3.8 Proceedings Paper

The 1st Clarity Prediction Challenge: A machine learning challenge for hearing aid intelligibility prediction

期刊

INTERSPEECH 2022
卷 -, 期 -, 页码 3508-3512

出版社

ISCA-INT SPEECH COMMUNICATION ASSOC
DOI: 10.21437/Interspeech.2022-10821

关键词

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

资金

  1. Hearing Industry Research Consortium [EP/S031448/1, EP/S031308/1, EP/S031324/1, EP/S030298/1]
  2. Royal National Institute for the Deaf (RNID)

向作者/读者索取更多资源

This paper reports on the design and outcomes of the 1st Clarity Prediction Challenge (CPC1) for predicting the intelligibility of hearing aid processed signals heard by individuals with a hearing impairment. The challenge aimed to promote the development of new measures for evaluating the intelligibility of hearing aid algorithms. The paper summarizes and compares the results of the challenge, which received submissions from 15 systems.
This paper reports on the design and outcomes of the 1st Clarity Prediction Challenge (CPC1) for predicting the intelligibility of hearing aid processed signals heard by individuals with a hearing impairment. The challenge was designed to promote the development of new intelligibility measures suitable for use in developing hearing aid algorithms. Participants were supplied with listening test data compromising 7233 responses from 27 individuals. Data was split between training and test sets in a manner that fostered a machine learning approach and allowed both closed-set (known listeners) and open-set (unseen listener/unseen system) evaluation. The paper provides a description of the challenge design including the datasets, the hearing aid algorithms applied, the listeners and the perceptual tests. The challenge attracted submissions from 15 systems. The results are reviewed and the paper summarises, compares and contrasts approaches.

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