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Nonparametric estimation of a point-spread function in multivariate problems

机译:多元问题中点扩散函数的非参数估计

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摘要

The removal of blur from a signal, in the presence of noise, is readily accomplished if the blur can be described in precise mathematical terms. However, there is growing interest in problems where the extent of blur is known only approximately, for example in terms of a blur function which depends on unknown parameters that must be computed from data. More challenging still is the case where no parametric assumptions are made about the blur function. There has been a limited amount of work in this setting, but it invariably relies on iterative methods, sometimes under assumptions that are mathematically convenient but physically unrealistic (e.g., that the operator defined by the blur function has an integrable inverse). In this paper we suggest a direct, noniterative approach to nonparametric, blind restoration of a signal. Our method is based on a new, ridge-based method for deconvolution, and requires only mild restrictions on the blur function. We show that the convergence rate of the method is close to optimal, from some viewpoints, and demonstrate its practical performance by applying it to real images.
机译:如果可以用精确的数学术语描述模糊,则很容易实现在存在噪声的情况下从信号中去除模糊。然而,人们对问题的兴趣日益增长,在这些问题中,模糊程度仅是大致已知的,例如,模糊函数取决于必须从数据中计算出的未知参数。在没有对模糊函数进行参数假设的情况下,更具挑战性。在这种情况下,工作量有限,但是总是依赖于迭代方法,有时是在数学上方便但物理上不现实的假设下进行的(例如,由模糊函数定义的算子具有可积的逆)。在本文中,我们建议一种直接的,非迭代的方法来对信号进行非参数的盲恢复。我们的方法基于一种新的基于脊的反卷积方法,并且仅对模糊函数有轻微的限制。我们从某些角度表明该方法的收敛速度接近最佳,并通过将其应用于实际图像来证明其实际性能。

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