A computational loudness model for electrical stimulation with cochlear implants
Franklin Alvarez, Yixuan Zhang, Daniel Kipping, Waldo Nogueira

TL;DR
This paper introduces a novel 3D computational loudness model for cochlear implants that predicts loudness perception from simulated neural activity, aligning closely with human CI user data.
Contribution
It presents a physiologically-based loudness model that incorporates neural spike grouping and spatiotemporal integration, improving prediction accuracy over existing models.
Findings
Model accurately predicts loudness growth functions in CI users.
Validation shows the model captures effects of stimulation rate and electrode separation.
Provides new perceptual features for cochlear implant simulation and design.
Abstract
Cochlear implants (CIs) are devices that restore the sense of hearing in people with severe sensorineural hearing loss. An electrode array inserted in the cochlea bypasses the natural transducer mechanism that transforms mechanical sound waves into neural activity by artificially stimulating the auditory nerve fibers with electrical pulses. The perception of sounds is possible because the brain extracts features from this neural activity, and loudness is among the most fundamental perceptual features. A computational model that uses a three-dimensional (3D) representation of the peripheral auditory system of CI users was developed to predict categorical loudness from the simulated peripheral neural activity. In contrast, current state-of-the-art computational loudness models predict loudness from the electrical pulses with minimal parametrization of the electrode-nerve interface. In…
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Taxonomy
TopicsHearing Loss and Rehabilitation
MethodsSparse Evolutionary Training
