ORB-SLAM3AB: Augmenting ORB-SLAM3 to Counteract Bumps with Optical Flow Inter-frame Matching
This paper proposes an enhancement to the ORB-SLAM3 algorithm, tailored for applications on rugged road surfaces. Our improved algorithm adeptly combines feature point matching with optical flow methods, capitalizing on the high robustness of optical flow in complex terrains and the high precision o...
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Zusammenfassung: | This paper proposes an enhancement to the ORB-SLAM3 algorithm, tailored for
applications on rugged road surfaces. Our improved algorithm adeptly combines
feature point matching with optical flow methods, capitalizing on the high
robustness of optical flow in complex terrains and the high precision of
feature points on smooth surfaces. By refining the inter-frame matching logic
of ORB-SLAM3, we have addressed the issue of frame matching loss on uneven
roads. To prevent a decrease in accuracy, an adaptive matching mechanism has
been incorporated, which increases the reliance on optical flow points during
periods of high vibration, thereby effectively maintaining SLAM precision.
Furthermore, due to the scarcity of multi-sensor datasets suitable for
environments with bumpy roads or speed bumps, we have collected LiDAR and
camera data from such settings. Our enhanced algorithm, ORB-SLAM3AB, was then
benchmarked against several advanced open-source SLAM algorithms that rely
solely on laser or visual data. Through the analysis of Absolute Trajectory
Error (ATE) and Relative Pose Error (RPE) metrics, our results demonstrate that
ORB-SLAM3AB achieves superior robustness and accuracy on rugged road surfaces. |
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DOI: | 10.48550/arxiv.2411.18174 |