6533b7d3fe1ef96bd125fff2

RESEARCH PRODUCT

A Network Tomography Approach for Traffic Monitoring in Smart Cities

Marco OrtolaniRuoxi ZhangSara NewmanSimone Silvestri

subject

Settore ING-INF/05 - Sistemi Di Elaborazione Delle Informazioni050210 logistics & transportationCost efficiencyExploitbusiness.industryComputer scienceMechanical Engineering05 social sciencesReal-time computingNetwork tomography smart cities Traffic monitoring020206 networking & telecommunicationsTopology (electrical circuits)02 engineering and technologyNetwork tomographyComputer Science ApplicationsSmart city0502 economics and businessAutomotive EngineeringScalability0202 electrical engineering electronic engineering information engineeringGlobal Positioning SystemKey (cryptography)business

description

Traffic monitoring is a key enabler for several planning and management activities of a Smart City. However, traditional techniques are often not cost efficient, flexible, and scalable. This paper proposes an approach to traffic monitoring that does not rely on probe vehicles, nor requires vehicle localization through GPS. Conversely, it exploits just a limited number of cameras placed at road intersections to measure car end-to-end traveling times. We model the problem within the theoretical framework of network tomography, in order to infer the traveling times of all individual road segments in the road network. We specifically deal with the potential presence of noisy measurements, and the unpredictability of vehicles paths. Moreover, we address the issue of optimally placing the monitoring cameras in order to maximize coverage, while minimizing the inference error, and the overall cost. We provide extensive experimental assessment on the topology of downtown San Francisco, CA, USA, using real measurements obtained through the Google Maps APIs, and on realistic synthetic networks. Our approach provides a very low error in estimating the traveling times over 95% of all roads even when as few as 20% of road intersections are equipped with cameras.

https://doi.org/10.1109/tits.2018.2829086