This paper explores the possibility to replace the usual thresholding decision rule of log likelihood ratios used in speaker verification systems by more complex and discriminant decision functions based for instance on Linear Regression models or Support Vector Machines. Current speaker verification systems, based on generative models such as HMMs or GMMs, can indeed easily be adapted to use such decision functions. Experiments on both text dependent and text independent tasks always yielded performance improvements and sometimes significantly
Speaker verification and identification systems most often employ HMMs and GMMs as recognition engin...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Speaker Verification can be treated as a statistical hypothesis testing problem. The most commonly u...
Abstract—Speaker verification can be viewed as a task of modeling and testing two hypotheses: the nu...
The performance of a likelihood ratio-based speaker verification system is highly dependent on model...
We propose a way of integrating likelihood ratio (LR) decision criterion with nuisance attribute pro...
Abstract. In a log-likelihood ratio (LLR)-based speaker verification system, the alternative hypothe...
A new decision making algorithm in speaker verification is presented. First, a baseline system is fo...
This paper describes how a speaker verification task can be advantageously decomposed into a series ...
Computing the likelihood-ratio (LR) score of a test utterance is an important step in speaker verifi...
International audienceThis paper presents an overview of a state-of-the-art text-independent speaker...
Considering Bayesian decision framework applied in the context of speaker verification, this paper p...
. The aim of this paper is to describe how the combination of speaker verification algorithms with a...
This paper compares kernel-based probabilistic neural networks for speaker verification based on 138...
Proceedings of Interspeech 2007, Antwerp (Belgium)This paper explores Support Vector Regression (SVR...
Speaker verification and identification systems most often employ HMMs and GMMs as recognition engin...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Speaker Verification can be treated as a statistical hypothesis testing problem. The most commonly u...
Abstract—Speaker verification can be viewed as a task of modeling and testing two hypotheses: the nu...
The performance of a likelihood ratio-based speaker verification system is highly dependent on model...
We propose a way of integrating likelihood ratio (LR) decision criterion with nuisance attribute pro...
Abstract. In a log-likelihood ratio (LLR)-based speaker verification system, the alternative hypothe...
A new decision making algorithm in speaker verification is presented. First, a baseline system is fo...
This paper describes how a speaker verification task can be advantageously decomposed into a series ...
Computing the likelihood-ratio (LR) score of a test utterance is an important step in speaker verifi...
International audienceThis paper presents an overview of a state-of-the-art text-independent speaker...
Considering Bayesian decision framework applied in the context of speaker verification, this paper p...
. The aim of this paper is to describe how the combination of speaker verification algorithms with a...
This paper compares kernel-based probabilistic neural networks for speaker verification based on 138...
Proceedings of Interspeech 2007, Antwerp (Belgium)This paper explores Support Vector Regression (SVR...
Speaker verification and identification systems most often employ HMMs and GMMs as recognition engin...
Abstract. Speaker recognition systems frequently use GMM-MAP method for modeling speakers. This meth...
Speaker Verification can be treated as a statistical hypothesis testing problem. The most commonly u...