Image restoration by minimizing objective functions with nonsmooth data-fidelity terms

M. Nikolova
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引用次数: 13

Abstract

We present a theoretical study of the recovery of images x from noisy data y by minimizing a regularized cost-function F(x,y)=/spl Psi/(x,y)+/spl alpha//spl Phi/(x), where /spl Psi/ is a data-fidelity term, /spl Phi/ is a smooth regularisation term and /spl alpha/>0 is a parameter. Generally /spl Psi/ is a smooth function; only a few papers make an exception. Non-smooth data-fidelity terms are avoided in image processing. In spite of this, we consider both smooth and non-smooth data-fidelity terms. Our ambition is to catch essential features exhibited by the local minimizers of F in relation with the smoothness of /spl Psi/. Cost-functions with non-smooth data-fidelity exhibit a strong mathematical property which can be used in various ways. We then construct a cost-function allowing aberrant data to be detected and selectively smoothed. The obtained results advocate the use of non-smooth data-fidelity terms.
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通过最小化具有非光滑数据保真度项的目标函数的图像恢复
我们通过最小化正则化成本函数F(x,y)=/spl Psi/(x,y)+/spl alpha//spl Phi/(x),提出了从噪声数据y中恢复图像x的理论研究,其中/spl Psi/是数据保真度项,/spl Phi/是平滑正则化项,/spl alpha/>是参数。通常/spl Psi/是光滑函数;只有少数报纸例外。在图像处理中避免了不平滑的数据保真度项。尽管如此,我们考虑了平滑和非平滑数据保真度术语。我们的目标是抓住F的局部极小值与/spl Psi/的平滑度相关的基本特征。具有非光滑数据保真度的成本函数具有很强的数学性质,可用于多种方法。然后,我们构建一个成本函数,允许异常数据被检测和选择性平滑。所得结果提倡使用非平滑数据保真度术语。
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