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Recovering Texture of Denoised Image via its Statistical Analysis

机译:通过统计分析恢复去噪图像的纹理

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This paper proposes a method to recover a texture component which has been lost by weighted nuclear norm minimization – the current state of the art of image denoising. Based on a non-trivial assumption on a statistic between the texture and noise, we can estimate the statistic by using the Stein's lemma. It allows us to recover the texture effectively by using a linear minimum mean squared error estimator (Wiener filter). The experimental results show that our proposed method can improve the image recovery performance of weighted nuclear norm minimization for image denoising (WNNM) in both quantitative and qualitative evaluation.
机译:本文提出了一种方法,用于恢复由于加权核范数最小化而丢失的纹理成分,这是图像去噪技术的当前状态。基于对纹理和噪声之间统计量的非平凡假设,我们可以使用Stein引理估计统计量。它允许我们使用线性最小均方误差估计器(维纳滤波器)有效地恢复纹理。实验结果表明,本文提出的方法在定量和定性评价方面都可以提高加权核规范最小化图像去噪(WNNM)的图像恢复性能。

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