14
Views
1
CrossRef citations to date
0
Altmetric
Original Articles

An Efficient Hybrid Image Compression Scheme using DWT and ANN Techniques

&
Pages 17-26 | Published online: 26 Mar 2015

REFERENCES

  • Pasi Fräti, Eugene Ageenko, Pavel Kopylov, Sami Gröhn & Florian Berger, Compression of map images for real-time applications, Image and Vision Computing, vol 22, no 13, 1 November 2004, pp 1105–1115.
  • Shen Furao & Osamu Hasegawa, A fast no search fractal image coding method, Signal Processing: Image Communication, vol 19, no 5, May 2004, pp 393–404.
  • Cha Zhang & Tsuhan Chen, A survey on image-based rendering-reprentation, sampling and compression, Signal Proessing: Image Communication, vol 19, no 1, January 2004, pp 1–28.
  • J A Garcia, J Fdez-Valdivia, Xose R Fdez-Vidal & Rosa Rodriguez-Sanchez, On the concept of best achievable compression ratio for lossy image coding, Pattern, Recognition, vol 36, no 10, October 2003, pp 2377–2394.
  • O Egger, P Fleury, T Ebrahimi & M Kunt, High-performance compression of visual information (A Tutorial Review) Part I: Still Pictures, Proceedings of the IEEE, vol 87, no 6, 1999.
  • Barnsley MF & Demko S, Iterated function systems and the global construction of fractals, Proc Roy Soc, pp 243–275, 1985; A 3999.
  • Barnsley MF, Fractal everywhere, New York: Academic; 1988.
  • Fisher Y, Fractal image compression, theory and application, New York: Springer-Verlag; 1994.
  • S K Ghosh, Jayanta Mukheijee & P P Das, Fractal image compression: a randomized approach, Pattern Recognition Letters, Elsevier Science, vol 25, pp 1013–1024, 2004.
  • T K Truonk, C M Kung, J H Jeng & M L Hsieh, Fast fractal image com ression using spatial correlation, Chaos, Solitons and Fractals, Elsevier Science, vol 22, pp 1071–1076, 2004.
  • A E Jacquin, Image coding based on a fractal theory of iterated contractive image transformations, IEEE Trans Image Processing, vol 1, pp 18–30, Jan 1992.
  • A K Jain, Image transform, in Fundamentals of Digital Image Processing, Prentice Hall Information and System Sciences Series), Englewood Cliffs, NJ: Prentice-Hall, 1989, ch 5.
  • S Mallat, A theory for multiresolutional signal decomposition: the wavelet representation, IEEE Pattern Recog and Mach Intell, vol 2, no 7, pp 674–693, July 1989.
  • W Li & O Egger, Improved subband coding of images using unequal length PR filters, in Proc 14th Gretsi Symp Signal and Image Processing, Juan-Ies-Pins, France, pp. 451–454, Sept 1993.
  • G Strang & T Nguyen, Wavelets and Filter Banks, Wellesiey-Cambridge Press, USA, 1996.
  • S Mallat, Multiresolution approximations and wavelet orthogonal bases of L2 (R), Trans Amer Math Soc, vol. 315, pp, 69–88, 1989.
  • M J T Barnwell & T P Barnwell, Exact reconstruction techniques for tree structured subband coders, IEEE Trans Acoustics, Speech, Signal Process, vol ASSP-34, pp 434–441, June 1986.
  • J Woods & S O'Neil, Subband coding of images, IEEE Trans Acoustics, Speech, Signal Processing, vol ASSP-24, pp 1278–1288, Oct-1986.
  • J N Ellinas & M S Sangriotis, Stereo image compression using wavelet coefficients morphology, Image and Vision Computing, vol 22, no 4, 1 April 2004, pp 281–290.
  • A S Tolba, Wavelet Packet Compression of Medical Images’ Digital Signal Processing, vol 12, no 4, October 2002, pp 441–470.
  • R A DeVore, B Jawerth & A J Lucer, Image Compression Through Wavelet Transform Coding, IEEE Trans on Info Theo, vol 38, no 2, pp 719–745, March, 1992.
  • M Vetterli & Kovacevic, Wavelets and Subband Coding, Prentice Hall Inc, Englewood Cltffs, NJ, 1995.
  • D E Rumelhart & J L McClellan, Parallel Distributed Processing: Explorations in the Micro Structure of Cognition, MA: MIT Press, 1986.
  • Crochier, S A Webber & F L Flanagan, Digital coding of speech in subbands, Bell Syst Tech J, vol 55, no 8, pp 1069–1085, 1976.
  • A Namphol, S H Chin & M Arozullah, Image compression with hierarchical neural network, IEEE Trans Aerosp Electron Syst, vol 32, no 1, pp 326–338, 1996.
  • O Abdel-Wahhab & M M Fahmy, Image Compression using multilayer neural network, IEEE Proc-Vis Image Signal Process, vol 144, no 5, pp 307–312, Oct 1997.
  • S Haykin, Neural Networks: A Comprehensive Foundation. New York, Macmillan, 1994.
  • Olivier Egger et al, High Performance compression of visual information-A tutorial review, Proceedings of the IEEE, vol 87, no 6, pp 974–1011, June 1999.
  • L Tarassenko & S Roberts, Supervised and unsupervised learning in radial basis function classifiers, IEEE Proc-VIS Image Signal Process, vol 141, no 4, pp 210–216, Aug 1994.
  • L Yingwei, N Sundarrajan & P Saratchandran, Performance evaluation of a sequential minimal radial basis function (RBF) Neural Network Learning Algorithm, IEEE Trans on Networks, vol 9, no 2, pp 308–318. March 1998.
  • Kameswara Rao Namuduri & Veeru N Ramaswamy, Feature preserving image compression, Pattern Recognition Letters, vol 24, no 15, November 2003, pp 2767–2776.
  • G R Kuduvali & R M Rangayyan, Performane analysis of reversible image compression techniques for high resolution digital teleradiology, IEEE Trans Med Img, vol 12, pp 430–445, Sept 1993.
  • O Egger & W Li, Subband coding of images using asymmetrical filterbanks, IEEE Trans Image Processing, vol 4, pp 478–485, Apr 1995.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.