4.1 Article

A Real-time and Robust Monocular Visual Inertial SLAM System Based on Point and Line Features for Mobile Robots of Smart Cities Toward 6G

Journal

IEEE OPEN JOURNAL OF THE COMMUNICATIONS SOCIETY
Volume 3, Issue -, Pages 1950-1962

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/OJCOMS.2022.3217147

Keywords

Feature extraction; Visualization; Mobile robots; Simultaneous localization and mapping; Real-time systems; Optimization; Smart cities; SLAM; smart cities; mobile robots; sensor fusion; 6G

Funding

  1. National Natural Science Foundation of China [61905045, 62173101]
  2. Guangzhou Science and Technology Project [202102010501]
  3. Open Research Project of Zhijiang Laboratory [2021KF0AB06]

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This paper proposes a real-time and robust point-line based monocular visual inertial SLAM system for accurate localization and tracking of mobile robots in complex environments. By extracting and matching line features, as well as sensor fusion optimization, the system achieves high accuracy, real-time performance, and robustness.
Autonomous navigation of mobile robots in complex environments is challenging. Solving the problems of inaccuracy localization and frequent tracking losses of mobile robots in challenging scenes is beyond the power of point-based visual simultaneous localization and mapping (vSLAM). This paper proposes a real-time and robust point-line based monocular visual inertial SLAM (VINS) system for mobile robots of smart cities towards 6G. To extract robust line features for tracking in challenging scenes, EDLines with adaptive gamma correction is adopted to fast extract a larger ratio of long line features among all extracted line features. A real-time line feature matching approach is proposed to track the extracted line features between adjacent frames without the need of computing descriptors. Compared with LSD and KNN matching method based on LBD descriptors, the proposed method runs three times faster. Furthermore, a tightly coupled sensor fusion optimization framework is constructed for accurate state estimation, which contains point-line feature reprojection errors and IMU residuals. By evaluating on public benchmark datasets, our VINS system has high localization accuracy, real-time performance and robustness compared with other advanced SLAM systems. Our VINS system enables mobile robots to locate accurately in smart cities with complex environments.

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