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Adaptive SLAM algorithm with sampling based on state uncertainty

Adaptive SLAM algorithm with sampling based on state uncertainty

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Since the uncertainty of a robot state changes over time, proposed is an adaptive simultaneous localisation and mapping (SLAM) algorithm based on the Kullback-Leibler distance (KLD) sampling and Markov chain Monte Carlo (MCMC) move step. First, it can adaptively determine the number of required particles by calculating the KLD between the posterior distribution approximated by particles and the true posterior distribution at each step. Secondly, it introduces the MCMC move step to increase the particle variety. Both simulation and experimental results demonstrate that the proposed algorithm can obtain more robust and precise results by computing the number of required particles more accurately than previous algorithms.

References

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      • Wang, H., Liu, H., Ju, H., Li, H.: `Improvement for the Rao-Blackwellized particle filters SLAM with MCMC resampling', Int. Conf. on Computational Intelligence and Software Engineering, (CiSE 2009), December 2009, Wuhan, People's Republic of China.
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      • Murphy, K.: `Bayesian map learning in dynamic environments', Proc. Neural Information Processing Systems, (NIPS), 1999, Denver, CO, USA, p. 1015–1021.
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      • C.M. Bishop . (2006) Pattern recognition and machine learning.
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      • M. Montemerlo , S. Thrun . (2007) FastSLAM: a scalable method for the simultaneous localization and mapping problem in robotics.
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