Neural network learning theory draws a relationship between “learning with noise” and applying a regularization term in the cost function that is minimized during the training process on clean (non-noisy) data. Application of regularizers and other robust training techniques are aimed at improving the generalization capabilities of connectionist models, reducing overfitting. In spite of that, the generalization problem is usually overlooked by automatic speech recognition (ASR) practioners who use hidden Markov models (HMM) or other standard ASR paradigms. Nonetheless, it is reasonable to expect that an adequate neural network model (due to its universal approximation property and generalization capability) along with a suitable regularizer...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
Previously, we had developed the concept of a Segmental Neural Net (SNN) for phonetic modeling in co...
This paper describes a hybrid system for continuous speech recognition consisting of a neural networ...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural networks learning theory draws a relationship between `learning with noise` and applying a re...
We present he concept of a "Segmental Neural Net " (SNN) for phonetic modeling in continuo...
Spoken human-machine interaction in real-world environments requires acoustic models that are robust...
Spoken human–machine interaction in real-world environments requires acoustic models that are robust...
In an effort to advance the state of the art in continuous peech recognition employing hidden Markov...
Acoustic models relying on hidden Markov models (HMMs) are heavily noise-sensitive: recognition perf...
Acoustic modeling in state-of-the-art speech recognition systems usually relies on hidden Markov mod...
Although Automatic Speech Recognition (ASR) systems based on hidden Markov models (HMMs) are popular...
This report focuses on a hybrid approach, including stochastic and connectionist methods, for contin...
This paper describes an evaluation of Inhibition/Enhancement (In/En) network for noise robust automa...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
Previously, we had developed the concept of a Segmental Neural Net (SNN) for phonetic modeling in co...
This paper describes a hybrid system for continuous speech recognition consisting of a neural networ...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural networks learning theory draws a relationship between `learning with noise` and applying a re...
We present he concept of a "Segmental Neural Net " (SNN) for phonetic modeling in continuo...
Spoken human-machine interaction in real-world environments requires acoustic models that are robust...
Spoken human–machine interaction in real-world environments requires acoustic models that are robust...
In an effort to advance the state of the art in continuous peech recognition employing hidden Markov...
Acoustic models relying on hidden Markov models (HMMs) are heavily noise-sensitive: recognition perf...
Acoustic modeling in state-of-the-art speech recognition systems usually relies on hidden Markov mod...
Although Automatic Speech Recognition (ASR) systems based on hidden Markov models (HMMs) are popular...
This report focuses on a hybrid approach, including stochastic and connectionist methods, for contin...
This paper describes an evaluation of Inhibition/Enhancement (In/En) network for noise robust automa...
This paper presents new methods for training large neural networks for phoneme probability estimatio...
Previously, we had developed the concept of a Segmental Neural Net (SNN) for phonetic modeling in co...
This paper describes a hybrid system for continuous speech recognition consisting of a neural networ...