Wireless-Signal-Based Vehicle Counting and Classification in Different Road Environments

Traffic monitoring is key to modern city planning. However, the costs associated with monitoring devices limit the large-scale deployment of existing traffic monitoring systems. In this article, we propose and evaluate an algorithm to automatically count the number of vehicles that have passed throu...

Verfasser: Kanschat, Raoul
Gupta, Shivam
Degbelo, Auriol
Dokumenttypen:Artikel
Medientypen:Text
Erscheinungsdatum:2022
Publikation in MIAMI:30.05.2022
Datum der letzten Änderung:30.05.2022
Angaben zur Ausgabe:[Electronic ed.]
Quelle:IEEE Open Journal of Intelligent Transportation Systems 3 (2022), 236-250
Schlagwörter:Low-cost; machine learning; road traffic monitoring; smart cities; vehicle classification; vehicle counting; Wi-Fi.
Fachgebiet (DDC):550: Geowissenschaften, Geologie
Lizenz:CC BY 4.0
Sprache:English
Format:PDF-Dokument
URN:urn:nbn:de:hbz:6-63089698717
Weitere Identifikatoren:DOI: 10.17879/63089699862
Permalink:https://nbn-resolving.de/urn:nbn:de:hbz:6-63089698717
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Onlinezugriff:10.1109_OJITS.2022.3160934.pdf

Traffic monitoring is key to modern city planning. However, the costs associated with monitoring devices limit the large-scale deployment of existing traffic monitoring systems. In this article, we propose and evaluate an algorithm to automatically count the number of vehicles that have passed through a low-cost system for traffic monitoring. The system uses deviations in the Wi-Fi signals strength to predict the presence of a vehicle on the road and its type (car, bus). The study further systematically compares six analytical techniques for the classification of detected vehicles. The methods were tested with data from three road scenarios in the city of Münster, Germany. Vehicle classification accuracy ranged from 83% up to 100% in our study. We also observed that a higher Wi-Fi frequency (5 GHz) was superior to the 2.4 GHz for improving the overall vehicle detection and the results of the classification algorithms. The results suggest that the Wi-Fi-based techniques proposed in this study are promising for cost-efficient traffic monitoring in cities in a privacy-preserving manner.