helmeted and non-helmeted motorcyclists is necessary to preserve the safety of riders on the road. Helmets are meant to keep the driver’s head safe in the case of a collision. If a biker does not wear a helmet and is involved in an accident, it might result in death. Most traffic and safety regulations violations are now identified by analysing traffic recordings acquired by security cameras. The focus of this paper is to provide a technique for detecting motorcyclists who are not wearing a helmet. In this research, we use a deep learning algorithm to develop a strategy for automatically detecting helmeted and non-helmeted motorcyclists. Motorcycle riders are recognised in this study using the YOLOv4 model, which is an incremental version of YOLO model and is a cutting-edge object detection algorithm. When compared to existing CNN based algorithms, the proposed model shows good performance on traffic videos.
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