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IMAGE DENOISING BASED ON WAVELET SHRINKAGE USING NEIGHBOR AND LEVEL DEPENDENCY

机译:利用小波和水平相关性基于小波收缩的图像去噪

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Since Donoho et al. proposed the wavelet thresholding method for signal denoising, many different denoising approaches have been suggested. In this paper, we present three different wavelet shrinkage methods, namely NeighShrink, NeighSure and NeighLevel. NeighShrink thresholds the wavelet coefficients based on Donoho’s universal threshold and the sum of the squares of all the wavelet coefficients within a neighborhood window. NeighSure adopts Stein's unbiased risk estimator (SURE) instead of the universal threshold of NeighShrink so as to obtain the optimal threshold with minimum risk for each subband. NeighLevel uses parent coefficients in a coarser level as well as neighbors in the same subband. We also apply a multiplying factor for the optimal universal threshold in order to get better denoising results. We found that the value of the constant is about the same for different kinds and sizes of images. Experimental results show that our methods give comparatively higher peak signal to noise ratio (PSNR), are much more efficient and have less visual artifacts compared to other methods.
机译:由于Donoho等。提出了用于信号去噪的小波阈值方法,已经提出了许多不同的去噪方法。在本文中,我们提出了三种不同的小波收缩方法,分别是NeighShrink,NeighSure和NeighLevel。 NeighShrink阈值基于Donoho的通用阈值和邻域窗口内所有小波系数的平方和来确定小波系数的阈值。 NeighSure采用Stein的无偏风险估计器(SURE)代替NeighShrink的通用阈值,以便获得每个子带具有最小风险的最佳阈值。 NeighLevel使用较粗糙级别的父系数以及同一子带中的邻居系数。我们还为最佳通用阈值应用了一个乘数,以便获得更好的去噪结果。我们发现常数的值对于不同种类和大小的图像大约相同。实验结果表明,与其他方法相比,我们的方法具有相对较高的峰值信噪比(PSNR),效率更高,并且视觉伪影更少。

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