Online personalization of hearing instruments refers to learning preferred tuning parameter values from user feedback through a control wheel (or remote control), during normal operation of the hearing aid. We perform hearing aid parameter steering by applying a linear map from acoustic features to tuning parameters.We formulate personalization of the steering parameters as the maximization of an expected utility function. A sparse Bayesian approach is then investigated for its suitability to find efficient feature representations. The feasibility of our approach is demonstrated in an application to online personalization of a noise reduction algorithm. A patient trial indicates that the acoustic features chosen for learning noise control a...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
Modern audio systems are typically equipped with several user-adjustable parameters unfamiliar to mo...
In this article we describe a user-driven adaptive method to control the sonic response of digital m...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
The present invention relates to a method for automatic adjustment of signal processing parameters i...
The parameters of noise-reduction algorithms in consumer products, such as hearing aids, are often p...
ABSTRACT We describe a Learning Volume Control (LVC) algorithm that learns the volume control operat...
The present invention relates to a new method for effective estimation of signal processing paramete...
We describe a Learning Volume Control (LVC) algorithm that learns the volume control operations of a...
One of the main complaints of hearing aid users is the difficulty of and need for frequent adjustmen...
Sound personalization is very beneficial, especially for users with impaired hearing. However, class...
Noisy environments, changes and variations in the volume of speech, and non-face-to-face conversatio...
Modern digital hearing aids require and offer a great level of personalization. Today, this persona...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
Modern audio systems are typically equipped with several user-adjustable parameters unfamiliar to mo...
In this article we describe a user-driven adaptive method to control the sonic response of digital m...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
The present invention relates to a method for automatic adjustment of signal processing parameters i...
The parameters of noise-reduction algorithms in consumer products, such as hearing aids, are often p...
ABSTRACT We describe a Learning Volume Control (LVC) algorithm that learns the volume control operat...
The present invention relates to a new method for effective estimation of signal processing paramete...
We describe a Learning Volume Control (LVC) algorithm that learns the volume control operations of a...
One of the main complaints of hearing aid users is the difficulty of and need for frequent adjustmen...
Sound personalization is very beneficial, especially for users with impaired hearing. However, class...
Noisy environments, changes and variations in the volume of speech, and non-face-to-face conversatio...
Modern digital hearing aids require and offer a great level of personalization. Today, this persona...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
Modern audio systems are typically equipped with several user-adjustable parameters unfamiliar to mo...
In this article we describe a user-driven adaptive method to control the sonic response of digital m...