Abstract
Advanced neural network models have penetrated Automatic Speech Recognition (ASR) in recent years, however, in language modeling many systems still rely on traditional Back-off N-gram Language Models (BNLM) partly or entirely. The reason for this are the high cost and complexity of training and using neural language models, mostly possible by adding a second decoding pass (rescoring). In our recent work we have significantly improved the online performance of a conversational speech transcription system by transferring knowledge from a Recurrent Neural Network Language Model (RNNLM) to the single pass BNLM with text generation based data augmentation. In the present paper we analyze the amount of transferable knowledge and demonstrate that the neural augmented LM (RNN-BNLM) can help to capture almost 50% of the knowledge of the RNNLM yet by dropping the second decoding pass and making the system real-time capable. We also systematically compare word and subword LMs and show that subword-based neural text augmentation can be especially beneficial in under-resourced conditions. In addition, we show that using the RNN-BNLM in the first pass followed by a neural second pass, offline ASR results can be even significantly improved.
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References
Adel, H., Kirchhoff, K., Vu, N.T., Telaar, D., Schultz, T.: Comparing approaches to convert recurrent neural networks into backoff language models for efficient decoding. Interspeech 2014, 651–655 (2014)
Creutz, M., Lagus, K.: Unsupervised discovery of morphemes. In: Proceedings ACL-02 Workshop on Morphological and Phonological Learning, vol. 6, Morristown, NJ, USA, pp. 21–30 (2002)
Deoras, A., Mikolov, T., Kombrink, S., Karafiat, M., Khudanpur, S.: Variational approximation of long-span language models for LVCSR. In: 2011 IEEE International Conference on Acoustics, Speech, and Signal Processin, pp. 5532–5535. IEEE, May 2011
Enarvi, S., Smit, P., Virpioja, S., Kurimo, M.: Automatic speech recognition with very large conversational finnish and estonian vocabularies. IEEE/ACM Trans. Audio Speech Lang. Process. 25(11), 2085–2097 (2017)
Irie, K., Zeyer, A., Schl, R., Ney, H., Gmbh, A.: Language modeling with deep transformers. Interspeech 2019, 3905–3909 (2019)
Kurimo, M., et al.: Unlimited vocabulary speech recognition for agglutinative languages. In: HLT-NAACL 2006, Morristown, NJ, USA, pp. 487–494 (2007)
Povey, D., et al.: Semi-orthogonal low-rank matrix factorization for deep neural networks. In: Interspeech 2018, ISCA, ISCA, pp. 3743–3747, September 2018
Povey, D., et al.: The kaldi speech recognition toolkit. In: IEEE 2011 Workshop on Automatic Speech Recognition & Understanding. IEEE Signal Processing Society (2011)
Singh, M., Virpioja, S., Smit, P., Kurimo, M.: Subword RNNLM approximations for out-of-vocabulary keyword search. Interspeech 2019, 4235–4239 (2019)
Smit, P., Virpioja, S., Kurimo, M.: Improved subword modeling for WFST-based speech recognition. In: Interspeech 2017. ISCA, ISCA, pp. 2551–2555, August 2017
Stolcke, A.: SRILM - an extensible language modeling toolkit. In: Proceedings International Conference on Spoken Language Processing, Denver, US, pp. 901–904 (2002)
Sundermeyer, M., Schlueter, R., Ney, H.: LSTM neural networks for language modeling. Interspeech 2012, 194–197 (2012)
Suzuki, M., Itoh, N., Nagano, T., Kurata, G., Thomas, S.: Improvements to N-gram language model using text generated from neural language model. In: ICASSP 2019–2019 IEEE International Conference on Acoustics, Speech, and Signal Processing, pp. 7245–7249 (2019)
Tarján, B., Szaszák, G., Fegyó, T., Mihajlik, P.: Investigation on N-gram approximated RNNLMs for recognition of morphologically rich speech. In: Martín-Vide, C., Purver, M., Pollak, S. (eds.) SLSP 2019. LNCS (LNAI), vol. 11816, pp. 223–234. Springer, Cham (2019). https://doi.org/10.1007/978-3-030-31372-2_19
Acknowledgements
The research was supported by the CAMEP (2018-2.1.3-EUREKA-2018-00014) and NKFIH FK-124413 projects.
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Tarján, B., Szaszák, G., Fegyó, T., Mihajlik, P. (2020). On the Effectiveness of Neural Text Generation Based Data Augmentation for Recognition of Morphologically Rich Speech. In: Sojka, P., Kopeček, I., Pala, K., Horák, A. (eds) Text, Speech, and Dialogue. TSD 2020. Lecture Notes in Computer Science(), vol 12284. Springer, Cham. https://doi.org/10.1007/978-3-030-58323-1_47
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DOI: https://doi.org/10.1007/978-3-030-58323-1_47
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