Fast and reliable noise estimation algorithm based on statistical hypothesis tests

Ping Jiang, Jianzhou Zhang
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引用次数: 6

Abstract

Image noise estimation is a very important topic in digital image processing. This paper presents a fast and reliable noise estimation algorithm for additive white Gaussian noise (WGN). The proposed algorithm provides a way to measure the degree of image feature based on statistical hypothesis tests (SHT). Firstly, the proposed algorithm distinguishes homogeneous blocks and non-homogeneous blocks by the degree of image feature, and then sets the minimal variance of these homogeneous blocks as a reference variance. Secondly, the proposed algorithm finds more homogeneous blocks whose variances are similar to the reference variance and which are not non-homogeneous blocks. Lastly, the noise variance is estimated from these homogeneous blocks by a weighted averaging process according to the degree of image feature. Experiments show that the proposed algorithm performs well and reliably for different types of images over a large range of noise levels.
基于统计假设检验的快速可靠的噪声估计算法
图像噪声估计是数字图像处理中的一个重要课题。提出了一种快速可靠的加性高斯白噪声估计算法。该算法提供了一种基于统计假设检验(SHT)的图像特征程度度量方法。该算法首先根据图像特征的程度区分同质块和非同质块,然后将这些同质块的最小方差作为参考方差。其次,该算法寻找更多方差与参考方差相近且非非齐次的块;最后,根据图像特征的程度,对这些均匀块进行加权平均,估计噪声方差。实验结果表明,该算法对不同类型的图像在较大的噪声范围内具有良好的性能和可靠性。
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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