3.8 Proceedings Paper

Clarity-2021 challenges: Machine learning challenges for advancing hearing aid processing

Journal

INTERSPEECH 2021
Volume -, Issue -, Pages 686-690

Publisher

ISCA-INT SPEECH COMMUNICATION ASSOC
DOI: 10.21437/Interspeech.2021-1574

Keywords

speech-in-noise; speech intelligibility; hearing aid; hearing loss; machine learning

Funding

  1. UK's Engineering and Physical Sciences Council [EP/S031448/1, EP/S031308/1, EP/S031324/1, EP/S030298/1]
  2. Hearing Industry Research Consortium
  3. Royal National Institute for the Deaf (RNID)
  4. Amazon
  5. Honda

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Recent years have seen rapid advances in speech technology thanks to machine learning challenges such as CHiME, REVERB, Blizzard, and Hurricane. The Clarity project applies machine learning to address the issue of hearing aid processing of speech-in-noise, marking the first machine learning challenges to tackle this problem.
In recent years, rapid advances in speech technology have been made possible by machine learning challenges such as CHiME, REVERB, Blizzard, and Hurricane. In the Clarity project, the machine learning approach is applied to the problem of hearing aid processing of speech-in-noise, where current technology in enhancing the speech signal for the hearing aid wearer is often ineffective. The scenario is a (simulated) cuboid-shaped living room in which there is a single listener, a single target speaker and a single interferer, which is either a competing talker or domestic noise. All sources are static, the target is always within +/- 30 degrees azimuth of the listener and at the same elevation, and the interferer is an omnidirectional point source at the same elevation. The target speech comes from an open source 40-speaker British English speech database collected for this purpose. This paper provides a baseline description of the round one Clarity challenges for both enhancement (CEC1) and prediction (CPC1). To the authors' knowledge, these are the first machine learning challenges to consider the problem of hearing aid speech signal processing.

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