A significant amount of speech is typically required for speaker verification system development and evaluation, especially in the presence of large intersession variability. This paper introduces a source and utterance duration normalized linear discriminant analysis (SUN-LDA) approaches to compensate session variability in short-utterance i-vector speaker verification systems. Two variations of SUN-LDA are proposed where normalization techniques are used to capture source variation from both short and full-length development i-vectors, one based upon pooling (SUN-LDA-pooled) and the other on concatenation (SUN-LDA-concat) across the duration and source-dependent session variation. Both the SUN-LDA-pooled and SUN-LDA-concat techniques are ...
This paper studies the performance degradation of Gaussian probabilistic linear discriminant analysi...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
Most of the existing literature on i-vector-based speaker recog-nition focuses on recognition proble...
A significant amount of speech is typically required for speaker verification system development and...
Proceedings of Interspeech 2013, Lyon (France)A significant amount of speech is typically required f...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
This paper proposes a combination of source-normalized\ud weighted linear discriminant analysis (SN-...
ABSTRACT Speaker recognition systems trained on long duration utterances are known to perform signif...
Most of the existing literature on i-vector-based speaker recog-nition focuses on recognition proble...
This paper studies the performance degradation of Gaussian probabilistic linear discriminant analysi...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
Most of the existing literature on i-vector-based speaker recog-nition focuses on recognition proble...
A significant amount of speech is typically required for speaker verification system development and...
Proceedings of Interspeech 2013, Lyon (France)A significant amount of speech is typically required f...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
Robust speaker verification on short utterances remains a key consideration when deploying automatic...
This paper proposes a combination of source-normalized\ud weighted linear discriminant analysis (SN-...
ABSTRACT Speaker recognition systems trained on long duration utterances are known to perform signif...
Most of the existing literature on i-vector-based speaker recog-nition focuses on recognition proble...
This paper studies the performance degradation of Gaussian probabilistic linear discriminant analysi...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
Most of the existing literature on i-vector-based speaker recog-nition focuses on recognition proble...