基于激光雷达检测的高效鲁棒夜间车辆流量监测

Sheng Yi, Hao Zhang, Lu Jiang, Yangkai Zhou, Ke Xiao, Kai Liu
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引用次数: 0

摘要

车辆流量监控是实现各种智能交通系统(ITSs)的关键。传统的车流量监控方案主要基于路边摄像头,在黑暗环境下可能会出现严重的性能下降。鉴于此,本文提出了一种基于激光雷达的车辆流量监控系统,该系统由三个部分组成:目标检测模块、车辆流量计数模块和车辆流量可视化模块。具体来说,目标检测模块是基于自训练数据和YOLOv4网络构建的。采集车辆信息并进行预处理,加快目标检测速度,提高检测精度。然后利用训练好的权重进行推理,得到车辆及其位置,用于基于激光雷达的车辆检测。在此基础上,车辆计数模块采用多目标跟踪技术对被检测车辆附近的车辆进行监控。此外,匈牙利算法用于匹配周围车辆。在车辆计数可视化模块中,我们通过OpenCv对系统输出进行可视化。最后,我们建立了系统原型,并在不同夜间交通情况下的真实环境中评估了算法的性能。实验结果证明了该方法的实用性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Efficient and Robust Night-time Vehicle Flow Monitoring via Lidar-based Detection
The monitoring of vehicle flow is critical to enable a variety of intelligent transportation systems (ITSs). Traditional vehicle flow monitoring solutions are mainly based on roadside cameras, which may suffer serious performance deterioration in dark environments. In view of this, this paper proposes a Lidar-based vehicle flow monitoring system, which consists three parts: target detection module, vehicle flow counting module and vehicle counting visualization module. Specifically, the target detection module is built based on self-training data and the YOLOv4 network. Vehicle information is collected and preprocessed to speed up the target detection and enhance the accuracy. The vehicles and their positions are then obtained by performing inference with the trained weights for Lidar-based vehicle detection. On this basis, the vehicle counting module applies a multi-object tracking technique to monitor the vehicles which are nearby the detected one. Additionally, the Hungarian algorithm is used to match the surrounding vehicles. In vehicle counting visualization module, we visualize the system output through OpenCv. Finally, we build the system prototype and evaluate the algorithm performance in realistic environments under different night-time traffic situations. The experimental results demonstrate the practicability and robustness of the proposed solutions.
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