For many realistic scenarios, there are multiple factors that affect the clean speech signal. In this work approaches to handling two such factors, speaker and background noise differences, simultaneously are described. A new adaptation scheme is proposed. Here the acoustic models are first adapted to the target speaker via an MLLR transform. This is followed by adaptation to the target noise environment via model-based vector Taylor series (VTS) compensation. These speaker and noise transforms are jointly estimated, using maximum likelihood. Experiments on the AURORA4 task demonstrate that this adaptation scheme provides improved performance over VTS-based noise adaptation. In addition, this framework enables the speech and noise to be fac...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
This paper presents a maximum likelihood (ML) approach, relative to the background model estimation,...
This paper presents a maximum likelihood (ML) approach, concerned to the background model estimation...
In this paper we focus on the challenging task of noise robustness for large vocabulary Continuous S...
One important issue in speech recognition is the ability to handle variations caused by unseen speak...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
Model based compensation schemes are a powerful approach for noise robust speech recognition. Recent...
Article dans revue scientifique avec comité de lecture. internationale.International audienceThe rob...
Model-based approaches to handling additive background noise and channel distortion, such as Vector ...
In this paper, we investigate a feature conditioning method for the VTS-based model compensation. Th...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
Copyright © 2014 Sunmee Kang and Wooil Kim. This is an open access article distributed under the Cre...
Model compensation is a standard way of improving the robustness of speech recognition systems to no...
It is well known that additive noise can cause a significant decrease in performance for an automati...
ABSTRACT By explicitly modelling the distortion of speech signals, model adaptation based on vector ...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
This paper presents a maximum likelihood (ML) approach, relative to the background model estimation,...
This paper presents a maximum likelihood (ML) approach, concerned to the background model estimation...
In this paper we focus on the challenging task of noise robustness for large vocabulary Continuous S...
One important issue in speech recognition is the ability to handle variations caused by unseen speak...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
Model based compensation schemes are a powerful approach for noise robust speech recognition. Recent...
Article dans revue scientifique avec comité de lecture. internationale.International audienceThe rob...
Model-based approaches to handling additive background noise and channel distortion, such as Vector ...
In this paper, we investigate a feature conditioning method for the VTS-based model compensation. Th...
Maintaining a high level of robustness for Automatic Speech Recognition (ASR) systems is especially ...
Copyright © 2014 Sunmee Kang and Wooil Kim. This is an open access article distributed under the Cre...
Model compensation is a standard way of improving the robustness of speech recognition systems to no...
It is well known that additive noise can cause a significant decrease in performance for an automati...
ABSTRACT By explicitly modelling the distortion of speech signals, model adaptation based on vector ...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
This paper presents a maximum likelihood (ML) approach, relative to the background model estimation,...
This paper presents a maximum likelihood (ML) approach, concerned to the background model estimation...