Machine Learning Based Dynamic Band Selection for Splitting Auditory Signals to Reduce Inner Ear Hearing Losses

Main Article Content

Sudhir Narsing Divekar
Manoj Kumar Nigam

Abstract

Quality of hearing has been severely impacted due to signal losses occurs in the human inner ear explicitly in the region of cochlea. Loudness recruitment, degraded frequency selectivity and auditory masking are the major outward effects of inner ear hearing losses. Splitting auditory signals into frequency bands and presenting dichotically to both ears became a comprehensive solution to reduce inner ear hearing losses. However, these methods divide input signal into the fix number of frequency bands, this limits their applicability where signals have large variations in their spectral characteristics. To address this challenge, we have proposed machine learning based intelligent band selection algorithm to split auditory signals dynamically. Proposed algorithm analyze input speech signal based on spectral characteristics to determine the optimum number of bands required to effectively present major acoustic cues of the signal. Further, dynamic splitting algorithm efficiently divides signal for dichotic presentation. Proposed method has been examined on large number of subjects from different age groups and gender having cochlear hearing impairment. Qualitative and quantitative assessment shown significant improvement in the recognition score with substantial reduction in the response time.

Article Details

How to Cite
Divekar, S. N. ., & Nigam, M. K. . (2023). Machine Learning Based Dynamic Band Selection for Splitting Auditory Signals to Reduce Inner Ear Hearing Losses. International Journal on Recent and Innovation Trends in Computing and Communication, 11(6), 71–78. https://doi.org/10.17762/ijritcc.v11i6.7059
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Articles

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