An Efficient Failure Detection Algorithm for CCTV and Roadside Equipment (RSE)

Yong-Kul Ki, Jin-Wook Choi, Kwang-Soo Bae, Gye-Hyeong Ahn, Kyu-Cheol Cho
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Abstract

Travel speed is an important parameter for measuring road traffic. Urban Traffic Information System (UTIS) was developed as a mobile detector for measuring link travel speeds in South Korea. UTIS is mainly a means of collecting enhanced roadway condition information and then broadcasting related traveler information and various alerts back to vehicles. The proposed wireless media is based on UTIS technology operating at 5.725~5.825 GHz in South Korea. Under the UTIS concept, vehicles will be equipped with an UTIS radio, a highly accurate on-board positioning system, an appropriately configured on-board computer to facilitate communications, support various applications, and provide an interface for the driver. This equipment is collectively referred to as the On-Board Equipment (OBE). Vehicles communicate with Roadside Equipment (RSE), which is linked to the specialized UTIS network. RSEs and CCTVs are positioned at major signaled intersections and along major arterial roads. However, RSEs and CCTVs incur errors caused by the lack of probe vehicles on road segments, system failures and etc. In this paper, we suggests a new model for RSE and CCTV failure detection using neural networks to provide accurate link travel speeds and traffic information to the public.
一种高效的闭路电视和路边设备故障检测算法
车速是衡量道路交通的一个重要参数。城市交通信息系统(UTIS)是韩国开发的用于测量道路行驶速度的移动探测器。uti主要是收集增强的路况信息,然后向车辆广播相关的旅行者信息和各种警报。该提议的无线媒体基于UTIS技术,在韩国工作频率为5.725~5.825 GHz。在UTIS概念下,车辆将配备一个UTIS无线电,一个高精度的车载定位系统,一个适当配置的车载计算机,以促进通信,支持各种应用,并为驾驶员提供接口。这些设备统称为车载设备(OBE)。车辆与路边设备(RSE)通信,RSE连接到专门的UTIS网络。RSEs和闭路电视安装在主要信号路口和主干道沿线。然而,RSEs和cctv会因路段缺少探测车辆、系统故障等原因产生误差。在本文中,我们提出了一种新的RSE和CCTV故障检测模型,利用神经网络向公众提供准确的链路运行速度和交通信息。
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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