图像去噪在非高斯,幂律噪声的存在

Jianbo Gao, Qian Chen, Erik Blasch
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引用次数: 15

摘要

在图像处理中,噪声通常被建模为高斯白噪声来表示一般的传感器和环境杂波,并且已经开发了许多有效的方法来去除高斯噪声。我们在这里表明,在许多情况下,例如太赫兹(ThZ)图像或被波浪表面扭曲的水下图像,噪声可能是高度非高斯的,甚至是幂律分布的重尾。我们认为,在不稳定的环境中,这种噪声可能无处不在,例如在雷达、激光雷达、卫星和光电摄像机获得的图像中。我们发现,即使是最好的去除高斯噪声的方法(块匹配3D变换,BM3D)也不能有效地降低这种噪声。一个基本的问题是如何建立一个适当的框架来适当地处理这种非高斯噪声。我们提出了一种可行的新方法,使用幂律分析,并使用计算机视觉界的知名图像评估其有效性。我们表明,我们称之为阈值中值滤波和BM3D (TM-BM3D)的新方法对所有已知类型的噪声,高斯噪声,盐和胡椒噪声和幂律噪声都有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image denoising in the presence of non-Gaussian, power-law noise
In image processing, noise is usually modeled as white Gaussian noise to represent general sensor and environmental clutter, and many effective methods have been developed to remove Gaussian noise. We show here that in many situations, such as Terahertz (ThZ) images or under-water images distorted by wavy surface, noise may be highly non-Gaussian, and even heavy-tailed with power-law distributions. We perceive that such noise may be ubiquitous, such as in images obtained by radar, LIDAR, satellite, and electro-optical visual cameras, in unsteady environments. We show that such noise cannot be effectively reduced by even the best method (block-matching 3D transformation, BM3D) for removing Gaussian noise. A fundamental issue arises of how to develop a proper framework to aptly deal with such non-Gaussian noise. We propose a viable new approach using power-law analysis, and evaluate its effectiveness using well-known images in computer vision community. We show that the new approach, which we call thresholding-median filtering and BM3D (TM-BM3D), works effective on all known types of noise, Gaussian, salt and pepper, and power-law noise.
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