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Investigation on Inter-Speaker Variability in The Feature Space Presenter : 陳陳陳

Investigation on Inter-Speaker Variability in The Feature Space

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Investigation on Inter-Speaker Variability in The Feature Space. Presenter : 陳彥達. Reference. R. Haeb-Umbach, “Investigation on Inter-Speaker Variability in The Feature Space”, ICASSP 99. Outline. Introduction A measure of inter-speaker variability Vocal tract normalization - PowerPoint PPT Presentation

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Page 1: Investigation on Inter-Speaker Variability in The Feature Space

Investigation on Inter-Speaker Variability in The Feature Space

Presenter : 陳彥達

Page 2: Investigation on Inter-Speaker Variability in The Feature Space

Reference

R. Haeb-Umbach, “Investigation on Inter-Speaker Variability in The Feature Space”, ICASSP 99.

Page 3: Investigation on Inter-Speaker Variability in The Feature Space

Outline Introduction A measure of inter-speaker variability Vocal tract normalization Cepstral mean and variance normalization

Page 4: Investigation on Inter-Speaker Variability in The Feature Space

Introduction Adaptation

Reduce mismatch by adapting feature vectors or model parameters to the target environment.

Page 5: Investigation on Inter-Speaker Variability in The Feature Space

Introduction(2) Normalization

Compute feature or model parameters that are insensitive to undesired variations of the speech signal.

Page 6: Investigation on Inter-Speaker Variability in The Feature Space

Introduction(3) Fisher discriminant analysis

An early assessment of a feature set without running recognition first

The ratio of feature variability due to different phonemes and due to different speakers

Page 7: Investigation on Inter-Speaker Variability in The Feature Space

A measure of inter-speaker variability

Good feature vector space Close together when belonging to the same

phoneme class Separated from each other when belonging to

the different phoneme class

Page 8: Investigation on Inter-Speaker Variability in The Feature Space

A measure of inter-speaker variability(2)

: cepstral feature vectors

: cepstral mean feature vector

: class mean vector

: total mean vector

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Page 9: Investigation on Inter-Speaker Variability in The Feature Space

A measure of inter-speaker variability(3)

: cepstral mean feature vector : class mean vector

: total mean vector

: between class covariance matrix

: within class covariance matrix

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Page 10: Investigation on Inter-Speaker Variability in The Feature Space

A measure of inter-speaker variability(4)

Fisher variate analysis = the sum of the eigenvalues

of The radius of the scattering volume Higher

lower recognition error rate

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Page 11: Investigation on Inter-Speaker Variability in The Feature Space

Vocal tract normalization Reduce inter-speaker variability by a speaker-

specific frequency warping Differences in vocal tract length are compensated

for by a linear warping factor

)110(7001

)( 2595 melfk

melHz fkf

Page 12: Investigation on Inter-Speaker Variability in The Feature Space

Vocal tract normalization(2)

42 male + 42 female 42 male

Page 13: Investigation on Inter-Speaker Variability in The Feature Space

Vocal tract normalization(3)

a normalization on a per sentence basis performs better than a normalization on a per speaker basis

Page 14: Investigation on Inter-Speaker Variability in The Feature Space

Cepstral mean and variance normalization

: input cepstral feature : estimate of the mean of the input cepstral

feature : estimate of the standard deviation of the

input cepstral feature : the mean and variance normalized feature : number of features

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Page 15: Investigation on Inter-Speaker Variability in The Feature Space

Cepstral mean and variance normalization(2)

42 male + 42 female 42 male