Abstract

We propose a framework for tightly-coupled lidar inertial odometry via smoothing and mapping, LIO-SAM, that achieves highly accurate, real-time mobile robot trajectory estimation and map-building. LIO-SAM formulates lidar-inertial odometry atop a factor graph, allowing a multitude of relative and absolute measurements, including loop closures, to be incorporated from different sources as factors into the system. The estimated motion from inertial measurement unit (IMU) pre-integration de-skews point clouds and produces an initial guess for lidar odometry optimization. The obtained lidar odometry solution is used to estimate the bias of the IMU. To ensure high performance in real-time, we marginalize old lidar scans for pose optimization, rather than matching lidar scans to a global map. Scan-matching at a local scale instead of a global scale significantly improves the real-time performance of the system, as does the selective introduction of keyframes, and an efficient sliding window approach that registers a new keyframe to a fixed-size set of prior "sub-keyframes." The proposed method is extensively evaluated on datasets gathered from three platforms over various scales and environments.

Keywords

OdometryLidarInertial measurement unitComputer scienceSmoothingComputer visionArtificial intelligenceSimultaneous localization and mappingTrajectoryMobile robotRobotRemote sensingGeographyPhysics

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Publication Info

Year
2020
Type
article
Pages
5135-5142
Citations
1696
Access
Closed

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1696
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212
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1556
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Cite This

Tixiao Shan, Brendan Englot, Drew Meyers et al. (2020). LIO-SAM: Tightly-coupled Lidar Inertial Odometry via Smoothing and Mapping. 2020 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) , 5135-5142. https://doi.org/10.1109/iros45743.2020.9341176

Identifiers

DOI
10.1109/iros45743.2020.9341176
arXiv
2007.00258

Data Quality

Data completeness: 79%