Intelligibility, a vital concern of a speech transmission channel, is quantified using speech transmission index (STI). The standard STI method relies on noisy test signals and thus hinders in-use measurements. Alternative methods to accurately estimate the STI from naturally occurring speech signals have been developed over the past few years using artificial neural networks. This paper presents a new machine learning based method to more accurately estimate the STI from arbitrary running speech using a purpose design signal pre-processor and support vector machines. When compared with the neural network approaches to the problem, the new method exhibits improved estimation accuracy and generalisation capability to arbitrary speech, provid...
The Speech Transmission Index (STI) is used to predict speech intelligibility in noise and reverbera...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Speech intelligibility can be degraded due to multiple factors, such as noisy environments, technica...
Speech Transmission Index (STI) is an important objective parameter concerning speech intelligibilit...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Several measurement techniques exist to quantify the intelligibility of a speech transmission chain....
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
A major issue in evaluating speech enhancement and hearing compensation algorithms is to come up wit...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
Nearly all types of military speech communication involve the use of so-called (narrow band) voice c...
Objective assessment of speech intelligibility is a complex task that requires taking into account a...
While the Speech Transmission Index ~STI! is widely applied for prediction of speech intelligibility...
Quantitative room acoustics over a century has accumulated a knowledge base centred around objective...
Performance Intensity functions can be used to provide additional information over measurement of sp...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
The Speech Transmission Index (STI) is used to predict speech intelligibility in noise and reverbera...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Speech intelligibility can be degraded due to multiple factors, such as noisy environments, technica...
Speech Transmission Index (STI) is an important objective parameter concerning speech intelligibilit...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Several measurement techniques exist to quantify the intelligibility of a speech transmission chain....
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
A major issue in evaluating speech enhancement and hearing compensation algorithms is to come up wit...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
Nearly all types of military speech communication involve the use of so-called (narrow band) voice c...
Objective assessment of speech intelligibility is a complex task that requires taking into account a...
While the Speech Transmission Index ~STI! is widely applied for prediction of speech intelligibility...
Quantitative room acoustics over a century has accumulated a knowledge base centred around objective...
Performance Intensity functions can be used to provide additional information over measurement of sp...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
The Speech Transmission Index (STI) is used to predict speech intelligibility in noise and reverbera...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Speech intelligibility can be degraded due to multiple factors, such as noisy environments, technica...