DocumentCode :
3008337
Title :
Mixture autoregressive hidden Markov models for speaker independent isolated word recognition
Author :
Juang, B.H. ; Rabiner, L.R.
Author_Institution :
AT&T Bell Laboratories, Murray Hill, New Jersey
Volume :
11
fYear :
1986
fDate :
31503
Firstpage :
41
Lastpage :
44
Abstract :
In this paper a signal modeling technique based upon finite mixture autoregressive probabilistic functions of Markov chains is developed and applied to the problem of speech recognition, particularly speaker-independent recognition of isolated digits. Two types of mixture probability densities are investigated: finite mixtures of Gaussian autoregressive densities (GAM) and nearest-neighbor partitioned finite mixtures of Gaussian autoregressive densities (PGAM). In the former (GAM), the observation density in each Markov state is simply a (stochastically constrained) weighted sum of Gaussian autoregressive densities, while in the latter (PGAM) it involves nearest-neighbor decoding which, in effect, defines a set of partitions on the observation space. In this paper we discuss the signal modeling methodology and give experimental results on speaker independent recognition of isolated digits.
Keywords :
Hidden Markov models; Maximum likelihood decoding; Maximum likelihood estimation; Parameter estimation; Probability density function; Signal analysis; Source coding; Spectral analysis; Speech recognition; Vector quantization;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech, and Signal Processing, IEEE International Conference on ICASSP '86.
Type :
conf
DOI :
10.1109/ICASSP.1986.1169183
Filename :
1169183
Link To Document :
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