DocumentCode :
1690685
Title :
On the number of samples to be drawn in particle filtering
Author :
Boers, Y.
Author_Institution :
Hollandse Signaalapparaten BV, Hengelo, Netherlands
fYear :
1999
fDate :
6/21/1905 12:00:00 AM
Firstpage :
42491
Lastpage :
42496
Abstract :
In this paper we look at the nonlinear filtering problem. In particular we look at filters of the sampling kind, also referred to as particle filters. In a setting where the system is nonlinear, and/or the load disturbance and measurement noise are not Gaussian, the (extended) Kalman filter may exhibit poor performance. In this case one is forced to look at alternative filtering methods. A method that works fine in many situations is the application of a so called sampling filter. The main disadvantage of these sampling types of filter is their computational load, which, especially in real time applications, is of paramount importance. The computation time consuming part of the sampling types of filter is the sampling part. The computational load of this stage of the filter algorithm is determined by two factors, namely: 1. The way in which the sampling stage is implemented. 2. The number of samples that is used. While the first issue has received broad attention in the literature the second one has not. In this report we try to fill this gap and suggest a method to relate the required number of samples in a quantitative way to the accuracy and the level of confidence by which the sampling stage is performed. This method is based on inequalities from probability theory and statistical learning theory. These inequalities then provide bounds for the sample size
Keywords :
tracking filters; 3D target tracking; Bayes rule; Chebyshev bound; Gaussian process; bootstrap algorithm; bounds for sample size; computational load; discrete time model; filter algorithm; inequalities; level of confidence; noisy measurements; nonlinear filtering problem; particle filtering; probability theory; required number of samples; sampling filters; state estimation; state space form; statistical learning theory; stochastic dynamical system;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Target Tracking: Algorithms and Applications (Ref. No. 1999/090, 1999/215), IEE Colloquium on
Conference_Location :
London
Type :
conf
DOI :
10.1049/ic:19990506
Filename :
827251
Link To Document :
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