3D Filtering in Images Corrupted by Mixed Additive-Impulsive Noise

 
PIIS086956520001702-5-1
DOI10.31857/S086956520001702-5
Publication type Article
Status Published
Authors
Affiliation:
Affiliation: Instituto Politecnico Nacional
Address: Mexico City, Mexico
Affiliation:
Journal nameDoklady Akademii nauk
EditionVolume 481 Issue 4
Pages375-380
Abstract

Novel filtering method in images that are contaminated by complex noises consisting of random impulses and additive noise is designed in this paper. Proposed method consists of three stages: detection and filtering of random impulses, following 3D filtering approach based on sparse representation in DCT basis, and final post-processing that uses bilateral filter and edge reconstruction. During numerous experiments, the developed method has confirmed superiority of novel approach in term of visual image quality via human perception as well as in better criteria values, such as PSNR and SSIM for different test images corrupted by complex noise. 

Keywords
Received15.10.2018
Publication date28.10.2018
Number of characters882
Cite   Download pdf To download PDF you should sign in
Размещенный ниже текст является ознакомительной версией и может не соответствовать печатной

views: 1317

Readers community rating: votes 0

1. Kravchenko V.F., Ponomarev V.I., Pustovojt V.I. // DAN. 2008. T.421. №.2. C.190-194.

2. Kravchenko V.F., Ponomarev V.I., Pustovojt V.I. // DAN. 2010. T.430. №.5. C.612-617.

3. Kravchenko V.F., Ponomarev V.I., Pustovojt V.I. // DAN. 2012. T.445. N.3. C.278-282.

4. Kravchenko V.F., Ponomarev V.I., Pustovojt V.I. // DAN. 2013. T.452. N.4. C.385-391.

5. Kravchenko V.F., Ponomarev V.I., Pustovojt V.I., A. Palasios-Ehnrikes A. // DAN. 2017. T.475. N.6.C.629-633.

6. Kravchenko, V.F., Perez-Meana, H.M., Ponomaryov, V.I. Adaptive Digital Processing of Multidimensional Signals with Applications. Moscow, Fizmatlit, 2009.

7. Ponomaryov V., Gallegos-Funes F., Rosales-Silva A. // J. Math. Imag. Vision. 2005. V.23. N.3. P.315–319.

8. Ponomaryov V., Montenegro H., Gallegos F., Pogrebnyak O., Sadovnychiy S. // Neurocomputing. 2015. V.155. P.225-246.

9. Dabov K., Foi A., Katkovnik V., Egiazarian K. // IEEE Trans. Image Process. 2007. V.16. N.8, P.2080-2095.

10. Morillas S., Gregori V., Hervas A. // IEEE Trans. Image Process. 2009. V.18. N.7. P.1452–1466.

11. Zhang Y., Tian X., Ren P. // Neurocomputing. 2014. Vol.140. P.299–316.

12. Camarena J., Gregori V., Morillas S., Sapena A. // IEEE Trans. Fuzzy Syst. 2013. V.21. N.5. P.971–978.

13. Jiang J., Zhang L., Yang J. // IEEE Trans. Image Proces. 2014 Vol.23. No.6. P.2651-2662.

14. Zhou Y., Ye Z., Xiao Y. // J. Vis. Commun. Image Represent. 2013. Vol. 24, No.3. P.283–294.

15. http://sipi.usc.edu/database/. The USC-SIPI Image Database.

Система Orphus

Loading...
Up