Recent breakthroughs in automatic speech recognition (ASR) have resulted in a word error rate (WER) on par with human transcribers on the English Switchboard benchmark. However, dealing with linguistic mismatches between the training and testing data is still a significant challenge that remains unsolved. Under the monolingual environment, it is well-known that the performance of ASR systems degrades significantly when presented with the speech from speakers with different accents, dialects, and speaking styles than those encountered during system training. Under the multi-lingual environment, ASR systems trained on a source language achieve even worse performance when tested on another target language because of mismatches in terms of the ...
Accent is cited as an issue for speech recognition systems. Our experiments showed that the ASR word...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Thesis (Ph.D.)--University of Washington, 2017-06All language use reflects the user's social identit...
Recent breakthroughs in automatic speech recognition (ASR) have resulted in a word error rate (WER) ...
Summarization: Several adaptation approaches have been proposed in an effort to improve the speech r...
Several adaptation approaches have been proposed in an eort to improve the speech recognition perfor...
The idea of combining multiple languages’ recordings to train a single automatic speech recognition ...
Most widely spoken languages have numerous dialects or accents which can vary in degree of mutual in...
Major progress is being recorded regularly on both the technology and exploitation of automatic spee...
Advances in speech technology, speech signal processing and phonetic representation are leading to n...
Only a handful of the world’s languages are abundant with the resources that enable practical applic...
Multilingual automatic speech recognition (ASR) systems mostly benefit low resource languages but su...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
Automatic Speech Recognition (ASR) systems have seen substantial improvements in the past decade; ho...
ABSTRACT Engineering automatic speech recognition (ASR) for speech to speech (S2S) translation syste...
Accent is cited as an issue for speech recognition systems. Our experiments showed that the ASR word...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Thesis (Ph.D.)--University of Washington, 2017-06All language use reflects the user's social identit...
Recent breakthroughs in automatic speech recognition (ASR) have resulted in a word error rate (WER) ...
Summarization: Several adaptation approaches have been proposed in an effort to improve the speech r...
Several adaptation approaches have been proposed in an eort to improve the speech recognition perfor...
The idea of combining multiple languages’ recordings to train a single automatic speech recognition ...
Most widely spoken languages have numerous dialects or accents which can vary in degree of mutual in...
Major progress is being recorded regularly on both the technology and exploitation of automatic spee...
Advances in speech technology, speech signal processing and phonetic representation are leading to n...
Only a handful of the world’s languages are abundant with the resources that enable practical applic...
Multilingual automatic speech recognition (ASR) systems mostly benefit low resource languages but su...
This research addresses the language model (LM) domain mismatch problem in automatic speech recognit...
Automatic Speech Recognition (ASR) systems have seen substantial improvements in the past decade; ho...
ABSTRACT Engineering automatic speech recognition (ASR) for speech to speech (S2S) translation syste...
Accent is cited as an issue for speech recognition systems. Our experiments showed that the ASR word...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Thesis (Ph.D.)--University of Washington, 2017-06All language use reflects the user's social identit...