Author : Kamalavva Totagi 1
Date of Publication :7th May 2016
Abstract: Super Resolution (SR) image can be obtained from a set of Low Resolution (LR) images with noise and blur. The main object of Super Resolution is to get high resolution, high quality image from Low Resolution images. To remove the blur and noises caused by the imaging system as well as recover information, restoration techniques are used. Super resolution imaging processes one or more low resolution images acquired from the same scene to produce a single higher resolution image with more information. Recently, it has been one of the most active research areas to get high-resolution image from a low-resolution image, and for the communication purpose it is necessary to compress the information. To achieve SR, it should be restored properly and free from artifacts such as noises, blur and aliasing. In this paper, the various restoration techniques are designed and implemented. It significantly improves the quality and resolution of image. Restoration recovers the original image by degradation.
Reference :
-
[1] Esmaeil Faramarzi, Member, IEEE, Dinesh Rajan, Senior Member, IEEE, and Marc P. Christensen, Senior Member, IEEE, “Unified Blind Method for Multi-Image SuperResolution and Single/Multi-Image Blur Deconvolution”, IEEE Transactions on Image Processing, VOL. 22, NO. 6, JUNE 2013
[2] A. Geetha Devi, T. Madhu and K. Lal Kishore, “An Improved Super Resolution Image Reconstruction using SVD based Fusion and Blind Deconvolution techniques”, International Journal of Signal Processing, Image Processing and Pattern Recognition ol.7, No.1 (2014), pp.283-298
[3] S.K. Satpathy, S.K. Nayak, K.K Nagwanshi, S. Panda, C. Ardil, “An Adaptive Model for Blind Image Restoration using Bayesian Approach”, International Journal of Computer, EEC Engg V0l:4, No:1,2010.
[4] A. Shakul Hamid, S.P. Victor, “Experimental Implementation of Image Restoration Schema using Inverse Filter Processing Techniques”, International Journal of Engg and Computer Science ISSN:2319-7242.Vol 4 Issue April 2015, Page no. 11219-11223.
[5] B Chopade and P M Patil, “Single and Multi Frame Image Super-Resolution and its Performance Analysis: A Comprehensive Survey”, International Journal of Computer Applications (0975 – 8887) Volume 111 – No 15, February 2015.
[6] Pandya Hardeep, Prof. Prashant B. Swadas, Prof. Mahasweta Joshi, “A Survey on Techniques and Challenges in Image Super Resolution Reconstruction”, International Journal of Computer Science and Mobile Computing ISSN 2320–088X IJCSMC, Vol. 2, Issue. 4, April 2013, pg.317 – 325.
[7] Min-Chun Yang and Yu-Chiang Frank Wang, Member, IEEE,“A Self-Learning Approach to Single Image SuperResolution ”, IEEE transactions on multimedia, vol. 15, no. 3, april 2013.
[8] Simon Baker and Takeo Kanade, “Limits on SuperResolution and How to Break Them”, to Appear in the IEEE Transactions on Pattern Analysis and Machine Intelligence, The Robotics Institute Carnegie Mellon University Pittsburgh, PA 15213