Recently, kernel eigenvoices were revisited using kernel representations of distributions for rapid nonlinear speaker adaptation. These representations reassure the validity of the adapted distribution functions and enable expectation-maximisation training. Though gains have been shown in terms of word error rate for rapid speaker adaptation, this approach leads to an increase in decoding cost as the number of likelihood evaluations is amplified. The present paper addresses this issue by providing a coherent framework for systematic probabilistic approaches aimed at reducing the recognition cost and yet yielding equally powerful adapted models. The common denominator of such approaches is the use of probabilistic criteria, such as Kullback-...
This paper proposes a speaker adaptation technique using a nonlinear spectral transform based on GMM...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
This paper applies the recently proposed Extended Maximum Likelihood Linear Transformation (EMLLT) m...
Recently, kernel eigenvoices were revisited using kernel representations of distributions for rapid ...
Eigenvoice (EV) speaker adaptation has been shown effective for fast speaker adaptation when the amo...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
In this paper, we propose an application of kernel methods for fast speaker adaptation based on, ker...
Speech recognition is a powerful and widely used technology nowadays. However, its performance is no...
This paper presents our recent effort on the development of the eigenspace-based linear transformati...
This paper describes a new method for fast speaker adaptation in large vocabulary recognition system...
Abstract — Speaker space based adaptation methods for auto-matic speech recognition have been shown ...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
A novel speaker adaptation algorithm based on Gaussian mixture weight adaptation is described. A sma...
In this paper, we describe a novel speaker adaptation algorithm based on Gaussian mixture weight ada...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
This paper proposes a speaker adaptation technique using a nonlinear spectral transform based on GMM...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
This paper applies the recently proposed Extended Maximum Likelihood Linear Transformation (EMLLT) m...
Recently, kernel eigenvoices were revisited using kernel representations of distributions for rapid ...
Eigenvoice (EV) speaker adaptation has been shown effective for fast speaker adaptation when the amo...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
In this paper, we propose an application of kernel methods for fast speaker adaptation based on, ker...
Speech recognition is a powerful and widely used technology nowadays. However, its performance is no...
This paper presents our recent effort on the development of the eigenspace-based linear transformati...
This paper describes a new method for fast speaker adaptation in large vocabulary recognition system...
Abstract — Speaker space based adaptation methods for auto-matic speech recognition have been shown ...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
A novel speaker adaptation algorithm based on Gaussian mixture weight adaptation is described. A sma...
In this paper, we describe a novel speaker adaptation algorithm based on Gaussian mixture weight ada...
We describe a novel fast speaker adaptation algorithm for large vocabulary speech recognition system...
This paper proposes a speaker adaptation technique using a nonlinear spectral transform based on GMM...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
This paper applies the recently proposed Extended Maximum Likelihood Linear Transformation (EMLLT) m...