论文标题
一种可穿戴的数据收集系统,用于研究自然主义道路环境中的微观电子示波器行为
A Wearable Data Collection System for Studying Micro-Level E-Scooter Behavior in Naturalistic Road Environment
论文作者
论文摘要
作为最受欢迎的微型运动选择之一,电子示威者正在美国和全球的数百个大城市和大学城中传播。同时,电子示威者也对交通安全提出了新的挑战。通常,建议在自行车道/人行道上骑电子式车手,或以最高速度约为15-20 mph的汽车共享道路,这比行人和骑自行车的人更灵活,更快。这些功能使电子驾驶员对人类驾驶员,行人,车辆主动安全模块和自动驾驶模块充满挑战,以查看和互动。为了研究这种新的移动性选项并解决电子驾驶者的骑手和其他道路使用者的安全问题,本文提出了一个可穿戴的数据收集系统,用于研究自然主义道路环境中微观级别的电子磁带运动行为。通过使用机器人操作系统(ROS)整合LIDAR,相机和GPS,已经开发了基于电子驾驶室的数据采集系统。开发软件框架是为了支持硬件接口,传感器操作,传感器同步和数据保存。集成系统可以连续收集数据数小时,满足所有要求,包括校准精度和收集车辆和电子示波器遇到数据的能力。
As one of the most popular micro-mobility options, e-scooters are spreading in hundreds of big cities and college towns in the US and worldwide. In the meantime, e-scooters are also posing new challenges to traffic safety. In general, e-scooters are suggested to be ridden in bike lanes/sidewalks or share the road with cars at the maximum speed of about 15-20 mph, which is more flexible and much faster than the pedestrains and bicyclists. These features make e-scooters challenging for human drivers, pedestrians, vehicle active safety modules, and self-driving modules to see and interact. To study this new mobility option and address e-scooter riders' and other road users' safety concerns, this paper proposes a wearable data collection system for investigating the micro-level e-Scooter motion behavior in a Naturalistic road environment. An e-Scooter-based data acquisition system has been developed by integrating LiDAR, cameras, and GPS using the robot operating system (ROS). Software frameworks are developed to support hardware interfaces, sensor operation, sensor synchronization, and data saving. The integrated system can collect data continuously for hours, meeting all the requirements including calibration accuracy and capability of collecting the vehicle and e-Scooter encountering data.