Machine-learning based approaches to speech enhancement have recently shown great promise for improving speech intelligibility for hearing-impaired listeners. Here, the performance of three machine-learning algorithms and one classical algorithm, Wiener filtering, was compared. Two algorithms based on neural networks were examined, one using a previously reported feature set and one using a feature set derived from an auditory model. The third machine-learning approach was a dictionary-based sparse-coding algorithm. Speech intelligibility and quality scores were obtained for participants with mild-to-moderate hearing impairments listening to sentences in speech-shaped noise and multi-talker babble following processing with the algorithms. I...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
OBJECTIVE: A hearing aid's noise reduction algorithm cannot infer to which speaker the user intends ...
Speech understanding in adverse acoustic environments is still a major problem for users of hearingi...
Dataset supporting 'Auditory inspired machine learning techniques can improve speech intelligibi...
Speech understanding in noisy environments is still one of the major challenges for cochlear implant...
Although there are numerous single-channel noise reduction strategies to improve speech perception i...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Deep neural networks have been applied for speech enhancements efficiently. However, for large varia...
Speech understanding in noisy environments is still one of the major challenges for cochlear implant...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
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...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
OBJECTIVE: A hearing aid's noise reduction algorithm cannot infer to which speaker the user intends ...
Speech understanding in adverse acoustic environments is still a major problem for users of hearingi...
Dataset supporting 'Auditory inspired machine learning techniques can improve speech intelligibi...
Speech understanding in noisy environments is still one of the major challenges for cochlear implant...
Although there are numerous single-channel noise reduction strategies to improve speech perception i...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Deep neural networks have been applied for speech enhancements efficiently. However, for large varia...
Speech understanding in noisy environments is still one of the major challenges for cochlear implant...
Objective speech intelligibility metrics are used to reduce the need for time consuming listening te...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
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...
In recent years, rapid advances in speech technology have been made possible by machine learning cha...
The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to...
OBJECTIVE: A hearing aid's noise reduction algorithm cannot infer to which speaker the user intends ...