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Computer Research and Modeling, 2018, Volume 10, Issue 3, Pages 295–303
DOI: https://doi.org/10.20537/2076-7633-2018-10-3-295-303
(Mi crm252)
 

SPECIAL ISSUE

Bayesian localization for autonomous vehicle using sensor fusion and traffic signs

S. I. Verentsova, E. A. Magerramova, V. A. Vinogradova, R. I. Gizatullina, A. E. Alekseenkob, Ya. A. Kholodova

a Innopolis University, 1 Universitetskaya st., Innopolis, 420500, Russia
b Institute of Computer Aided Design of the Russian Academy of Sciences (ICAD RAS), 19/18 2-nd Brestskaya st., Moscow, 123056, Russia
References:
Abstract: The localization of a vehicle is an important task in the field of intelligent transportation systems. It is well known that sensor fusion helps to create more robust and accurate systems for autonomous vehicles. Standard approaches, like extended Kalman Filter or Particle Filter, are inefficient in case of highly non-linear data or have high computational cost, which complicates using them in embedded systems. Significant increase of precision, especially in case when GPS (Global Positioning System) is unavailable, may be achieved by using land-marks with known location — such as traffic signs, traffic lights, or SLAM (Simultaneous Localization and Mapping) features. However, this approach may be inapplicable if a priori locations are unknown or not accurate enough. We suggest a new approach for refining coordinates of a vehicle by using landmarks, such as traffic signs. Core part of the suggested system is the Bayesian framework, which refines vehicle location using external data about the previous traffic signs detections, collected with crowdsourcing. This paper presents an approach that combines trajectories built using global coordinates from GPS and relative coordinates from Inertial Measurement Unit (IMU) to produce a vehicle's trajectory in an unknown environment. In addition, we collected a new dataset, including from smartphone GPS and IMU sensors, video feed from windshield camera, which were recorded during 4 car rides on the same route. Also, we collected precise location data from Real Time Kinematic Global Navigation Satellite System (RTK-GNSS) device, which can be used for validation. This RTK-GNSS system was used to collect precise data about the traffic signs locations on the route as well. The results show that the Bayesian approach helps with the trajectory correction and gives better estimations with the increase of the amount of the prior information. The suggested method is efficient and requires, apart from the GPS/IMU measurements, only information about the vehicle locations during previous traffic signs detections.
Keywords: bayesian learning, sensor fusion, localization, autonomous vehicle.
Funding agency Grant number
Ministry of Education and Science of the Russian Federation RFMEFI60917X0100
Russian Science Foundation 14-11-00877
The work was supported by the Ministry of Education and Science of the Russian Federation within the framework of the grant of the federal target program (grant number RFMEFI60917X0100), the Russian Science Foundation (grant number 14-11-00877) and the company “RoadAR”, which provided data of traffic signs position.
Received: 28.02.2018
Revised: 31.05.2018
Accepted: 03.06.2018
Document Type: Article
UDC: 519.857.4
Language: Russian
Citation: S. I. Verentsov, E. A. Magerramov, V. A. Vinogradov, R. I. Gizatullin, A. E. Alekseenko, Ya. A. Kholodov, “Bayesian localization for autonomous vehicle using sensor fusion and traffic signs”, Computer Research and Modeling, 10:3 (2018), 295–303
Citation in format AMSBIB
\Bibitem{VerMagVin18}
\by S.~I.~Verentsov, E.~A.~Magerramov, V.~A.~Vinogradov, R.~I.~Gizatullin, A.~E.~Alekseenko, Ya.~A.~Kholodov
\paper Bayesian localization for autonomous vehicle using sensor fusion and traffic signs
\jour Computer Research and Modeling
\yr 2018
\vol 10
\issue 3
\pages 295--303
\mathnet{http://mi.mathnet.ru/crm252}
\crossref{https://doi.org/10.20537/2076-7633-2018-10-3-295-303}
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  • https://www.mathnet.ru/eng/crm252
  • https://www.mathnet.ru/eng/crm/v10/i3/p295
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    References:31
     
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