A Simplified Technique Of Design For Double Density Wavelets With Enhanced Denoising APPLICATIONS

G. Fahmy, M. Fahmy, O. Fahmy
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Abstract

Denoising Images is a crucial step in noise removal in any data or image communication problem. Recently two image denoising techniques were presented that depends on bivariate analysis. These two techniques were called Double Density Discrete Wavelet Transform (DD DWT) and Double Density Dual Tree Complex Wavelet Transform (DD CWT). They relayed on the decomposition of noisy images with either DD CWT or DD DWT decompositions. This decomposition was after the bivariate based shrinkage technique was applied to exploit the wavelet parent and children correlation for better denoising performance. In this paper we present a novel filter design technique for a DD DWT structure for denoising applications. It composed of 3 dimensional cascaded orthogonal sections. This proposed 3-channel Double Density Wavelet decomposition structure is simple and is fast in terms of convergence. It overcomes most problems for other filter design techniques of being slowly iterative and relays on randomness in parameter optimization. The proposed filter design DD-DWT structure guarantees the Perfect Reconstruction PR and the Alias Cancellation AC conditions and is suitable for VLSI iterative designs. Illustrative examples for the usage of the proposed DD-DWT based design in different image denoising applications are shown in comparison with other denoising structures from recent literature.
增强去噪应用的双密度小波简化设计技术
在任何数据或图像通信问题中,图像去噪是去噪的关键步骤。近年来提出了两种基于二元分析的图像去噪技术。这两种技术分别被称为双密度离散小波变换(DD DWT)和双密度对偶树复小波变换(DD CWT)。他们采用DD CWT或DD DWT分解方法对噪声图像进行分解。这种分解是在基于双变量的收缩技术应用后,利用小波父级和子级相关性,以获得更好的去噪性能。在本文中,我们提出了一种新的滤波器设计技术,用于DD DWT结构的去噪应用。它由三维级联正交截面组成。提出的三通道双密度小波分解结构简单,收敛速度快。它克服了其他滤波器设计技术迭代慢、参数优化依赖随机性的缺点。所提出的滤波器设计DD-DWT结构保证了完美重构PR和混叠消除AC条件,适用于VLSI迭代设计。本文给出了基于DD-DWT的设计在不同图像去噪应用中的示例,并与近期文献中的其他去噪结构进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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