NORESQA: A Framework for Speech Quality Assessment using Non-Matching References
Pranay Manocha, Buye Xu, Anurag Kumar

TL;DR
This paper introduces NORESQA, a novel speech quality assessment framework that predicts relative quality scores without needing matching references or subjective data, aligning well with human perception and aiding downstream tasks.
Contribution
The paper presents a new non-matching reference framework for speech quality assessment that does not require subjective data and correlates well with human scores.
Findings
Scores correlate with subjective MOS
Competitive with DNSMOS
Useful for speech enhancement
Abstract
The perceptual task of speech quality assessment (SQA) is a challenging task for machines to do. Objective SQA methods that rely on the availability of the corresponding clean reference have been the primary go-to approaches for SQA. Clearly, these methods fail in real-world scenarios where the ground truth clean references are not available. In recent years, non-intrusive methods that train neural networks to predict ratings or scores have attracted much attention, but they suffer from several shortcomings such as lack of robustness, reliance on labeled data for training and so on. In this work, we propose a new direction for speech quality assessment. Inspired by human's innate ability to compare and assess the quality of speech signals even when they have non-matching contents, we propose a novel framework that predicts a subjective relative quality score for the given speech signal…
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Code & Models
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Taxonomy
TopicsSpeech and Audio Processing · Music and Audio Processing · Speech Recognition and Synthesis
