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Bayesian image deblurring and boundary effects

机译:贝叶斯图像去模糊和边界效应

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摘要

We consider the deconvolution problem of estimating an image from a noisy blurred version of it. In particular, we are interested in the boundary effects: since the convolution operator is non-local, the blurred image depend on the scenery outside the field of view. Ignoring this dependency leads to image distortion known as boundary effect. In this article, we consider two different approaches to treat the non-locality. One is to estimate the image extended outside the field of view. The other is to treat the influence of the out of view scenery as boundary clutter. Both approaches are considered from the Bayesian point of view.
机译:我们考虑从图像的噪声模糊版本估计图像的反卷积问题。特别地,我们对边界效应感兴趣:由于卷积算子是非局部的,因此模糊图像取决于视场外的风景。忽略这种依赖性会导致图像失真,称为边界效应。在本文中,我们考虑了两种处理非本地性的方法。一种是估计超出视野的图像。另一种是将视线外景的影响视为边界混乱。从贝叶斯的角度考虑这两种方法。

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