Abstract—The popular i-vector approach to speaker recog-nition represents a speech segment as an i-vector in a low-dimensional space. It is well known that i-vectors involve both speaker and session variances, and therefore additional discrim-inative approaches are required to extract speaker information from the ‘total variance ’ space. Among various methods, the probabilistic linear discriminant analysis (PLDA) achieves state-of-the-art performance, partly due to its generative framework that represents speaker and session variances in a hierarchical way. A disadvantage of PLDA, however, lies in its Gaussian assumption of the prior/conditional distributions on the speaker and session variables, which is not necessarily true in reality. Th...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Conventional PLDA scoring in i-vector speaker verification involves the i-vectors of target speakers...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
Probabilistic Linear Discriminant Analysis (PLDA) is the most efficient backend for i-vectors. Howev...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
The availability of multiple utterances (and hence, i-vectors) for speaker en-rollment brings up sev...
This paper proposes to estimate parametric nonlinear transformations of i-vectors for speaker recogn...
The lack of labeled background data makes a big performance gap between cosine and Probabilistic Lin...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
In this paper, we advocate the use of uncompressed form of i-vector. We employ the probabilistic lin...
International audienceThis paper focuses on discriminative trainings (DT) applied to i-vectors after...
This paper proposes to estimate parametric nonlinear transformations of i–vectors for speaker recogn...
A method for performing speaker recognition comprises: estimating respective uncertainties of acoust...
A method for performing speaker recognition comprises: estimating respective uncertainties of acoust...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Conventional PLDA scoring in i-vector speaker verification involves the i-vectors of target speakers...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...
Probabilistic Linear Discriminant Analysis (PLDA) is the most efficient backend for i-vectors. Howev...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
The availability of multiple utterances (and hence, i-vectors) for speaker en-rollment brings up sev...
This paper proposes to estimate parametric nonlinear transformations of i-vectors for speaker recogn...
The lack of labeled background data makes a big performance gap between cosine and Probabilistic Lin...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
In this paper, we advocate the use of uncompressed form of i-vector. We employ the probabilistic lin...
International audienceThis paper focuses on discriminative trainings (DT) applied to i-vectors after...
This paper proposes to estimate parametric nonlinear transformations of i–vectors for speaker recogn...
A method for performing speaker recognition comprises: estimating respective uncertainties of acoust...
A method for performing speaker recognition comprises: estimating respective uncertainties of acoust...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Conventional PLDA scoring in i-vector speaker verification involves the i-vectors of target speakers...
This paper introduces the Weighted Linear Discriminant Analysis (WLDA) technique, based upon the wei...