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Image deblurring and denoising with non-local regularization constraint

机译:非局部正则化约束的图像去抑制与去噪

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In this paper, we investigate the use of the non-local means (NLM) denoising approach in the context of image deblurring and restoration. We propose a novel deblurring approach that utilizes a non-local regularization constraint. Our interest in the NLM principle is its potential to suppress noise while effectively preserving edges and texture detail. Our approach leads to an iterative cost function minimization algorithm, similar to common deblurring :methods, but incorporating update terms due to the non-local regularization constraint. The dataadaptive noise suppression weights in the regularization term are updated and improved at each iteration, based on the partially denoised and deblurred result. We compare our proposed algorithm to conventional deblurring methods, including deblurring with total variation (TV) regularization. We also compare our algorithm to combinations of the NLM-based filter followed by conventional deblurring methods. Our initial experimental results demonstrate that the use of NLM-based filtering and regularization seems beneficial in the context of image deblurring, reducing the risk of over-smoothing or suppression of texture detail, while suppressing noise.Furthermore, the proposed deblurring algorithm with non-local regularization outperforms other methods, such as deblurring with TV regularization or separate NLM-based denoising followed by deblurring.
机译:在本文中,我们研究了在图像去纹和恢复的背景下的非局部方式(NLM)去噪方法。我们提出了一种新颖的去掩模方法,其利用非局部正则化约束。我们对NLM原则的兴趣是它有可能抑制噪音,同时有效保留边缘和纹理细节。我们的方法导致迭代成本函数最小化算法,类似于常见的去掩盖:方法,但由于非局部正则化约束而结合更新术语。基于部分去噪和去掩盖结果,在每次迭代时更新并改善正则化术语中的数据添加噪声抑制权重。我们将所提出的算法与常规的去掩盖方法进行比较,包括具有总变化(TV)正则化的去纹理。我们还将算法与基于NLM的过滤器的组合进行了比较,然后进行常规的去掩盖方法。我们的初始实验结果表明,使用基于NLM的滤波和正则化似乎有益,在图像去抑制的背景下,降低了纹理细节的过平滑或抑制的风险,同时抑制了噪声。诸如非抑制噪声。局部正则化优于其他方法,例如用电视正则化或分离基于NLM的去噪,然后进行去束缚。

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