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InQSS

swMATH ID: 42472
Software Authors: Yu-Wen Chen, Yu Tsao
Description: InQSS: a speech intelligibility and quality assessment model using a multi-task learning network. Speech intelligibility and quality assessment models are essential tools for researchers to evaluate and improve speech processing models. However, only a few studies have investigated multi-task models for intelligibility and quality assessment due to the limitations of available data. In this study, we released TMHINT-QI, the first Chinese speech dataset that records the quality and intelligibility scores of clean, noisy, and enhanced utterances. Then, we propose InQSS, a non-intrusive multi-task learning framework for intelligibility and quality assessment. We evaluated the InQSS on both the training-from-scratch and the pretrained models. The experimental results confirm the effectiveness of the InQSS framework. In addition, the resulting model can predict not only the intelligibility scores but also the quality scores of a speech signal.
Homepage: https://arxiv.org/abs/2111.02585
Source Code:  https://github.com/yuwchen/inqss
Dependencies: Python
Keywords: InQSS; sound; arXiv_cs.SD; Machine Learning; arXiv_cs.LG; Audio; Speech Processing; arXiv_eess.AS; intelligibility assessment; quality assessment; self-supervised learning; multi-task neural network
Related Software: Python; NISQA; MOSNet; ViSQOL; NORESQA; fairseq; Kymatio
Cited in: 0 Documents

Standard Articles

1 Publication describing the Software Year
InQSS: a speech intelligibility and quality assessment model using a multi-task learning network arXiv
Yu-Wen Chen, Yu Tsao
2022