TL;DR
This paper introduces a novel CNN cascade model for single image super-resolution that effectively handles diverse and large non-Gaussian blurs, outperforming state-of-the-art methods in accuracy and efficiency.
Contribution
It proposes a domain-knowledge constrained CNN cascade architecture for SISR, addressing a wider range of degradations including large non-Gaussian blurs, which is a novel approach.
Findings
Outperforms SOTA models on three SISR datasets.
Manages a wider set of deformations than existing methods.
Improves computational efficiency over closest competitors.
Abstract
Single Image Super-Resolution (SISR) is one of the low-level computer vision problems that has received increased attention in the last few years. Current approaches are primarily based on harnessing the power of deep learning models and optimization techniques to reverse the degradation model. Owing to its hardness, isotropic blurring or Gaussians with small anisotropic deformations have been mainly considered. Here, we widen this scenario by including large non-Gaussian blurs that arise in real camera movements. Our approach leverages the degradation model and proposes a new formulation of the Convolutional Neural Network (CNN) cascade model, where each network sub-module is constrained to solve a specific degradation: deblurring or upsampling. A new densely connected CNN-architecture is proposed where the output of each sub-module is restricted using some external knowledge to focus…
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