Title :
Feature dimension reduction using reduced-rank maximum likelihood estimation for hidden Markov models
Author_Institution :
Lucent Technol., AT&T Bell Labs., Murray Hill, NJ, USA
Abstract :
This paper presents a new method of feature dimension reduction in hidden Markov modeling (HMM) for speech recognition. The key idea is to apply reduced rank maximum likelihood estimation in the M-step of the usual Baum-Welch (1972) algorithm for estimating HMM parameters such that the estimates of the Gaussian distribution parameters are restricted in a sub-space of reduced dimensionality. There are two main advantages of applying this method in HMM: feature dimension reduction is achieved simultaneously with the estimation of HMM parameters, therefore it guarantees that the likelihood function is monotonically increasing; and it requires very little extra computation in addition to the standard Baum-Welch algorithm, hence it can be easily incorporated in the existing speech recognition systems using HMMs
Keywords :
Gaussian distribution; hidden Markov models; maximum likelihood estimation; parameter estimation; speech recognition; statistical analysis; Gaussian distribution parameters; HMM parameter estimation; feature dimension reduction; hidden Markov models; reduced dimensionality; reduced-rank maximum likelihood estimation; speech recognition; Gaussian distribution; Hidden Markov models; Linear discriminant analysis; Maximum likelihood estimation; Parameter estimation; Principal component analysis; Speech analysis; Speech recognition; Statistical analysis; Vectors;
Conference_Titel :
Spoken Language, 1996. ICSLP 96. Proceedings., Fourth International Conference on
Conference_Location :
Philadelphia, PA
Print_ISBN :
0-7803-3555-4
DOI :
10.1109/ICSLP.1996.607088