This paper proposes a hidden Markov model (HMM)-based speech enhancement method, aiming at reducing non-stationary noise from speech signals. The system is based on the assumption that the speech and the noise are additive and uncorrelated. Cepstral fea-tures are used to extract statistical information from both the speech and the noise. A priori statistical information is collected from long training sequences into ergodic hidden Markov models. Given the ergodic models for the speech and the noise a compensated model is created by means of parallel model combination, using a log-normal approximation. During compensation, the mean of every mixture in the speech and noise model is stored. The stored means are then used in the enhancement pro...
HMM Decomposition is used for recognising speech in the presence of an interfering background speake...
This paper describes a novel technique for producing smooth speech parametric representation evoluti...
Performance of an automatic speech recognition system drops dramatically in the presence of backgrou...
This paper proposes a hidden Markov model (HMM)-based speech enhancement method, aiming at reducing ...
A robust and reliable noise estimation algorithm is required in many speech enhancement systems. Th...
In mobile speech communication, adverse conditions, such as noisy acoustic environments and unreliab...
This work proposes a method of speech enhancement that uses a network of HMMs to first decode noisy ...
This work proposes a method of model-based speech enhancement that uses a network of HMMs to first ...
The speech enhancement is the process to enhance the speech signal by reducing the noise from the si...
Speech recognizers often experience serious performance degradation when d ployed in an unknown acou...
Model based feature enhancement techniques are constructed from acoustic models for speech and noise...
We propose a noise estimation algorithm for single-channel noise suppression in dynamic noisy enviro...
commonly used for speech decoding. Initially, n numbers of speech signals of n number of speakers ar...
Colloque avec actes et comité de lecture. internationale.International audienceHidden Markov models ...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
HMM Decomposition is used for recognising speech in the presence of an interfering background speake...
This paper describes a novel technique for producing smooth speech parametric representation evoluti...
Performance of an automatic speech recognition system drops dramatically in the presence of backgrou...
This paper proposes a hidden Markov model (HMM)-based speech enhancement method, aiming at reducing ...
A robust and reliable noise estimation algorithm is required in many speech enhancement systems. Th...
In mobile speech communication, adverse conditions, such as noisy acoustic environments and unreliab...
This work proposes a method of speech enhancement that uses a network of HMMs to first decode noisy ...
This work proposes a method of model-based speech enhancement that uses a network of HMMs to first ...
The speech enhancement is the process to enhance the speech signal by reducing the noise from the si...
Speech recognizers often experience serious performance degradation when d ployed in an unknown acou...
Model based feature enhancement techniques are constructed from acoustic models for speech and noise...
We propose a noise estimation algorithm for single-channel noise suppression in dynamic noisy enviro...
commonly used for speech decoding. Initially, n numbers of speech signals of n number of speakers ar...
Colloque avec actes et comité de lecture. internationale.International audienceHidden Markov models ...
In conventional Vector Taylor Series (VTS) based noisy speech recognition methods, Hidden Markov Mod...
HMM Decomposition is used for recognising speech in the presence of an interfering background speake...
This paper describes a novel technique for producing smooth speech parametric representation evoluti...
Performance of an automatic speech recognition system drops dramatically in the presence of backgrou...