1 / 17

Towards a Cohort-Selective Frequency-Compression Hearing Aid

Towards a Cohort-Selective Frequency-Compression Hearing Aid. Marie Roch ¤ , Richard R. Hurtig ¥ , Jing Lui ¤ , and Tong Huang ¤. ¤. ¥. Sensorineural Hearing loss. Most common type of hearing loss Affects > 20 million in the US alone Caused by physiological problems in the cochlea.

ophrah
Download Presentation

Towards a Cohort-Selective Frequency-Compression Hearing Aid

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Towards a Cohort-Selective Frequency-Compression Hearing Aid Marie Roch¤, Richard R. Hurtig¥, Jing Lui¤, and Tong Huang¤ ¤ ¥

  2. Sensorineural Hearing loss • Most common type of hearing loss • Affects > 20 million in the US alone • Caused by physiological problems in the cochlea

  3. Traditional Hearing Aids • Amplification of frequency bands • Amplitude compression • Works best in situations with high SNR

  4. Problems With Traditional Methods • Simple amplification insufficient • Individuals with severe hearing loss cannot perceive formants “Where were you while we were away” Harrington and Cassidy 1999, p. 110

  5. Preserving the formants • Frequency domain compression [Turner & Hurtig 1999] permits preservation of formants

  6. Effectiveness • Clinical study of 15 hearing-impaired listeners showed improvement when listening to different groups • female talkers: 45% improvement • male talkers: 20% improvement Female Talker- Uncompressed Female Talker- Compressed

  7. Challenges • Not all voices require the same level of compression • Single setting leads to inappropriate levels of compression

  8. Adaptive thresholds • Decision-based control mechanism • Establish cohorts and compress according to cohort class. • Some possible cohorts: • Phonological units • Pitch • Speaker “gender”

  9. Gender-based classifier • Selected “gender” for first study. • Female, Male, Child • Classifier output more stable than with phonological approaches. • Broad support in the literature for the ability of both humans and machines to do this.

  10. Classifier • Gaussian mixture models • Features extracted from 25 ms windows shifted every 10 ms • Energy • 12 Mel-filtered cepstral coefficients (MFCC) • Time-derivatives of Energy & MFCC

  11. Control system architecture

  12. Conversational telephone speech Band-limited 8 kHz Mu-law encoded Endpointed with the NIST/Kubala endpointer Train Single sides of same-gender phone calls 25 male & female Test 87 annotated cross-gender phone calls About 7 hours of calls (~5 min. each) LDC SPIDRE Corpus

  13. SPIDRE Classification Results

  14. Many errors occurred in fricatives which have high frequency energy Error analysis telephone bandwidth

  15. Evalution on TIMIT • 630 speakers, clean speech 16 kHz corpus • Train: 25 male, 25 female. Test 413 male, 167 female. SPIDRE TIMIT

  16. Median Smoothing (SPIDRE) median smoothed

  17. Conclusions & Future Work • Classifier-based control systems • feasible • can be applied to other signal enhancement algorithms • need not be limited to the cohorts presented today (e.g. auditory scene analysis)

More Related