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IEICE TRANSACTIONS on Fundamentals

Separable 2D Lifting Using Discrete-Time Cellular Neural Networks for Lossless Image Coding

Hisashi AOMORI, Kohei KAWAKAMI, Tsuyoshi OTAKE, Nobuaki TAKAHASHI, Masayuki YAMAUCHI, Mamoru TANAKA

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Summary :

The lifting scheme is an efficient and flexible method for the construction of linear and nonlinear wavelet transforms. In this paper, a novel lossless image coding technique based on the lifting scheme using discrete-time cellular neural networks (DT-CNNs) is proposed. In our proposed method, the image is interpolated by using the nonlinear interpolative dynamics of DT-CNN, and since the output function of DT-CNN works as a multi-level quantization function, our method composes the integer lifting scheme for lossless image coding. Moreover, the nonlinear interpolative dynamics by A-template is used effectively compared with conventional CNN image coding methods using only B-template. The experimental results show a better coding performance compared with the conventional lifting methods using linear filters.

Publication
IEICE TRANSACTIONS on Fundamentals Vol.E88-A No.10 pp.2607-2614
Publication Date
2005/10/01
Publicized
Online ISSN
DOI
10.1093/ietfec/e88-a.10.2607
Type of Manuscript
Special Section PAPER (Special Section on Nonlinear Theory and its Applications)
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