A novel speech feature generation-based acoustic model training method for robust speaker-independent speech recognition is proposed. For decades, speaker adaptation methods have been widely used. All of these adaptation methods need adaptation data. However, our proposed method aims to create speaker-independent acoustic models that cover not only known but also unknown speakers. We achieve this by adopting inverse maximum likelihood linear regression (MLLR) transformation-based feature generation, and then we train our models using these features. First we obtain MLLR transformation matrices from a limited number of existing speakers. Then we extract the bases of the MLLR transformation matrices using PCA. The distribution of the weight p...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
We extend the well-known technique of constrained Maximum Likelihood Linear Regression (MLLR) to com...
This paper addresses speaker adaptive acoustic modeling, based on feature space maximum likelih...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
In this paper, a novel speaker normalization method is presented and compared to a well known vocal ...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
Abstract—We present a new modeling approach for speaker recognition that uses the maximum-likelihood...
In the paper, we propose a robust training strategy to deal with ex-traneous acoustic variations for...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
Speech recognition systems are usually speaker-inde-pendent, but they are not as good as speaker-dep...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
This paper describes a speaker recognition system based on feature extraction utilizing the constrai...
In this work, speaker characteristic modeling has been applied in the fields of automatic speech rec...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
We extend the well-known technique of constrained Maximum Likelihood Linear Regression (MLLR) to com...
This paper addresses speaker adaptive acoustic modeling, based on feature space maximum likelih...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
In this paper, a novel speaker normalization method is presented and compared to a well known vocal ...
The goal of this thesis is to find new and efficient features for speaker recognition. We are mostly...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
Abstract—We present a new modeling approach for speaker recognition that uses the maximum-likelihood...
In the paper, we propose a robust training strategy to deal with ex-traneous acoustic variations for...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
Speech recognition systems are usually speaker-inde-pendent, but they are not as good as speaker-dep...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
This paper describes a speaker recognition system based on feature extraction utilizing the constrai...
In this work, speaker characteristic modeling has been applied in the fields of automatic speech rec...
Summarization: Speaker adaptation is recognized as an essential part of today’s large-vocabulary aut...
In this paper, we explore the use of Independent Component Analysis (ICA) and Principal Component An...
We extend the well-known technique of constrained Maximum Likelihood Linear Regression (MLLR) to com...
This paper addresses speaker adaptive acoustic modeling, based on feature space maximum likelih...