Abstract
It is extremely important and necessary for low computing power or portable devices to design more lightweight algorithms for image super-resolution (SR). Recently, most SR methods have achieved outstanding performance by sacrificing computational cost and memory storage, or vice versa. To address this problem, we introduce a lightweight U-shaped residual network (URNet) for fast and accurate image SR. Specifically, we propose a more effective feature distillation pyramid residual group (FDPRG) to extract features from low-resolution images. The FDPRG can effectively reuse the learned features with dense shortcuts and capture multi-scale information with a cascaded feature pyramid block. Based on the U-shaped structure, we utilize a step-by-step fusion strategy to improve the performance of feature fusion of different blocks. This strategy is different from the general SR methods which only use a single Concat operation to fuse the features of all basic blocks. Moreover, a lightweight asymmetric residual non-local block is proposed to model the global context information and further improve the performance of SR. Finally, a high-frequency loss function is designed to alleviate smoothing image details caused by pixel-wise loss. Simultaneously, the proposed modules and high-frequency loss function can be easily plugged into multiple mature architectures to improve the performance of SR. Extensive experiments on multiple natural image datasets and remote sensing image datasets show the URNet achieves a better trade-off between image SR performance and model complexity against other state-of-the-art SR methods.
Highlights
Single image super-resolution (SISR) aims to reconstruct a high-resolution (HR) image from its low-resolution (LR) image
We introduce a novel lightweight U-shaped residual network (URNet) for fast and accurate image SR
We design an effective feature distillation pyramid residual group (FDPRG) to extract deep features from an LR image based on the enhanced residual feature distillation block (E-RFDB)
Summary
Single image super-resolution (SISR) aims to reconstruct a high-resolution (HR) image from its low-resolution (LR) image. It has a wide range of applications in real scenes, such as medical imaging [1,2,3], video surveillance [4], remote sensing [5,6,7], high-definition display and imaging [8], super-resolution mapping [9], hyper-spectral images [10,11], iris recognition [12], and sign and number plate reading [13] This problem is inherently ill-posed because many HR images can be downsampled to an identical LR image. Patti and Altunbasak [15] consider a scheme to utilize a constraint to represent the prior belief about the structure of the recovered high-resolution image
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