Model compensation is a standard way of improving the robustness of speech recognition systems to noise. A number of popular schemes are based on vector Taylor series (VTS) compensation, which uses a linear approximation to represent the influence of noise on the clean speech. To compensate the dynamic parameters, the continuous time approximation is often used. This approximation uses a point estimate of the gradient, which fails to take into account that dynamic coefficients are a function of a number of consecutive static coefficients. In this paper, the accuracy of dynamic parameter compensation is improved by representing the dynamic features as a linear transformation of a window of static features. A modified version of VTS compensat...
Model compensation methods for noise-robust speech recognition have shown good performance. Predicti...
The VTS approach for noise reduction is based on a statistical for-mulation. It provides the expecte...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
In this paper, we investigate a feature conditioning method for the VTS-based model compensation. Th...
Model-based approaches to handling additive background noise and channel distortion, such as Vector ...
In this paper, we propose a novel noise variance estimation method using the fixed point method for ...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
Model based compensation schemes are a powerful approach for noise robust speech recognition. Recent...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
Vector Taylor Series (VTS) is a powerful technique for robust ASR but, in its standard form, it can...
ABSTRACT By explicitly modelling the distortion of speech signals, model adaptation based on vector ...
Designing good normalisation to counter the effect of environmental distortions is one of the major...
Abstract—In this paper, we present the Gauss-Newton method as a unified approach to estimating noise...
Vector Taylor Series (VTS) model based compensation is a powerful approach for noise robust speech r...
Model compensation methods for noise-robust speech recognition have shown good performance. Predicti...
The VTS approach for noise reduction is based on a statistical for-mulation. It provides the expecte...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
In this paper, we investigate a feature conditioning method for the VTS-based model compensation. Th...
Model-based approaches to handling additive background noise and channel distortion, such as Vector ...
In this paper, we propose a novel noise variance estimation method using the fixed point method for ...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
Model based compensation schemes are a powerful approach for noise robust speech recognition. Recent...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
Vector Taylor Series (VTS) is a powerful technique for robust ASR but, in its standard form, it can...
ABSTRACT By explicitly modelling the distortion of speech signals, model adaptation based on vector ...
Designing good normalisation to counter the effect of environmental distortions is one of the major...
Abstract—In this paper, we present the Gauss-Newton method as a unified approach to estimating noise...
Vector Taylor Series (VTS) model based compensation is a powerful approach for noise robust speech r...
Model compensation methods for noise-robust speech recognition have shown good performance. Predicti...
The VTS approach for noise reduction is based on a statistical for-mulation. It provides the expecte...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...