TL;DR
This paper introduces a novel iterative super-resolution network (ISRN) that employs an iterative optimization approach, feature normalization, and residual-in-residual structures to improve image super-resolution performance with fewer parameters.
Contribution
It presents a new iterative optimization-based super-resolution network with feature normalization and residual-in-residual architecture, outperforming existing methods on multiple degradation models.
Findings
Achieves better structural recovery and competitive PSNR/SSIM with fewer parameters.
Performs well on bicubic, blur-downscale, and downscale-noise degradation models.
Outperforms existing methods in real-world super-resolution scenarios.
Abstract
Single image super-resolution (SISR), as a traditional ill-conditioned inverse problem, has been greatly revitalized by the recent development of convolutional neural networks (CNN). These CNN-based methods generally map a low-resolution image to its corresponding high-resolution version with sophisticated network structures and loss functions, showing impressive performances. This paper provides a new insight on conventional SISR algorithm, and proposes a substantially different approach relying on the iterative optimization. A novel iterative super-resolution network (ISRN) is proposed on top of the iterative optimization. We first analyze the observation model of image SR problem, inspiring a feasible solution by mimicking and fusing each iteration in a more general and efficient manner. Considering the drawbacks of batch normalization, we propose a feature normalization (F-Norm, FN)…
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