Fuzzy Logic technique represents a new approach for gray level image contrast enhancement. The image contrast problem is one of the main problems that confront the researchers in the field of digital image processing, such as in the biomedical image processing like X-Ray and MRI image segmentation for disease classification. In this paper, presenting a new approach to enhancing the image contrast by using fuzzy logic algorithm, so based on the fuzzy rule, we present a new membership equation, which represents the variable threshold level. The proposed method we named it (Fuzzy Hyperbolic Threshold). By using Matlab was implemented the algorithm, and applied to difference gray level images such as old documents images, biomedical images, most of them gives very good results especially with the biomedical images, because of its significant impact on the adjustment of lighting in dark images, clarify its edges, clarify their features and improved image quality.
Hussain kareem Khleaf, Kamarul H. Bin Gazali , Mithaq Na’ma Raheema
Image Contrast Enhancement; Fuzzy logic; Fuzzy Hyperbolic Threshold; Intelligent Techniques.
' Thomas P. and Tom D., 1984, Compositing Digital Images, journal of Computer Graphic, 18(3): 253–259.
 Harry C. Andrews, 1979, Advanced Technique in Digital Image Processing, IEEE journal of digital image processing spectrum, 1979(April): 38–49.
 Mandeep K., Kiran J. and Virender L., 2013, Study of Image Enhancement Techniques: A Review, International Journal of Advanced Research in Computer Science and Software Engineering, 3(4): 846–848.
 Plataniotis K.N. and Venetsanopoulos A.N., 2000, Color Image Processing and Applications, Springer-Verlag, Berlin Heidelberg NewYork, London, Paris, Tokyo, Hong Kong, Barcelona and Budapest, also available at (http://www.comm.toronto.edu/~kostas/Publications2008/pub/bookchapters/2000-SpringerMonograph.pdf
 Sharma, G., Trussel, H.J., 1997, Digital color processing, IEEE Trans. on Image Processing, 6(7): 901–932.
 Seema R. and Suralkar S.R., 2013, Comparative Study of Image Enhancement Techniques, International Journal of Computer Science and Mobile Computing (IJCSMC), 2(1): 11–21.
 Ramandeep K. and Rajiv M., 2014, Evaluating the Performance of Dominant Brightness Level Based Color Image Enhancement, International Journal of Emerging Trends & Technology in Computer Science (IJETTCS), 3(4): 139–145.
 Wanhyun C., Seongchae S., Jinho Y. and Soonja K., 2014, Enhancement Technique of Image Contrast using New Histogram Transformation, Journal of Computer and Communications, 2014(2): 52–56.
 Shefali G. and Yadwinder K., 2014, Review of Different Histogram Equalization Based Contrast Enhancement Techniques, International Journal of Advanced Research in Computer and Communication Engineering, 3(7): 7585–7589.
 Czogala E. and Leski J., 2000, Fuzzy and Neuro-Fuzzy Intelligent Systems, Physica- Verlag Heidelberg, New York.
 Michio S. and Takahiro Y. 1993, A Fuzzy-Logic-Based Approach to Qualitative Modeling, IEEE Transactions On Fuzzy Systems, 1(1): 7–31.