Title :
Bayesian adaptive filtering at linear cost
Author :
Sadiki, Tayeb ; Slock, Dirk T M
Author_Institution :
Eurocom Inst., Sophia Antipolis
Abstract :
Standard adaptive filtering algorithms, including the popular LMS and RLS algorithms, possess only one parameter (step-size, forgetting factor) to adjust the tracking speed in a non-stationary environment. Furthermore, existing techniques for the automatic adjustment of this parameter are not totally satisfactory and are rarely used. In this paper we pursue the concept of Bayesian adaptive filtering (BAF) that we introduced earlier, based on modeling the optimal adaptive filter coefficients as a stationary vector process, in particular a diagonal AR(1) model. Optimal adaptive filtering with such a state model becomes Kalman filtering. The AR(1) model parameters are determined with an adaptive version of the EM algorithm, which leads to linear prediction on reconstructed optimal filter correlations, and hence a meaningful approximation/estimation compromise. The resulting algorithm, of complexity O(N2), is shown by simulations to have performance close to that of the Kalman filter with true model parameters. In this paper, we apply a component-wise EM approach to further reduce the complexity to being linear in the number of adaptive filtering coefficients. The good performance of the resulting algorithm is illustrated in simulations. The AR(1) state model can be further approximated by a random walk, leading to further simplified adaptive filter that can be interpreted an LMS algorithm with a variable step-size per filter tap
Keywords :
Bayes methods; adaptive Kalman filters; autoregressive processes; correlation theory; least mean squares methods; prediction theory; recursive estimation; BAF; Bayesian adaptive filtering; Kalman filtering; LMS algorithm; RLS algorithm; autoregressive state model parameter; component-wise EM approach; least mean square methods; linear prediction; optimal filter correlation; recursive least square; stationary vector process; Adaptive filters; Approximation algorithms; Bayesian methods; Costs; Filtering algorithms; Kalman filters; Least squares approximation; Predictive models; Resonance light scattering; Vectors;
Conference_Titel :
Statistical Signal Processing, 2005 IEEE/SP 13th Workshop on
Conference_Location :
Novosibirsk
Print_ISBN :
0-7803-9403-8
DOI :
10.1109/SSP.2005.1628580