Title :
Signal denoising with hidden Markov models using hidden Markov trees as observation densities
Author :
Milone, Diego H. ; Di Persia, Leandro E. ; Tomassi, Diego R.
Author_Institution :
Signals & Comput. Intell. Lab., Ciudad Univ., Santa Fe
Abstract :
Wavelet-domain hidden Markov models have been found successful in exploiting statistical dependencies between wavelet coefficients for signal denoising. However, these models typically deal with fixed-length sequences and are not suitable neither for very long nor for real-time signals. In this paper, we propose a novel denoising method based on a Markovian model for signals analyzed on a short-term basis. The architecture is composed of a hidden Markov model in which the observation probabilities are provided by hidden Markov trees. Long-term dependencies are captured in the external model which, in each internal state, deals with the local dynamics in the time-scale plane. Model-based denoising is carried out by an empirical Wiener filter applied to the sequence of frames in the wavelet domain. Experimental results with standard test signals show important reductions of the mean-squared errors.
Keywords :
Wiener filters; hidden Markov models; mean square error methods; signal denoising; trees (mathematics); wavelet transforms; empirical Wiener filter; fixed-length sequences; hidden Markov models; hidden Markov trees; mean-squared errors method; observation densities; short-term basis; signal denoising; wavelet transform; Discrete wavelet transforms; Hidden Markov models; Noise reduction; Signal analysis; Signal denoising; Signal processing; Wavelet analysis; Wavelet coefficients; Wavelet domain; Wiener filter;
Conference_Titel :
Machine Learning for Signal Processing, 2008. MLSP 2008. IEEE Workshop on
Conference_Location :
Cancun
Print_ISBN :
978-1-4244-2375-0
Electronic_ISBN :
1551-2541
DOI :
10.1109/MLSP.2008.4685509