This paper addresses speaker adaptive acoustic modeling, based on feature space maximum likelihood linear regression, in the context of on-line telephony applications. An adaptive acoustic modeling method, that we previously proved effective in off-line applications, is used to train acoustic models to be used in text-dependent and text-independent on-line adaptation. Experiments on telephony speech data indicate that feature space maximum a posteriori linear regression (fMAPLR) greatly helps to cope with sparse adaptation data when performing instantaneous and incremental adaptation with both baseline models and speaker adaptively trained models. The use of speaker adaptively trained models in conjunct...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
International audienceThis paper investigates speaker adaptation techniques for bidirectional long ...
Probabilistic linear discriminant analysis (PLDA) acoustic models extend Gaussian mixture models by ...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
This paper presents a new approach to feature-level phone normalisation which aims to improve speake...
In this work and on-line acoustic compensation technique for robust speech recognition is introduced...
The general goal of this thesis is to improve the performance of state-of-the-art statistical automa...
The use of the PC and Internet for placing telephone calls will present new opportunities to capture...
SUMMARY This paper describes a hands-free speech recog-nition technique based on acoustic model adap...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
In this paper, a new method called Maximum Likelihood General Regression (MLGR) is introduced for sp...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
We extend the well-known technique of constrained Maximum Likelihood Linear Regression (MLLR) to com...
This paper presents a technical speaker adaptation method called WMLLR, which is based on maximum li...
This paper introduces two novel techniques for instantaneous speaker adaptation, reference speaker w...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
International audienceThis paper investigates speaker adaptation techniques for bidirectional long ...
Probabilistic linear discriminant analysis (PLDA) acoustic models extend Gaussian mixture models by ...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
This paper presents a new approach to feature-level phone normalisation which aims to improve speake...
In this work and on-line acoustic compensation technique for robust speech recognition is introduced...
The general goal of this thesis is to improve the performance of state-of-the-art statistical automa...
The use of the PC and Internet for placing telephone calls will present new opportunities to capture...
SUMMARY This paper describes a hands-free speech recog-nition technique based on acoustic model adap...
In this paper an effective technique for speaker adaptation on the feature domain is presented. This...
In this paper, a new method called Maximum Likelihood General Regression (MLGR) is introduced for sp...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
We extend the well-known technique of constrained Maximum Likelihood Linear Regression (MLLR) to com...
This paper presents a technical speaker adaptation method called WMLLR, which is based on maximum li...
This paper introduces two novel techniques for instantaneous speaker adaptation, reference speaker w...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
International audienceThis paper investigates speaker adaptation techniques for bidirectional long ...
Probabilistic linear discriminant analysis (PLDA) acoustic models extend Gaussian mixture models by ...