i-vector based speaker recognition on short utterances

Ahilan Kanagasundaram(Queensland University of Technology), Robbie Vogt(Queensland University of Technology), David Dean(Queensland University of Technology), Sridha Sridharan(Queensland University of Technology), Michael Mason(Queensland University of Technology)
Unknown
August 27, 2011
Cited by 239

Abstract

Robust speaker verification on short utterances remains a key consideration when deploying automatic speaker recognition, as many real world applications often have access to only limited duration speech data. This paper explores how the recent technologies focused around total variability modeling behave when training and testing utterance lengths are reduced. Results are presented which provide a comparison of Joint Factor Analysis (JFA) and i-vector based systems including various compensation techniques; Within-Class Covariance Normalization (WCCN), LDA, Scatter Difference Nuisance Attribute Projection (SDNAP) and Gaussian Probabilistic Linear Discriminant Analysis (GPLDA). Speaker verification performance for utterances with as little as 2 sec of data taken from the NIST Speaker Recognition Evaluations are presented to provide a clearer picture of the current performance characteristics of these techniques in short utterance conditions.


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