Virginia Tech® home

Learning to Fuse Music Genres with Generative Adversarial Dual Learning

Zhiqian Chen, Yen-Cheng Lu

Abstract

FusionGAN is a novel genre fusion framework for music generation that integrates the strengths of generative adversarial networks and dual learning. In particular, the proposed method offers a dual learning extension that can effectively integrate the styles of the given domains. To efficiently quantify the difference among diverse domains and avoid the vanishing gradient issue, FusionGAN provides a Wasserstein based metric to approximate the distance between the target domain and the existing domains. Adopting the Wasserstein distance, a new domain is created by combining the patterns of the existing domains using adversarial learning. Experimental results on public music datasets demonstrated that our approach could effectively merge two genres.

Publication Details

Date of publication: December 17, 2017

Conference: IEEE International Conference on Data Mining

Page number(s): 817-822

Volume:

Issue Number:

Publication Note: Zhiqian Chen, Chih-Wei Wu, Yen-Cheng Lu, Alexander Lerch, Chang-Tien Lu: Learning to Fuse Music Genres with Generative Adversarial Dual Learning. ICDM 2017: 817-822