RideSense:迈向无票交通

R. Meng, David Wolfgang Gromling, Romit Roy Choudhury, Srihari Nelakuditi
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引用次数: 5

摘要

想象一下这样一个交通系统,在这个系统中,乘客只是上下车,没有任何明确的票务操作。然而,该系统跟踪使用情况并向乘客收费。与现有系统相比,这样的系统不仅更方便、更高效,而且更有利于分析。为了实现这一目标,我们利用人们携带配备传感器的智能设备的机会,可以连续测量他们的运动轨迹/模式和体验环境。假设车辆也配备了这样的传感器(可能是固定设备,也可能是驾驶员携带的智能设备),车辆的运动和体验到的环境特征也可以被记录下来并上传到云端。在这些假设下,我们假设乘客的智能设备感知到的运动/环境与她所乘坐的车辆密切相关,并且与其他车辆和/或同一车辆的其他痕迹不同。在本文中,我们扩展了这种直觉并开发了一个名为RideSense的系统,该系统将乘客的传感器痕迹与该区域的公共汽车痕迹相匹配,以确定她乘坐的公共汽车,何时乘坐以及在何处上下车。我们对我们地区5条公交线路20多个小时的轨迹进行了评估,结果表明,根据传感器的选择及其功能、乘客手机的位置和测量指标,RideSense的准确率达到了84 ~ 98%。这些结果虽然远未得出结论,但让我们相信,在未来的智能城市中,无票公共交通确实有可能实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RideSense: Towards ticketless transportation
Imagine a transportation system in which passengers simply get on/off without any explicit ticketing operation. Yet, the system tracks usage and charges passengers. Such a system will not only be more convenient and efficient, but also be more conducive for analytics, than existing systems. Towards that goal, we exploit the opportunity that people are carrying sensor-equipped smart devices, and their motion trajectories/patterns and experienced environment can be measured continuously. Assuming that vehicles are also equipped with such sensors (perhaps fixed devices or smart devices carried by drivers), the vehicles' motion and the experienced environment characteristics can also be recorded and uploaded to cloud. Under these assumptions, we hypothesize that the motion/environment sensed by a passenger's smart device correlates strongly with that of the vehicle she is traveling in and is distinct from that of other vehicles and/or other traces of the same vehicle. In this paper, we expand on this intuition and develop a system, called RideSense, that matches a passenger's sensor trace against the traces of buses in that area, to determine which bus, when she has taken and where she gets on/off. Our evaluation of RideSense, with 20+ hours of traces from 5 bus lines in our area, shows that it achieves an accuracy of 84∼98%, depending on the choice of sensors and their features, positions of the passengers' phones and the metrics of measurement. These results, while far from conclusive, offer confidence that ticketless public transportation may indeed be a possibility in smart cities of the future.
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