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A Vehicle Position Estimation Method Combining Roadside Vehicle Detector and In-Vehicle Sensors
Authors:
Shunya Yamada
Yousuke Watanabe
Hiroaki Takada
Keywords: Sensor fusion, Position estimation, Communication delays, DSRC, Intelligent transportation system
Abstract:
To improve highway traffic safety and traffic flow, it is important to properly manage merging at junctions. Accurate vehicle positions and velocities are necessary to achieve this, but existing sensors have both advantages and disadvantages. Road-side vehicle detectors are very accurate, but only available at fixed points. By contrast, in-vehicle Global Navigation Satellite System (GNSS) sensors can be used anywhere except in tunnels, but are less accurate. However these sensors can compensate for each other’s weak points. In this paper, we proposed a vehicle position estimation method that combines roadside vehicle detector and in-vehicle sensors. This gathers data from roadside vehicle detector and in-vehicle sensors via different wireless networks, applies Kalman filters to calculate accurate position and velocity. When exchanging information over wireless networks, communication delays occur and data arrival sequence is not guaranteed. Our method can retroactively calculate vehicle position in the presence of delays below a maximum acceptable threshold. The results of simulation experiments show that our method can estimate vehicle positions more accurately than using data from either sensor alone.
Pages: 7 to 14
Copyright: Copyright (c) IARIA, 2020
Publication date: February 23, 2020
Published in: conference
ISSN: 2308-4413
ISBN: 978-1-61208-770-2
Location: Lisbon, Portugal
Dates: from February 23, 2020 to February 27, 2020