ISCA Archive SLaTE 2011
ISCA Archive SLaTE 2011

Improving ASR processing of ungrammatical utterances through grammatical error modeling

Helmer Strik, Joost van Doremalen, Janneke van de Loo, Catia Cucchiarini

Automatic speech recognition (ASR) of non-native utterances with grammatical errors is problematic. A new method which makes it possible to better recognize such utterances is presented in the current paper. It can be briefly summarized as follows: extract error patterns automatically from a learner corpus, formulate rewrite rules for these syntactic and morphological errors, build finite state grammars (FSGs), and use these FSGs as language models in ASR systems. All rules used in isolation and in different combinations yield lower word error rates (WERs).

Index Terms. computer-assisted language learning (CALL), non-native speech, grammatical errors, automatic speech recognition (ASR), language modeling


Cite as: Strik, H., Doremalen, J.v., Loo, J.v.d., Cucchiarini, C. (2011) Improving ASR processing of ungrammatical utterances through grammatical error modeling. Proc. Speech and Language Technology in Education (SLaTE 2011), 109-112

@inproceedings{strik11_slate,
  author={Helmer Strik and Joost van Doremalen and Janneke van de Loo and Catia Cucchiarini},
  title={{Improving ASR processing of ungrammatical utterances through grammatical error modeling}},
  year=2011,
  booktitle={Proc. Speech and Language Technology in Education (SLaTE 2011)},
  pages={109--112}
}