Restoring Images Degraded by Spatially-Variant Blur
Abstract
Restoration of images that have been blurred by the effects
of a Gaussian blurring function is an ill-posed but well-studied
problem. Any blur that is spatially invariant can be expressed
as a convolution kernel in an integral equation. Fast and effective
algorithms then exist for determining the original image by preconditioned
iterative methods. If the blurring function is spatially variant,
however, then the problem is more difficult. In this work we develop
fast algorithms for forming the convolution and for recovering
the original image when the convolution functions are spatially
variant but have a small domain of support. This assumption leads to a
discrete problem involving a banded matrix. We devise an effective
preconditioner and prove that the preconditioned matrix differs from the
identity by a matrix of small rank plus a matrix of small norm.
Numerical examples are given, related to the Hubble Space Telescope
Wide-Field / Planetary Camera. The algorithms that we develop are
applicable to other ill-posed integral equations as well.
(Also cross-referenced as UMIACS-TR-95-26)