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Restoring speech intelligibility for hearing aid users with deep learning

Authors :
Diehl, Peter Udo
Singer, Yosef
Zilly, Hannes
Schönfeld, Uwe
Meyer-Rachner, Paul
Berry, Mark
Sprekeler, Henning
Sprengel, Elias
Pudszuhn, Annett
Hofmann, Veit M.
Publication Year :
2022

Abstract

Almost half a billion people world-wide suffer from disabling hearing loss. While hearing aids can partially compensate for this, a large proportion of users struggle to understand speech in situations with background noise. Here, we present a deep learning-based algorithm that selectively suppresses noise while maintaining speech signals. The algorithm restores speech intelligibility for hearing aid users to the level of control subjects with normal hearing. It consists of a deep network that is trained on a large custom database of noisy speech signals and is further optimized by a neural architecture search, using a novel deep learning-based metric for speech intelligibility. The network achieves state-of-the-art denoising on a range of human-graded assessments, generalizes across different noise categories and - in contrast to classic beamforming approaches - operates on a single microphone. The system runs in real time on a laptop, suggesting that large-scale deployment on hearing aid chips could be achieved within a few years. Deep learning-based denoising therefore holds the potential to improve the quality of life of millions of hearing impaired people soon.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2206.11567
Document Type :
Working Paper