A neural network based model is developed to quantify speech intelligibility by blind-estimating speech transmission index, an objective rating index for speech intelligibility of transmission channels, from transmitted speech signals without resort to knowledge of original speech signals. It consists of a Hilbert transform processor for speech envelope detection, a Welch average periodogram algorithm for envelope spectrum estimation, a principal components analysis (PCA) network for speech feature extraction and a multi-layer back-propagation network for non-linear mapping and case generalisation. The developed model circumvents the use of artificial test signals by exploiting naturally occurring speech signals as probe stimuli, reduces me...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
Speech intelligibility is currently measured by scoring how well a person can identify a speech sign...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
A hybrid neural network model is proposed to determine the speech transmission index of a transmissi...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
A major issue in evaluating speech enhancement and hearing compensation algorithms is to come up wit...
Speech signal conveys several kinds of information such as a message, speaker identity, emotional st...
Speech coding algorithms are developed and optimised to satisfy many applications ’ specific require...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
Computational speech segregation attempts to automatically separate speech from noise. This is chall...
Intelligibility, a vital concern of a speech transmission channel, is quantified using speech transm...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
Several filterbank-based metrics have been proposed to predict speech intelligibility (SI). However,...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
Speech intelligibility is currently measured by scoring how well a person can identify a speech sign...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Current methods of speech intelligibility estimation rely on the subjective judgements of trained li...
A hybrid neural network model is proposed to determine the speech transmission index of a transmissi...
This paper proposes neural models to predict Speech Intelligibility (SI),both by prediction of estab...
A major issue in evaluating speech enhancement and hearing compensation algorithms is to come up wit...
Speech signal conveys several kinds of information such as a message, speaker identity, emotional st...
Speech coding algorithms are developed and optimised to satisfy many applications ’ specific require...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
Computational speech segregation attempts to automatically separate speech from noise. This is chall...
Intelligibility, a vital concern of a speech transmission channel, is quantified using speech transm...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
Several filterbank-based metrics have been proposed to predict speech intelligibility (SI). However,...
In digital speech-communication systems like mobile phones, public address systems and hearing aids,...
Objective speech intelligibility measurement techniques like AI (Articulation Index) and AI based ST...
Speech intelligibility is currently measured by scoring how well a person can identify a speech sign...