In recent years, rapid advances in speech technology have been made possible by machine learning challenges such as CHiME, REVERB, Blizzard, and Hurricane. In the Clarity project, the machine learning approach is applied to the problem of hearing aid processing of speech-in-noise, where current technology in enhancing the speech signal for the hearing aid wearer is often ineffective. The scenario is a (simulated) cuboid-shaped living room in which there is a single listener, a single target speaker and a single interferer, which is either a competing talker or domestic noise. All sources are static, the target is always within ±30° azimuth of the listener and at the same elevation, and the interferer is an omnidirectional point source at th...
Improving the user's hearing ability to understand speech in noisy environments is critical to the d...
[EN] The improvement of speech intelligibility in hearing aids is a traditional problem that still r...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
Software to support the Clarity Enhancement and Prediction Challenges. Python tools are provided for...
The improvement of speech intelligibility is a traditional problem which still remains open and unso...
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audio...
According to a study by Action on Hearing Loss (2017a), 80% of people with hearing loss have difficu...
OBJECTIVE: A hearing aid's noise reduction algorithm cannot infer to which speaker the user intends ...
Dataset supporting 'Auditory inspired machine learning techniques can improve speech intelligibi...
People with hearing impairment often have difficulties to understand speech in noisy environments. T...
Improving the user's hearing ability to understand speech in noisy environments is critical to the d...
[EN] The improvement of speech intelligibility in hearing aids is a traditional problem that still r...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
Software to support the Clarity Enhancement and Prediction Challenges. Python tools are provided for...
The improvement of speech intelligibility is a traditional problem which still remains open and unso...
Even before the COVID-19 pandemic, there was mounting interest in remote testing solutions for audio...
According to a study by Action on Hearing Loss (2017a), 80% of people with hearing loss have difficu...
OBJECTIVE: A hearing aid's noise reduction algorithm cannot infer to which speaker the user intends ...
Dataset supporting 'Auditory inspired machine learning techniques can improve speech intelligibi...
People with hearing impairment often have difficulties to understand speech in noisy environments. T...
Improving the user's hearing ability to understand speech in noisy environments is critical to the d...
[EN] The improvement of speech intelligibility in hearing aids is a traditional problem that still r...
Purpose: The aim of this study was to analyze the performance of multivariate machine learning (ML) ...