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Localized and computationally efficient approach to shift-variant image deblurring

机译:局部和计算上的转换变体图像去纹理方法

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A new localized and computationally efficient approach is presented for shift/space-variant image restoration. Unlike conventional approaches, it models shift-variant blurring in a completely local form based on the recently proposed Rao Transform (RT). RT facilitates almost exact inversion of the blurring process locally and permits very fine-grain parallel implementation. The new approach naturally exploits the spatial locality of blurring kernels and smoothness of underlying focused images. It formulates the deblurring problem in terms of local parameters that are less correlated than raw image data. It is a fundamental advance that is general and not limited to any specific form of the blurring kernel such as a Gaussian. It has significant theoretical and computational advantages in comparison with conventional approaches such as those based on Singular Value Decomposition of blurring kernel matrices. Experimental results are presented for both synthetic and real image data. This approach is also relevant to solving integral equations.
机译:介绍了新的本地化和计算有效的方法,用于换档/空间变量图像恢复。与传统方法不同,基于最近提出的RAO变换(RT),它以完全局部形式模拟移位变体模糊。 RT促进在本地精确地反转模糊过程,允许非常细粒度的平行实现。新方法自然利用模糊核的空间局部,以及基础聚焦图像的平滑度。它在与原始图像数据不太相关的局部参数方面制定了去掩缝问题。这是一般的基本进步,不限于诸如高斯的模糊内核的任何特定形式。与诸如基于模糊核矩阵的奇异值分解的传统方法相比,它具有显着的理论和计算优势。介绍了合成和真实图像数据的实验结果。该方法也与求解整体方程相关。

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