A probabilistic kernel approach to pairwise preference learning based on Gaussian processes is applied to predict preference judgments for sound quality degradation mechanisms that might be present in a hearing aid. Subjective sound quality comparisons for 14 normal-hearing and 18 hearing-impaired subjects were used for evaluating the predictive performance. Stimuli were sentences subjected to three kinds of distortion (additive noise, peak clipping, and center clipping) with eight levels of degradation for each distortion type. The kernel approach gives a significant improvement in preference predictions of hearing-impaired subjects by individualizing the learning process. A significant difference is shown between normal-hearing and hearin...
Adaptive feedback cancellers in hearing aids can produce unpleasant sounding distortion artefacts (e...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
The parameters of noise-reduction algorithms in consumer products, such as hearing aids, are often p...
A probabilistic kernel approach to pairwise preference learning based on Gaussian processes is appli...
Contains fulltext : 72737.pdf (preprint version ) (Open Access)19 p
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
This study investigated a method to adjust hearing-aid gain by use of a machine-learning algorithm t...
This thesis studied the relationship between preference judgments and discrimination scores obtained...
Does a hearing-impaired individual\u27s speech reflect his hearing loss? To investigate this questio...
Speech perception in hearing-impaired listeners can be adversely affected by various factors includi...
Does a hearing-impaired individual\u27s speech reflect his hearing loss, and if it does, can the nat...
Preference as a motivational concept was considered as an organismic disposition and a model which c...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
Pure-tone audiometry still represents the main measure to characterize individual hearing loss and t...
Adaptive feedback cancellers in hearing aids can produce unpleasant sounding distortion artefacts (e...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
The parameters of noise-reduction algorithms in consumer products, such as hearing aids, are often p...
A probabilistic kernel approach to pairwise preference learning based on Gaussian processes is appli...
Contains fulltext : 72737.pdf (preprint version ) (Open Access)19 p
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
This study investigated a method to adjust hearing-aid gain by use of a machine-learning algorithm t...
This thesis studied the relationship between preference judgments and discrimination scores obtained...
Does a hearing-impaired individual\u27s speech reflect his hearing loss? To investigate this questio...
Speech perception in hearing-impaired listeners can be adversely affected by various factors includi...
Does a hearing-impaired individual\u27s speech reflect his hearing loss, and if it does, can the nat...
Preference as a motivational concept was considered as an organismic disposition and a model which c...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
Pure-tone audiometry still represents the main measure to characterize individual hearing loss and t...
Adaptive feedback cancellers in hearing aids can produce unpleasant sounding distortion artefacts (e...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
The parameters of noise-reduction algorithms in consumer products, such as hearing aids, are often p...