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A fast parallel algorithm for blind estimation of noise variance

机译:一种盲估计噪声方差的快速并行算法

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摘要

A blind noise variance algorithm that recovers the variance of noise in two steps is proposed. The sample variances are computed for square cells tessellating the noise image. Several tessellations are applied with the size of the cells increasing fourfold for consecutive tessellations. The four smallest sample variance values are retained for each tessellation and combined through an outlier analysis into one estimate. The different tessellations thus yield a variance estimate sequence. The value of the noise variance is determined from this variance estimate sequence. The blind noise variance algorithm is applied to 500 noisy 256*256 images. In 98% of the cases, the relative estimation error was less than 0.2 with an average error of 0.06. Application of the algorithm to differently sized images is also discussed.
机译:提出了一种可分两步恢复噪声方差的盲噪声方差算法。计算方差的样本方差,将噪声图像细分。施加了多个镶嵌,连续的镶嵌的单元格大小增加了四倍。保留每个细分的四个最小样本方差值,并通过离群值分析将其合并为一个估计值。因此,不同的镶嵌产生方差估计序列。从该方差估计序列确定噪声方差的值。盲噪声方差算法应用于500个带噪的256 * 256图像。在98%的情况下,相对估计误差小于0.2,平均误差为0.06。还讨论了该算法在不同尺寸图像上的应用。

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