We are interested in the problem of learning stochastic language models on-line (without speech transcriptions) for adaptive speech recognition and understanding. In this paper we propose an algorithm to adapt to variations in the language model distributions based on the speech input only and without its true transcription. The on-line probability estimate is defined as a function of the prior and word error distributions. We show the effectiveness of word-lattice based error probability distributions in terms of Receiver operating Characteristics (ROC) curves and word accuracy. We apply the new estimates Padapt (w) to the task of adapting on-line and initial large vocabulary trigram language model and show improvement in word accuracy wit...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
In this paper, we discuss language model adaptation methods given a word list and a raw corpus. In t...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target ...
In a human-machine interaction (dialog) the statistical lan-guage variations are large among differe...
In this paper, we introduce a new concept, the time frame error rate. We show that this error rate i...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
The general goal of this thesis is to improve the performance of state-of-the-art statistical automa...
Copyright © 2015 ISCA. Direct integration of translation model (TM) probabilities into a language mo...
Stochastic language models for speech recognition have traditionally been designed and evaluated in ...
Language modeling is an important part for both speech recognition and machine translation systems. ...
In this paper we present two new techniques for language modeling in speech recognition. The rst tec...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
In this paper, we discuss language model adaptation methods given a word list and a raw corpus. In t...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target ...
In a human-machine interaction (dialog) the statistical lan-guage variations are large among differe...
In this paper, we introduce a new concept, the time frame error rate. We show that this error rate i...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
The general goal of this thesis is to improve the performance of state-of-the-art statistical automa...
Copyright © 2015 ISCA. Direct integration of translation model (TM) probabilities into a language mo...
Stochastic language models for speech recognition have traditionally been designed and evaluated in ...
Language modeling is an important part for both speech recognition and machine translation systems. ...
In this paper we present two new techniques for language modeling in speech recognition. The rst tec...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
In this paper, we discuss language model adaptation methods given a word list and a raw corpus. In t...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...