Please use this identifier to cite or link to this item: http://repo.lib.jfn.ac.lk/ujrr/handle/123456789/1876
Title: Dataset-Invariant Covariance Normalization for Out-domain PLDA Speaker Verification
Authors: Rahman, M.H.
Ahilan, K.
Dean, D.
Sridharan, S.
Keywords: speaker verification;PLDA
Issue Date: 2015
Citation: Rahman, M. H., Kanagasundaram, A., Dean, D., & Sridharan, S. (2015). Dataset-invariant covariance normalization for out-domain PLDA speaker verification. In Proceedings of the 16th Annual Conference of the International Speech Communication Association, Interspeech 2015 (pp. 1017-1021). International Speech Communication Association.
Abstract: In this paper we introduce a novel domain-invariant covariance normalization (DICN) technique to relocate both in-domain and out-domain i-vectors into a third dataset-invariant space, providing an improvement for out-domain PLDA speaker verification with a very small number of unlabelled in-domain adaptation i-vectors. By capturing the dataset variance from a global mean using both development out-domain i-vectors and limited unlabelled in-domain i-vectors, we could obtain domaininvariant representations of PLDA training data. The DICNcompensated out-domain PLDA system is shown to perform as well as in-domain PLDA training with as few as 500 unlabelled in-domain i-vectors for NIST-2010 SRE and 2000 unlabelled in-domain i-vectors for NIST-2008 SRE, and considerable relative improvement over both out-domain and in-domain PLDA development if more are available.
URI: http://repo.lib.jfn.ac.lk/ujrr/handle/123456789/1876
Appears in Collections:Electrical & Electronic Engineering

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