Only a handful of the world’s languages are abundant with the resources that enable practical applications of speech processing technologies. One of the methods to overcome this problem is to use the resources existing in other languages to train a multilingual automatic speech recognition (ASR) model, which, intuitively, should learn some universal phonetic representations. In this work, we focus on gaining a deeper understanding of how general these representations might be, and how individual phones are getting improved in a multilingual setting. To that end, we select a phonetically diverse set of languages, and perform a series of monolingual, multilingual and crosslingual (zero-shot) experiments. The ASR is trained to recognize the In...
We present a method for cross-lingual training an ASR system using absolutely no transcribed trainin...
© 2015 IEEE. This paper examines the impact of multilingual (ML) acoustic representations on Automat...
奈良先端科学技術大学院大学 情報科学研究科 知能コミュニケーション研究室講演日: 平成24年4月25日講演場所: 情報科学研究科大講義室L1More than 6800 living language...
The idea of combining multiple languages’ recordings to train a single automatic speech recognition ...
A state-of-the-art automatic speech recognition (ASR) system can often achieve high accuracy for mos...
In recent times, the improved levels of accuracy obtained by Automatic Speech Recognition (ASR) tech...
International audienceThis paper presents our strategies for developing an automatic speech recognit...
Over the past decades, speech recognition has dramatically improved in a large variety of applicatio...
Training multilingual automatic speech recognition (ASR) systems is challenging because acoustic and...
Despite recent advances in automatic speech recognition (ASR), the recognition of children’s speech ...
Recent methods in speech and language technology pretrain very large models which are fine-tuned for...
Recent breakthroughs in automatic speech recognition (ASR) have resulted in a word error rate (WER) ...
The recent development of neural network-based automatic speech recognition (ASR) systems has greatl...
International audienceSpeakers in multilingual communities often switch between or mix multiple lang...
Multilingual automatic speech recognition (ASR) systems mostly benefit low resource languages but su...
We present a method for cross-lingual training an ASR system using absolutely no transcribed trainin...
© 2015 IEEE. This paper examines the impact of multilingual (ML) acoustic representations on Automat...
奈良先端科学技術大学院大学 情報科学研究科 知能コミュニケーション研究室講演日: 平成24年4月25日講演場所: 情報科学研究科大講義室L1More than 6800 living language...
The idea of combining multiple languages’ recordings to train a single automatic speech recognition ...
A state-of-the-art automatic speech recognition (ASR) system can often achieve high accuracy for mos...
In recent times, the improved levels of accuracy obtained by Automatic Speech Recognition (ASR) tech...
International audienceThis paper presents our strategies for developing an automatic speech recognit...
Over the past decades, speech recognition has dramatically improved in a large variety of applicatio...
Training multilingual automatic speech recognition (ASR) systems is challenging because acoustic and...
Despite recent advances in automatic speech recognition (ASR), the recognition of children’s speech ...
Recent methods in speech and language technology pretrain very large models which are fine-tuned for...
Recent breakthroughs in automatic speech recognition (ASR) have resulted in a word error rate (WER) ...
The recent development of neural network-based automatic speech recognition (ASR) systems has greatl...
International audienceSpeakers in multilingual communities often switch between or mix multiple lang...
Multilingual automatic speech recognition (ASR) systems mostly benefit low resource languages but su...
We present a method for cross-lingual training an ASR system using absolutely no transcribed trainin...
© 2015 IEEE. This paper examines the impact of multilingual (ML) acoustic representations on Automat...
奈良先端科学技術大学院大学 情報科学研究科 知能コミュニケーション研究室講演日: 平成24年4月25日講演場所: 情報科学研究科大講義室L1More than 6800 living language...