Improving the user's hearing ability to understand speech in noisy environments is critical to the development of hearing aid (HA) devices. For this, it is important to derive a metric that can fairly predict speech intelligibility for HA users. A straightforward approach is to conduct a subjective listening test and use the test results as an evaluation metric. However, conducting large-scale listening tests is time-consuming and expensive. Therefore, several evaluation metrics were derived as surrogates for subjective listening test results. In this study, we propose a multi-branched speech intelligibility prediction model (MBI-Net), for predicting the subjective intelligibility scores of HA users. MBI-Net consists of two branches of mode...
Several filterbank-based metrics have been proposed to predict speech intelligibility (SI). However,...
Without the need for a clean reference, non-intrusive speech assessment methods have caught great at...
Understanding speech is crucial for human communication. Therefore, speech audiometry plays an impor...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Recently, deep learning (DL)-based non-intrusive speech assessment models have attracted great atten...
According to a study by Action on Hearing Loss (2017a), 80% of people with hearing loss have difficu...
Speech enhancement was, is, and will be the key technology for digital speech transmission. When dev...
The current study presents an update and extensive evaluation of a previously introduced speech-inte...
Full text: Since the ultimative goal of hearing-aid development is the (subjective) judgment of the ...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Cochlear implants (CI) can achieve excellent hearing outcomes for people with severe or profound hea...
This article presents an overview of 12 existing objective speech quality and intelligibility predic...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
A new objective measurement system to predict speech intelligibility in binaural listening condition...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...
Several filterbank-based metrics have been proposed to predict speech intelligibility (SI). However,...
Without the need for a clean reference, non-intrusive speech assessment methods have caught great at...
Understanding speech is crucial for human communication. Therefore, speech audiometry plays an impor...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Recently, deep learning (DL)-based non-intrusive speech assessment models have attracted great atten...
According to a study by Action on Hearing Loss (2017a), 80% of people with hearing loss have difficu...
Speech enhancement was, is, and will be the key technology for digital speech transmission. When dev...
The current study presents an update and extensive evaluation of a previously introduced speech-inte...
Full text: Since the ultimative goal of hearing-aid development is the (subjective) judgment of the ...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Cochlear implants (CI) can achieve excellent hearing outcomes for people with severe or profound hea...
This article presents an overview of 12 existing objective speech quality and intelligibility predic...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
A new objective measurement system to predict speech intelligibility in binaural listening condition...
Machine-learning based approaches to speech enhancement have recently shown great promise for improv...
Several filterbank-based metrics have been proposed to predict speech intelligibility (SI). However,...
Without the need for a clean reference, non-intrusive speech assessment methods have caught great at...
Understanding speech is crucial for human communication. Therefore, speech audiometry plays an impor...