Publication | Closed Access
Many-to-Many Voice Conversion Using Cycle-Consistent Variational Autoencoder with Multiple Decoders
12
Citations
24
References
2020
Year
Unknown Venue
EngineeringMachine LearningMultiple DecodersSpeech RecognitionNatural Language ProcessingPhoneticsParallel TrainingRobust Speech RecognitionVoice RecognitionMachine TranslationHealth SciencesSpeech SynthesisSpeech OutputDeep LearningText-to-speechSpeech CommunicationSound QualitiesVoiceMulti-speaker Speech RecognitionSpeech ProcessingSpeech InputCycle Consistency LossSpeech Perception
One of the obstacles in many-to-many voice conversion is the requirement of the parallel training data, which contain pairs of utterances with the same linguistic content spoken by different speakers.Since collecting such parallel data is a highly expensive task, many works attempted to use non-parallel training data for many-to-many voice conversion.One of such approaches is using the variational autoencoder (VAE).Though it can handle many-to-many voice conversion without the parallel training, the VAE based voice conversion methods suffer from low sound qualities of the converted speech.One of the major reasons is because the VAE learns only the selfreconstruction path.The conversion path is not trained at all.In this paper, we propose a cycle consistency loss for VAE to explicitly learn the conversion path.In addition, we propose to use multiple decoders to further improve the sound qualities of the conventional VAE based voice conversion methods.The effectiveness of the proposed method is validated using objective and the subjective evaluations.
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