This paper demonstrates the potential of theoretically motivated learning methods in solving the problem of non-intrusive quality estimation for which the state-of-the-art is represented by ITU-T P.563 standard. To construct our estimator, we adopt the speech features from P.563, while we use a different mapping of features to form quality estimates. In contrast to P.563 which assumes distortion-classes to divide the feature space, our approach divides the feature space based on a clustering which is learned from the data using Bayesian inference. Despite using weaker modeling assumptions, we are still able to achieve comparable accuracy on predicting mean-opinion-scores with P.563. Our work suggests Bayesian model-evidence as an alternativ...
This copy of the thesis has been supplied on condition that anyone who consults it is understood to ...
The acoustic environment can degrade speech quality during communication (e.g., video call, remote p...
Many techniques in speech processing require inference based on observations that are of- ten noisy,...
This paper demonstrates the potential of theoretically motivated learning methods in solving the pro...
A Bayesian approach to non-intrusive quality assessment of narrow-band speech is presented. The spee...
The development of objective speech quality measures generally involves fitting a model to subjectiv...
In this thesis, we propose the use of Gaussian mixture models (GMMs) as simple, yet eective predicto...
Abstract—An algorithm for nonintrusive speech quality esti-mation based on Gaussian mixture models (...
Traditional n-gram language models are widely used in state-of-the-art large vocabulary speech recog...
In this paper, we propose a Bayesian minimum mean squared error approach for the joint estimation of...
peer-reviewedThis article proposes a new output-based method for non-intrusive assessment of speech ...
Speech is the most important communication modality for human interaction. Automatic speech recognit...
Subjective speech quality assessment has traditionally been carried out in laboratory environments u...
The portability of modern voice processing devices allows them to be used in environments where back...
This copy of the thesis has been supplied on condition that anyone who consults it is understood to ...
The acoustic environment can degrade speech quality during communication (e.g., video call, remote p...
Many techniques in speech processing require inference based on observations that are of- ten noisy,...
This paper demonstrates the potential of theoretically motivated learning methods in solving the pro...
A Bayesian approach to non-intrusive quality assessment of narrow-band speech is presented. The spee...
The development of objective speech quality measures generally involves fitting a model to subjectiv...
In this thesis, we propose the use of Gaussian mixture models (GMMs) as simple, yet eective predicto...
Abstract—An algorithm for nonintrusive speech quality esti-mation based on Gaussian mixture models (...
Traditional n-gram language models are widely used in state-of-the-art large vocabulary speech recog...
In this paper, we propose a Bayesian minimum mean squared error approach for the joint estimation of...
peer-reviewedThis article proposes a new output-based method for non-intrusive assessment of speech ...
Speech is the most important communication modality for human interaction. Automatic speech recognit...
Subjective speech quality assessment has traditionally been carried out in laboratory environments u...
The portability of modern voice processing devices allows them to be used in environments where back...
This copy of the thesis has been supplied on condition that anyone who consults it is understood to ...
The acoustic environment can degrade speech quality during communication (e.g., video call, remote p...
Many techniques in speech processing require inference based on observations that are of- ten noisy,...