Title of article
A Spatially Adaptive Nonparametric Regression Image Deblurring
Author/Authors
V. Katkovnik، نويسنده , , K. Egiazarian، نويسنده , , and J. Astola، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
10
From page
1469
To page
1478
Abstract
We propose a novel nonparametric regression method
for deblurring noisy images. The method is based on the local polynomial
approximation (LPA) of the image and the paradigm of intersecting
confidence intervals (ICI) that is applied to define the
adaptive varying scales (window sizes) of the LPA estimators. The
LPA-ICI algorithm is nonlinear and spatially adaptive with respect
to smoothness and irregularities of the image corrupted by additive
noise. Multiresolution wavelet algorithms produce estimates which
are combined from different scale projections. In contrast to them,
the proposed ICI algorithm gives a varying scale adaptive estimate
defining a single best scale for each pixel. In the new algorithm, the
actual filtering is performed in signal domain while frequency domain
Fourier transform operations are applied only for calculation
of convolutions. The regularized inverse andWiener inverse filters
serve as deblurring operators used jointly with the LPA-design directional
kernel filters. Experiments demonstrate the state-of-art
performance of the new estimators which visually and quantitatively
outperform some of the best existing methods.
Keywords
adaptive window size , Adaptive scale , Deblurring , directional local polynomial approximation (LPA) , nonparametricregression.
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Serial Year
2005
Journal title
IEEE TRANSACTIONS ON IMAGE PROCESSING
Record number
397158
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