Speaker adaptive training (SAT) is a useful technique for building speech recognition systems on non-homogeneous data. When combining SAT with discriminative training criteria, maximum likelihood (ML) transforms are often used for unsupervised adaptation tasks. This is because discriminatively estimated transforms are highly sensitive to errors in the supervision hypothesis. In this paper, speaker adaptive training based on discriminative mapping transforms (DMTs) is proposed. DMTs are speaker-independent discriminative transforms that are applied to ML-estimated speaker-specific transforms. As DMTs are estimated during training, they are not affected by errors in the supervision hypothesis. The proposed method was evaluated on an English c...
This paper presents a new approach to feature-level phone normalisation which aims to improve speake...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
This paper addresses the use of discriminative training criteria for Speaker Adaptive Training (SAT)...
Adaptive training is an important approach to train speech recognition systems on found, non-homogen...
The paper investigates the integration of Heteroscedastic Linear Discriminant Analysis (HLDA) into ...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
The linguistic content of a speech signal is a source of unwanted variation which can degrade speake...
The paper investigates the integration of Heteroscedastic Linear Dis-criminant Analysis (HLDA) into ...
Linear transform adaptation techniques such as Maximum Like-lihood Linear Regression (MLLR) are a po...
In the paper we present two techniques improving the recognition accuracy of multilayer perceptron n...
In the paper, we propose a robust training strategy to deal with ex-traneous acoustic variations for...
This paper examines techniques for speaker normalisation and adaptation that are applied in training...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
This paper presents a new approach to feature-level phone normalisation which aims to improve speake...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
This paper addresses the use of discriminative training criteria for Speaker Adaptive Training (SAT)...
Adaptive training is an important approach to train speech recognition systems on found, non-homogen...
The paper investigates the integration of Heteroscedastic Linear Discriminant Analysis (HLDA) into ...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
The linguistic content of a speech signal is a source of unwanted variation which can degrade speake...
The paper investigates the integration of Heteroscedastic Linear Dis-criminant Analysis (HLDA) into ...
Linear transform adaptation techniques such as Maximum Like-lihood Linear Regression (MLLR) are a po...
In the paper we present two techniques improving the recognition accuracy of multilayer perceptron n...
In the paper, we propose a robust training strategy to deal with ex-traneous acoustic variations for...
This paper examines techniques for speaker normalisation and adaptation that are applied in training...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
This paper presents a new approach to feature-level phone normalisation which aims to improve speake...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...