IEEE Journal of Selected Topics in Signal Processing | 2021

WDN: A Wide and Deep Network to Divide-and-Conquer Image Super-Resolution

 
 

Abstract


Divide and conquer is an established algorithm design paradigm that has proven itself to solve a variety of problems efficiently. However, it is yet to be fully explored in solving problems with a neural network, particularly the problem of image super-resolution. In this work, we propose an approach to divide the problem of image super-resolution into multiple subproblems and then solve/conquer them with the help of a neural network. Unlike a typical deep neural network, we design an alternate network architecture that is much wider (along with being deeper) than existing networks and is specially designed to implement the divide-and-conquer design paradigm with a neural network. Additionally, a technique to calibrate the intensities of feature map pixels is being introduced. Extensive experimentation on five datasets reveals that our approach towards the problem and the proposed architecture generate better and sharper results than current state-of-the-art methods.

Volume 15
Pages 264-278
DOI 10.1109/JSTSP.2020.3044182
Language English
Journal IEEE Journal of Selected Topics in Signal Processing

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