DocumentCode :
1526074
Title :
The iDUDE Framework for Grayscale Image Denoising
Author :
Motta, Giovanni ; Ordentlich, Erik ; Ramírez, Ignacio ; Seroussi, Gadiel ; Weinberger, Marcelo J.
Author_Institution :
Personal Syst. Group, Hewlett-Packard Co., San Diego, CA, USA
Volume :
20
Issue :
1
fYear :
2011
Firstpage :
1
Lastpage :
21
Abstract :
We present an extension of the discrete universal denoiser DUDE, specialized for the denoising of grayscale images. The original DUDE is a low-complexity algorithm aimed at recovering discrete sequences corrupted by discrete memoryless noise of known statistical characteristics. It is universal, in the sense of asymptotically achieving, without access to any information on the statistics of the clean sequence, the same performance as the best denoiser that does have access to such information. The DUDE, however, is not effective on grayscale images of practical size. The difficulty lies in the fact that one of the DUDE´s key components is the determination of conditional empirical probability distributions of image samples, given the sample values in their neighborhood. When the alphabet is relatively large (as is the case with grayscale images), even for a small-sized neighborhood, the required distributions would be estimated from a large collection of sparse statistics, resulting in poor estimates that would not enable effective denoising. The present work enhances the basic DUDE scheme by incorporating statistical modeling tools that have proven successful in addressing similar issues in lossless image compression. Instantiations of the enhanced framework, which is referred to as iDUDE, are described for examples of additive and nonadditive noise. The resulting denoisers significantly surpass the state of the art in the case of salt and pepper (S&P) and -ary symmetric noise, and perform well for Gaussian noise.
Keywords :
Gaussian noise; data compression; image coding; image colour analysis; image denoising; statistical distributions; Gaussian noise; M-ary symmetric noise; discrete memoryless noise; discrete universal denoiser; empirical probability distributions; grayscale image denoising; iDUDE framework; lossless image compression; low-complexity algorithm; small-sized neighborhood; statistical characteristics; statistical modeling tools; Context-based denoising; Gaussian noise; discrete universal denoiser (DUDE) algorithm; discrete universal denoising; image denoising; impulse noise;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2010.2053939
Filename :
5497153
Link To Document :
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