Title :
Towards dictionary learning from images with non Gaussian noise
Author :
Chainais, Pierre
Author_Institution :
LAGIS, Ecole Centrale Lille, Villeneuve d´´Ascq, France
Abstract :
We address the problem of image dictionary learning from noisy images with non Gaussian noise. This problem is difficult. As a first step, we consider the extreme sparse code given by vector quantization, i.e. each pixel is finally associated to 1 single atom. For Gaussian noise, the natural solution is K-means clustering using the sum of the squares of differences between gray levels as the dissimilarity measure between patches. For non Gaussian noises (Poisson, Gamma,...), a new measure of dissimilarity between noisy patches is necessary. We study the use of the generalized likelihood ratios (GLR) recently introduced by Deledalle et al. in [1] to compare non Gaussian noisy patches. We propose a K-medoids algorithm generalizing the usual Linde-Buzo-Gray K-means using the GLR based dissimilarity measure. We obtain a vector quantization which provides a dictionary that can be very large and redundant. We illustrate our approach by dictionaries learnt from images featuring non Gaussian noise, and present preliminary denoising results.
Keywords :
Gaussian noise; image coding; image colour analysis; image denoising; pattern clustering; vector quantisation; GLR; K-means clustering; K-medoids algorithm; Linde-Buzo-Gray K-means; extreme sparse code; generalized likelihood ratios; gray levels; image dictionary learning; noisy images; nonGaussian noise; vector quantization; Dictionaries; Encoding; Gaussian noise; Noise measurement; Noise reduction; PSNR; clustering; denoising; dictionary learning; patch similarity;
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2012 IEEE International Workshop on
Conference_Location :
Santander
Print_ISBN :
978-1-4673-1024-6
Electronic_ISBN :
1551-2541
DOI :
10.1109/MLSP.2012.6349731