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Automatic coded audio quality predictors are typically designed for evaluating single channels without considering any spatial aspects. With InSE-NET [1], we demonstrated mimicking a state-of-the-art coded audio quality metric (ViSQOL-v3 [2]) with deep neural networks (DNN) and subsequently improving it – completely with programmatically generated data. In this study, we take steps towards building a DNN-based coded stereo audio quality predictor and we propose an extension of the InSE-NET for handling stereo signals. The design considers stereo/spatial aspects by conditioning the model with left, right, mid, and side channels; and we name our model Stereo InSE-NET. By transferring selected weights from the pre-trained mono InSE-NET and retraining with both real and synthetically augmented listening tests, we demonstrate a significant improvement of 12% and 6% of Pearson’s and Spearman’s Rank correlation coefficient, respectively, over the latest ViSQOL-v3 [3].
Author (s): Biswas, Arijit;
Jiang, Guanxin;
Affiliation:
Dolby Germany GmbH; Dolby Germany GmbH
(See document for exact affiliation information.)
AES Convention: 153
Paper Number:21
Publication Date:
2022-10-06
Session subject:
Applications in Audio
DOI:
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Biswas, Arijit; Jiang, Guanxin; 2022; Stereo InSE-NET: Stereo Audio Quality Predictor Transfer Learned from Mono InSE-NET [PDF]; Dolby Germany GmbH; Dolby Germany GmbH; Paper 21; Available from: https://aes.org/publications/elibrary-page/?id=21902
Biswas, Arijit; Jiang, Guanxin; Stereo InSE-NET: Stereo Audio Quality Predictor Transfer Learned from Mono InSE-NET [PDF]; Dolby Germany GmbH; Dolby Germany GmbH; Paper 21; 2022 Available: https://aes.org/publications/elibrary-page/?id=21902
@inproceedings{Biswas2022stereo,
title={{Stereo InSE-NET: Stereo Audio Quality Predictor Transfer Learned from Mono InSE-NET}},
author={Biswas, Arijit and Jiang, Guanxin},
year={2022},
month={oct},
booktitle={Journal of the Audio Engineering Society},
publisher={Express Paper 21; AES Convention 153; October 2022},
number={21},
organization={AES},
}
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