基于Hodrick-Prescott滤波的图像去噪

G. Thomas
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引用次数: 0

摘要

有效地处理成像传感器或外部源可能引入数字图像的噪声是一个非常有趣的问题。多年来,人们提出了去噪技术来衰减加性随机噪声,但毫无疑问,没有一种算法可以完全消除它。不幸的是,本文不会提出这样的主张,但它改变了如何对被加性噪声损坏的图像去噪的方法观点。这个问题被认为是将随机趋势分量添加到随机不规则项中所表示的原始图像,但其方式与Hodrick和Prescott在经济学领域研究快速波动(即噪声)的方法类似,即相对于时间序列(即图像)中较慢的趋势而言,快速波动(即噪声)过于迅速。与基于小波变换和自适应维纳滤波技术相比,该方法定性地取得了较好的效果。所提出的技术对于乘性噪声的情况也显示出鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image de-noising based on Hodrick-Prescott filtering
It is of great interest to effectively deal with noise that imaging sensors or external sources may have introduced to a digital image. During the years, de-noising techniques have been proposed to attenuate additive random noise but without a doubt it can be said that no algorithm exist that can completely eliminate it. Unfortunately this paper will not make such a claim but it changes the approach point of view on how to de-noise an image that has been corrupted by additive noise. The problem is viewed as having an original image represented by a stochastic trend component added to a random irregular term but in a similar way to what has been done by Hodrick and Prescott in the area of economics to study rapid fluctuations i.e. noise, that are too rapid with respect to a slower trend in a time series i.e. image. The method qualitatively produced good results when comparing it to wavelet based and adaptive Wiener filtering techniques. The proposed technique has also shown to be robust for the case of multiplicative noise.
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