Relative entropy rate based multiple hidden Markov Model Approximation


Autoria(s): Lai, John; Ford, Jason J.
Data(s)

2010

Resumo

This paper proposes a novel relative entropy rate (RER) based approach for multiple HMM (MHMM) approximation of a class of discrete-time uncertain processes. Under different uncertainty assumptions, the model design problem is posed either as a min-max optimisation problem or stochastic minimisation problem on the RER between joint laws describing the state and output processes (rather than the more usual RER between output processes). A suitable filter is proposed for which performance results are established which bound conditional mean estimation performance and show that estimation performance improves as the RER is reduced. These filter consistency and convergence bounds are the first results characterising multiple HMM approximation performance and suggest that joint RER concepts provide a useful model selection criteria. The proposed model design process and MHMM filter are demonstrated on an important image processing dim-target detection problem.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/27587/

Publicador

IEEE

Relação

http://eprints.qut.edu.au/27587/1/27587.pdf

DOI:10.1109/TSP.2009.2028115

Lai, John & Ford, Jason J. (2010) Relative entropy rate based multiple hidden Markov Model Approximation. IEEE Transactions on Signal Processing, 58(1), pp. 165-174.

Direitos

Copyright 2010 IEEE

Fonte

Australian Research Centre for Aerospace Automation; Faculty of Built Environment and Engineering; School of Engineering Systems

Palavras-Chave #010406 Stochastic Analysis and Modelling #010404 Probability Theory #080106 Image Processing #Hidden Markov Model #Relative Entropy Rate #Model Approximation
Tipo

Journal Article