Abstract
We present a general formulation based on punctual kriging and fuzzy concepts for image restoration in spatial domain. Gray-level images degraded with Gaussian white noise have been considered. Based on the pixel local neighborhood, fuzzy logic has been employed intelligently to avoid unnecessary estimation of a pixel. The intensity estimation of the selected pixels is then carried out by employing punctual kriging in conjunction with the method of Lagrange multipliers and estimates of local semi-variances. Application of such a hybrid technique performing both selection and intensity estimation of a pixel demonstrates substantial improvement in the image quality as compared to the adaptive Wiener filter and existing fuzzy-kriging approaches. It has been found that these filters achieve noise reduction without loss of structural detail information, as indicated by their higher structure similarity indices, peak signal to noise ratios and the new variogram based quality measures.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Gonzalez R C, Woods R E. Digital Image Processing. 2nd Edition, Pearson Education Inc., 2002.
Liu P, Li H. Fuzzy techniques in image restoration research—A survey (invited paper). International Journal of Computational Cognition, June 2004, 2(2): 131–149.
Krige D. A statistical approach to some mine valuation and allied problems on the Witwatersrand [Thesis]. University of Witwatersrand, South Africa, 1951.
Costa J P, Pronzato L, Thierry E. Nonlinear prediction by kriging, with application to noise cancellation. Signal Processing, 2000, 80: 553–566.
Rugh W J. Nonlinear System Theory: The Volterra/Wiener Approach. Baltimore: John Hopkins University Press, 1981.
Leontaritis I, Billings S. Input-output parametric models for nonlinear systems part 2: Stochastic nonlinear systems. Int. J. Control, 1985, 41(2): 329–344.
Yang X, Tou P S. Adaptive fuzzy multilevel median filter. IEEE Trans. Image Processing, 1995, 4(5): 680–682.
Russo F, Ramponi G. An image enhancement technique based on the FIRE operator. In Proc. ICIP’95 — 2nd IEEE Int. Conf. Image Processing, Los Alamitos, CA, USA, 1992, 1: 155–158.
Russo F, Ramponi G. Removal of impulsive noise using a FIRE operator. In Proc. ICIP’96 — 3rd IEEE Int. Conf. Image Processing, 1996, 2: 975–978.
Russo F, Ramponi G. A fuzzy filter for images corrupted by impulsive noise. IEEE Signal Processing Letters, 1996, 3(6): 168–170.
Choi Y, Krishnapuram R. A robust approach to image enhancement based on fuzzy logic. IEEE Trans. Image Processing, 1997, 6(6): 808–825.
Farbiz F, Menhaj M B. A Fuzzy Logic Control Based Approach for Image Filtering. Fuzzy Techniques in Image Processing, Vol. 52, NY: Springer-Verlag, 2000, pp.194–221.
Pham T D, Wagner M. Image enhancement by kriging and fuzzy sets. Int. J. Pattern Recognition and Artificial Intelligence, 2000, 14(8): 1025–1038.
Pham T D, Wagner M. Filtering noisy images using kriging. In Proc. 5th Int. Symposium on Signal Processing & Its Applications (ISSPA’99), Brisbane, Australia, August 1999, pp.427–430.
Mirza Anwar M, Munir B. Combining fuzzy logic and kriging for image enhancement. In Proc. the 8th Fuzzy Days, Dartmund, Germany, September 2004.
Munir B. Combining fuzzy logic and kriging for image enhancement [Thesis]. Faculty of Computer Science & Engineering, GIK Institute, Pakistan, May 2004.
Naser El-Sheimy. Digital terrain modeling (ENGO 573). University of Calgary, Canada, 1999.
Walpole R E, Myers R H, Myers S L. Probability and Statistics for Engineers and Scientists. 6th Edition, Prentice Hall International Inc., 1998.
Clark I, Harper W V. Practical Geostatistics 2000. OH: Ecosse North America, USA, 2000.
Driankov D, Hellendorn H, Reinfrank M. An Introduction to Fuzzy Control. NY: Springer-Verlag, 1993.
Nachtegeal M (ed.). Fuzzy Techniques in Image Processing. Vol. 52, New York: Springer-Verlag, 2000, pp.194–221.
Kutter M, Petitcolas F A P. A fair benchmark for image watermarking systems. In Proc. Electronic Imaging ‘99, Security and Watermarking of Multimedia Contents, the International Society for Optical Engineering, Vol. 3657, Sans Jose, CA, USA, Jan. 1999, pp.25–27.
Wang Z, Bovik A C, Sheikh H R, Simoncelli E P. Image quality assessment: From error visibility to structural similarity. IEEE Trans. Image Processing, March 2000, 13(3): 1–14.
Tizhoosh H. Fuzzy Image Enhancement: An Overview. Fuzzy Techniques in Image Processing, Vol.52, NY: Springer-Verlag, 2000, pp.137–171.
Author information
Authors and Affiliations
Corresponding author
Additional information
This work has been sponsored by the Higher Education Commission, Government of Pakistan under the Scholarship Grant No. 17-6(176)Sch/2001.
Electronic Supplementary Material
Rights and permissions
About this article
Cite this article
Mirza, A.M., Chaudhry, A. & Munir, B. Spatially Adaptive Image Restoration Using Fuzzy Punctual Kriging. J Comput Sci Technol 22, 580–589 (2007). https://doi.org/10.1007/s11390-007-9061-3
Received:
Revised:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11390-007-9061-3