Back to articles
Regular Articles
Volume: 62 | Article ID: jist0520
Image
Additive Spatially Correlated Noise Suppression by Robust Block Matching and Adaptive 3D Filtering
  DOI :  10.2352/J.ImagingSci.Technol.2018.62.6.060401  Published OnlineNovember 2018
Abstract
Abstract

The evolution of modern sensors for image acquisition brings as much obstacles as many possibilities to obtain multidimensional data with high resolution and rich information. One of the most perceptible destructive factors in visual data is noise. Due to complexity of modern sensors and approaches to signal collecting or preprocessing, noise model becomes complicated. The article’s goal is to introduce and solve a problem of suppressing additive spatially correlated noise (ASCN) which is present in images due to different sources and has various levels of correlation. It is shown that even modern filters attempting to suppress correlated noise often demonstrate unsatisfactory efficiency. Here we propose and analyze two modifications of 2D discrete cosine transform (DCT) based filter and the state-of-the-art BM3D technique. Both are based on accounting spatial spectrum of the noise by setting frequency-dependent thresholds. Furthermore, the modified BM3D filter exploits a similarity measure robust to noise spectrum in block matching.

Subject Areas :
Views 34
Downloads 3
 articleview.views 34
 articleview.downloads 3
  Cite this article 

Oleksii Rubel, Vladimir Lukin, Karen Egiazarian, "Additive Spatially Correlated Noise Suppression by Robust Block Matching and Adaptive 3D Filteringin Journal of Imaging Science and Technology,  2018,  pp 060401-1 - 060401-11,  https://doi.org/10.2352/J.ImagingSci.Technol.2018.62.6.060401

 Copy citation
  Copyright statement 
Copyright © Society for Imaging Science and Technology 2018
  Article timeline 
  • received May 2018
  • accepted October 2018
  • PublishedNovember 2018

Preprint submitted to:
  Login or subscribe to view the content