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Publication detail
ŠŮSTEK, M. SADHU, S. HEŘMANSKÝ, H.
Original Title
Dealing with Unknowns in Continual Learning for End-to-end Automatic Speech Recognition
Type
conference paper
Language
English
Original Abstract
Learning continually from data is a task executed effortlessly by humans but remains to be of significant challenge for machines. Moreover, when encountering unknown test scenarios machines fail to generalize. We propose a mathematically motivated dynamically expanding end-to-end model of independent sequence-to-sequence components trained on different data sets that avoid catastrophically forgetting knowledge acquired from previously seen data while seamlessly integrating knowledge from new data. During inference, the likelihoods of the unknown test scenario are computed using internal model activation distributions. The inference made by each independent component is weighted by the normalized likelihood values to obtain the final decision.
Keywords
continual learning, multistream speech recognition, speech recognition
Authors
ŠŮSTEK, M.; SADHU, S.; HEŘMANSKÝ, H.
Released
1. 9. 2022
Publisher
International Speech Communication Association
Location
Incheon
ISBN
1990-9772
Periodical
Proceedings of Interspeech
Year of study
2022
Number
9
State
French Republic
Pages from
1046
Pages to
1050
Pages count
5
URL
https://www.isca-speech.org/archive/pdfs/interspeech_2022/sustek22_interspeech.pdf
BibTex
@inproceedings{BUT182527, author="ŠŮSTEK, M. and SADHU, S. and HEŘMANSKÝ, H.", title="Dealing with Unknowns in Continual Learning for End-to-end Automatic Speech Recognition", booktitle="Proceedings of the Annual Conference of the International Speech Communication Association, INTERSPEECH", year="2022", journal="Proceedings of Interspeech", volume="2022", number="9", pages="1046--1050", publisher="International Speech Communication Association", address="Incheon", doi="10.21437/Interspeech.2022-11139", issn="1990-9772", url="https://www.isca-speech.org/archive/pdfs/interspeech_2022/sustek22_interspeech.pdf" }