Image denoising using wavelet thresholding and model selection

Shi Zhong, V. Cherkassky
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引用次数: 99

Abstract

This paper describes wavelet thresholding for image denoising under the framework provided by statistical learning theory a.k.a. Vapnik-Chervonenkis (VC) theory. Under the framework of VC-theory, wavelet thresholding amounts to ordering of wavelet coefficients according to their relevance to accurate function estimation, followed by discarding insignificant coefficients. Existing wavelet thresholding methods specify an ordering based on the coefficient magnitude, and use threshold(s) derived under Gaussian noise assumption and asymptotic settings. In contrast, the proposed approach uses orderings better reflecting the statistical properties of natural images, and VC-based thresholding developed for finite sample settings under very general noise assumptions. A tree structure is proposed to order the wavelet coefficients based on its magnitude, scale and spatial location. The choice of a threshold is based on the general VC method for model complexity control. Empirical results show that the proposed method outperforms Donoho's (1992, 1995) level dependent thresholding techniques and the advantages become more significant under finite sample and non-Gaussian noise settings.
基于小波阈值和模型选择的图像去噪方法
本文在统计学习理论(即Vapnik-Chervonenkis (VC)理论)提供的框架下,描述了用于图像去噪的小波阈值化。在vc理论框架下,小波阈值化就是根据小波系数与精确函数估计的相关性对小波系数进行排序,然后丢弃不重要的系数。现有的小波阈值方法根据系数大小指定一个排序,并使用在高斯噪声假设和渐近设置下得到的阈值。相比之下,所提出的方法使用排序更好地反映自然图像的统计特性,并且在非常一般的噪声假设下为有限样本设置开发了基于vc的阈值。基于小波系数的大小、尺度和空间位置,提出了一种树形结构对小波系数进行排序。阈值的选择是基于一般VC方法进行模型复杂度控制的。实证结果表明,该方法优于Donoho(1992,1995)的水平依赖阈值技术,并且在有限样本和非高斯噪声设置下优势更加显著。
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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