Phonetic-based systems usually convert the input speech into token (i.e. word, phone etc.) sequence and determine the target language from the statistics of the token sequences on different languages. Generally, there are two kinds of statistical representation for token sequences, N-gram language model (PR-LM) and support vector machines (PR-SVM) to perform language classification. In this paper we focus on PR-SVM method. One problem of the PR-SVM is that the statistical representation based on utterance is sparse and inaccurate. To tackle this issue, the adaptation schemes in PR-SVM framework are proposed in this paper. There are two schemes to be used: 1) Adaptation from the Universal N-gram Language Model (UNLM) trained on all languages...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Language identification (LID) of speech data recorded over noisy communication channels is a challen...
This paper presents two techniques for language model (LM) adaptation. The first aims to build a mor...
In this paper, we explore the use of the Support Vector Machines (SVMs) to learn a discriminatively ...
[[abstract]]N-gram language modeling is a crucial component in any speech recognizer since it is exp...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
Automatic language identification (LID) decisions are made based on scores of language models (LM). ...
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 an important part for both speech recognition and machine translation systems. ...
This paper summarizes recent advances in PRLM language recognition within the context of the NIST 20...
Speech recognition performance is severely affected when the lexical, syntactic, or semantic charact...
This thesis has taken a closer look at the implementation of the back-end of a language recognition ...
Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target ...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Language identification (LID) of speech data recorded over noisy communication channels is a challen...
This paper presents two techniques for language model (LM) adaptation. The first aims to build a mor...
In this paper, we explore the use of the Support Vector Machines (SVMs) to learn a discriminatively ...
[[abstract]]N-gram language modeling is a crucial component in any speech recognizer since it is exp...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
Automatic language identification (LID) decisions are made based on scores of language models (LM). ...
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 an important part for both speech recognition and machine translation systems. ...
This paper summarizes recent advances in PRLM language recognition within the context of the NIST 20...
Speech recognition performance is severely affected when the lexical, syntactic, or semantic charact...
This thesis has taken a closer look at the implementation of the back-end of a language recognition ...
Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target ...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Language identification (LID) of speech data recorded over noisy communication channels is a challen...
This paper presents two techniques for language model (LM) adaptation. The first aims to build a mor...