Publication Details
Data selection by sequence summarizing neural network in mismatch condition training
Karafiát Martin, Ing., Ph.D. (DCGM)
Veselý Karel, Ing., Ph.D. (DCGM)
Delcroix Marc (FIT)
Watanabe Shinji (FIT)
Burget Lukáš, doc. Ing., Ph.D. (DCGM)
Černocký Jan, prof. Dr. Ing. (DCGM)
Automatic speech recognition, Data augmentation, Data selection, Mismatch training condition, Sequence summarization
Data augmentation is a simple and efficient technique to improve the robustness of a speech recognizer when deployed in mismatched training-test conditions. Our paper proposes a new approach for selecting data with respect to similarity of acoustic conditions. The similarity is computed based on a sequence summarizing neural network which extracts vectors containing acoustic summary (e.g. noise and reverberation characteristics) of an utterance. Several configurations of this network and different methods of selecting data using these "summary-vectors" were explored. The results are reported on a mismatched condition using AMI training set with the proposed data selection and CHiME3 test set.
Data augmentation is a simple and efficient technique to improve the robustness of a speech recognizer when deployed in mismatched training-test conditions. Our paper proposes a new approach for selecting data with respect to similarity of acoustic conditions. The similarity is computed based on a sequence summarizing neural network which extracts vectors containing acoustic summary (e.g. noise and reverberation characteristics) of an utterance. Several configurations of this network and different methods of selecting data using these "summary-vectors" were explored. The results are reported on a mismatched condition using AMI training set with the proposed data selection and CHiME3 test set.
@inproceedings{BUT132600,
author="Kateřina {Žmolíková} and Martin {Karafiát} and Karel {Veselý} and Marc {Delcroix} and Shinji {Watanabe} and Lukáš {Burget} and Jan {Černocký}",
title="Data selection by sequence summarizing neural network in mismatch condition training",
booktitle="Proceedings of Interspeech 2016",
year="2016",
pages="2354--2358",
publisher="International Speech Communication Association",
address="San Francisco",
doi="10.21437/Interspeech.2016-741",
isbn="978-1-5108-3313-5",
url="https://www.semanticscholar.org/paper/Data-Selection-by-Sequence-Summarizing-Neural-Zmol%C3%ADkov%C3%A1-Karafi%C3%A1t/bc1832e8b8d4e5edf987e1562b578bd9aa5e18a9"
}