Designing good normalisation to counter the effect of environmental distortions is one of the major challenges for automatic speech recognition (ASR). The Vector Taylor series (VTS) method is a powerful and mathematically well principled technique that can be applied to both the feature and model domains to compensate for both additive and convolutional noises. One of the limitations of this approach, however, is that it is tied to MFCC (and log-filterbank) features and does not extend to other representations such as PLP, PNCC and phase-based front-ends that use power transformation rather than log compression. This paper aims at broadening the scope of the VTS method by deriving a new formulation that assumes a power transforma...
In earlier work we studied the effect of statistical normalisation for phase-based features and obs...
Model-based speech enhancement methods, such as vector-Taylor series-based methods (VTS) [1, 2], sha...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
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 ...
Model compensation is a standard way of improving the robustness of speech recognition systems to no...
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...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
In this paper, we propose a novel noise variance estimation method using the fixed point method for ...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
For many realistic scenarios, there are multiple factors that affect the clean speech signal. In thi...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
In this paper, we present a novel feature normalization method in the log-scaled spectral domain for...
This paper presents a method for extraction of speech robust features when the external noise is add...
In earlier work we studied the effect of statistical normalisation for phase-based features and obs...
Model-based speech enhancement methods, such as vector-Taylor series-based methods (VTS) [1, 2], sha...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
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 ...
Model compensation is a standard way of improving the robustness of speech recognition systems to no...
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...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
In this paper, we propose a novel noise variance estimation method using the fixed point method for ...
Automatic speech recognition (ASR) decodes speech signals into text. While ASR can produce accurate ...
For many realistic scenarios, there are multiple factors that affect the clean speech signal. In thi...
We conduct a comparative study to investigate two noise es-timation approaches for robust speech rec...
In this paper, we present a novel feature normalization method in the log-scaled spectral domain for...
This paper presents a method for extraction of speech robust features when the external noise is add...
In earlier work we studied the effect of statistical normalisation for phase-based features and obs...
Model-based speech enhancement methods, such as vector-Taylor series-based methods (VTS) [1, 2], sha...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...