CFP last date
22 April 2024
Reseach Article

Fuzzy based Image Enhancement Method

Published on July 2015 by G.r.sinha, Neha Agrawal
National Conference on Knowledge, Innovation in Technology and Engineering (NCKITE 2015)
Foundation of Computer Science USA
NCKITE2015 - Number 1
July 2015
Authors: G.r.sinha, Neha Agrawal
77664b97-a7e1-414c-953f-ea2997fb5a2d

G.r.sinha, Neha Agrawal . Fuzzy based Image Enhancement Method. National Conference on Knowledge, Innovation in Technology and Engineering (NCKITE 2015). NCKITE2015, 1 (July 2015), 13-18.

@article{
author = { G.r.sinha, Neha Agrawal },
title = { Fuzzy based Image Enhancement Method },
journal = { National Conference on Knowledge, Innovation in Technology and Engineering (NCKITE 2015) },
issue_date = { July 2015 },
volume = { NCKITE2015 },
number = { 1 },
month = { July },
year = { 2015 },
issn = 0975-8887,
pages = { 13-18 },
numpages = 6,
url = { /proceedings/nckite2015/number1/21477-2645/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 National Conference on Knowledge, Innovation in Technology and Engineering (NCKITE 2015)
%A G.r.sinha
%A Neha Agrawal
%T Fuzzy based Image Enhancement Method
%J National Conference on Knowledge, Innovation in Technology and Engineering (NCKITE 2015)
%@ 0975-8887
%V NCKITE2015
%N 1
%P 13-18
%D 2015
%I International Journal of Computer Applications
Abstract

Though, there has been an enormous research contribution on image de-noising methods which are also called as image enhancement methods that actually enhance the desired information and suppress unwanted portion in a digital image. However, robustness is still a major challenge in this area of digital image processing. The performance has been improved by several research papers using fuzzy approaches. This work proposed a non-linear method for removing impulse noise, that is salt and pepper noise in digital grayscale images. The modified fuzzy based decision algorithm (MFBDA) is used. The noisy pixels are detected and then fuzzy based filtering works to correct the pixel. The proposed method performs better than conventional and other non-linear fuzzy based image enhancement methods. The values of statistical parameters such as PSNR (Peak signal-to-noise ratio), IEF (Image Enhancement factor), IQI (Image quality index) and SSIM (Structural similarity index) were obtained better as compared to conventional fuzzy filters.

References
  1. Geoffrine Judith. M. C, N. Kumarasabapathy,"Study and Analysis of impulse noise reduction filters," International Journal of Signal and Image Processing (SIPIJ), Vol. 2, No. 1, pp. 82-92, March 2011.
  2. Stefan Schulte, Mike Nachtegael, Valerie De Witte, Dietrich Vander Weken and Etinne EKerre, "A Fuzzy Impulse noise detection and Reduction Method", IEEE Transaction on Image Processing, Vol. 5, NO. 5, pp. 1153-1162, May 2006.
  3. G. R. Sinha, Ravindra Ramteke and Vikas Dilliwar, "Implementation of Image Denoising Algorithm for Additive Noise using MATLAB", International J. of Engg. Research & Indu. Appls. (IJERIA), Vol. 2, No. 1, pp. 221-226(2009).
  4. Devanand Bhonsle, Vivek Chandra and G. R. Sinha, "Medical Image Denoising Using Bilateral Filter" ,International Journal of Image, Graphics and Signal Processing 6, pp. 36-43, 2012.
  5. Zhang Hong-qiao, MA Xin-jun, WU-Ning, "A New Filter Algorithm of Image Based on Fuzzy Logical", International Symposium on Computer Science and Society, pp. 315-318 (2011), DOI 10. 1109/ISCCS. 2011. 91.
  6. Mike Nachtegael, Tom M' elange, "Advances made in Image and Video filtering using Fuzzy Logic", the 3rd International Conference on Machine Vision (ICMV 2010), pp. 215-219, (2010).
  7. Sanyam Anand, Navjeet Kaur, "New Fuzzy Logic Based Filter for Reducing Noises from anImages", IJCST Vol. 3 Issue 2, pp. 322-326, April-June 2012.
  8. Hwang, H. ,Haddad, R. A. ,"Adaptive median filters: new algorithms and results". IEEE Trans. Image Process 4(4), pp. 499–502 (1995).
  9. Madhu S. Nair, G. Raju, "A new fuzzy-based decision Algorithm for high-density impulse noise removal", Signal, Image and Video Processing, 6: pp. 579-595 (2012), Springer-Verlag,(In press). DOI: 10. 1007/s11760-010-0186-4.
  10. Madhu S. Nair, K. Revathy, Rao Tatavarti, "An Improved Decision-Based Algorithm for Impulse Noise Removal", cisp, vol. 1, pp. 426-431, 2008 Congress on Image and Signal Processing, Vol. 1, 2008.
  11. Zhou Wang, Alan C. Bovik "A Universal Image Quality Index", IEEE Signal Processing Letters, VOL. XX, NO. Y, Pp. 1-4, March 2002.
  12. Zhou Wang, Alan C. Bovik, Hamid R. Sheikh, Eero P. Simoncelli, "Image Quality Assessment: From Error Visibility to Structural Similarity", IEEE Transactions on Image Processing, VOL. 13, NO. 4, pp. 1-14, April 2004.
  13. Gonzalez, R. C. Woods, R. E: Digital Image Processing. 3rd edn. Prentice –Hall, Englewood Cliffs NJ (2008).
  14. G. R. Sinha, Bhagwati Charan Patel: Medical Image Processing: Concepts and Applications, ISBN: 978-81- 203-4902-5, Prentice Hall of India.
  15. S. N Sivandanam, S. N Deepa: Principles of Soft computing 2nd edn, ISBN: 978-81-265- 2741-0, WileyIndia.
Index Terms

Computer Science
Information Sciences

Keywords

Fuzzy Logic Image De-noising Image Enhancement Salt-and-pepper Noise.