In the paper recent methods used in the task of speaker recognition are presented. At first, the extraction of so called i-vectors from GMM based supervectors is discussed. These i-vectors are of low dimension and lie in a subspace denoted as Total Variability Space (TVS). The focus of the paper is put on Probabilistic Linear Discriminant Analysis (PLDA), which is used as a generative model in the TVS. The influence of development data is analyzed utilizing distinct speech corpora. It is shown that it is preferable to cluster available speech corpora to classes, train one PLDA model for each class and fuse the results at the end. Experiments are presented on NIST Speaker Recognition Evaluation (SRE) 2008 and NIST SRE 2010
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
The goal of this paper is to examine the Fisher Vec- tor and incorporate this vector in the PLDA bas...
Conventional PLDA scoring in i-vector speaker verification involves the i-vectors of target speakers...
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...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
International audienceThere are many factors affecting the variability of an i-vector extracted from...
This paper proposes a density model transformation for speaker recognition systems based on i–vector...
The availability of multiple utterances (and hence, i-vectors) for speaker en-rollment brings up sev...
Advancements in automatic speaker verification (ASV) can be considered to be primarily limited to im...
The state-of-the-art i-vector based probabilistic linear discriminant analysis (PLDA) trained on non...
This paper analyses the probabilistic linear discriminant analysis (PLDA) speaker verification appro...
Abstract-The goal of this paper is to examine the Fisher Vector and incorporate this vector in the P...
9th International Symposium on Chinese Spoken Language Processing, ISCSLP 2014, 12-14 September 2014...
This paper proposes a simple model for speaker recognition based on i–vector pairs, and analyzes its...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
The goal of this paper is to examine the Fisher Vec- tor and incorporate this vector in the PLDA bas...
Conventional PLDA scoring in i-vector speaker verification involves the i-vectors of target speakers...
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...
This work presents a new and efficient approach to discriminative speaker verification in the i–vect...
International audienceThere are many factors affecting the variability of an i-vector extracted from...
This paper proposes a density model transformation for speaker recognition systems based on i–vector...
The availability of multiple utterances (and hence, i-vectors) for speaker en-rollment brings up sev...
Advancements in automatic speaker verification (ASV) can be considered to be primarily limited to im...
The state-of-the-art i-vector based probabilistic linear discriminant analysis (PLDA) trained on non...
This paper analyses the probabilistic linear discriminant analysis (PLDA) speaker verification appro...
Abstract-The goal of this paper is to examine the Fisher Vector and incorporate this vector in the P...
9th International Symposium on Chinese Spoken Language Processing, ISCSLP 2014, 12-14 September 2014...
This paper proposes a simple model for speaker recognition based on i–vector pairs, and analyzes its...
This paper proposes a density model transformation for speaker recognition systems based on i-vector...
The goal of this paper is to examine the Fisher Vec- tor and incorporate this vector in the PLDA bas...
Conventional PLDA scoring in i-vector speaker verification involves the i-vectors of target speakers...