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Deep learning based vehicle violation detection system

机译:基于深度学习的车辆违规检测系统

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Due to the limited road resources and the ever-increasing number of vehicles and persons, more frequent traffic violations and higher management costs have resulted. It is crucial to propose a more intelligent and less cost scheme to solve the traffic management problem. In this paper, we design and implement a vehicle violation detection system based on deep learning, which includes the detection, tracking and recognition of vehicles. On this basis, the detection and real-time alarm of common violations, such as red light running and impolite pedestrian, are also supported. Compared with the traditional detection and monitoring based on physical equipment, our system is completely based on computer vision, where the cutting-edge achievements of deep learning have been improved and applied. The system is not only more intelligent, but also can reduce the cost to a greater extent. Experiments illustrate that the system can meet the needs of the intelligent management of urban traffic through real-time monitoring and data analysis of the traffic scenes.
机译:由于道路资源有限,越来越多的车辆和人数,违规行为更频繁的违规行为和更高的管理成本。为解决交通管理问题的更聪明和更少的成本方案,这是至关重要的。在本文中,我们根据深度学习设计和实施车辆违规检测系统,包括检测,跟踪和识别车辆。在此基础上,还支持普通违规行为的检测和实时报警,如红灯运行和不礼貌的行人。与基于物理设备的传统检测和监测相比,我们的系统完全基于计算机愿景,深度学习的尖端取得的成就得到了改善和应用。该系统不仅更智能,而且还可以在更大程度上降低成本。实验说明系统通过对交通场景的实时监测和数据分析,该系统可以满足城市交通智能管理的需求。

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