Usage of Kohonen Maps for acceleration of fractal image compression

V.G. Prohorov

Abstract


Basics of classical fractal compression algorithm and its shortcomings were reviewed. New algorithms, which accelerate the compression by extracting the features and usage of Kohonen maps were given. An experimental data, illustrating the proposed algorithms’ efficiency was given.

Problems in programming 2009; 2: 92-98


References


Chuan-jiang He, Xiao-na Shen, Gao-ping Li. Interpolation decoding method with variable parameters for fractal image compression, Chongquing University . – 2005. – Р. 1 – 5.

Barnsley M. Fractals everywhere – Boston, Academic Press, 1993. – P. 103 – 114.

McGregor D. Fast fractal transform method forDataCompression, University of Strathclyde. – 1994. – Р. 1 – 8.

Herbert D. Fast Fractal Image Compression with Triangulation Wavelets, IEEE Press . – 1998.

Welstead, S. Self-Organizing Neural Network Domain Classification for Fractal Image Coding, Speech and Image Processing Services Research AT&T Lab. – 1997. – Р. 248 – 251.

Hamzaoui R. Codebook clustering for Self-Organizing Maps for Fractal Image Compression, NATO Advanced Study Institute. – 1995.

Хайкин C. Нейронные сети. Полный курс Изд. второе (исправленное). Прэнтис Холл. – 2006. – С. 239 – 298 ; 308 – 315.

Fisher Y. Fractal Image Compression. – Springer-Verlag. – 1998.


Refbacks

  • There are currently no refbacks.