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Cross-Lingual Text-to-Speech Using Multi-Task Learning and Speaker Classifier Joint Training

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arxiv 2201.08124 v1 pith:K2FXZZUQ submitted 2022-01-20 cs.SD cs.AIeess.AS

Cross-Lingual Text-to-Speech Using Multi-Task Learning and Speaker Classifier Joint Training

classification cs.SD cs.AIeess.AS
keywords speakertrainingcross-lingualjointsimilarityclassifierlearningmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In cross-lingual speech synthesis, the speech in various languages can be synthesized for a monoglot speaker. Normally, only the data of monoglot speakers are available for model training, thus the speaker similarity is relatively low between the synthesized cross-lingual speech and the native language recordings. Based on the multilingual transformer text-to-speech model, this paper studies a multi-task learning framework to improve the cross-lingual speaker similarity. To further improve the speaker similarity, joint training with a speaker classifier is proposed. Here, a scheme similar to parallel scheduled sampling is proposed to train the transformer model efficiently to avoid breaking the parallel training mechanism when introducing joint training. By using multi-task learning and speaker classifier joint training, in subjective and objective evaluations, the cross-lingual speaker similarity can be consistently improved for both the seen and unseen speakers in the training set.

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