Singing Style Transfer Using Cycle-Consistent Boundary Equilibrium Generative Adversarial Networks

07/06/2018
by   Cheng-Wei Wu, et al.
4

Can we make a famous rap singer like Eminem sing whatever our favorite song? Singing style transfer attempts to make this possible, by replacing the vocal of a song from the source singer to the target singer. This paper presents a method that learns from unpaired data for singing style transfer using generative adversarial networks.

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