Detection and Identification of Moving Objects at Busy Traffic Road based on YOLO v4

Qiutan Li, Xilong Ding, Xufei Wang, Le Chen, Jinku Son, JeongYoung Song
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引用次数: 6

Abstract

In some intersections or busy traffic roads, there are more pedestrians in a specific period of time, and there are many traffic accidents caused by road congestion. Especially at the intersection where there are schools nearby, it is particularly important to protect the traffic safety of students in busy hours. In the past, when designing traffic lights, the safety of pedestrians was seldom taken into account, and the identification of motor vehicles and traffic optimization were mostly studied. How to keep the road smooth as far as possible under the premise of ensuring the safety of pedestrians, especially students, will be the key research direction of this paper. This paper will focus on person, motorcycle, bicycle, car and bus recognition research. Through investigation and comparison, this paper proposes to use YOLO v4 network to identify the location and quantity of objects. YOLO v4 has the characteristics of strong ability of small target recognition, high precision and fast processing speed, and sets the data acquisition object to train and test the image set. Using the statistics of the accuracy rate, error rate and omission rate of the target in the video, the network trained in this paper can accurately and effectively identify persons, motorcycles, bicycles, cars and buses in the moving images.
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基于YOLO v4的繁忙交通道路运动物体检测与识别
在一些十字路口或交通繁忙的道路上,特定时间段内行人较多,道路拥堵造成的交通事故较多。特别是在十字路口附近有学校的地方,在繁忙时段保护学生的交通安全显得尤为重要。过去在设计交通灯时,很少考虑行人的安全,主要研究的是机动车识别和交通优化。如何在保证行人尤其是学生安全的前提下,尽可能保持道路畅通,将是本文的重点研究方向。本文主要对人、摩托车、自行车、汽车和公共汽车的识别进行研究。通过调查和比较,本文提出使用YOLO v4网络来识别目标的位置和数量。YOLO v4具有小目标识别能力强、精度高、处理速度快的特点,设置数据采集对象对图像集进行训练和测试。通过统计视频中目标的准确率、错误率和遗漏率,本文训练的网络可以准确有效地识别运动图像中的人、摩托车、自行车、汽车和公交车。
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