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Probing TryOnGAN

TryOnGAN is a recent virtual try-on approach, which generates highly realistic images and outperforms most previous approaches. In this article, we reproduce the TryOnGAN implementation and probe it along diverse angles: impact of transfer learning, variants of conditioning image generation with poses and properties of latent space interpolation. Some of these facets have never been explored in literature earlier. We find that transfer helps training initially but gains are lost as models train longer and pose conditioning via concatenation performs better. The latent space self-disentangles the pose and the style features and enables style transfer across poses. Our code and models are available in open source.

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Related contextCo-authorshipAuthorshipAuthorshipTopic signalTopic signalWProbing TryOnGANpreprint / 2022ASaurabh KumarResearcherANishant SinhaResearcherTMachine Learning49008 worksTComputer Vision30606 works
PaperSignal 104 links

Probing TryOnGAN

preprint / 2022

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