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首页> 外文期刊>Journal of Transportation Engineering >Traffic Volume Detection Using Infrastructure-Based LiDAR under Different Levels of Service Conditions
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Traffic Volume Detection Using Infrastructure-Based LiDAR under Different Levels of Service Conditions

机译:在不同的服务条件下使用基于基础设施的激光雷达的交通量检测

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Light detection and ranging (LiDAR) technology is a key component of an autonomous vehicle's sensing system. It also has the potential to be used at the roadside as a major infrastructure-based detection for connected and autonomous traffic infrastructure systems, as well as for the general purpose of traffic data collection and performance evaluation. Lane and movement-based traffic volume data collection is a basic function of roadside traffic sensing systems. The accuracy of volume detection is mainly impacted by occlusion for most of the advanced traffic sensing technologies, such as LiDAR, video, and radar. This paper presents research results to quantify the influence of occlusion on LiDAR systems' traffic volume detection in different traffic demand scenarios. A method for automatic identification and classification of LiDAR specific occlusion was first developed based on the inherent characteristics of LiDAR sensors, which can report occlusion ratios of roadside LiDAR data. Then, the study was extended to accommodate all traffic demand scenarios, traffic levels of service (LOS A to E), and different truck compositions (5% to 30%) by integrating the developed method and traffic simulation. Lastly, a comprehensive case study first verified the accuracy of the simulation results using field data collected from two testbeds, and then at the third testbed, a lane and movement-based traffic volume study was demonstrated. The practical significance of this paper is to help traffic engineers making informed decisions when considering LiDAR as their choice of sensing technology in the field from two aspects: (1) the quantitative relationship between expected occlusion rate and resulted detection accuracy under various traffic conditions; (2) lessons learned from the pilot field implementation on LiDAR, installation strategy, data storage, and communication.
机译:光检测和测距(LIDAR)技术是自动车辆传感系统的关键组成部分。它还具有在路边使用的主要基础设施的基于基础设施的检测,以及交通数据收集和性能评估的一般目的。车道和基于运动的流量体积数据收集是路边交通传感系统的基本功能。体积检测的准确性主要受到大多数高级交通传感技术的遮挡,例如LIDAR,视频和雷达。本文提出了研究结果,以量化闭塞对不同交通需求方案中的LIDAR系统交通量检测的影响。首先基于激光雷达传感器的固有特性,首先开发了一种自动识别和分类的方法,可以报告路边LIDAR数据的遮挡比。然后,延长了该研究以通过集成开发的方法和流量模拟来适应所有交通需求场景,交通服务(LOS A到E)和不同的卡车组合物(5%至30%)。最后,全面的案例研究首先使用从两个测试平台收集的现场数据验证了模拟结果的准确性,然后在第三个测试平台,演示车道和基于运动的交通量研究。本文的实际意义是帮助交通工程师在考虑LIDAR时,在考虑激光乐队选择从两个方面的传感技术选择:(1)预期闭塞率之间的定量关系并导致各种交通状况下的检测准确性; (2)从LIDAR,安装策略,数据存储和通信的试验领域实施中汲取的经验教训。

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