Statistics

    Map

Twitter


Image Restoration Using Group-based Sparse Representation Technique

( Vol-4,Issue-1,January 2017 ) OPEN ACCESS
Author(s):

Balwinder Kaur, Ashok Kumar Bathla

Keywords:

Analysis-based approach, Group-based patches, Image enhancement, Image Restoration, Patch method.

Abstract:

This paper presents an efficient algorithm for solving restoration problem in the frame-based image restoration. In image restoration, the patch-based approach has been used for better results without degrading the image. Our proposed procedure for solving the stable optimal problem is based on a patched group strategy method. In this paper GSR (Group Based Sparse Representation) algorithm is proposed which is based on concept that group of patches are constructed which maintains the relationship among various patches of images and it is implemented for three image restoration problems i.e. DE noising, DE blurring and Image enhancement. Various parameters are taken into account like PSNR, SSIM, speed and time. The simulation experiments have been conducted in MATLAB and the results have been compared with existing scheme i.e. patch based sparse representation. Both standard and real time images have been included in simulation. It has been observed that after the reconstruction of an image values of parameters are increased which are more than existing scheme.

ijaers doi crossref DOI:

10.22161/ijaers.4.1.10

Paper Statistics:
  • Total View : 1341
  • Downloads : 27
  • Page No: 068-074
Cite this Article:
Click here to get all Styles of Citation using DOI of the article.