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Journal ArticleDOI

A Deep Journey into Super-resolution: A Survey

Saeed Anwar, +2 more
- 28 May 2020 - 
- Vol. 53, Iss: 3, pp 1-34
TLDR
Deep convolutional networks–based super-resolution is a fast-growing field with numerous practical applications and this exposition extensively compare more than 30 state-of-the-art super-resolves.
Abstract
Deep convolutional networks–based super-resolution is a fast-growing field with numerous practical applications. In this exposition, we extensively compare more than 30 state-of-the-art super-resolution Convolutional Neural Networks (CNNs) over three classical and three recently introduced challenging datasets to benchmark single image super-resolution. We introduce a taxonomy for deep learning–based super-resolution networks that groups existing methods into nine categories including linear, residual, multi-branch, recursive, progressive, attention-based, and adversarial designs. We also provide comparisons between the models in terms of network complexity, memory footprint, model input and output, learning details, the type of network losses, and important architectural differences (e.g., depth, skip-connections, filters). The extensive evaluation performed shows the consistent and rapid growth in the accuracy in the past few years along with a corresponding boost in model complexity and the availability of large-scale datasets. It is also observed that the pioneering methods identified as the benchmarks have been significantly outperformed by the current contenders. Despite the progress in recent years, we identify several shortcomings of existing techniques and provide future research directions towards the solution of these open problems. Datasets and codes for evaluation are publicly available at https://github.com/saeed-anwar/SRsurvey.

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Citations
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Proceedings ArticleDOI

Multi-Stage Progressive Image Restoration

TL;DR: MPRNet as discussed by the authors proposes a multi-stage architecture that progressively learns restoration functions for the degraded inputs, thereby breaking down the overall recovery process into more manageable steps, and introduces a novel per-pixel adaptive design that leverages in-situ supervised attention to reweight the local features.
Book ChapterDOI

Learning Enriched Features for Real Image Restoration and Enhancement

TL;DR: MIRNet as mentioned in this paper proposes a multi-scale residual block containing several key elements: (a) parallel multi-resolution convolution streams for extracting mult-scale features, (b) information exchange across the multiresolution streams, (c) spatial and channel attention mechanisms for capturing contextual information, and (d) attention-based multiscale feature aggregation.
Journal ArticleDOI

TomoGAN: low-dose synchrotron x-ray tomography with generative adversarial networks: discussion.

TL;DR: The quality of the reconstructed images with filtered back projection followed by the TomoGAN denoising approach exceeds that of reconstructions with the simultaneous iterative reconstruction technique, showing the computational superiority of the approach.
Proceedings ArticleDOI

EventSR: From Asynchronous Events to Image Reconstruction, Restoration, and Super-Resolution via End-to-End Adversarial Learning

TL;DR: This work considers the problem of reconstructing and super-resolving intensity images from pure events, when no ground truth HR images and down-sampling kernels are available and proposes a novel end-to-end pipeline that reconstructs LR images from event streams, enhances the image qualities and upsamples the enhanced images, called EventSR.
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Proceedings ArticleDOI

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