Applied Sciences (Dec 2024)

Research on GNSS/IMU/Visual Fusion Positioning Based on Adaptive Filtering

  • Ao Liu,
  • Hang Guo,
  • Min Yu,
  • Jian Xiong,
  • Huiyang Liu,
  • Pengfei Xie

DOI
https://doi.org/10.3390/app142411507
Journal volume & issue
Vol. 14, no. 24
p. 11507

Abstract

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The accuracy of satellite positioning results depends on the number of available satellites in the sky. In complex environments such as urban canyons, the effectiveness of satellite positioning is often compromised. To enhance the positioning accuracy of low-cost sensors, this paper combines the visual odometer data output by Xtion with the GNSS/IMU integrated positioning data output by the satellite receiver and MEMS IMU both in the mobile phone through adaptive Kalman filtering to improve positioning accuracy. Studies conducted in different experimental scenarios have found that in unobstructed environments, the RMSE of GNSS/IMU/visual fusion positioning accuracy improves by 50.4% compared to satellite positioning and by 24.4% compared to GNSS/IMU integrated positioning. In obstructed environments, the RMSE of GNSS/IMU/visual fusion positioning accuracy improves by 57.8% compared to satellite positioning and by 36.8% compared to GNSS/IMU integrated positioning.

Keywords