ConVoice: Real-Time Zero-Shot Voice Style Transfer with Convolutional Network
Reviewed by Pithpith:TXW7562Mopen to challenge →
classification
eess.AS
cs.SD
keywords
convolutionalnetworkspeakerconvoicemodelmodelsneuralpre-trained
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We propose a neural network for zero-shot voice conversion (VC) without any parallel or transcribed data. Our approach uses pre-trained models for automatic speech recognition (ASR) and speaker embedding, obtained from a speaker verification task. Our model is fully convolutional and non-autoregressive except for a small pre-trained recurrent neural network for speaker encoding. ConVoice can convert speech of any length without compromising quality due to its convolutional architecture. Our model has comparable quality to similar state-of-the-art models while being extremely fast.
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