基于改进对偶树复小波变换的GCV阈值图像去噪

A. Varsha, P. Basu
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引用次数: 10

摘要

噪声抑制是任何图像处理任务的重要组成部分,噪声会显著降低图像质量,从而使观察者难以区分图像的细节,特别是在诊断检查中。经过几十年的研究,关于图像去噪的文章已经大量提出,通过空间滤波或变换域滤波可以降低图像中噪声的影响。在变换域,小波方法在保留图像边缘等细节的同时,提供了较好的去噪效果。离散小波变换(DWT)在图像处理中存在平移不变性和方向选择性差等不确定的缺点。为了克服这些缺点,采用了对偶树复小波变换(DT-CWT),它比传统的小波变换提供了更好的重构。第一个DWT给出变换的实部,第二个DWT给出变换的虚部。在有限冗余的二维及高维空间中,该算法几乎是位移不变的,具有方向选择性。DTCWT在图像去噪和增强等应用方面优于DWT, DTCWT的优点之一是它可以用于实现二维小波变换,相对于二维小波变换,二维小波变换在方向上更具选择性。二维DTCWT在每个尺度上产生12个子带,每个子带都以不同的角度强定向。采用广义交叉验证技术,提出了一种基于对偶树复小波变换的图像去噪方法,对不同阈值的离散小波变换和对偶树复小波变换对不同图像的去噪效果进行了评价,并根据峰值信噪比、平均结构相似度和相关系数等参数进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved dual tree complex wavelet transform based image denoising using GCV thresholding
Noise suppression is an integral part of any image processing task Noise significantly degrades the image quality and hence makes it difficult for the observer to discriminate fine detail of the images especially in diagnostic examinations. Through decades of research, mass articles on image denoising have been proposed The effect of noise in the images can be reduced by using either spatial filtering or transform domain filtering. In transform domain wavelet method provide better denoising while preserving the details of images like edges. The Discrete Wavelet Transform (DWT) has some disadvantages that undetermined its application in image processing as lack of shift invariance and poor directional selectivity. In order to overcome these disadvantages Dual Tree Complex Wavelet Transform (DT-CWT) is used which provide perfect reconstruction over the traditional wavelet transform It employs 2 real DWTs; the first DWT gives the real part of the transform while second DWT gives the imaginary part. It is nearly shift invariant and directionally selective in two and higher dimensions with limited redundancy. The DTCWT outperforms the DWT for applications like image denoising and enhancement One of the advantages of the DTCWT is that it can be used to implement 2D wavelet transforms that are more selective with respect to orientation than is the 2D DWT. The 2D DTCWT produces twelve sub bands at each scale, each of which are strongly oriented at distinct angles. A Dual Tree Complex Wavelet transform based image denoising is proposed which uses generalized cross validation technique The denoising performance for different images using Discrete Wavelet Transform and Dual Tree Complex wavelet transform with different thresholding need to be evaluated Evaluation is carried out in terms of various parameters such as Peak Signal to Noise Ratio, mean Structural Similarity and Coefficient of Correlation.
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