Adaptive Hybrid Bivariate Double Density Discrete and Complex Wavelet for Image Denoising

Fahmy, Gamal and Fahmy, Mamdouh F. and Fahmy, Omar (2023) Adaptive Hybrid Bivariate Double Density Discrete and Complex Wavelet for Image Denoising. Journal of Computer and Communications, 11 (02). pp. 39-56. ISSN 2327-5219

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Abstract

Image denoising is an important step in eliminating any noise impact in any image transmission process. Recently we presented two approaches for Bivariate based image denoising. They were Double Density Discrete Wavelet Transform (DD DWT) and Double Density Dual Tree Complex Wavelet Transform (DD CWT). In both techniques we decomposed noisy images with either DD DWT or DD CWT decompositions and then applied the Bivariate based denoising technique for noise removal. In this paper we propose an adaptive hybrid technique for Bivariate based image denoising that is based on the synthesis of DD-DWT bands or DD-CWT bands but with different weights, to deliver enhanced image features with less denoising impact especially around image edges, which is the most effected by noisy transmission channels. This proposed technique has been also enhanced by edge sharpening and Eigen analysis, as two separate stages. Simulation result comparisons have been performed between the proposed hybrid band adaptive DD-DWT and DD-CWT technique and the two primary techniques DD-DWT, DD- CWT, as well as other superior literature techniques such the original bivariate denoising technique with both original Complex Wavelet Transform and Double Density decompositions. This work in specific compares between Double Density DWT and Double Density CWT decompositions, proposes new filter design that suits each of them and proposes a hybrid technique between as will be shown.

Item Type: Article
Subjects: Institute Archives > Medical Science
Depositing User: Managing Editor
Date Deposited: 14 Apr 2023 04:50
Last Modified: 01 Feb 2024 03:53
URI: http://eprint.subtopublish.com/id/eprint/2017

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