DocumentCode :
1316214
Title :
Prior learning and Gibbs reaction-diffusion
Author :
Zhu, Song Chun ; Mumford, David
Author_Institution :
Dept. of Comput. Sci., Stanford Univ., CA, USA
Volume :
19
Issue :
11
fYear :
1997
fDate :
11/1/1997 12:00:00 AM
Firstpage :
1236
Lastpage :
1250
Abstract :
This article addresses two important themes in early visual computation: it presents a novel theory for learning the universal statistics of natural images, and, it proposes a general framework of designing reaction-diffusion equations for image processing. We studied the statistics of natural images including the scale invariant properties, then generic prior models were learned to duplicate the observed statistics, based on minimax entropy theory. The resulting Gibbs distributions have potentials of the form U(I; Λ, S)=Σα=1kΣx,yλ (α)((F(α)*I)(x,y)) with S={F(1) , F(2),...,F(K)} being a set of filters and Λ={λ(1)(),λ(2)(),...,λ (K)()} the potential functions. The learned Gibbs distributions confirm and improve the form of existing prior models such as line-process, but, in contrast to all previous models, inverted potentials were found to be necessary. We find that the partial differential equations given by gradient descent on U(I; Λ, S) are essentially reaction-diffusion equations, where the usual energy terms produce anisotropic diffusion, while the inverted energy terms produce reaction associated with pattern formation, enhancing preferred image features. We illustrate how these models can be used for texture pattern rendering, denoising, image enhancement, and clutter removal by careful choice of both prior and data models of this type, incorporating the appropriate features
Keywords :
filtering theory; image processing; learning systems; maximum entropy methods; minimax techniques; minimum entropy methods; partial differential equations; statistical analysis; Gibbs distributions; Gibbs reaction-diffusion; anisotropic diffusion; clutter removal; denoising; early visual computation; filters; generic prior models; image enhancement; image processing; minimax entropy theory; natural images; partial differential equations; potential functions; prior learning; reaction-diffusion equations; scale invariant properties; texture pattern rendering; universal statistics; Anisotropic magnetoresistance; Differential equations; Entropy; Filters; Image processing; Minimax techniques; Partial differential equations; Pattern formation; Rendering (computer graphics); Statistical distributions;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/34.632983
Filename :
632983
Link To Document :
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