Sketch Your Own GAN
- URL: http://arxiv.org/abs/2108.02774v1
- Date: Thu, 5 Aug 2021 17:59:42 GMT
- Title: Sketch Your Own GAN
- Authors: Sheng-Yu Wang, David Bau, Jun-Yan Zhu
- Abstract summary: We present a method, GAN Sketching, for rewriting GANs with one or more sketches.
We encourage the model's output to match the user sketches through a cross-domain adversarial loss.
Experiments have shown that our method can mold GANs to match shapes and poses specified by sketches while maintaining realism and diversity.
- Score: 36.77647431087615
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Can a user create a deep generative model by sketching a single example?
Traditionally, creating a GAN model has required the collection of a
large-scale dataset of exemplars and specialized knowledge in deep learning. In
contrast, sketching is possibly the most universally accessible way to convey a
visual concept. In this work, we present a method, GAN Sketching, for rewriting
GANs with one or more sketches, to make GANs training easier for novice users.
In particular, we change the weights of an original GAN model according to user
sketches. We encourage the model's output to match the user sketches through a
cross-domain adversarial loss. Furthermore, we explore different regularization
methods to preserve the original model's diversity and image quality.
Experiments have shown that our method can mold GANs to match shapes and poses
specified by sketches while maintaining realism and diversity. Finally, we
demonstrate a few applications of the resulting GAN, including latent space
interpolation and image editing.
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