Litcius/Paper detail

Random-Finite-Set-Based Distributed Multirobot SLAM

Lin Gao, Giorgio Battistelli, Luigi Chisci

2020IEEE Transactions on Robotics52 citationsDOIOpen Access PDF

Abstract

This article addresses fully distributed multirobot (multivehicle) simultaneous localization and mapping (SLAM). More specifically, a multivehicle scenario is considered, wherein a team of vehicles explore the scene of interest in order to cooperatively construct the map of the environment by locally updating and exchanging map information in a neighborwise fashion. To this end, a random-set-based local SLAM approach is undertaken at each vehicle by regarding the map as a random finite set and updating the first-order moment, called probability hypothesis density (PHD), of its multiobject density. Consensus on map PHDs is adopted in order to spread the map information through the team of vehicles also taking into account the different and time-varying fields of view of the team members. The convergence of the consensus strategy is analyzed theoretically, and the effectiveness of the proposed approach is assessed on both simulated and experimental datasets. The complexity and scalability of the proposed approach are also analyzed both theoretically and experimentally.

Topics & Concepts

Simultaneous localization and mappingSet (abstract data type)Computer scienceScalabilityConvergence (economics)Construct (python library)TrajectoryMoment (physics)Artificial intelligenceMobile robotData miningRobotProgramming languageEconomicsClassical mechanicsDatabasePhysicsEconomic growthAstronomyRobotics and Sensor-Based LocalizationDistributed Control Multi-Agent SystemsRobotic Path Planning Algorithms