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Context adaptive image denoising through modeling of curvelet domain statistics

机译:通过Curvelet域统计建模对上下文自适应图像去噪

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We perform a statistical analysis of curvelet coefficients, distinguishing between two classes of coefficients: those that contain a significant noise-free component, which we call the "signal of interest," and those that do not. By investigating the marginal statistics, we develop a prior model for curvelet coefficients. The analysis of the joint intra- and inter-band statistics enables us to develop an appropriate local spatial activity indicator for curvelets. Finally, based on our findings, we present a novel denoising method, inspired by a recent wavelet domain method called ProbShrink. The new method outperforms its wavelet-based counterpart and produces results that are close to those of state-of-the-art denoisers.
机译:我们对Curvelet系数进行统计分析,以区分两类系数:包含显着无噪声成分的系数(我们称为“感兴趣信号”)和不包含这些系数的系数。通过调查边际统计数据,我们为Curvelet系数开发了一个先验模型。联合带内和带间统计的分析使我们能够为Curvelet开发适当的局部空间活动指标。最后,根据我们的发现,我们提出了一种新颖的降噪方法,该方法受到了最新的小波域方法ProbShrink的启发。新方法的性能优于其基于小波的方法,并且产生的结果接近于最新的去噪器。

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