INTERSPEECH2006: the 9th International Conference on Spoken Language Processing (ICSLP), September 17-21, 2006, Pittsburgh, Pennsylvania, USA.The construction of high-performance acoustic models for certain speech recognition tasks is very costly and time-consuming, since it most often requires the collection and transcription of large amounts of task-specific speech data. In this paper acoustic modeling for spoken dialogue systems based on unsupervised selective training is examined. The main idea is to select those training utterances from an (untranscribed) speech data pool, so that the likelihood of a separate small (transcribed) development speech data set is maximized. If only the selected data are employed to retrain the initial a...
The paper addresses a scheme of lightly supervised training of an acoustic model, which exploits a l...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
Speech recognition systems are often highly domain dependent, a fact widely reported in the literatu...
To obtain a robust acoustic model for a certain speech recognition task, a large amount of speech da...
SRIV 2006: ITRW on Speech Recognition and Intrinsic Variatioon, May 20, 2006, Toulouse, France.The...
Development of an ASR application such as a speech-oriented guidance system for a real environment i...
This paper describes experiments in using speech data, collected by means of commercial services, in...
ASRU2005: IEEE Automatic Speech Recognition and Understanding Workshop, November 27, 2005, San Juan...
LREC2006: the 5th international conference on Language Resources and Evaluation, May 2006.This paper...
Automatic speech transcription systems are developed for various languages, domains,and applications...
This paper presents a method for reducing the effort of transcribing user utterances to develop lang...
Negative transfer in training of acoustic models for automatic speech recognition has been reported ...
This paper proposes an unsupervised, batch-type, class-based language model adaptation method for s...
In this paper, speaker adaptive acoustic modeling is investigated in the context of large vocabulary...
Unsupervised acoustic modeling can offer a cost and time effective way of creating a solid acoustic ...
The paper addresses a scheme of lightly supervised training of an acoustic model, which exploits a l...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
Speech recognition systems are often highly domain dependent, a fact widely reported in the literatu...
To obtain a robust acoustic model for a certain speech recognition task, a large amount of speech da...
SRIV 2006: ITRW on Speech Recognition and Intrinsic Variatioon, May 20, 2006, Toulouse, France.The...
Development of an ASR application such as a speech-oriented guidance system for a real environment i...
This paper describes experiments in using speech data, collected by means of commercial services, in...
ASRU2005: IEEE Automatic Speech Recognition and Understanding Workshop, November 27, 2005, San Juan...
LREC2006: the 5th international conference on Language Resources and Evaluation, May 2006.This paper...
Automatic speech transcription systems are developed for various languages, domains,and applications...
This paper presents a method for reducing the effort of transcribing user utterances to develop lang...
Negative transfer in training of acoustic models for automatic speech recognition has been reported ...
This paper proposes an unsupervised, batch-type, class-based language model adaptation method for s...
In this paper, speaker adaptive acoustic modeling is investigated in the context of large vocabulary...
Unsupervised acoustic modeling can offer a cost and time effective way of creating a solid acoustic ...
The paper addresses a scheme of lightly supervised training of an acoustic model, which exploits a l...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
Speech recognition systems are often highly domain dependent, a fact widely reported in the literatu...