Title
How Much Zoom is the Right Zoom from the Perspective of Super-Resolution?
Abstract
Constructing a high-resolution (HR) image from low-resolution (LR) image(s) has been a very active research topic recently with focus shifting from multi-frames to learning based single-frame super-resolution (SR). Multi-frame SR algorithms attempt the exact reconstruction of reality, but are limited to small magnification factors. Learning based SR algorithms learn the correspondences between LR and HR patches. Accurate replacements or revealing the exact underlying information is not guaranteed in many scenarios. In this paper we propose an alternate solution. We propose to capture images at right zoom such that it has just sufficient amount of information so that further resolution enhancements can be easily achieved using any off the shelf single-frame SR algorithm. This is true under the assumption that such a zoom factor is not very high, which is true for most man-made structures. The low-resolution image is divided into small patches and ideal resolution is predicted for every patch. The contextual information is incorporated using a Markov Random Field based prior. Training data is generated from high-quality images and can use any single-frame SR algorithm. Several constraints are proposed to minimize the extent of zoom-in. We validate the proposed approach on synthetic data and real world images to show the robustness.
Year
DOI
Venue
2008
10.1109/ICVGIP.2008.57
ICVGIP
Keywords
Field
DocType
hr patch,single-frame super-resolution,low-resolution image,exact underlying information,right zoom,single-frame sr algorithm,real world image,high-quality image,sr algorithm,contextual information,multi-frame sr algorithm,lenses,markov processes,high resolution,mrf,low resolution,pixel,strontium,zoom,prediction algorithms,super resolution,image reconstruction,image resolution,synthetic data
Iterative reconstruction,Computer vision,Markov process,Pattern recognition,Computer science,Markov random field,Zoom,Robustness (computer science),Synthetic data,Artificial intelligence,Pixel,Image resolution
Conference
Citations 
PageRank 
References 
0
0.34
15
Authors
2
Name
Order
Citations
PageRank
Himanshu Arora1779.54
Anoop M. Namboodiri225526.36