An Efficient Image Contrast Enhancement Algorithm Using Genetic Algorithm and Fuzzy Intensification Operator (original) (raw)

References

  1. Surya Prabha, D., & Satheesh Kumar, J. (2015). Assessment of banana fruit maturity by image processing technique. Journal of Food Science and Technology, 52(3), 1316–1327.
    Article Google Scholar
  2. Surya Prabha, D., & Satheesh Kumar, J. (2013). Three dimensional object detection and classification methods: a study. International Journal of Engineering Research and Science and Technogy, 2(2), 33–42.
    Google Scholar
  3. Surya Prabha, D., & Satheesh Kumar, J. (2014). Survey on applications of image processing methods in agriculture sector. Proceeding of International Conference on Convergence Technology, 4(1), 997–999.
    Google Scholar
  4. Xeng, H. D., & Xu, H. (2000). A novel fuzzy logic approach to contrast enhancement. Pattern Recognition, 33, 809–819.
    Article Google Scholar
  5. Arici, T., Dikbas, S., & Altunbasak, Y. (2009). A histogram modification framework and its application for image contrast enhancement. IEEE Transactions on Image Processing, 18, 1921–1935.
    Article MathSciNet Google Scholar
  6. Oppenheim, A. V., Schafer, R. W., & Stockham, T. G. J. (1968). Nonlinear filtering of multiplied and convolved signals. IEEE Transactions on Audio and Electroacoustics, 56, 1264–1291.
    Google Scholar
  7. Toet, A. (1990). Adaptive multi-scale contrast enhancement through non-linear pyramid recombination. Pattern Recognition Letters, 11, 735–742.
    Article MATH Google Scholar
  8. Ramponi, G., Strobel, N., & Yu, T. H. (1996). Nonlinear unsharp masking methods for image contrast enhancement. Journal of Electronic Imaging, 5(3), 353–366.
    Article Google Scholar
  9. Chen, S. D., & Ramli, A. R. (2004). Preserving brightness in histogram equalization based contrast enhancement techniques. Digital Signal Processing, 14, 413–428.
    Article Google Scholar
  10. Kim, Y. T. (1997). Enhancement using brightness preserving bi-histogram equalization. IEEE Transactions on Consumer Electronics, 43(1), 1–8.
    Article Google Scholar
  11. Kim, J. Y., Kim, L. S., & Hwang, S. H. (2001). An advanced contrast enhancement using partially overlapped sub-block histogram equalization. IEEE Transactions on Circuits and Systems for Video Technology, 11, 475–484.
    Article Google Scholar
  12. Stark, J. A. (2000). Adaptive image contrast enhancement using generalizations of histogram equalization. IEEE Transactions on Image Processing, 9, 889–896.
    Article Google Scholar
  13. Yu, Z., & Bajaj, C. (2004). A fast and adaptive method for image contrast enhancement. IEEE International Conference on Image Processing, 2, 1001–1004.
    Google Scholar
  14. Jin, Y., Fayadb, L., & Laine, A. (2001). Contrast enhancement by multi-scale adaptive histogram equalization. Wavelets: Applications in Signal and Image Processing IX, 4478, 206–213.
    Google Scholar
  15. Chen, Z. Y., Abidi, R., Page, D. L., & Abidi, M. A. (2006). Gray-level grouping (GLG): An automatic method for optimized image contrast enhancement—Part I: The basic method. IEEE Transactions on Image Processing, 15, 2290–2302.
    Article Google Scholar
  16. Wadud, M. A. A., Kabir, M. H., Dewan, A. A., & Chae, O. (2007). A dynamic histogram equalization for image contrast enhancement. IEEE Transactions on Consumer Electronics, 53, 593–600.
    Article Google Scholar
  17. Demirel, H., Ozcinar, C., & Anbarjafari, G. (2010). Satellite image contrast enhancement using discrete wavelet transform and singular value decomposition. IEEE Geoscience and Remote Sensing Letters, 7(2), 333–337.
    Article Google Scholar
  18. Kanojia, A., Agaian, S. S., & Panetta, K. (2004). New contrast measure for transform based image enhancement. In 2004 International TICSP workshop on spectral methods and multirate signal processing (SMMSP2004), Vienna, Austria (pp. 133–139).
  19. Starck, J. L., Murtagh, F., Candès, E. J., & Donoho, D. L. (2003). Gray and color image contrast enhancement by the curvelet transform. IEEE Transactions on Image Processing, 12, 706–717.
    Article MathSciNet MATH Google Scholar
