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Super-Resolution through StyleGAN Regularized Latent Search: A Realism-Fidelity Trade-off

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arxiv 2311.16923 v1 pith:FBIYWR7A submitted 2023-11-28 cs.CV

Super-Resolution through StyleGAN Regularized Latent Search: A Realism-Fidelity Trade-off

classification cs.CV
keywords imageimageslatentsearchsuper-resolutionapproachcodefactors
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper addresses the problem of super-resolution: constructing a highly resolved (HR) image from a low resolved (LR) one. Recent unsupervised approaches search the latent space of a StyleGAN pre-trained on HR images, for the image that best downscales to the input LR image. However, they tend to produce out-of-domain images and fail to accurately reconstruct HR images that are far from the original domain. Our contribution is twofold. Firstly, we introduce a new regularizer to constrain the search in the latent space, ensuring that the inverted code lies in the original image manifold. Secondly, we further enhanced the reconstruction through expanding the image prior around the optimal latent code. Our results show that the proposed approach recovers realistic high-quality images for large magnification factors. Furthermore, for low magnification factors, it can still reconstruct details that the generator could not have produced otherwise. Altogether, our approach achieves a good trade-off between fidelity and realism for the super-resolution task.

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