This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the weighted pairwise Fisher criterion, for the purposes of improving i-vector speaker verification in the presence of high intersession variability. By taking advantage of the speaker discriminative information that is available in the distances between pairs of speakers clustered in the development i-vector space, the WLDA technique is shown to provide an improvement in speaker verification performance over traditional Linear Discriminant Analysis (LDA) approaches. A similar approach is also taken to extend the recently developed Source Normalised LDA (SNLDA) into Weighted SNLDA (WSNLDA) which, similarly, shows an improvement in speaker verificati...
This paper proposes the addition of a weighted median Fisher discriminator (WMFD) projection prior t...
A significant amount of speech is typically required for speaker verification system development and...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
This paper analyses the probabilistic linear discriminant analysis (PLDA) speaker verification appro...
In typical x-vector-based speaker recognition systems, standard linear discriminant analysis (LDA) i...
In this paper, we advocate the use of uncompressed form of i-vector. We employ the probabilistic lin...
The availability of multiple utterances (and hence, i-vectors) for speaker en-rollment brings up sev...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
The performance of state-of-the-art i-vector speaker verification systems relies on a large amount o...
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...
A significant amount of speech data is required to develop a robust speaker verification system, but...
This paper proposes the addition of a weighted median Fisher discriminator (WMFD) projection prior t...
A significant amount of speech is typically required for speaker verification system development and...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
This paper analyses the probabilistic linear discriminant analysis (PLDA) speaker verification appro...
In typical x-vector-based speaker recognition systems, standard linear discriminant analysis (LDA) i...
In this paper, we advocate the use of uncompressed form of i-vector. We employ the probabilistic lin...
The availability of multiple utterances (and hence, i-vectors) for speaker en-rollment brings up sev...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
This paper proposes techniques to improve the performance of i-vector based speaker verification sys...
The performance of state-of-the-art i-vector speaker verification systems relies on a large amount o...
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...
A significant amount of speech data is required to develop a robust speaker verification system, but...
This paper proposes the addition of a weighted median Fisher discriminator (WMFD) projection prior t...
A significant amount of speech is typically required for speaker verification system development and...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...