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Localization of Mobile Users with the Improved Kalman Filter Algorithm using Smart Traffic Lights in Self-driving Environments

  • Jung, Ju-Ho (Computer Information Technology, Korea National University of Transportation) ;
  • Song, Jung-Eun (Computer Information Technology, Korea National University of Transportation) ;
  • Ahn, Jun-Ho (Computer Information Technology, Korea National University of Transportation)
  • Received : 2019.03.08
  • Accepted : 2019.04.30
  • Published : 2019.05.31

Abstract

The self-driving cars identify appropriate navigation paths and obstacles to arrive at their destinations without human control. The autonomous cars are capable of sensing driving environments to improve driver and pedestrian safety by sharing with neighbor traffic infrastructure. In this paper, we have focused on pedestrian protection and have designed an improved localization algorithm to track mobile users on roads by interacting with smart traffic lights in vehicle environments. We developed smart traffic lights with the RSSI sensor and built the proposed method by improving the Kalman filter algorithm to localize mobile users accurately. We successfully evaluated the proposed algorithm to improve the mobile user localization with deployed five smart traffic lights.

Keywords

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Fig. 1. Using Smart Traffic Lights in Experiment

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Fig. 2. Photo inside the Smart Traffic Lights Hardware

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Fig. 3. Smart Traffic Lights Hardware Architecture

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Fig. 4. Change in RSSI value by distance

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Fig. 5. Comparison of RSSI values such as 3 smart signalson the same line

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Fig. 6. State Chart Diagram for Proposed Algorithm

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Fig. 7. Mobile Application for RSSI Detection

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Fig. 8. Experiment Scenario

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Fig. 9. Experiment Environment

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Fig. 10. Scenario 1: Tracking the location of amotionless mobile users

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Fig. 13. Scenario 2: Tracking the location of mobile users

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Fig. 14. The proposed algorithm of the moving person relative position not applied

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Fig. 15. The proposed algorithm of the moving person Applied relative position

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Fig. 11. The proposed algorithm of a person without motion Applied relative position

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Fig. 12. The proposed algorithm of a person with motion Applied relative position

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Cited by

  1. 국내 환경에 적합한 Kalman-filter 기반 사용자 운동거리 측정 알고리즘 설계 및 구현 vol.23, pp.12, 2019, https://doi.org/10.6109/jkiice.2019.23.12.1624