Journal of Geodesy and Geoinformation Science ›› 2019, Vol. 2 ›› Issue (3): 79-90.doi: 10.11947/j.JGGS.2019.0308

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A Robust Gaussian Mixture Model for Mobile Robots’ Vision-based Pose Estimation

Chuanqi CHENG1,Xiangyang HAO2(),Jiansheng LI2,Peng HU2,Xu ZHANG2   

  1. 1. Engineering University of PAP, Urumqi 830000, China
    2. Institute of Geographical Spatial Information, Information Engineering University, Zhengzhou 450001, China
  • Received:2019-01-05 Accepted:2019-07-20 Online:2019-09-20 Published:2020-01-21
  • Contact: Xiangyang HAO E-mail:xiangyanghao2004@163.com
  • About author:Chuanqi CHENG(1989—),male, PhD, lecturer, majors in computer vision, navigation, positioning and location-based services. E-mail: legend3q@163.com
  • Supported by:
    The National High Technology Research and Development Program of China(2015AA7034057A)

Abstract:

In dynamic environments, the moving landmarks can make the accuracy of traditional vision-based pose estimation worse or even failure. To solve this problem, a robust Gaussian mixture model for vision-based pose estimation is proposed. The motion index is added to the traditional graph-based vision-based pose estimation model to describe landmarks’ moving probability, transforming the classic Gaussian model to Gaussian mixture model, which can reduce the influence of moving landmarks for optimization results. To improve the algorithm’s robustness to noise, the covariance inflation model is employed in residual equations. The expectation maximization method for solving the Gaussian mixture problem is derived in detail, transforming the problem into classic iterative least square problem. Experimental results demonstrate that in dynamic environments, the proposed method outperforms the traditional method both in absolute accuracy and relative accuracy, while maintains high accuracy in static environments. The proposed method can effectively reduce the influence of the moving landmarks in dynamic environments, which is more suitable for the autonomous localization of mobile robots.

Key words: vision-based navigation; graph optimization; pose estimation; covariance inflation; expectation maximization