This paper introduces a method for regularization of HMM systems that avoids parameter overfitting caused by insufficient training data. Regularization is done by augmenting the EM training method by a penalty term that favors simple and smooth HMM systems. The penalty term is constructed as a mixture model of negative exponential distributions that is assumed to generate the state dependent emission probabilities of the HMMs. This new method is the successful transfer of a well known regularization approach in neural networks to the HMM domain and can be interpreted as a generalization of traditional state-tying for HMM systems. The effect of regularization is demonstrated for continuous speech recognition tasks by improving overfitted tri...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
Robust acoustic modeling is essential in the development of automatic speech recognition systems app...
This paper introduces a method for regularization ofHMM systems that avoids parameter overfitting ca...
This paper introduces a method for regularization of HMM sys-tems that avoids parameter overfitting ...
We have applied Bayesian regularisation methods to multi-layer percepuon (MLP) training in the conte...
This paper describes a method to incorporate the HMM output constraints in frame based hybrid NN/HMM...
Spoken human-machine interaction in real-world environments requires acoustic models that are robust...
Good HMM-based speech recognition performance requires at most minimal inaccuracies to be introduced...
Increasing the generalization capability of Discriminative Training (DT) of Hidden Markov Models (HM...
In this paper, we briefly describe REMAP, an approach for the training and estimation of posterior p...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
In this paper, we present an HMM2 based method for speaker normalization. Introduced as an extension...
Abstract The highest recognition performance is still achieved when training a recognition system wi...
AbstractConventionally, in vector Taylor series (VTS) based compensation for noise-robust speech rec...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
Robust acoustic modeling is essential in the development of automatic speech recognition systems app...
This paper introduces a method for regularization ofHMM systems that avoids parameter overfitting ca...
This paper introduces a method for regularization of HMM sys-tems that avoids parameter overfitting ...
We have applied Bayesian regularisation methods to multi-layer percepuon (MLP) training in the conte...
This paper describes a method to incorporate the HMM output constraints in frame based hybrid NN/HMM...
Spoken human-machine interaction in real-world environments requires acoustic models that are robust...
Good HMM-based speech recognition performance requires at most minimal inaccuracies to be introduced...
Increasing the generalization capability of Discriminative Training (DT) of Hidden Markov Models (HM...
In this paper, we briefly describe REMAP, an approach for the training and estimation of posterior p...
Continuous-density hidden Markov models (HMM) are a popular approach to the problem of modeling sequ...
In this paper, we present an HMM2 based method for speaker normalization. Introduced as an extension...
Abstract The highest recognition performance is still achieved when training a recognition system wi...
AbstractConventionally, in vector Taylor series (VTS) based compensation for noise-robust speech rec...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
Robust acoustic modeling is essential in the development of automatic speech recognition systems app...