Gamma-Minimax Wavelet Shrinkage for Signals with Low SNR

Dixon Vimalajeewa, A. Dasgupta, F. Ruggeri, B. Vidakovic
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引用次数: 1

Abstract

In this paper, we propose a method for wavelet denoising of signals contaminated with Gaussian noise when prior information about the ${L^{2}}$-energy of the signal is available. Assuming the independence model, according to which the wavelet coefficients are treated individually, we propose simple, level-dependent shrinkage rules that turn out to be Γ-minimax for a suitable class of priors. The proposed methodology is particularly well suited in denoising tasks when the signal-to-noise ratio is low, which is illustrated by simulations on a battery of some standard test functions. Comparison to some commonly used wavelet shrinkage methods is provided.
低信噪比信号的Gamma-Minimax小波收缩
本文提出了一种对高斯噪声污染信号进行小波去噪的方法,当信号的${L^{2}}$-能量的先验信息可用时。假设独立模型,根据小波系数被单独处理,我们提出简单的,水平相关的收缩规则,结果是Γ-minimax为一个合适的先验类别。当信噪比较低时,所提出的方法特别适合于去噪任务,这是通过对一些标准测试函数的模拟来说明的。并与常用的小波收缩方法进行了比较。
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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