Result Details

Automatic Speech Recognition Benchmark for Air-Traffic Communications

ZULUAGA-GOMEZ, J.; MOTLÍČEK, P.; ZHAN, Q.; VESELÝ, K.; BRAUN, R. Automatic Speech Recognition Benchmark for Air-Traffic Communications. In Proceedings of Interspeech 2020. Proceedings of Interspeech. Shanghai: International Speech Communication Association, 2020. no. 10, p. 2297-2301. ISSN: 1990-9772.
Type
conference paper
Language
English
Authors
ZULUAGA-GOMEZ, J.
Motlíček Petr, doc. Ing., Ph.D., DCGM (FIT)
ZHAN, Q.
Veselý Karel, Ing., Ph.D., DCGM (FIT)
BRAUN, R.
Abstract

Advances in Automatic Speech Recognition (ASR) over the lastdecade opened new areas of speech-based automation such as inAir-Traffic Control (ATC) environments. Currently, voice communicationand data links communications are the only wayof contact between pilots and Air-Traffic Controllers (ATCo),where the former is the most widely used and the latter is anon-spoken method mandatory for oceanic messages and limitedfor some domestic issues. ASR systems on ATCo environmentsinherit increasing complexity due to accents from non-English speakers, cockpit noise, speaker-dependent biases andsmall in-domain ATC databases for training. Hereby, we introduceCleanSky EC-H2020 ATCO2, a project that aims todevelop an ASR-based platform to collect, organize and automaticallypre-process ATCo speech-data from air space. Thispaper conveys an exploratory benchmark of several state-ofthe-art ASR models trained on more than 170 hours of ATCospeech-data. We demonstrate that the cross-accent flaws dueto speakers accents are minimized due to the amount of data,making the system feasible for ATC environments. The developedASR system achieves an averaged word error rate (WER)of 7.75% across four databases. An additional 35% relative improvementin WER is achieved on one test set when training aTDNNF system with byte-pair encoding.

Keywords

Speech Recognition, Air Traffic Control, TransferLearning, Deep Neural Networks, Lattice-Free MMI

URL
Published
2020
Pages
2297–2301
Journal
Proceedings of Interspeech, vol. 2020, no. 10, ISSN 1990-9772
Proceedings
Proceedings of Interspeech 2020
Conference
Interspeech
Publisher
International Speech Communication Association
Place
Shanghai
DOI
UT WoS
000833594102086
EID Scopus
BibTeX
@inproceedings{BUT168149,
  author="ZULUAGA-GOMEZ, J. and MOTLÍČEK, P. and ZHAN, Q. and VESELÝ, K. and BRAUN, R.",
  title="Automatic Speech Recognition Benchmark for Air-Traffic Communications",
  booktitle="Proceedings of Interspeech 2020",
  year="2020",
  journal="Proceedings of Interspeech",
  volume="2020",
  number="10",
  pages="2297--2301",
  publisher="International Speech Communication Association",
  address="Shanghai",
  doi="10.21437/Interspeech.2020-2173",
  issn="1990-9772",
  url="https://isca-speech.org/archive/Interspeech_2020/pdfs/2173.pdf"
}
Files
Projects
Automatic collection and processing of voice data from air-traffic communications, EU, Horizon 2020, start: 2019-11-01, end: 2022-02-28, completed
IT4Innovations excellence in science, MŠMT, Národní program udržitelnosti II, LQ1602, start: 2016-01-01, end: 2020-12-31, completed
Moderní metody zpracování, analýzy a zobrazování multimediálních a 3D dat, BUT, Vnitřní projekty VUT, FIT-S-20-6460, start: 2020-03-01, end: 2023-02-28, completed
Neural Representations in multi-modal and multi-lingual modeling, GACR, Grantové projekty exelence v základním výzkumu EXPRO - 2019, GX19-26934X, start: 2019-01-01, end: 2023-12-31, completed
Research groups
Departments
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