Title
Speaker normalization using HMM2
Abstract
We present an HMM2 based method for speaker normalization. Introduced as an extension of hidden Markov model (HMM), HMM2 differentiates itself from the regular HMM in terms of the emission density modeling, which is done by a set of state-dependent HMMs working in the feature vector space. The emission modeling HMM aims at maximizing the likelihood through optimal alignment of its states across the feature components. This property makes it potentially useful to speaker normalization, when applied to spectrum. With the alignment information we get, it is possible to normalize the speaker related variations through piecewise linear warping of frequency axis of the spectrum. In our case, (emission modeling) HMM based spectral warping is employed in the feature extraction block of regular HMM framework for normalizing the speaker related variabilities. After brief description of HMM2, we present the general approach towards HMM2-based speaker normalization and show, through preliminary experiments, the pertinence of the approach.
Year
DOI
Venue
2002
10.1109/NNSP.2002.1030076
NNSP
Keywords
DocType
ISBN
feature extraction,hidden markov models,piecewise linear techniques,speaker recognition,spectral analysis,hmm based spectral warping,hmm2,emission density modeling,emission modeling hmm,feature components,feature vector space,hidden markov model,piecewise linear warping,speaker normalization,speaker related variabilities,state-dependent hmm,vectors,piecewise linear,frequency,testing,feature vector,shape,spectrum,speech recognition,speech,artificial intelligence
Conference
0-7803-7616-1
Citations 
PageRank 
References 
0
0.34
5
Authors
3
Name
Order
Citations
PageRank
Ikbal, S.100.34
Katrin Weber2214.27
Herve Bourlard315237.75