Improved Particle Filters for Vehicle Localisation

11/15/2016
by   Kira Kempinska, et al.
0

The ability to track a moving vehicle is of crucial importance in numerous applications. The task has often been approached by the importance sampling technique of particle filters due to its ability to model non-linear and non-Gaussian dynamics, of which a vehicle travelling on a road network is a good example. Particle filters perform poorly when observations are highly informative. In this paper, we address this problem by proposing particle filters that sample around the most recent observation. The proposal leads to an order of magnitude improvement in accuracy and efficiency over conventional particle filters, especially when observations are infrequent but low-noise.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/23/2018

A practical example for the non-linear Bayesian filtering of model parameters

In this tutorial we consider the non-linear Bayesian filtering of static...
research
02/19/2023

An overview of differentiable particle filters for data-adaptive sequential Bayesian inference

By approximating posterior distributions with weighted samples, particle...
research
07/27/2018

Particle filters for applications in geosciences

Particle filters contain the promise of fully nonlinear data assimilatio...
research
12/05/2018

Vision-Based High Speed Driving with a Deep Dynamic Observer

In this paper we present a framework for combining deep learning-based r...
research
02/02/2023

Unsupervised Learning of Sampling Distributions for Particle Filters

Accurate estimation of the states of a nonlinear dynamical system is cru...
research
11/18/2020

Optimized Auxiliary Particle Filters

Auxiliary particle filters (APFs) are a class of sequential Monte Carlo ...
research
05/03/2021

Homotopy Sampling, with an Application to Particle Filters

We propose a homotopy sampling procedure, loosely based on importance sa...

Please sign up or login with your details

Forgot password? Click here to reset