Title :
Predicting Preference Judgments of Individual Normal and Hearing-Impaired Listeners With Gaussian Processes
Author :
Groot, Perry ; Heskes, Tom ; Dijkstra, Tjeerd M H ; Kates, James M.
Author_Institution :
Machine Learning Group, Radboud Univ., Nijmegen, Netherlands
fDate :
5/1/2011 12:00:00 AM
Abstract :
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 hearing-impaired subjects, because of nonlinearities in the perception of hearing-impaired subjects. In particular, hearing-impaired subjects have significant nonlinear preference judgments when making pairwise comparisons between peak clipped sentences with different clipping thresholds. The probabilistic kernel approach is shown to be robust when generalizing over distortions and over subjects.
Keywords :
Gaussian processes; audio signal processing; hearing aids; Gaussian process; clipping threshold; hearing-impaired listeners; nonlinear preference judgment; pairwise comparison; pairwise preference learning process; peak clipped sentence; probabilistic kernel approach; sound quality degradation mechanism; Bayes procedures; Gaussian process (GP); pairwise comparisons; subjective quality measures;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2010.2064311