This paper proposes a density model transformation for speaker recognition systems based on i–vectors and Probabilistic Linear Discriminant Analysis (PLDA) classification. The PLDA model assumes that the i-vectors are distributed according to the standard normal distribution, whereas it is well known that this is not the case. Experiments have shown that the i–vector are better modeled, for example, by a Heavy–Tailed distribution, and that significant improvement of the classification performance can be obtained by whitening and length normalizing the i-vectors. In this work we propose to transform the i–vectors, extracted ignoring the classifier that will be used, so that their distribution becomes more suitable to discriminate speakers us...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
The i-vector extraction process is affected by several factors such as the noise level, the acousti...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
This paper proposes to estimate parametric nonlinear transformations of i–vectors for speaker recogn...
The Gaussian probabilistic linear discriminant anal-ysis (PLDA) model assumes Gaussian distributed p...
This paper proposes to estimate parametric nonlinear transformations of i-vectors for speaker recogn...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Most current state-of-the-art text-independent speaker recognition systems are based on i-vectors, a...
In the paper recent methods used in the task of speaker recognition are presented. At first, the ext...
In this paper, we advocate the use of uncompressed form of i-vector. We employ the probabilistic lin...
In the paper recent methods used in the task of speaker recognition are presented. At first, the ext...
International audienceThis paper focuses on discriminative trainings (DT) applied to i-vectors after...
Systems based on i–vectors represent the current state–of–the–art in text-independent speaker recogn...
This paper proposes a simple model for speaker recognition based on i–vector pairs, and analyzes its...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
The i-vector extraction process is affected by several factors such as the noise level, the acousti...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
This paper proposes to estimate parametric nonlinear transformations of i–vectors for speaker recogn...
The Gaussian probabilistic linear discriminant anal-ysis (PLDA) model assumes Gaussian distributed p...
This paper proposes to estimate parametric nonlinear transformations of i-vectors for speaker recogn...
The i-vector extraction process is affected by several factors such as the noise level, the acoustic...
Most current state-of-the-art text-independent speaker recognition systems are based on i-vectors, a...
In the paper recent methods used in the task of speaker recognition are presented. At first, the ext...
In this paper, we advocate the use of uncompressed form of i-vector. We employ the probabilistic lin...
In the paper recent methods used in the task of speaker recognition are presented. At first, the ext...
International audienceThis paper focuses on discriminative trainings (DT) applied to i-vectors after...
Systems based on i–vectors represent the current state–of–the–art in text-independent speaker recogn...
This paper proposes a simple model for speaker recognition based on i–vector pairs, and analyzes its...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
The i-vector extraction process is affected by several factors such as the noise level, the acousti...