An improved resampling scheme for particle filtering in inertial navigation system
The particle filter provides numerical approximation to the nonlinear filtering problem in inertial navigation system. In the heterogeneous environment, reliable state estimation is the critical issue. The state estimation will increase the positioning error in the overall system. To address such pr...
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my.utm.888652020-12-29T04:38:44Z http://eprints.utm.my/id/eprint/88865/ An improved resampling scheme for particle filtering in inertial navigation system Wan Bejuri, W. M. Y. Mohamad, M. M. Raja Mohd. Radzi, R. Z. Shaikh Salleh, S. H. QA75 Electronic computers. Computer science The particle filter provides numerical approximation to the nonlinear filtering problem in inertial navigation system. In the heterogeneous environment, reliable state estimation is the critical issue. The state estimation will increase the positioning error in the overall system. To address such problem, the sequential implementation resampling (SIR) considers cause and environment for every specific resampling task decision in particle filtering. However, by only considering the cause and environment in a specific situation, SIR cannot generate reliable state estimation during their process. This paper proposes an improved resampling scheme to particle filtering for different sample impoverishment environment. Adaptations relating to noise measurement and number of particles need to be made to the resampling scheme to make the resampling more intelligent, reliable and robust. Simulation results show that proposed resampling scheme achieved improved performance in term of positioning error in inertial navigation system In conclusion, the proposed scheme of sequential implementation resampling proves to be valuable solution for different sample impoverishment environment. 2019 Conference or Workshop Item PeerReviewed Wan Bejuri, W. M. Y. and Mohamad, M. M. and Raja Mohd. Radzi, R. Z. and Shaikh Salleh, S. H. (2019) An improved resampling scheme for particle filtering in inertial navigation system. In: 11th Asian Conference on Intelligent Information and Database Systems, ACIIDS 2019, 8-11 Apr 2019, Yogyakarta, Indonesia. http://www.dx.doi.org/10.1007/978-3-030-14802-7_48 |
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QA75 Electronic computers. Computer science Wan Bejuri, W. M. Y. Mohamad, M. M. Raja Mohd. Radzi, R. Z. Shaikh Salleh, S. H. An improved resampling scheme for particle filtering in inertial navigation system |
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The particle filter provides numerical approximation to the nonlinear filtering problem in inertial navigation system. In the heterogeneous environment, reliable state estimation is the critical issue. The state estimation will increase the positioning error in the overall system. To address such problem, the sequential implementation resampling (SIR) considers cause and environment for every specific resampling task decision in particle filtering. However, by only considering the cause and environment in a specific situation, SIR cannot generate reliable state estimation during their process. This paper proposes an improved resampling scheme to particle filtering for different sample impoverishment environment. Adaptations relating to noise measurement and number of particles need to be made to the resampling scheme to make the resampling more intelligent, reliable and robust. Simulation results show that proposed resampling scheme achieved improved performance in term of positioning error in inertial navigation system In conclusion, the proposed scheme of sequential implementation resampling proves to be valuable solution for different sample impoverishment environment. |
format |
Conference or Workshop Item |
author |
Wan Bejuri, W. M. Y. Mohamad, M. M. Raja Mohd. Radzi, R. Z. Shaikh Salleh, S. H. |
author_facet |
Wan Bejuri, W. M. Y. Mohamad, M. M. Raja Mohd. Radzi, R. Z. Shaikh Salleh, S. H. |
author_sort |
Wan Bejuri, W. M. Y. |
title |
An improved resampling scheme for particle filtering in inertial navigation system |
title_short |
An improved resampling scheme for particle filtering in inertial navigation system |
title_full |
An improved resampling scheme for particle filtering in inertial navigation system |
title_fullStr |
An improved resampling scheme for particle filtering in inertial navigation system |
title_full_unstemmed |
An improved resampling scheme for particle filtering in inertial navigation system |
title_sort |
improved resampling scheme for particle filtering in inertial navigation system |
publishDate |
2019 |
url |
http://eprints.utm.my/id/eprint/88865/ http://www.dx.doi.org/10.1007/978-3-030-14802-7_48 |
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1687393632933380096 |