基于细胞神经网络的二维DPCM方案

M. Çelebi, C. Guzelis
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引用次数: 2

摘要

我们将差分脉冲编码调制(DPCM)作为二次代价函数的最小化来表述图像压缩。非因果插值误差图像代替因果预测误差图像可以以这种方式编码,提供有效的压缩。我们通过细胞神经网络(cnn)的动态实现优化过程。在编码阶段使用两个cnn,一个以二进制模式工作,另一个以灰度模式工作。第一个CNN创建了一个最佳的差分图像,而另一个则试图创建一个接收器重建图像的副本。解码由差分图像馈送的另一种灰度模式CNN实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A 2D DPCM scheme using cellular neural networks
We formulate differential pulse code modulation (DPCM) for image compression as the minimization of a quadratic cost function. Non-causal interpolation error image in lieu of causal prediction error image can be coded in this fashion providing efficient compression. We implement the optimization process through the dynamics of cellular neural networks (CNNs). Two CNNs, one of them operated in binary mode and the other in gray level mode, are used in the coding stage. The first CNN creates an optimum differential image while the other tries to create a replica of the reconstructed image of the receiver. Decoding is realized by another gray level mode CNN fed by the differential image.
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