A wide variety of sensor technologies are recently being adopted for traffic monitoring applications. Since most of these technologies rely on wired infrastructure, the installation and maintenance costs limit the deployment of the traffic monitoring systems. In this paper, we introduce a traffic monitoring approach that exploits physical layer samples in vehicular communications processed by machine learning techniques. We verify the feasibility of our approach with extensive simulations and real-world experiments. First, we simulate wireless channels under realistic traffic conditions using a ray-tracing simulator and a traffic simulator. Next, we conduct experiments in a real-world environment and collect messages transmitted from a roadside unit (RSU). The results show that we are able to predict different levels of service with an accuracy above 80% both on the simulation and experimental data. Further, the proposed approach is capable of estimating the number of vehicles with a low mean absolute error on both data. Our approach is suitable to be deployed alongside the current monitoring systems. It doesn't require additional investment in infrastructure since it relies on existing vehicular networks.
翻译:由于这些技术大多依赖有线基础设施,安装和维护成本限制了交通监测系统的部署。在本文件中,我们采用了交通监测方法,利用机器学习技术处理的车辆通信中的物理层样本;我们用广泛的模拟和现实世界实验来核查我们的方法的可行性。首先,我们使用射线模拟器和交通模拟器在现实交通条件下模拟无线通道。接着,我们在现实环境中进行实验,收集路边单位(RSU)发送的信息。结果显示,我们能够预测不同服务水平,模拟和实验数据精确度均超过80%。此外,拟议方法能够估计两种数据都存在低度绝对误差的车辆数量。我们的方法适合与目前的监测系统一起部署,不需要对基础设施进行额外投资,因为它依赖于现有的车辆网络。</s>