The Traffic Violation Detection System using YoloV7

S. Harini, M. Suguna, A. T. V. Subramani, Gokila Harini Krishna
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Abstract

In recent time surveys, the deaths and injuries due to traffic violations have increased chiefly in Indian roads. So, this needed the assistance of an automated computer vision-based object detection model, as manually identifying the vehicles violating traffic is hectic. The principle of this paper is to detect multiple violations using single video frames. The input video stream obtained from the surveillance camera is processed and annotated to carry out multiple processes. The dataset used for red-light jumping is COCO and the dataset for over boarding is created by annotating the images obtained from google. The model is trained and the output is visualized using tensorboard. The parameters used are Precision, Recall, F-measure and P-measure. The accuracy for red light skipping is 93% and the mAP value for over boarding is 0.5:0.95. This system utilizes the video stream at its maximum to detect various violations.
基于YoloV7的交通违章检测系统
在最近的时间调查中,交通违规造成的死亡和受伤主要在印度的道路上增加。因此,这需要基于计算机视觉的自动目标检测模型的辅助,因为手动识别违反交通规则的车辆是非常繁忙的。本文的原理是利用单个视频帧检测多个违例。对从监控摄像机获取的输入视频流进行处理和标注,进行多道处理。闯红灯使用的数据集是COCO,超车使用的数据集是通过标注从google获取的图像创建的。使用张sorboard对模型进行训练并将输出可视化。使用的参数是Precision, Recall, F-measure和P-measure。跳过红灯的准确率为93%,过登机的mAP值为0.5:0.95。该系统最大限度地利用视频流来检测各种违规行为。
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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