“DynaGAN: Dynamic Few-shot Adaptation of GANs to Multiple Domains” by Kim, Kang, Kim, Baek and Cho – ACM SIGGRAPH HISTORY ARCHIVES

“DynaGAN: Dynamic Few-shot Adaptation of GANs to Multiple Domains” by Kim, Kang, Kim, Baek and Cho

  • 2022 SA Technical Papers_Kim_DynaGAN: Dynamic Few-shot Adaptation of GANs to Multiple Domains

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Title:

    DynaGAN: Dynamic Few-shot Adaptation of GANs to Multiple Domains

Session/Category Title:   Technical Papers Fast-Forward


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Abstract:


    Few-shot domain adaptation to multiple domains aims to learn a complex image distribution across multiple domains from a few training images. A naive solution here is to train a separate model for each domain using few-shot domain adaptation methods. Unfortunately, this approach mandates linearly-scaled computational resources both in memory and computation time and, more importantly, such separate models cannot exploit the shared knowledge between target domains. In this paper, we propose DynaGAN, a novel few-shot domain-adaptation method for multiple target domains. DynaGAN has an adaptation module, which is a hyper-network that dynamically adapts a pretrained GAN model into the multiple target domains. Hence, we can fully exploit the shared knowledge across target domains and avoid the linearly-scaled computational requirements. As it is still computationally challenging to adapt a large-size GAN model, we design our adaptation module to be lightweight using the rank-1 tensor decomposition. Lastly, we propose a contrastive-adaptation loss suitable for multi-domain few-shot adaptation. We validate the effectiveness of our method through extensive qualitative and quantitative evaluations.


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