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首页> 外文期刊>IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences >Separable 2D Lifting Using Discrete-Time Cellular Neural Networks for Lossless Image Coding
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Separable 2D Lifting Using Discrete-Time Cellular Neural Networks for Lossless Image Coding

机译:使用离散时间细胞神经网络的可分离2D提升进行无损图像编码

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摘要

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.
机译:提升方案是构造线性和非线性小波变换的一种有效且灵活的方法。本文提出了一种基于离散时间细胞神经网络(DT-CNN)的提升方案的无损图像编码新技术。在我们提出的方法中,利用DT-CNN的非线性内插动力学对图像进行内插,并且由于DT-CNN的输出函数用作多级量化函数,因此我们的方法构成了用于无损图像编码的整数提升方案。此外,与仅使用B模板的常规CNN图像编码方法相比,可以有效地使用A模板的非线性插值动力学。实验结果表明,与使用线性滤波器的传统提升方法相比,编码性能更好。

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