A Radio-fingerprinting-based Vehicle Classification System for Intelligent Traffic Control in Smart Cities.

SysCon(2018)

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摘要
The measurement and provision of precise and up-to-date traffic-related key performance indicators is a key element and crucial factor for intelligent traffic control systems in upcoming smart cities. The street network is considered as a highly-dynamic Cyber Physical System (CPS) where measured information forms the foundation for dynamic control methods aiming to optimize the overall system state. Apart from global system parameters like traffic flow and density, specific data, such as velocity of individual vehicles as well as vehicle type information, can be leveraged for highly sophisticated traffic control methods like dynamic type-specific lane assignments. Consequently, solutions for acquiring these kinds of information are required and have to comply with strict requirements ranging from accuracy over cost-efficiency to privacy preservation. In this paper, we present a system for classifying vehicles based on their radio-fingerprint. In contrast to other approaches, the proposed system is able to provide real-time capable and precise vehicle classification as well as cost-efficient installation and maintenance, privacy preservation and weather independence. The system performance in terms of accuracy and resource-efficiency is evaluated in the field using comprehensive measurements. Using a machine learning based approach, the resulting success ratio for classifying cars and trucks is above 99%.
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关键词
radio-fingerprinting,vehicle classification system,smart cities,measurement,up-to-date traffic,key performance indicators,key element,intelligent traffic control systems,street network,highly-dynamic Cyber Physical System,dynamic control methods,system state,global system parameters,traffic flow,specific data,individual vehicles,vehicle type information,highly sophisticated traffic control methods,dynamic type-specific lane assignments,cost-efficiency,radio-fingerprint,real-time,precise vehicle classification,privacy preservation,system performance,comprehensive measurements,CPS,machine learning based approach
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