ORBSLAM-Atlas: a robust and accurate multi-map system
Richard Elvira, Juan D. Tard\'os, J.M.M. Montiel

TL;DR
ORBSLAM-Atlas extends the original ORBSLAM system to handle multiple disconnected maps through robust merging, enabling multi-session mapping with improved accuracy and robustness in dynamic and challenging environments.
Contribution
It introduces a multi-map SLAM system with a novel map merging algorithm, enhancing robustness and accuracy over previous single-map approaches.
Findings
Achieves 2-3 times more accurate maps than existing multi-map methods.
Successfully handles dynamic scenes with occlusions and tracking loss.
Outperforms previous approaches in EuRoC dataset evaluations.
Abstract
We propose ORBSLAM-Atlas, a system able to handle an unlimited number of disconnected sub-maps, that includes a robust map merging algorithm able to detect sub-maps with common regions and seamlessly fuse them. The outstanding robustness and accuracy of ORBSLAM are due to its ability to detect wide-baseline matches between keyframes, and to exploit them by means of non-linear optimization, however it only can handle a single map. ORBSLAM-Atlas brings the wide-baseline matching detection and exploitation to the multiple map arena. The result is a SLAM system significantly more general and robust, able to perform multi-session mapping. If tracking is lost during exploration, instead of freezing the map, a new sub-map is launched, and it can be fused with the previous map when common parts are visited. Our criteria to declare the camera lost contrast with previous approaches that simply…
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