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Recycle-GAN: Unsupervised Video Retargeting

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arxiv 1808.05174 v1 pith:33SXLPWE submitted 2018-08-15 cs.CV cs.GRcs.LG

Recycle-GAN: Unsupervised Video Retargeting

classification cs.CV cs.GRcs.LG
keywords approachcontentretargetingstylecolbertconstraintsdomaininformation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce a data-driven approach for unsupervised video retargeting that translates content from one domain to another while preserving the style native to a domain, i.e., if contents of John Oliver's speech were to be transferred to Stephen Colbert, then the generated content/speech should be in Stephen Colbert's style. Our approach combines both spatial and temporal information along with adversarial losses for content translation and style preservation. In this work, we first study the advantages of using spatiotemporal constraints over spatial constraints for effective retargeting. We then demonstrate the proposed approach for the problems where information in both space and time matters such as face-to-face translation, flower-to-flower, wind and cloud synthesis, sunrise and sunset.

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