Publication | Closed Access
Adapting the Sample Size in Particle Filters Through KLD-Sampling
709
Citations
71
References
2003
Year
EngineeringLocation EstimationField RoboticsParticle MethodIntelligent SystemsApproximation ErrorLocalizationState EstimationParticle FiltersFiltering TechniqueUncertainty QuantificationNumerical SimulationSample SizeRobot LearningStatisticsMachine VisionVehicle LocalizationSampling TheorySignal ProcessingOdometryParticle FilterRoboticsTracking System
Over the past few years, particle filters have been applied with great success to a variety of state estimation problems. In this paper we present a statistical approach to increasing the efficiency of particle filters by adapting the size of sample sets during the estimation process. The key idea of the KLD-sampling method is to bound the approximation error introduced by the sample-based representation of the particle filter. The name KLD-sampling is due to the fact that we measure the approximation error using the Kullback-Leibler distance. Our adaptation approach chooses a small number of samples if the density is focused on a small part of the state space, and it chooses a large number of samples if the state uncertainty is high. Both the implementation and computation overhead of this approach are small. Extensive experiments using mobile robot localization as a test application show that our approach yields drastic improvements over particle filters with fixed sample set sizes and over a previously introduced adaptation technique.
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