A MODEL-BASED HEARING COMPENSATION METHOD USING A SELF-SUPERVISED FRAMEWORK
Yadong Niu (Peking University); Nan Li (peking university); Xihong Wu (Peking University); Jing Chen (Peking University)
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Hearing aids can improve auditory perception for hearing impaired (HI) listeners, but even state-of-art devices provide only limited benefits if not configured correctly for the listeners. The prescriptive fittings of hearing aids ignore the individual difference among HI listeners with identical hearing thresholds. This paper proposes a model-based hearing compensation method using a self-supervised framework with a given auditory model. The influence of outer/inner hair cells dysfunction was simulated in the auditory model. And then, a neural network was trained to compensate for the given hearing impairment. Both objective and subjective experiments were conducted to evaluate the present method, and the results showed that listeners are sensitive to the parameter controlling the contribution of outer hair cells dysfunction, and they significantly preferred the speech processed by the present method to the traditional perspective fitting.