Machine learning approaches to hearing loss estimation can significantly reduce the number of required experiments, but require a good probabilistic hearing loss model. In this work we introduce such a model, obtained by fitting a mixture of Gaussian processes to a vast database containing audiometric records of around 85k people. The learned model can be used as a prior distribution for hearing loss, and can be conditioned on age and gender. Evaluation on a test set shows that our model outperforms an optimized Gaussian process model in terms of predictive accuracy
The earplug development followed by ALPINE, a hearing protection company is a trial and error method...
Effective noise reduction and speech enhancement algorithms have great potential to enhance lives of...
The present invention relates to a new method for effective estimation of signal processing paramete...
Machine learning approaches to hearing loss estimation can significantly reduce the number of requir...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
Hearing Aid (HA) algorithms need to be tuned (“fitted”) to match the impairment of each specific pat...
A hearing aid includes: an input transducer for provision of an audio signal in response to sound; a...
A hearing aid is provided, comprising an input transducer for provision of an audio signal in respon...
Hearing healthcare professionals rely on the audiograms produced through pure tone audiometry, among...
Hearing loss afflicts as many as 10 % of our population. Fortunately, tech-nologies designed to alle...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
Hearing loss affects hundreds of millions of people all over the world, leading to several types of ...
PhDAudio signals are characterised and perceived based on how their spectral make-up changes with ti...
The earplug development followed by ALPINE, a hearing protection company is a trial and error method...
Effective noise reduction and speech enhancement algorithms have great potential to enhance lives of...
The present invention relates to a new method for effective estimation of signal processing paramete...
Machine learning approaches to hearing loss estimation can significantly reduce the number of requir...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
Hearing Aid (HA) algorithms need to be tuned (“fitted”) to match the impairment of each specific pat...
A hearing aid includes: an input transducer for provision of an audio signal in response to sound; a...
A hearing aid is provided, comprising an input transducer for provision of an audio signal in respon...
Hearing healthcare professionals rely on the audiograms produced through pure tone audiometry, among...
Hearing loss afflicts as many as 10 % of our population. Fortunately, tech-nologies designed to alle...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
Hearing loss affects hundreds of millions of people all over the world, leading to several types of ...
PhDAudio signals are characterised and perceived based on how their spectral make-up changes with ti...
The earplug development followed by ALPINE, a hearing protection company is a trial and error method...
Effective noise reduction and speech enhancement algorithms have great potential to enhance lives of...
The present invention relates to a new method for effective estimation of signal processing paramete...