Blind and
Semi-Blind Deblurring of Natural Images
(Abstract and MATLAB code)
Abstract (of [1]):
A method for blind image deblurring
is presented. The method only makes weak assumptions about the blurring filter
and is able to undo a wide variety of blurring degradations. To overcome the
ill-posedness of the blind image deblurring
problem, the method includes a learning technique which initially focuses on
the main edges of the image and gradually takes details into account. A new
image prior, which includes a new edge detector, is used. The method is able to
handle unconstrained blurs, but also allows the use of constraints or of prior
information on the blurring filter, as well as the use of filters
defined in a parametric manner. Furthermore, it works in both
single-frame and multiframe scenarios. The use of
constrained blur models appropriate to the problem at hand, and/or of multiframe scenarios, generally improves the deblurring results. Tests performed on monochrome and color
images, with various synthetic and real-life degradations, without and with
noise, in single-frame and multiframe scenarios,
showed good results, both in subjective terms and in terms of the increase of
signal to noise ratio (ISNR) measure. In comparisons with other state of the
art methods, our method yields better results, and shows to be applicable to a
much wider range of blurs.
In [1,2] we propose to
compute the restoration quality of blind
image debluring (BID) method using an adapted
version of the improved signal to noise
ratio (ISNR) measure, so that it would be invariant to the variability of
the solutions that do not degrade the quality of the reconstructed image, i. e. a measure invariant to: 1) any
affine transformation of the scale of intensities, 2) a small translations (in
opposite directions) of the estimated image and blurring filter. The MATLAB
code for this adapted ISNR measure is also available ahead.
More recently, we have proposed an automatic stopping
criteria for the BID method of [1,2] based on measures
of whiteness (see [3,4], and the webpage of
this measures). The MATLAB code for these measures is also available in the
following package.
REFERENCES:
References on this
BID approach:
[1] M. S. C. Almeida and L.
B. Almeida, "Blind and Semi-Blind Deblurring of Natural Images", IEEE Trans. Image Processing, Vol.19, pp. 36-52, January, 2010. (Preprint
PDF, Abstract and MATLAB code)
[2] M. S. C. Almeida and L. B. Almeida, “Blind deblurring
of natural images”, IEEE International
Conference on Acoustics, Speech and Signal
Processing - ICASSP’ 2008,
March, Las Vegas, 2008. (PDF, Poster)
References on
Measures of Whiteness for stopping criteria (webpage here):
[3] M. S. C. Almeida and M. A. T.
Figueiredo, “Stopping
Criteria for Iterative Blind and Non-Blind Image Deblurring
Algorithms Based on Residual Whiteness Measures”, IEEE Trans Image Processing, vol. 22, nº7, pp.2751-63, 2013. (Abstract and MATLAB code)
[4] M. S. C. Almeida and M. A. T. Figueiredo,
“New
stopping criteria for iterative blind image deblurring
based on residual whiteness measures”, IEEE Workshop on Statistical Signal Processing – SSP’2011, Nice, France, 2011.
References on a newer (faster and better) version of
this BID approach (webpage here):
[5] M. S. C. Almeida and M. A. T.
Figueiredo,, "Blind Image Deblurring
with Unknown Boundaries Using the Alternating Direction Method of
Multipliers", IEEE International Conf. on Image Processing –
ICIP’2013, Melbourne, Australia,
September, 2013.
MATLAB
Code: BID method + ISNR measures for
BID + Whiteness measures for stopping criteria. This code includes the extra possibility of deblurring with unknown boundary conditions (UBC).
If you find any
bug, please report it to me: M. S. C. Almeida. Thank
you!
LICENSE: This code is copyright of Luís B.
Almeida, Mário A. T. Figueiredo and
Mariana S.C. Almeida. Free permission is given for
their use for nonprofit research purposes. Any other use is prohibited, unless
a license is previously obtained.
This package is compressed with 7-zip.