A new adaptation method called inter-class MLLR has recently been introduced. Inter-class MLLR utilizes relationships among different transformation functions to achieve more reliable estimates of MLLR parameters across multiple classes, and it produces lower word error rates (WER) than conventional MLLR in circumstances where very little speaker-specific adaptation data are available. This paper describes the application of weights to the neighboring classes to improve the effectiveness with which they are combined with the target class in inter-class MLLR. These weights are obtained from the variance of the estimation error considering the weighted least squares estimation in classical linear regression. In our experiments, the weights pr...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
To recognize non-native speech, larger acoustic/linguistic distor-tions must be handled adequately i...
In transformation-based adaptation, increasing the number of transformation classes can provide more...
Inter-speaker variation can be coped rather well in speech recognition by speaker adaptation techniq...
The maximum likelihood linear regression (MLLR) technique is widely used in speaker adaptation d...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
This paper presents a technical speaker adaptation method called WMLLR, which is based on maximum li...
In this paper, we propose a novel speaker adaptation technique, regularized-MLLR, for Computer Assis...
A robust ASR system needs to perform well in different environment and with different speakers. For ...
Multilingual Automatic Speech Recognition (ASR) systems are of great interest in multilingual enviro...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Adaptation to speaker and environment changes is an essential part of current automatic speech recog...
Linear transform adaptation techniques such as Maximum Like-lihood Linear Regression (MLLR) are a po...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
To recognize non-native speech, larger acoustic/linguistic distor-tions must be handled adequately i...
In transformation-based adaptation, increasing the number of transformation classes can provide more...
Inter-speaker variation can be coped rather well in speech recognition by speaker adaptation techniq...
The maximum likelihood linear regression (MLLR) technique is widely used in speaker adaptation d...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
This paper presents a technical speaker adaptation method called WMLLR, which is based on maximum li...
In this paper, we propose a novel speaker adaptation technique, regularized-MLLR, for Computer Assis...
A robust ASR system needs to perform well in different environment and with different speakers. For ...
Multilingual Automatic Speech Recognition (ASR) systems are of great interest in multilingual enviro...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Adaptation to speaker and environment changes is an essential part of current automatic speech recog...
Linear transform adaptation techniques such as Maximum Like-lihood Linear Regression (MLLR) are a po...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
To recognize non-native speech, larger acoustic/linguistic distor-tions must be handled adequately i...