Publication | Closed Access
Sensor Planning for Mobile Robot Localization---A Hierarchical Approach Using a Bayesian Network and a Particle Filter
50
Citations
29
References
2008
Year
Artificial IntelligenceSensor PlanningEngineeringLocation EstimationField RoboticsLocalization TechniqueIntelligent SystemsLocalizationGlobal LocalizationLocalization BeliefMobile Robot LocalizationNetwork RoboticsRobot LearningSensor PlacementRobot NetworkDistributed RoboticsVehicle LocalizationBayesian NetworkSensor OptimizationRobotics
In this paper, we propose a hierarchical approach to solving sensor planning for the global localization of a mobile robot. Our system consists of two subsystems: a lower layer and a higher layer. The lower layer uses a particle filter to evaluate the posterior probability of the localization. When the particles converge into clusters, the higher layer starts particle clustering and sensor planning to generate an optimal sensing action sequence for the localization. The higher layer uses a Bayesian network for probabilistic inference. The sensor planning takes into account both localization belief and sensing cost. We conducted simulations and actual robot experiments to validate our proposed approach.
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