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首页> 外文期刊>Inverse Problems in Science & Engineering >On image restoration from random sampling noisy frequency data with regularization
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On image restoration from random sampling noisy frequency data with regularization

机译:关于随机抽样噪声频率数据与正规化的图像恢复

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摘要

Consider the image restoration using random sampling noisy frequency data by total variation regularization. By exploring image sparsity property under wavelet expansion, we establish an optimization model with two regularizing terms specifying image sparsity and edge preservation on the restored image. The choice strategy for the regularizing parameters is rigorously set up together with corresponding error estimate on the restored image. The cost functional with data-fitting in the frequency domain is minimized using the Bregman iteration scheme. By deriving the gradient of the cost functional explicitly, the minimizer of the cost functional at each Bregman step is also generated by an inner iteration process with Tikhonov regularization, which is implemented stably and efficiently due to the special structure of the regularizing iterative matrix. Numerical tests are given to show the validity of the proposed scheme.
机译:考虑通过总变化正规化使用随机采样噪声频率数据的图像恢复。 通过在小波扩展下探索图像稀疏性,我们建立了一个优化模型,两个正规术语指定了恢复图像上的图像稀疏和边缘保存。 正规化参数的选择策略与恢复图像的相应误差估计一起进行严格设置。 使用Bregman迭代方案最小化频域中的数据拟合的成本功能。 通过明确地导出成本函数的梯度,每个BREGMAN步骤的成本功能的最小值也是由具有Tikhonov正规的内部迭代过程产生,这是由于正规化迭代矩阵的特殊结构而稳定且有效地实现。 给出了数值测试来显示所提出的方案的有效性。

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