Super-Resolution of Real-World Faces
- URL: http://arxiv.org/abs/2011.02427v2
- Date: Tue, 8 Feb 2022 03:56:30 GMT
- Title: Super-Resolution of Real-World Faces
- Authors: Saurabh Goswami, Aakanksha, Rajagopalan A. N
- Abstract summary: Real low-resolution (LR) face images contain degradations which are too varied and complex to be captured by known downsampling kernels.
In this paper, we propose a two module super-resolution network where the feature extractor module extracts robust features from the LR image.
We train a degradation GAN to convert bicubically downsampled clean images to real degraded images, and interpolate between the obtained degraded LR image and its clean LR counterpart.
- Score: 3.4376560669160394
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Real low-resolution (LR) face images contain degradations which are too
varied and complex to be captured by known downsampling kernels and
signal-independent noises. So, in order to successfully super-resolve real
faces, a method needs to be robust to a wide range of noise, blur, compression
artifacts etc. Some of the recent works attempt to model these degradations
from a dataset of real images using a Generative Adversarial Network (GAN).
They generate synthetically degraded LR images and use them with corresponding
real high-resolution(HR) image to train a super-resolution (SR) network using a
combination of a pixel-wise loss and an adversarial loss. In this paper, we
propose a two module super-resolution network where the feature extractor
module extracts robust features from the LR image, and the SR module generates
an HR estimate using only these robust features. We train a degradation GAN to
convert bicubically downsampled clean images to real degraded images, and
interpolate between the obtained degraded LR image and its clean LR
counterpart. This interpolated LR image is then used along with it's
corresponding HR counterpart to train the super-resolution network from end to
end. Entropy Regularized Wasserstein Divergence is used to force the encoded
features learnt from the clean and degraded images to closely resemble those
extracted from the interpolated image to ensure robustness.
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