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An improved YOLO-based road traffic monitoring system

机译:一种改进的基于YOLO的道路交通监控系统

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摘要

The growing population in large cities is creating traffic management issues. The metropolis road network management also requires constant monitoring, timely expansion, and modernization. In order to handle road traffic issues, an intelligent traffic management solution is required. Intelligent monitoring of traffic involves the detection and tracking of vehicles on roads and highways. There are various sensors for collecting motion information, such as transport video detectors, microwave radars, infrared sensors, ultrasonic sensors, passive acoustic sensors, and others. In this paper, we present an intelligent video surveillance-based vehicle tracking system. The proposed system uses a combination of the neural network, image-based tracking, and You Only Look Once (YOLOv3) to track vehicles. We train the proposed system with different datasets. Moreover, we use real video sequences of road traffic to test the performance of the proposed system. The evaluation outcomes showed that the proposed system can detect, track, and count the vehicles with acceptable results in changing scenarios.
机译:大城市中不断增长的人口正在创造交通管理问题。大都市道路管理还需要不断监测,及时扩展和现代化。为了处理道路交通问题,需要智能流量管理解决方案。智能监控交通涉及道路和高速公路上的车辆的检测和跟踪。有各种传感器用于收集运动信息,例如运输视频探测器,微波雷达,红外传感器,超声波传感器,被动声学传感器等。在本文中,我们提供了一种基于智能视频监控的车辆跟踪系统。所提出的系统使用神经网络,基于图像的跟踪的组合,您只需看一次(YOLOV3)以跟踪车辆。我们用不同的数据集训练所提出的系统。此外,我们使用道路交通的真实视频序列来测试所提出的系统的性能。评估结果表明,所提出的系统可以检测,跟踪和计算具有可接受的导致变化方案的车辆。

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