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Shearlet-Based Total Variation Diffusion for Denoising

机译:基于Shearlet的总变异扩散以进行降噪

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We propose a shearlet formulation of the total variation (TV) method for denoising images. Shearlets have been mathematically proven to represent distributed discontinuities such as edges better than traditional wavelets and are a suitable tool for edge characterization. Common approaches in combining wavelet-like representations such as curvelets with TV or diffusion methods aim at reducing Gibbs-type artifacts after obtaining a nearly optimal estimate. We show that it is possible to obtain much better estimates from a shearlet representation by constraining the residual coefficients using a projected adaptive total variation scheme in the shearlet domain. We also analyze the performance of a shearlet-based diffusion method. Numerical examples demonstrate that these schemes are highly effective at denoising complex images and outperform a related method based on the use of the curvelet transform. Furthermore, the shearlet-TV scheme requires far fewer iterations than similar competitors.
机译:我们提出了总变异(TV)方法的去噪图像的剪切波公式。数学上已经证明了Shearlets可以比传统的小波更好地表示诸如边缘的分布式不连续性,并且是进行边缘特征化的合适工具。将诸如小波的小波表示形式与TV或扩散方法相结合的常用方法旨在在获得接近最佳的估计值后减少吉布斯型伪影。我们表明,通过在小波域中使用投影自适应总变化方案约束残差系数,可以从小波波表示中获得更好的估计。我们还分析了基于小波的扩散方法的性能。数值算例表明,这些方案在消除复杂图像噪声方面非常有效,并且优于基于Curvelet变换的相关方法。此外,与类似的竞争者相比,无声电视方案所需的迭代次数要少得多。

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