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Cascadic multilevel methods for fast nonsymmetric blur- and noise-removal

机译:级联多级方法用于快速非对称模糊和噪声消除

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摘要

Image deblurring is a discrete ill-posed problem. This paper discusses cascadic multilevel methods designed for the restoration of images that have been contaminated by nonsymmetric blur and noise. Prolongation is carried out by nonlinear edge-preserving and noise-reducing operators, while restrictions are determined by weighted local least-squares approximation. The restoration problem is on each level solved by an iterative method, with the number of iterations determined by the discrepancy principle. The performance of several iterative methods is compared. Computed examples demonstrate the effectiveness of the image restoration methods proposed. The discrepancy principle requires that an estimate of the norm of the noise in the contaminated image be available. We illustrate how such an estimate can be computed with the aid of the nonlinear Perona-Malik diffusion equation.
机译:图像去模糊是一个离散的不适定问题。本文讨论了级联多级方法,该方法专为还原受非对称模糊和噪声污染的图像而设计。延长是由非线性边缘保留和降噪算子执行的,而限制则由加权局部最小二乘近似确定。恢复问题在每个级别上都是通过迭代方法解决的,迭代次数由差异原理确定。比较了几种迭代方法的性能。计算实例证明了所提出的图像恢复方法的有效性。差异原理要求对受污染图像中的噪声范数进行估算。我们说明了如何借助非线性Perona-Malik扩散方程来计算这种估计。

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