Title
Survey Of Single Image Super-Resolution Reconstruction
Abstract
Image super-resolution reconstruction refers to a technique of recovering a high-resolution (HR) image (or multiple images) from a low-resolution (LR) degraded image (or multiple images). Due to the breakthrough progress in deep learning in other computer vision tasks, people try to introduce deep neural network and solve the problem of image super-resolution reconstruction by constructing a deep-level network for end-to-end training. The currently used deep learning models can divide the SISR model into four types: interpolation-based preprocessing-based model, original image processing based model, hierarchical feature-based model, and high-frequency detail-based model, or shared the network model. The current challenges for super-resolution reconstruction are mainly reflected in the actual application process, such as encountering an unknown scaling factor, losing paired LR-HR images, and so on.
Year
DOI
Venue
2020
10.1049/iet-ipr.2019.1438
IET IMAGE PROCESSING
Keywords
DocType
Volume
feature extraction, learning (artificial intelligence), remote sensing, image resolution, computer vision, interpolation, neural nets, image processing, image reconstruction, generative adversarial network, super-resolution images, popular CNN-based deep learning method, GAN-based deep learning method, LR-HR images, multiscale super-resolution reconstruction, single image super-resolution reconstruction, or multiple images, LR images, hyperspectral imaging, medical imaging, deep neural network, deep-level network, image input information, original image processing-based model, hierarchical feature-based model, network model
Journal
14
Issue
ISSN
Citations 
11
1751-9659
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Kai Li138834.41
Shenghao Yang23313.84
Runting Dong300.34
Jianqiang Huang412.71
Xiaoying Wang51418.68