Research of the discrete orthogonal transformation received with use the dynamics of cellular automata
O.O. Evsutin

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Full text of article: Russian language.

DOI: 10.18287/0134-2452-2014-38-2-314-321

Pages: 314-321.

Abstract:
This paper is aimed at receiving orthogonal bases families from the evolving states of cellular automata. I suggest a comparison technique of the appropriate orthogonal transformations in respect of noises, shown as a result of information losses on the restored data elements.

Key words:
cellular automata, orthogonal transformation, decorrelating, compression.

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