Một phương pháp tăng cường độ tương phản ảnh viễn thám dựa trên tiếp cận cục bộ

  • Nguyễn Tu Trung Viện CNTT, Viện Hàn Lâm KH&CN VN
  • Vũ Văn Thỏa Học viện Công nghệ Bưu chính Viễn thông
  • Đặng Văn Đức Viện CNTT, Viện Hàn Lâm KH&CN VN

Abstract

The image enhancement methods are divided into 3 categories including histogram, fuzzy logic and optimal methods. Histogram based contrast enhancing methods focus on modifying histogram of images. Histogram specification and histogram equalization are commonly used as conventional contrast enhancement mothods. Patently, the fuzzy logic based image enhancement methods make image which quality is  clearer than the traditional methods. However, these methods still use the global approach, therefore, it is difficult to enhance all land covered in remote sensing images. This paper proposes a local approach based new algorithm of image enhancement for the remote sensing images and the large size remote sensing images, calculating auto thresholds and combination the grey adjust operators.


References

J.C. BEZDEK, R. EHRLICH, W.FULL, FCM: The fuzzy c-Means clustering algorithm, Computers & Geosciences Vol. 10, No. 2-3, (1984), pp. 191-203.

A.E. HASANIEN, A, BADR, A Comparative Study on Digital Mamography Enhancement Algorithms Based on Fuzzy Theory, Studies in Informatics and Control, Vol.12, No.1, March 2003.

ZHU XIFANG, WU FENG, An Improved Approach to Remove Cloud and Mist from Remote Sensing Images Based on Mallat Algorithm, International Symposium on Photoelectronic Detection and Imaging 2007, Beijing 2007.

BEZDEK, J. C, Pattern Recognition with Fuzzy Objective Function Algorithm. New York: Plenum Press, 1981.

ROSS, T. J, Fuzzy logic with engineering applications, Fuzzy classifying, Hoboken, NJ: John Wiley, pp. 379 -387, 2004.

ERIKSEN J P, PIZER S M, AUSTIN J D, A multiprocessor engine for fastcontrast limited adaptive histogram equalisation SPIE Conference Medical Imaging IV- Image Processing SPIE Vol. 1233,1994.

GORDON R, RANGAYAN R M, Feature enhancement of film mammograms using fixed and adaptive neighbourhoods Applied Optics 23 560-564, 1984.

G. SUDHAVANI, M. SRILAKSHMI, P. VENKATESWARA RAO, Comparison of Fuzzy Contrast Enhancement Techniques, International Journal of Computer Applications, Volume 95– No.22, June 2014, pp. 0975 – 8887.

ZADEH, L. A., A Fuzzy-Set-Theoretic Interpretation of Linguistic Hedges, J. Cybern., vol. 2, pp. 4-34, 1972.

PAL, S. K., KING, R. A., Image Enhancement Using Smoothing with Fuzzy Sets, IEEE Transactions on Systems, Man and Cybernetics, vol. SMC-11, no. 7, pp. 494-501, July 1981.

PAL S. K., KING R. A., On edge detection of X-ray images using fuzzy sets, IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. PAMI-5, No. 1, pp. 69-77, 1983.

BANKS, S., Signal Processing, Image Processing and Pattern Recognition, Prentice Hall International, 1990.

TIZHOOSH H. R., FOCHEM M., Image Enhancement with Fuzzy Histogram Hyperbolization, Proceedings of EUFIT’95, vol. 3, pp. 1695-1698, 1995.

KAUFMANN A., Introduction to the Theory of Fuzzy Subsets-Fundamental Theoretical Elements, vol. 1, Academic Press, New York, 1975.

DE LUCA A., TERMINI S., A definition of no probabilistic entropy in the setting of fuzzy set theory, Information and Control, vol. 20, pp. 301-312, 1972.

PAL S.K., KUNDU M.K., Automatic selection of object enhancement operator with quantitative justification based on fuzzy set theoretic measures, Pattern Recognition Letters, vol. 11, pp. 811-829, 1990.

Canada Center for Remote Sensing, Fundamentals of Remote Sensing, http://www.ccrs.nrcan.gc.ca, 2008.

ADLIN SHARO T, KUMUDHA RAIMOND, A Survey on Color Image Enhancement Techniques, IOSR Journal of Engineering (IOSRJEN), Vol. 3, Issue 2 (Feb. 2013).

AMAN TUSIA, DR. NARESH KUMAR, Performance Analysis of Type-2 Fuzzy System for Image Enhancement using Optimization, International Journal of Enhanced Research in Science Technology & Engineering, Vol. 3 Issue 7, July-2014, pp: (108-116).

Published
2015-12-31
Section
Bài báo