34 research outputs found
Refined WaveNet Vocoder for Variational Autoencoder Based Voice Conversion
This paper presents a refinement framework of WaveNet vocoders for
variational autoencoder (VAE) based voice conversion (VC), which reduces the
quality distortion caused by the mismatch between the training data and testing
data. Conventional WaveNet vocoders are trained with natural acoustic features
but conditioned on the converted features in the conversion stage for VC, and
such a mismatch often causes significant quality and similarity degradation. In
this work, we take advantage of the particular structure of VAEs to refine
WaveNet vocoders with the self-reconstructed features generated by VAE, which
are of similar characteristics with the converted features while having the
same temporal structure with the target natural features. We analyze these
features and show that the self-reconstructed features are similar to the
converted features. Objective and subjective experimental results demonstrate
the effectiveness of our proposed framework.Comment: 5 pages, 7 figures, 1 table. Accepted to EUSIPCO 201