Publication Type : Conference Paper
Publisher : Journal of Physics: Conference Seriesthis link is disabled, 2021, 1917(1), 012002
Source : Journal of Physics: Conference Seriesthis link is disabled, 2021, 1917(1), 012002
Campus : Amritapuri
School : School of Computing, School of Engineering
Center : Amrita Innovation & Research, Computer Vision and Robotics
Department : Computer Science
Verified : Yes
Year : 2021
Abstract : Super resolution (SR) being one of the computer vision tasks with increasing
applications in modern scenarios, several challenging factors are still prominent despite the
numerous breakthroughs achieved in this field in recent years. Introduction of deep
convolutional neural networks has brought a booming development to the existing SR
techniques tackling many unsolved challenges. As an attempt to perform a relative analysis
between currently used methods, this paper explores and establish the capability of Enhanced
and Wide super resolution networks. These models are encompassed with improved residual
networks with an aim to achieve a higher accuracy with reduced memory usage. The models
trained with DIV2K dataset are evaluated using the T91 dataset and found to be showcasing a
reliable performance in comparison with other cutting-edge methods devised for super
resolution.