This paper compares different ways of estimating bigram language models and of representing them in a finite state network used by a beam-search based, continuous speech, and speaker independent HMM recognizer. Attention is focused on the n-gram interpolation scheme for which seven models are considered. Among them, the Stacked estimated linear interpolated model favourably compares with the best known ones. Further, two different static representations of the search space are investigated: "linear" and "tree-based". Results show that the latter topology is better suited to the beam-search algorithm. Moreover, this representation can be reduced by a network optimization technique, which allows the dynamic size of the rec...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
This paper presents improvements in acoustic and lan-guage modeling for automatic speech recognition...
One particular problem in large vocabulary continuous speech recognition for low-resourced languages...
This paper compares different ways of estimating bigram language models and of representing them in ...
This paper considers the problems of estimating bigram language models and of efficiently representi...
This paper describes an efficient way of representing a bigram language model with a finite state ne...
ABSTRACT This paper describes ongoing work on a new approach for language modeling for large vocabul...
In pursuance of better performance, current speech recognition systems tend to use more and more com...
This paper gives an overview of the principles of a system for phoneme based, large vocabulary, cont...
In general the aim of an automatic speech recognition system is to write down what is said. State of...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
The task of a speech recogniser is to transcribe human speech into text. To do so, modern recogniser...
This paper presents the status of the continuous speech recognition engine of the WAXHOLM project. ...
This paper describes a two level Spanish Continuous Speech Recognition System based on Demisyllable ...
We show that an elaborate linguistic model of a natural lan-guage can be a valuable knowledge source...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
This paper presents improvements in acoustic and lan-guage modeling for automatic speech recognition...
One particular problem in large vocabulary continuous speech recognition for low-resourced languages...
This paper compares different ways of estimating bigram language models and of representing them in ...
This paper considers the problems of estimating bigram language models and of efficiently representi...
This paper describes an efficient way of representing a bigram language model with a finite state ne...
ABSTRACT This paper describes ongoing work on a new approach for language modeling for large vocabul...
In pursuance of better performance, current speech recognition systems tend to use more and more com...
This paper gives an overview of the principles of a system for phoneme based, large vocabulary, cont...
In general the aim of an automatic speech recognition system is to write down what is said. State of...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
The task of a speech recogniser is to transcribe human speech into text. To do so, modern recogniser...
This paper presents the status of the continuous speech recognition engine of the WAXHOLM project. ...
This paper describes a two level Spanish Continuous Speech Recognition System based on Demisyllable ...
We show that an elaborate linguistic model of a natural lan-guage can be a valuable knowledge source...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
This paper presents improvements in acoustic and lan-guage modeling for automatic speech recognition...
One particular problem in large vocabulary continuous speech recognition for low-resourced languages...