Spoken human–machine interaction in real-world environments requires acoustic models that are robust to changes in acoustic conditions, e.g. presence of noise. Unfortunately, the popular hidden Markov models (HMM) are not noise tolerant. One way to increase recognition performance is to acquire a small adaptation set of noisy utterances, which is used to estimate a normalization mapping between noisy and clean features to be fed into the acoustic model. This paper proposes an unsupervised maximum-likelihood gradient-ascent training algorithm (instead of the usual least squares regression) for a neural feature adaptation module, properly combined with a hybrid connectionist/HMM speech recognizer. The algorithm is inspired by the so-called “i...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
Automatic speech recognition is very sensitive to mismatch between training and testing condition, e...
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...
Acoustic modeling in state-of-the-art speech recognition systems usually relies on hidden Markov mod...
Robust acoustic modeling is essential in the development of automatic speech recognition systems app...
A technique is proposed for the adaptation of automatic speech recognition systems using Hybrid mode...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...
International audienceA technique is proposed for the adaptation of automatic speech recognition sys...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
Hidden Markov model speech recognition systems typically use Gaussian mixture models to estimate the...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
Acoustic models relying on hidden Markov models (HMMs) are heavily noise-sensitive: recognition perf...
In this paper a challenging scenario is addressed in which a hands-free speech recognizer operates i...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
Automatic speech recognition is very sensitive to mismatch between training and testing condition, e...
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...
Acoustic modeling in state-of-the-art speech recognition systems usually relies on hidden Markov mod...
Robust acoustic modeling is essential in the development of automatic speech recognition systems app...
A technique is proposed for the adaptation of automatic speech recognition systems using Hybrid mode...
ABSTRACT Hidden Markov model speech recognition systems typically use Gaussian mixture models to est...
International audienceA technique is proposed for the adaptation of automatic speech recognition sys...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
Hidden Markov model speech recognition systems typically use Gaussian mixture models to estimate the...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
Acoustic models relying on hidden Markov models (HMMs) are heavily noise-sensitive: recognition perf...
In this paper a challenging scenario is addressed in which a hands-free speech recognizer operates i...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
Automatic speech recognition is very sensitive to mismatch between training and testing condition, e...