Robust Unsupervised StyleGAN Image Restoration
- URL: http://arxiv.org/abs/2302.06733v2
- Date: Thu, 22 Jun 2023 14:44:26 GMT
- Title: Robust Unsupervised StyleGAN Image Restoration
- Authors: Yohan Poirier-Ginter and Jean-Fran\c{c}ois Lalonde
- Abstract summary: GAN-based image restoration inverts the generative process to repair images corrupted by known degradations.
We make StyleGAN image restoration robust, working across a wide range of degradation levels.
Our proposed approach relies on a 3-phase progressive latent space extension and a conservative robustness.
- Score: 5.33024001730262
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: GAN-based image restoration inverts the generative process to repair images
corrupted by known degradations. Existing unsupervised methods must be
carefully tuned for each task and degradation level. In this work, we make
StyleGAN image restoration robust: a single set of hyperparameters works across
a wide range of degradation levels. This makes it possible to handle
combinations of several degradations, without the need to retune. Our proposed
approach relies on a 3-phase progressive latent space extension and a
conservative optimizer, which avoids the need for any additional regularization
terms. Extensive experiments demonstrate robustness on inpainting, upsampling,
denoising, and deartifacting at varying degradations levels, outperforming
other StyleGAN-based inversion techniques. Our approach also favorably compares
to diffusion-based restoration by yielding much more realistic inversion
results. Code is available at https://lvsn.github.io/RobustUnsupervised/.
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