DocumentCode
2534481
Title
Learning generic prior models for visual computation
Author
Zhu, Song Chun ; Mumford, David
Author_Institution
Div. of Appl. Math., Brown Univ., Providence, RI, USA
fYear
1997
fDate
17-19 Jun 1997
Firstpage
463
Lastpage
469
Abstract
This paper presents a novel theory for learning generic prior models from a set of observed natural images based on a minimax entropy theory that the authors studied in modeling textures. We start by studying the statistics of natural images including the scale invariant properties, then generic prior models were learnt to duplicate the observed statistics. The learned Gibbs distributions confirm and improve the forms of existing prior models. More interestingly inverted potentials are found to be necessary, and such potentials form patterns and enhance preferred image features. The learned model is compared with existing prior models in experiments of image restoration
Keywords
computer vision; image restoration; minimax techniques; Gibbs distributions; generic prior models learning; image restoration; inverted potentials; minimax entropy theory; natural images; observed natural images; scale invariant properties; visual computation; Computational modeling; Entropy; Gabor filters; Image restoration; Image segmentation; Minimax techniques; Motion analysis; Statistical distributions; Statistics; Tail;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition, 1997. Proceedings., 1997 IEEE Computer Society Conference on
Conference_Location
San Juan
ISSN
1063-6919
Print_ISBN
0-8186-7822-4
Type
conf
DOI
10.1109/CVPR.1997.609366
Filename
609366
Link To Document