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Adaptive wavelet thresholding for image denoising and compression

机译:自适应小波阈值化图像降噪和压缩

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摘要

The first part of this paper proposes an adaptive, data-driven threshold for image denoising via wavelet soft-thresh- olding. The threshold is derived in a Bayesian framework, and the prior used on the wavelet coefficients is the generalized Gaussian distribution (GGD) widely used in image processing applications. The proposed threshold is simple and closed-form, and it is adap- tive to each subband because it depends on data-driven estimates of the parameters. Experimental results show that the proposed method, called BayesShrink, is typically within 5% of the MSE of the best soft-thresholding benchmark with the image assumed known. It also outperforms Donoho and Johnstone’s SureShrink most of the time. The second part of the paper attempts to further validate recent claims that lossy compression can be used for denoising. The BayesShrink threshold can aid in the parameter selection of a coder designed with the intention of denoising, and thus achieving simultaneous denoising and compression. Specifically, the zero-zone in the quantization step of compression is analogous to the threshold value in the thresholding function. The remaining coder design parameters are chosen based on a criterion derived from Rissanen’s minimum description length (MDL) principle. Experiments show that this compression method does indeed re- move noise significantly, especially for large noise power. However, it introduces quantization noise and should be used only if bitrate were an additional concern to denoising.
机译:本文的第一部分提出了一种自适应的,由数据驱动的阈值,用于通过小波软阈值处理进行图像降噪。该阈值是在贝叶斯框架中得出的,并且在小波系数上使用的先验值是在图像处理应用中广泛使用的广义高斯分布(GGD)。提议的阈值是简单且封闭的形式,并且适用于每个子带,因为它取决于参数的数据驱动估计。实验结果表明,提出的称为BayesShrink的方法通常在假定图像已知的情况下,处于最佳软阈值基准的MSE的5%以内。在大多数情况下,它的性能也优于Donoho和Johnstone的SureShrink。本文的第二部分试图进一步验证最近的说法,即有损压缩可用于降噪。 BayesShrink阈值可以帮助设计用于去噪的编码器的参数选择,从而实现同时去噪和压缩。具体而言,压缩的量化步骤中的零区类似于阈值函数中的阈值。其余的编码器设计参数是根据从Rissanen的最小描述长度(MDL)原理得出的标准进行选择的。实验表明,这种压缩方法确实可以显着消除噪声,尤其是对于较大的噪声功率。但是,它会引入量化噪声,并且仅在比特率成为降噪的另一个考虑因素时才应使用。

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