Automatic Speaker Verification (ASV) is a critical task in pattern recognition and has been applied to various security-sensitive scenarios. The current state-of-the-art technique for ASV is based on deep embedding. However, a significant challenge with this approach is that the resulting deep speaker vectors tend to be irregularly distributed. To address this issue, this paper proposes a novel training method called Maximum Gaussianality (MG), which regulates the distribution of the speaker vectors. Compared to the conventional normalization approach based on maximum likelihood (ML), the new approach directly maximizes the Gaussianality of the latent codes, and therefore can both normalize the between-class and within-class distributions i...
Recent research has demonstrated the merit of combining Gaussian mixture models and support vector m...
Speaker verication is usually performed by comparing the likelihood score of the target speaker mode...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
Automatic Speaker Verification (ASV) is a critical task in pattern recognition and has been applied ...
International audienceThis paper focuses on discriminative trainings (DT) applied to i-vectors after...
In this work we improve the performance of a speaker verification system by matching the feature vec...
The introduction of Gaussian Mixture Models (GMMs) in the field of speaker verification has led to v...
One important issue in speech recognition is the ability to handle variations caused by unseen speak...
Advancements in automatic speaker verification (ASV) can be considered to be primarily limited to im...
Recently, the increasing demand for voice-based authentication systems has encouraged researchers to...
Voice recognition has become a more focused and researched field in the last century,and new techniq...
The introduction of Gaussian mixture models in the field of voice recognition systems has establishe...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
This is the author’s version of a work that was accepted for publication in Pattern Recognition Lett...
This thesis describes the development of a robust automatic speaker verification system (ASV) with s...
Recent research has demonstrated the merit of combining Gaussian mixture models and support vector m...
Speaker verication is usually performed by comparing the likelihood score of the target speaker mode...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...
Automatic Speaker Verification (ASV) is a critical task in pattern recognition and has been applied ...
International audienceThis paper focuses on discriminative trainings (DT) applied to i-vectors after...
In this work we improve the performance of a speaker verification system by matching the feature vec...
The introduction of Gaussian Mixture Models (GMMs) in the field of speaker verification has led to v...
One important issue in speech recognition is the ability to handle variations caused by unseen speak...
Advancements in automatic speaker verification (ASV) can be considered to be primarily limited to im...
Recently, the increasing demand for voice-based authentication systems has encouraged researchers to...
Voice recognition has become a more focused and researched field in the last century,and new techniq...
The introduction of Gaussian mixture models in the field of voice recognition systems has establishe...
I-vector extraction and Probabilistic Linear Discriminant Anal-ysis (PLDA) has become the state-of-t...
This is the author’s version of a work that was accepted for publication in Pattern Recognition Lett...
This thesis describes the development of a robust automatic speaker verification system (ASV) with s...
Recent research has demonstrated the merit of combining Gaussian mixture models and support vector m...
Speaker verication is usually performed by comparing the likelihood score of the target speaker mode...
In this work, normalization techniques in the acoustic feature space are studied which improve the r...