Speech quality assessment has been a critical component in many voice communication related applications such as telephony and online conferencing. Traditional intrusive speech quality assessment requires the clean reference of the degraded utterance to provide an accurate quality measurement. This requirement limits the usability of these methods in real-world scenarios. On the other hand, non-intrusive subjective measurement is the ``golden standard" in evaluating speech quality as human listeners can intrinsically evaluate the quality of any degraded speech with ease. In this paper, we propose a novel end-to-end model structure called Convolutional Context-Aware Transformer (CCAT) network to predict the mean opinion score (MOS) of human ...
While human evaluation is the most reliable metric for evaluating speech generation systems, it is g...
In the past few years, objective quality assessment models have become increasingly used for assessi...
This paper demonstrates the potential of theoretically motivated learning methods in solving the pro...
In this study, we propose a cross-domain multi-objective speech assessment model called MOSA-Net, wh...
peer-reviewedThis article proposes a new output-based method for non-intrusive assessment of speech ...
peer-reviewedThis paper describes a newly developed output-based method for non-intrusive evaluation...
In the field of speech processing, voice quality evaluation is one of the important techniques, and ...
Many signal processing algorithms have been proposed to improve the quality of speech recorded in th...
The acoustic environment can degrade speech quality during communication (e.g., video call, remote p...
Estimating the quality of speech without the use of a clean reference signal is a challenging proble...
Subjective tests are the gold standard for evaluating speech quality and intelligibility, but they a...
Merged with duplicate record 10026.1/878 on 03.01.2017 by CS (TIS). Merged with duplicate record 100...
We aim to characterize how different speakers contribute to the perceived output quality of multi-sp...
Without the need for a clean reference, non-intrusive speech assessment methods have caught great at...
Instrumental speech quality prediction is a long-studied field in which many models have been presen...
While human evaluation is the most reliable metric for evaluating speech generation systems, it is g...
In the past few years, objective quality assessment models have become increasingly used for assessi...
This paper demonstrates the potential of theoretically motivated learning methods in solving the pro...
In this study, we propose a cross-domain multi-objective speech assessment model called MOSA-Net, wh...
peer-reviewedThis article proposes a new output-based method for non-intrusive assessment of speech ...
peer-reviewedThis paper describes a newly developed output-based method for non-intrusive evaluation...
In the field of speech processing, voice quality evaluation is one of the important techniques, and ...
Many signal processing algorithms have been proposed to improve the quality of speech recorded in th...
The acoustic environment can degrade speech quality during communication (e.g., video call, remote p...
Estimating the quality of speech without the use of a clean reference signal is a challenging proble...
Subjective tests are the gold standard for evaluating speech quality and intelligibility, but they a...
Merged with duplicate record 10026.1/878 on 03.01.2017 by CS (TIS). Merged with duplicate record 100...
We aim to characterize how different speakers contribute to the perceived output quality of multi-sp...
Without the need for a clean reference, non-intrusive speech assessment methods have caught great at...
Instrumental speech quality prediction is a long-studied field in which many models have been presen...
While human evaluation is the most reliable metric for evaluating speech generation systems, it is g...
In the past few years, objective quality assessment models have become increasingly used for assessi...
This paper demonstrates the potential of theoretically motivated learning methods in solving the pro...