Title of article
Blind Image Restoration With Eigen-Face Subspace
Author/Authors
Y. Liao and X. Lin، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
7
From page
1766
To page
1772
Abstract
Performance of conventional image restoration
methods is sensitive to signal-to-noise ratios. For heavily blurred
and noisy human facial images, information contained in the
eigen-face subspace can be used to compensate for the lost details.
The blurred image is decomposed into the eigen-face subspace
and then restored with a regularized total constrained least square
method. With Generalized cross-validation, a cost function is
deduced to include two unknown parameters: the regularization
factor and one parameter relevant to point spread function. It
is shown that, in minimizing the cost function, the cost function
dependence of any one unknown parameter can be separated
from the other one, which means the cost function can be considered
roughly, depending on single variable in an iterative
algorithm. With realistic constraints on the regularized factor, a
global minimum for the cost function is achieved to determine the
unknown parameters. Experiments are presented to demonstrate
the effectiveness and robustness of the new method.
Keywords
least-squaresmethods , singular value decomposition (SVD). , image restoration , Face recognition
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Serial Year
2005
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Record number
397183
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