ASSDMar 16, 2019

Non-intrusive speech quality assessment using neural networks

arXiv:1903.06908v1113 citations
Originality Incremental advance
AI Analysis

This work addresses speech quality assessment for multimedia and audio processing systems, offering incremental improvements over existing methods.

The paper tackled non-intrusive speech quality assessment by proposing neural network approaches for mean opinion score estimation, achieving a correlation of 0.87 and mean squared error of 0.15, outperforming existing instrumental measures.

Estimating the perceived quality of an audio signal is critical for many multimedia and audio processing systems. Providers strive to offer optimal and reliable services in order to increase the user quality of experience (QoE). In this work, we present an investigation of the applicability of neural networks for non-intrusive audio quality assessment. We propose three neural network-based approaches for mean opinion score (MOS) estimation. We compare our results to three instrumental measures: the perceptual evaluation of speech quality (PESQ), the ITU-T Recommendation P.563, and the speech-to-reverberation energy ratio. Our evaluation uses a speech dataset contaminated with convolutive and additive noise, labeled using a crowd-based QoE evaluation, evaluated with Pearson correlation with MOS labels, and mean-squared-error of the estimated MOS. Our proposed approaches outperform the aforementioned instrumental measures, with a fully connected deep neural network using Mel-frequency features providing the best correlation (0.87) and the lowest mean squared error (0.15)

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