AbstractThis paper considers the problem of rapid and robust speaker adaptation in automatic speech recognition (ASR) systems. We propose an approach using combination of eigenspace-based maximum likelihood linear regression (EMLLR) and evolutionary algorithms. To find the best solution for the coefficients estimation problem, we suggest using genetic algorithm (GA) for rapid speaker adaptation. This is due to the fact that genetic algorithms are not as sensitive as expectation maximization (EM) algorithm to the amount of adaptation data. Experimental results on TIMIT database illustrate that genetic algorithm, using random individuals in first population, leads to up to 1.03% improvement in phoneme recognition rate. Moreover, we show that ...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
AbstractIn this paper, two kernel eigenspace-based speaker adaptation methods are implemented using ...
Automatic speech recognition systems are becoming ever more common and are increasingly deployed in ...
AbstractThis paper considers the problem of rapid and robust speaker adaptation in automatic speech ...
This paper constitutes a study of several classical and original methods for a speaker adaptation of...
This paper proposes two new approaches to rapid speaker adaptation of acoustic models by using genet...
For the problem of speaker adaptation in speech recognition, the performance depends on the availabi...
This paper considers the problem of speaker adaptation of acous-tic models in speech recognition. We...
This paper presents a technical speaker adaptation method called WMLLR, which is based on maximum li...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
Automatic speech recognition (ASR) converts human speech to readable text. Acoustic model adaptation...
In this paper, we propose an application of kernel methods for fast speaker adaptation based on, ker...
In this paper, a new method called Maximum Likelihood General Regression (MLGR) is introduced for sp...
A robust ASR system needs to perform well in different environment and with different speakers. For ...
This paper proposes a speaker adaptation technique using a nonlinear spectral transform based on GMM...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
AbstractIn this paper, two kernel eigenspace-based speaker adaptation methods are implemented using ...
Automatic speech recognition systems are becoming ever more common and are increasingly deployed in ...
AbstractThis paper considers the problem of rapid and robust speaker adaptation in automatic speech ...
This paper constitutes a study of several classical and original methods for a speaker adaptation of...
This paper proposes two new approaches to rapid speaker adaptation of acoustic models by using genet...
For the problem of speaker adaptation in speech recognition, the performance depends on the availabi...
This paper considers the problem of speaker adaptation of acous-tic models in speech recognition. We...
This paper presents a technical speaker adaptation method called WMLLR, which is based on maximum li...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
Automatic speech recognition (ASR) converts human speech to readable text. Acoustic model adaptation...
In this paper, we propose an application of kernel methods for fast speaker adaptation based on, ker...
In this paper, a new method called Maximum Likelihood General Regression (MLGR) is introduced for sp...
A robust ASR system needs to perform well in different environment and with different speakers. For ...
This paper proposes a speaker adaptation technique using a nonlinear spectral transform based on GMM...
A speaker clustering algorithm is presented that is based on an eigenspace representation of Maximum...
AbstractIn this paper, two kernel eigenspace-based speaker adaptation methods are implemented using ...
Automatic speech recognition systems are becoming ever more common and are increasingly deployed in ...