We apply boosting techniques to the problem of word error rate minimisation in speech recognition. This is achieved through a new definition of sample error for boosting and a training procedure for hidden Markov models. For this purpose we define a sample error for sentence examples related to the word error rate. Furthermore, for each sentence example we define a probability distribution in time that represents our belief that an error has been made at that particular frame. This is used to weigh the frames of each sentence in the boosting framework. We present preliminary results on the well-known Numbers 95 database that indicate the importance of this temporal probability distribution. \ua9 2005 IEEE
The problem of improving the accuracy of small vocabulary isolated word speaker dependent speech rec...
The object function for Boosting training method in acoustic modeling aims to reduce utterance leve...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
Abstract.We apply boosting techniques to the problem of word error rate minimisation in speech recog...
We apply boosting techniques to the problem of word error rate minimisation in speech recognition. ...
In this paper, we introduce a new concept, the time frame error rate. We show that this error rate i...
Conventional Boosting algorithms for acoustic modeling have two notable weaknesses. (1) The objectiv...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
We address the question of whether and how boosting and bagging can be used for speech recognition. ...
Based on the observation that the unpredictable nature of conversational speech makes it almost impo...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
[[abstract]]© 2003 Institute of Electrical and Electronics Engineers - A model-based framework of cl...
We address the question of whether and how boosting and bagging can be used for speech recognition....
It is well known that a higher-than-normal speech rate will cause the rate of recognition errors in ...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
The problem of improving the accuracy of small vocabulary isolated word speaker dependent speech rec...
The object function for Boosting training method in acoustic modeling aims to reduce utterance leve...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
Abstract.We apply boosting techniques to the problem of word error rate minimisation in speech recog...
We apply boosting techniques to the problem of word error rate minimisation in speech recognition. ...
In this paper, we introduce a new concept, the time frame error rate. We show that this error rate i...
Conventional Boosting algorithms for acoustic modeling have two notable weaknesses. (1) The objectiv...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
We address the question of whether and how boosting and bagging can be used for speech recognition. ...
Based on the observation that the unpredictable nature of conversational speech makes it almost impo...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
[[abstract]]© 2003 Institute of Electrical and Electronics Engineers - A model-based framework of cl...
We address the question of whether and how boosting and bagging can be used for speech recognition....
It is well known that a higher-than-normal speech rate will cause the rate of recognition errors in ...
Boosting is a general method for training an ensemble of classifiers with a view to improving perfor...
The problem of improving the accuracy of small vocabulary isolated word speaker dependent speech rec...
The object function for Boosting training method in acoustic modeling aims to reduce utterance leve...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...