Publication | Closed Access
Adversarially Trained Multi-Singer Sequence-to-Sequence Singing Synthesizer
20
Citations
21
References
2020
Year
MusicEngineeringMachine LearningSpeech RecognitionData ScienceRobust Speech RecognitionVoice RecognitionSinger ClassificationMultisinger FrameworkMusic GenerationHealth SciencesSpeech SynthesisSpeech OutputComputer ScienceDeep LearningSpeech CommunicationHigh QualityVoiceSpeech Processing
This paper presents a high quality singing synthesizer that is able to model a voice with limited available recordings.Based on the sequence-to-sequence singing model, we design a multisinger framework to leverage all the existing singing data of different singers.To attenuate the issue of musical score unbalance among singers, we incorporate an adversarial task of singer classification to make encoder output less singer dependent.Furthermore, we apply multiple random window discriminators (MRWDs) on the generated acoustic features to make the network be a GAN.Both objective and subjective evaluations indicate that the proposed synthesizer can generate higher quality singing voice than baseline (4.12 vs 3.53 in MOS).Especially, the articulation of high-pitched vowels is significantly enhanced.
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