CONF
Motlicek_ICASSP_2015/IDIAP
EMPLOYMENT OF SUBSPACE GAUSSIAN MIXTURE MODELS IN SPEAKER RECOGNITION
Motlicek, Petr
Dey, Subhadeep
Madikeri, Srikanth
Burget, Lukas
EXTERNAL
https://publications.idiap.ch/attachments/papers/2015/Motlicek_ICASSP_2015.pdf
PUBLIC
https://publications.idiap.ch/index.php/publications/showcite/Motlicek_Idiap-RR-16-2015
Related documents
IEEE - 2015 IEEE International Conference on Acoustics, Speech, and Signal Processing
Brisbane, Australia
2015
4445-4449
978-1-4673-6996-1
http://icassp2015.org/
URL
This paper presents Subspace Gaussian Mixture Model (SGMM)
approach employed as a probabilistic generative model to estimate
speaker vector representations to be subsequently used in the speaker
verification task. SGMMs have already been shown to significantly
outperform traditional HMM/GMMs in Automatic Speech Recognition
(ASR) applications. An extension to the basic SGMM framework
allows to robustly estimate low-dimensional speaker vectors
and exploit them for speaker adaptation. We propose a speaker verification
framework based on low-dimensional speaker vectors estimated
using SGMMs, trained in ASR manner using manual transcriptions.
To test the robustness of the system, we evaluate the
proposed approach with respect to the state-of-the-art i-vector extractor
on the NIST SRE 2010 evaluation set and on four different
length-utterance conditions: 3sec-10sec, 10 sec-30 sec, 30 sec-60 sec
and full (untruncated) utterances. Experimental results reveal that
while i-vector system performs better on truncated 3sec to 10sec and
10 sec to 30 sec utterances, noticeable improvements are observed
with SGMMs especially on full length-utterance durations. Eventually,
the proposed SGMM approach exhibits complementary properties
and can thus be efficiently fused with i-vector based speaker
verification system.
REPORT
Motlicek_Idiap-RR-16-2015/IDIAP
EMPLOYMENT OF SUBSPACE GAUSSIAN MIXTURE MODELS IN SPEAKER RECOGNITION
Motlicek, Petr
Dey, Subhadeep
Madikeri, Srikanth
Burget, Lukas
Automatic Speech Recognition
i-vectors
speaker recognition
subspace Gaussian mixture models
EXTERNAL
https://publications.idiap.ch/attachments/reports/2015/Motlicek_Idiap-RR-16-2015.pdf
PUBLIC
Idiap-RR-16-2015
2015
Idiap
Rue Marconi 19, Martigny
June 2015
This paper presents Subspace Gaussian Mixture Model (SGMM)
approach employed as a probabilistic generative model to estimate
speaker vector representations to be subsequently used in the speaker
verification task. SGMMs have already been shown to significantly
outperform traditional HMM/GMMs in Automatic Speech Recognition
(ASR) applications. An extension to the basic SGMM framework
allows to robustly estimate low-dimensional speaker vectors
and exploit them for speaker adaptation. We propose a speaker verification
framework based on low-dimensional speaker vectors estimated
using SGMMs, trained in ASR manner using manual transcriptions.
To test the robustness of the system, we evaluate the
proposed approach with respect to the state-of-the-art i-vector extractor
on the NIST SRE 2010 evaluation set and on four different
length-utterance conditions: 3sec-10sec, 10 sec-30 sec, 30 sec-60 sec
and full (untruncated) utterances. Experimental results reveal that
while i-vector system performs better on truncated 3sec to 10sec and
10 sec to 30 sec utterances, noticeable improvements are observed
with SGMMs especially on full length-utterance durations. Eventually,
the proposed SGMM approach exhibits complementary properties
and can thus be efficiently fused with i-vector based speaker
verification system.