  20. Dhnawan, A. P., Buelloni, G., & Gordon, R. (1986). Enhancement of mammographic features by optimal adaptive neighborhood image processing. IEEE Transactions on Medical Imaging, 5, 8–15.
    Article Google Scholar
  21. Beghdad, A., & Negrate, A. L. (1989). Contrast enhancement technique based on local detection of edges. Computer Vision Graphics and Image Processing, 46, 162–174.
    Article Google Scholar
  22. Dash, L., & Chatterji, B. N. (1991). Adaptive contrast enhancement and de-enhancement. Pattern Recognition, 24, 289–302.
    Article Google Scholar
  23. Florea, C., Vlaicu, A., Gordan, M., & Orza, B. (2009). Fuzzy intensification operator based contrast enhancement in the compressed domain. Applied Soft Computing, 9(3), 1139–1148.
    Article Google Scholar
  24. Pal, S. K., & King, R. (1981). Image enhancement using smoothing with fuzzy sets. IEEE Transactions on Systems Man and Cybernatics, 11(7), 494–500.
    Article Google Scholar
  25. Li, H., & Yang, H. S. (1989). Fast and reliable image enhancement using fuzzy relaxation technique. IEEE Transactions on Systems Man Cybernatics, 19, 1276–1281.
    Article Google Scholar
  26. Hanmandlu, M., Tandon, S. N., & Mir, A. H. (1997). A new fuzzy logic based image enhancement. Biomedical Sciences Instrumentation, 34, 590–595.
    Google Scholar
  27. Hanmandlu, M., & Jha, D. (2006). An optimal fuzzy system for color image enhancement. IEEE Transactions on Image Processing, 15, 2956–2966.
    Article Google Scholar
  28. Paulinas, M., & Usinskas, A. (2015). A survey of genetic algorithms applications for image enhancement and segmentation. Information Technology and Control, 36(3), 278–284.
    Google Scholar
  29. Saitoh, F. (1999). Image contrast enhancement using genetic algorithm. In Systems, man, and cybernetics, IEEE SMC’99 conference proceedings (Vol. 4, pp. 899–904).
  30. Hashemi, S., Kiani, S., Noroozi, N., & Moghaddam, M. E. (2010). An image contrast enhancement method based on genetic algorithm. Pattern Recognition Letters, 31(13), 1816–1824.
    Article Google Scholar
  31. Larson, E. C., & Chandler, D. M. (2010). Most apparent distortion: Full-reference image quality assessment and the role of strategy. Journal of Electronic Imaging, 19(1), 011006.
    Article Google Scholar
  32. Munteanu, C., & Rosa, A. (2000). Towards automatic image enhancement using genetic algorithms. IEEE Proceedings of the Congress on Evolutionary Computation, 2, 1535–1542.
    Google Scholar
  33. Hanmandlu, M., Jha, D., & Sharma, R. (2003). Color image enhancement by fuzzy intensification. Pattern Recognition Letters, 24, 81–87.
    Article MATH Google Scholar
  34. Chaira, T., & Ray, A. K. (2009). Fuzzy image processing and applications with MATLAB. Boca Raton: CRC Press.
    MATH Google Scholar
  35. Gonzalez, C. R., & Woods, R. E. (2011). Digital image processing. Noida: Dorling Kindersley (India) Pvt Ltd Publications.
    Google Scholar
  36. Al-Najjar, Y. A. Y., & Soong, D. C. (2012). Comparison of image quality assessment: PSNR, HVS, SSIM, UIQI. International Journal of Science and Engineering Research, 3, 1–5.
    Google Scholar
  37. Wang, Z., Bovik, A. C., Sheikh, H. R., & Simoncelli, E. P. (2004). Image quality assessment: From error visibility to structural similarity. IEEE Transactions on Image Processing, 13, 600–612.
    Article Google Scholar
  38. Zhang, L., Zhang, L., Mou, Z., & Zhang, D. (2011). FSIM: A feature similarity index for image quality assessment. IEEE Transactions Image Processing, 20, 2078–2386.
    Article MathSciNet Google Scholar
  39. Panse, V. G., & Sukhatme, P. V. (1985). Statistical methods for agricultural workers. New Delhi, India, ICAR.
  40. Surya Prabha, D., & Satheesh Kumar, J. (2016). Performance evaluation of image segmentation using objective methods. Indian Journal of Science and Technology, 9(8), 1–8.
    Article Google Scholar
  41. Surya Prabha, D., & Satheesh Kumar, J. (2015). Enhanced edge detection method using unconstrained non-linear optimization technique. International Journal of Applied Engineering Research, 9(20), 4697–4702.
    Google Scholar

Download references