DocumentCode :
3013926
Title :
Unsupervised Learning of Image Transformations
Author :
Memisevic, Roland ; Hinton, Geoffrey
Author_Institution :
Univ. of Toronto, Toronto
fYear :
2007
fDate :
17-22 June 2007
Firstpage :
1
Lastpage :
8
Abstract :
We describe a probabilistic model for learning rich, distributed representations of image transformations. The basic model is defined as a gated conditional random field that is trained to predict transformations of its inputs using a factorial set of latent variables. Inference in the model consists in extracting the transformation, given a pair of images, and can be performed exactly and efficiently. We show that, when trained on natural videos, the model develops domain specific motion features, in the form of fields of locally transformed edge filters. When trained on affine, or more general, transformations of still images, the model develops codes for these transformations, and can subsequently perform recognition tasks that are invariant under these transformations. It can also fantasize new transformations on previously unseen images. We describe several variations of the basic model and provide experimental results that demonstrate its applicability to a variety of tasks.
Keywords :
image coding; image motion analysis; image representation; statistical distributions; unsupervised learning; distributed representation learning; domain specific motion features; encodings; gated conditional random field; image transformations; locally transformed edge filters; probabilistic model; unsupervised learning; Biological system modeling; Feature extraction; Filters; Image recognition; Predictive models; Solid modeling; Statistics; Training data; Unsupervised learning; Videos;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition, 2007. CVPR '07. IEEE Conference on
Conference_Location :
Minneapolis, MN
ISSN :
1063-6919
Print_ISBN :
1-4244-1179-3
Electronic_ISBN :
1063-6919
Type :
conf
DOI :
10.1109/CVPR.2007.383036
Filename :
4270061
Link To Document :
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