IEEE Access (Jan 2023)

A Robust Keyframe-Based Visual SLAM for RGB-D Cameras in Challenging Scenarios

  • Xi Lin,
  • Yewei Huang,
  • Dingyi Sun,
  • Tzu-Yuan Lin,
  • Brendan Englot,
  • Ryan M. Eustice,
  • Maani Ghaffari

DOI
https://doi.org/10.1109/ACCESS.2023.3312062
Journal volume & issue
Vol. 11
pp. 97239 – 97249

Abstract

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The accuracy of RGB-D SLAM systems is sensitive to the image quality, and can be significantly compromised in adverse situations such as when input images are blurry, lacking in texture features, or overexposed. In this paper, based on Continuous Direct Sparse Visual Odometry (CVO), we present a novel Keyframe-based CVO (KF-CVO) with intrinsic keyframe selection mechanism that effectively reduces the tracking error. We then extend KF-CVO to a RGB-D SLAM system, CVO SLAM, equipped with place recognition via ORB features, and joint bundle adjustment & pose graph optimization. Comprehensive evaluations on publicly available benchmarks show that the proposed RGB-D SLAM system achieves a higher success rate than current state-of-the-art-methods. The proposed system is more robust to difficult benchmark sequences than current state-of-the-art methods, where adverse situations such as rapid camera motions, environments lacking in texture, and overexposed images when strong illumination exists.

Keywords