53 research outputs found
Compensation of Nuisance Factors for Speaker and Language Recognition
The variability of the channel and environment is
one of the most important factors affecting the performance of
text-independent speaker verification systems. The best techniques
for channel compensation are model based. Most of them have
been proposed for Gaussian mixture models, while in the feature
domain blind channel compensation is usually performed. The
aim of this work is to explore techniques that allow more accurate
intersession compensation in the feature domain. Compensating
the features rather than the models has the advantage that the
transformed parameters can be used with models of a different
nature and complexity and for different tasks. In this paper,
we evaluate the effects of the compensation of the intersession
variability obtained by means of the channel factors approach. In
particular, we compare channel variability modeling in the usual
Gaussian mixture model domain, and our proposed feature domain
compensation technique. We show that the two approaches
lead to similar results on the NIST 2005 Speaker Recognition
Evaluation data with a reduced computation cost. We also report
the results of a system, based on the intersession compensation
technique in the feature space that was among the best participants
in the NIST 2006 Speaker Recognition Evaluation. Moreover, we
show how we obtained significant performance improvement in
language recognition by estimating and compensating, in the
feature domain, the distortions due to interspeaker variability
within the same language.
Index Terms—Factor anal
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