Publication | Closed Access
DiSCo-SLAM: Distributed Scan Context-Enabled Multi-Robot LiDAR SLAM With Two-Stage Global-Local Graph Optimization
107
Citations
24
References
2021
Year
EngineeringField RoboticsLocalizationMulti-robot SlamNetwork RoboticsSystems EngineeringRobot LearningComputational GeometryMultirobot SystemAutomatic NavigationCartographyNovel FrameworkDistributed RoboticsVehicle LocalizationComputer ScienceAutonomous NavigationOdometryAutomationLidar ObservationsRobotics
We propose a novel framework for distributed,multi-robot SLAM intended for use with 3D LiDAR observations. The framework, DiSCo-SLAM, is the first to use the lightweight Scan Context descriptor for multi-robot SLAM, permitting a data-efficient exchange of LiDAR observations among robots. Additionally, our framework includes a two-stage global and local optimization framework for distributed multi-robot SLAM which provides stable localization results that are resilient to the unknown initial conditions that typify the search for inter-robot loop closures. We compare our proposed framework with the widely used distributed Gauss-Seidel (DGS) approach, over a variety of multi-robot datasets, quantitatively demonstrating its accuracy, stability, and data-efficiency.
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