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Fusion of Self-supervised Learned Models for MOS Prediction

Zhengdong Yang, Wangjin Zhou, Chenhui Chu, Sheng Li, Raj Dabre, Raphaël Rubino, Yi Zhao

2022Interspeech 202227 citationsDOI

Abstract

We participated in the mean opinion score (MOS) prediction challenge, 2022.This challenge aims to predict MOS scores of synthetic speech on two tracks, the main track and a more challenging sub-track: out-of-domain (OOD).To improve the accuracy of the predicted scores, we have explored several model fusion-related strategies and proposed a fused framework in which seven pretrained self-supervised learned (SSL) models have been engaged.These pretrained SSL models are derived from three ASR frameworks, including Wav2Vec, Hubert, and WavLM.For the OOD track, we followed the 7 SSL models selected on the main track and adopted a semi-supervised learning method to exploit the unlabeled data.According to the official analysis results, our system has achieved 1 st rank in 6 out of 16 metrics and is one of the top 3 systems for 13 out of 16 metrics.Specifically, we have achieved the highest LCC, SRCC, and KTAU scores at the system level on main track, as well as the best performance on the LCC, SRCC, and KTAU evaluation metrics at the utterance level on OOD track.Compared with the basic SSL models, the prediction accuracy of the fused system has been largely improved, especially on OOD sub-track.

Topics & Concepts

Computer scienceFusionArtificial intelligenceMachine learningPhilosophyLinguisticsSpeech Recognition and SynthesisNatural Language Processing TechniquesPhonetics and Phonology Research
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