DocumentCode :
1459427
Title :
Iterative Gaussianization: From ICA to Random Rotations
Author :
Laparra, Valero ; Camps-Valls, Gustavo ; Malo, JesÙs
Author_Institution :
Image Process. Lab., Univ. de Valencia, Paterna, Spain
Volume :
22
Issue :
4
fYear :
2011
fDate :
4/1/2011 12:00:00 AM
Firstpage :
537
Lastpage :
549
Abstract :
Most signal processing problems involve the challenging task of multidimensional probability density function (PDF) estimation. In this paper, we propose a solution to this problem by using a family of rotation-based iterative Gaussianization (RBIG) transforms. The general framework consists of the sequential application of a univariate marginal Gaussianization transform followed by an orthonormal transform. The proposed procedure looks for differentiable transforms to a known PDF so that the unknown PDF can be estimated at any point of the original domain. In particular, we aim at a zero-mean unit-covariance Gaussian for convenience. RBIG is formally similar to classical iterative projection pursuit algorithms. However, we show that, unlike in PP methods, the particular class of rotations used has no special qualitative relevance in this context, since looking for interestingness is not a critical issue for PDF estimation. The key difference is that our approach focuses on the univariate part (marginal Gaussianization) of the problem rather than on the multivariate part (rotation). This difference implies that one may select the most convenient rotation suited to each practical application. The differentiability, invertibility, and convergence of RBIG are theoretically and experimentally analyzed. Relation to other methods, such as radial Gaussianization, one-class support vector domain description, and deep neural networks is also pointed out. The practical performance of RBIG is successfully illustrated in a number of multidimensional problems such as image synthesis, classification, denoising, and multi-information estimation.
Keywords :
Gaussian processes; image classification; image denoising; independent component analysis; iterative methods; neural nets; support vector machines; transforms; RBIG convergence; RBIG differentiability; RBIG invertibility; deep neural networks; image classification; image denoising; image synthesis; independent component analysis; iterative projection pursuit algorithms; multiinformation estimation; one-class support vector domain description; orthonormal transform; radial Gaussianization; rotation-based iterative Gaussianization transforms; signal processing; univariate marginal Gaussianization transform; zero-mean unit-covariance Gaussian; Convergence; Estimation; Jacobian matrices; Principal component analysis; Probability density function; Redundancy; Transforms; Gaussianization; independent component analysis; multi-information; negentropy; principal component analysis; probability density estimation; projection pursuit; Algorithms; Computer Simulation; Humans; Neural Networks (Computer); Normal Distribution; Principal Component Analysis; Rotation; Wavelet Analysis;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2011.2106511
Filename :
5720319
Link To Document :
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