Recent work on neural networks with probabilistic parameters has shown that parameter uncertainty improves network regularization. Parameter-specific signal-to-noise ratio (SNR) levels derived from parameter distributions were further found to have high correlations with task importance. However, most of these studies focus on tasks other than automatic speech recognition (ASR). This work investigates end-to-end models with probabilistic parameters for ASR. We demonstrate that probabilistic networks outperform conventional deterministic networks in pruning and domain adaptation experiments carried out on the Wall Street Journal and CHiME-4 datasets. We use parameter-specific SNR information to select parameters for pruning and to condition ...
This thesis addresses the problem of speech phone recognition. Phones are the acoustic sounds of spe...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
Recent work on neural networks with probabilistic parameters has shown that parameter uncertainty im...
Over the past decades, the dominant approach towards building automatic speech recognition (ASR) sys...
Training domain-specific automatic speech recognition (ASR) systems requires a suitable amount of da...
International audienceAutomatic speech recognition (ASR) in noisy environments remains a challenging...
The recent success of large and deep neural network models has motivated the training of even larger...
International audienceWe consider the problem of robust automatic speech recognition (ASR) in noisy ...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
It is well known that additive noise can cause a significant decrease in performance for an automati...
Speech enhancement in the time-frequency domain is often performed by estimating a multiplicative ma...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
A common question regarding the application of neural networks is whether the predictions of the mod...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
This thesis addresses the problem of speech phone recognition. Phones are the acoustic sounds of spe...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
Recent work on neural networks with probabilistic parameters has shown that parameter uncertainty im...
Over the past decades, the dominant approach towards building automatic speech recognition (ASR) sys...
Training domain-specific automatic speech recognition (ASR) systems requires a suitable amount of da...
International audienceAutomatic speech recognition (ASR) in noisy environments remains a challenging...
The recent success of large and deep neural network models has motivated the training of even larger...
International audienceWe consider the problem of robust automatic speech recognition (ASR) in noisy ...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
It is well known that additive noise can cause a significant decrease in performance for an automati...
Speech enhancement in the time-frequency domain is often performed by estimating a multiplicative ma...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
A common question regarding the application of neural networks is whether the predictions of the mod...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
This thesis addresses the problem of speech phone recognition. Phones are the acoustic sounds of spe...
The parametric Bayesian Feature Enhancement (BFE) and a data-driven Denoising Autoencoder (DA) both ...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...