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Learning to Fuse Music Genres with Generative Adversarial Dual Learning

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arxiv 1712.01456 v1 pith:P6ZZ5EYI submitted 2017-12-05 cs.LG cs.AIcs.MMcs.SDeess.AS

Learning to Fuse Music Genres with Generative Adversarial Dual Learning

classification cs.LG cs.AIcs.MMcs.SDeess.AS
keywords learningdomainsadversarialdualmusicdistancedomaineffectively
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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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.

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