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Multiple wavelet threshold estimation by generalized cross validation for images with correlated noise

机译:具有相关噪声的图像通过广义交叉验证进行多小波阈值估计

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摘要

Denoising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and keep or shrink the coefficients with absolute value above the threshold. The optimal threshold minimizes the error of the result as compared to the unknown, exact data. To estimate this optimal threshold, we use generalized cross validation. This procedure does not require an estimation for the noise energy. Originally, this method assumes uncorrelated noise. In this paper, we describe how we can extend it to images with correlated noise.
机译:基于小波阈值的去噪算法将小波系数替换为零,并保持或缩小绝对值高于阈值的系数。与未知的精确数据相比,最佳阈值可将结果的误差降至最低。为了估计此最佳阈值,我们使用广义交叉验证。该过程不需要估计噪声能量。最初,此方法假定不相关的噪声。在本文中,我们描述了如何将其扩展到具有相关噪声的图像。

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