In this study we propose two methods to improve HMM speech recognition performance. The first method employs an adjustment in the training stage, whereas the second method employs it in the scoring stage. It is well known that speech recognition system performance increases when the amount of labeled training data is large. However, due to factors such as inaccurate phonetic labeling, end-point detection, and voiced-unvoiced decisions, the labeling procedure can be prone to errors. In this study, we propose a selective hidden Markov Model (HMM) training procedure in order to reduce the adverse influence of atypical training data on the generated models. To demonstrate its usefulness, selective training is applied to the problem of accent cl...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
Natural language processing enables computer and machines to understand and speak human languages. S...
Abstract The highest recognition performance is still achieved when training a recognition system wi...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
Increasing the generalization capability of Discriminative Training (DT) of Hidden Markov Models (HM...
This work studies the influence of various speech signal representations and speaking styles on the ...
Abstract—Today’s speech recognition systems are based on hidden Markov models (HMMs) with Gaussian m...
Hidden Markov models (HMMs) are the predominant methodology for automatic speech recognition (ASR) s...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
One of the problems faced in automatic speech recognition is the amount of training required to adap...
Artificial neural networks (ANNs) have been used to classify phonetic features in speech. The featur...
The parameters of the standard Hidden Markov Model frame-work for speech recognition are typically t...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
In this study, Hidden Markov Models (HMMs) were used to evaluate pronunciation. Native and non-nativ...
The hidden Markov model (HMM) is commonly employed in automatic speech recognition (ASR). The HMM ha...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
Natural language processing enables computer and machines to understand and speak human languages. S...
Abstract The highest recognition performance is still achieved when training a recognition system wi...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
Increasing the generalization capability of Discriminative Training (DT) of Hidden Markov Models (HM...
This work studies the influence of various speech signal representations and speaking styles on the ...
Abstract—Today’s speech recognition systems are based on hidden Markov models (HMMs) with Gaussian m...
Hidden Markov models (HMMs) are the predominant methodology for automatic speech recognition (ASR) s...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
One of the problems faced in automatic speech recognition is the amount of training required to adap...
Artificial neural networks (ANNs) have been used to classify phonetic features in speech. The featur...
The parameters of the standard Hidden Markov Model frame-work for speech recognition are typically t...
Abstract. When training speaker-independent HMM-based acoustic models, a lot of manually transcribed...
In this study, Hidden Markov Models (HMMs) were used to evaluate pronunciation. Native and non-nativ...
The hidden Markov model (HMM) is commonly employed in automatic speech recognition (ASR). The HMM ha...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
Natural language processing enables computer and machines to understand and speak human languages. S...
Abstract The highest recognition performance is still achieved when training a recognition system wi...