Online SLAM with Any-time Self-calibration and Automatic Change Detection
A framework for online simultaneous localization, mapping and self-calibration is presented which can detect and handle significant change in the calibration parameters. Estimates are computed in constant-time by factoring the problem and focusing on segments of the trajectory that are most informat...
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Zusammenfassung: | A framework for online simultaneous localization, mapping and
self-calibration is presented which can detect and handle significant change in
the calibration parameters. Estimates are computed in constant-time by
factoring the problem and focusing on segments of the trajectory that are most
informative for the purposes of calibration. A novel technique is presented to
detect the probability that a significant change is present in the calibration
parameters. The system is then able to re-calibrate. Maximum likelihood
trajectory and map estimates are computed using an asynchronous and adaptive
optimization. The system requires no prior information and is able to
initialize without any special motions or routines, or in the case where
observability over calibration parameters is delayed. The system is
experimentally validated to calibrate camera intrinsic parameters for a
nonlinear camera model on a monocular dataset featuring a significant zoom
event partway through, and achieves high accuracy despite unknown initial
calibration parameters. Self-calibration and re-calibration parameters are
shown to closely match estimates computed using a calibration target. The
accuracy of the system is demonstrated with SLAM results that achieve sub-1%
distance-travel error even in the presence of significant re-calibration
events. |
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DOI: | 10.48550/arxiv.1411.1372 |