A weighted likelihood criteria for learning importance densities in particle filtering
Abstract Selecting an optimal importance density and ensuring optimal particle weights are central challenges in particle-based filtering. In this paper, we provide a two-step procedure to learn importance densities for particle-based filtering. The first stage importance density is constructed base...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
SpringerOpen
2018-06-01
|
Series: | EURASIP Journal on Advances in Signal Processing |
Subjects: | |
Online Access: | http://link.springer.com/article/10.1186/s13634-018-0557-5 |
id |
doaj-40e781c207394dce90a6f1c405d497fc |
---|---|
record_format |
Article |
spelling |
doaj-40e781c207394dce90a6f1c405d497fc2020-11-24T21:37:59ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61802018-06-012018111910.1186/s13634-018-0557-5A weighted likelihood criteria for learning importance densities in particle filteringMuhammad Javvad ur Rehman0Sarat Chandra Dass1Vijanth Sagayan Asirvadam2Fundamental and Applied Sciences Department, Universiti Teknologi PetronasFundamental and Applied Sciences Department, Universiti Teknologi PetronasDepartment of Electrical and Electronic Engineering, Universiti Teknologi PetronasAbstract Selecting an optimal importance density and ensuring optimal particle weights are central challenges in particle-based filtering. In this paper, we provide a two-step procedure to learn importance densities for particle-based filtering. The first stage importance density is constructed based on ensemble Kalman filter kernels. This is followed by learning a second stage importance density via weighted likelihood criteria. The importance density is learned by fitting Gaussian mixture models to a set of particles and weights. The weighted likelihood learning criteria ensure that the second stage importance density is closer to the true filtered density, thereby improving the particle filtering procedure. Particle weights recalculated based on the latter density are shown to mitigate particle weight degeneracy as the filtering procedure propagates in time. We illustrate the proposed methodology on 2D and 3D nonlinear dynamical systems.http://link.springer.com/article/10.1186/s13634-018-0557-5Nonlinear state-space modelsParticle filterEnsemble Kalman filterGaussian mixture modelsExpectation-maximization (EM) algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Muhammad Javvad ur Rehman Sarat Chandra Dass Vijanth Sagayan Asirvadam |
spellingShingle |
Muhammad Javvad ur Rehman Sarat Chandra Dass Vijanth Sagayan Asirvadam A weighted likelihood criteria for learning importance densities in particle filtering EURASIP Journal on Advances in Signal Processing Nonlinear state-space models Particle filter Ensemble Kalman filter Gaussian mixture models Expectation-maximization (EM) algorithm |
author_facet |
Muhammad Javvad ur Rehman Sarat Chandra Dass Vijanth Sagayan Asirvadam |
author_sort |
Muhammad Javvad ur Rehman |
title |
A weighted likelihood criteria for learning importance densities in particle filtering |
title_short |
A weighted likelihood criteria for learning importance densities in particle filtering |
title_full |
A weighted likelihood criteria for learning importance densities in particle filtering |
title_fullStr |
A weighted likelihood criteria for learning importance densities in particle filtering |
title_full_unstemmed |
A weighted likelihood criteria for learning importance densities in particle filtering |
title_sort |
weighted likelihood criteria for learning importance densities in particle filtering |
publisher |
SpringerOpen |
series |
EURASIP Journal on Advances in Signal Processing |
issn |
1687-6180 |
publishDate |
2018-06-01 |
description |
Abstract Selecting an optimal importance density and ensuring optimal particle weights are central challenges in particle-based filtering. In this paper, we provide a two-step procedure to learn importance densities for particle-based filtering. The first stage importance density is constructed based on ensemble Kalman filter kernels. This is followed by learning a second stage importance density via weighted likelihood criteria. The importance density is learned by fitting Gaussian mixture models to a set of particles and weights. The weighted likelihood learning criteria ensure that the second stage importance density is closer to the true filtered density, thereby improving the particle filtering procedure. Particle weights recalculated based on the latter density are shown to mitigate particle weight degeneracy as the filtering procedure propagates in time. We illustrate the proposed methodology on 2D and 3D nonlinear dynamical systems. |
topic |
Nonlinear state-space models Particle filter Ensemble Kalman filter Gaussian mixture models Expectation-maximization (EM) algorithm |
url |
http://link.springer.com/article/10.1186/s13634-018-0557-5 |
work_keys_str_mv |
AT muhammadjavvadurrehman aweightedlikelihoodcriteriaforlearningimportancedensitiesinparticlefiltering AT saratchandradass aweightedlikelihoodcriteriaforlearningimportancedensitiesinparticlefiltering AT vijanthsagayanasirvadam aweightedlikelihoodcriteriaforlearningimportancedensitiesinparticlefiltering AT muhammadjavvadurrehman weightedlikelihoodcriteriaforlearningimportancedensitiesinparticlefiltering AT saratchandradass weightedlikelihoodcriteriaforlearningimportancedensitiesinparticlefiltering AT vijanthsagayanasirvadam weightedlikelihoodcriteriaforlearningimportancedensitiesinparticlefiltering |
_version_ |
1725936069458788352 |