Suppressing reverberation in cochlear implant stimulus patterns using time-frequency masks based on phoneme groups

Autor: Kevin Chu, Leslie Collins, Boyla Mainsah
Rok vydání: 2022
Předmět:
Zdroj: The Journal of the Acoustical Society of America. 152:A91-A91
ISSN: 0001-4966
DOI: 10.1121/10.0015650
Popis: Cochlear implant (CI) users experience considerable difficulty in understanding speech in reverberant listening environments. This issue is commonly addressed with time-frequency masking, where a time-frequency decomposed reverberant signal is multiplied by a matrix of gain values to suppress reverberation. However, mask estimation is challenging in reverberant environments due to the large spectro-temporal variations in the speech signal. To overcome this variability, we previously developed a phoneme-based algorithm that selects a different mask estimation model based on the underlying phoneme. In the ideal case where knowledge of the phoneme was assumed, the phoneme-based approach provided larger benefits than a phoneme-independent approach when tested in normal-hearing listeners using an acoustic model of CI processing. The current work investigates the phoneme-based mask estimation algorithm in the real-time feasible case where the prediction from a phoneme classifier is used to select the phoneme-specific mask. To further ensure real-time feasibility, both the phoneme classifier and mask estimation algorithm use causal features extracted from within the CI processing framework. We conducted experiments in normal-hearing listeners using an acoustic model of CI processing, and the results showed that the phoneme-specific algorithm benefitted the majority of subjects. [Work supported by NIH through Grant No. R01DC014290-05.]
Databáze: OpenAIRE