使用低成本雷达传感器和动作摄像机测量真实世界卡车排中的车间距

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Markus Metallinos Log, Thomas Thoresen, M. Eitrheim, Tomas Levin, Trude Tørset
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引用次数: 2

摘要

许多现代车辆从雷达传感器收集车车间距离数据,作为驾驶员辅助系统的输入。然而,汽车制造商经常使用专有算法来隐藏收集的数据,使研究人员等外部个人无法访问这些数据。售后市场传感器可能会规避此问题。这项研究调查了在双向双车道农村道路上进行真实世界的半自动卡车排队时,使用低成本雷达传感器来确定车间距。收集、同步和过滤来自三卡车车队中两辆跟随卡车的雷达数据。传感器测量了距离、相对速度和信噪比。仪表板摄像头的镜头被收集、编码并与雷达数据同步,提供驾驶情况的背景信息,如迎面而来的卡车、环形交叉路口和隧道。根据供应商的建议,传感器具有不同的配置参数,以避免信号干扰。在选择参数的情况下,根据最大距离测量推断出的传感器范围约为74米和71米。这些值几乎与理论计算持平。传感器在83–85%的时间内捕捉到前一辆卡车,在隧道中捕捉到95–96%的时间。虽然环形交叉路口有问题,但传感器在卡车排队期间收集车间距数据是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Low-Cost Radar Sensors and Action Cameras to Measure Inter-Vehicle Distances in Real-World Truck Platooning
Many modern vehicles collect inter-vehicle distance data from radar sensors as input to driver assistance systems. However, vehicle manufacturers often use proprietary algorithms to conceal the collected data, making them inaccessible to external individuals, such as researchers. Aftermarket sensors may circumvent this issue. This study investigated the use of low-cost radar sensors to determine inter-vehicle distances during real-world semi-automated truck platooning on two-way, two-lane rural roads. Radar data from the two follower trucks in a three-truck platoon were collected, synchronized and filtered. The sensors measured distance, relative velocity and signal-to-noise ratio. Dashboard camera footage was collected, coded and synchronized to the radar data, providing context about the driving situation, such as oncoming trucks, roundabouts and tunnels. The sensors had different configuration parameters, suggested by the supplier, to avoid signal interference. With parameters as chosen, sensor ranges, inferred from maximum distance measurements, were approximately 74 and 71 m. These values were almost on par with theoretical calculations. The sensors captured the preceding truck for 83–85% of the time where they had the preceding truck within range, and 95–96% of the time in tunnels. While roundabouts are problematic, the sensors are feasible for collecting inter-vehicle distance data during truck platooning.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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