DocumentCode
64580
Title
Perceptual Principles for Video Classification With Slow Feature Analysis
Author
Theriault, Christian ; Thome, Nicolas ; Cord, Matthieu ; Perez, Pablo
Author_Institution
UPMC-Sorbonne Univ., Paris, France
Volume
8
Issue
3
fYear
2014
fDate
Jun-14
Firstpage
428
Lastpage
437
Abstract
At the core of vision research is the notion of perceptual invariance. The question of how the visual system is able to develop stable or invariant states through the ever transforming environment is central to understanding the brain´s recognition process. The coined term slowness principle used in slow feature analysis is a reference to the brain´s ability to generate slow changing and thus stable percepts in response to the fast varying visual stimulations in the environment. Based on this principle this paper deals with categorization of video sequences composed of dynamic natural scenes. Unlike models relying on supervised learning or handcrafted descriptors, we represent videos using unsupervised learning of motion features. Our method is based on: 1) Slow feature analysis principle from which motion features representing the principal and more stable motion components of training videos are learned. 2) Integration of the local motion feature into a global classification architecture. Classification experiments produce 11% and 19% improvements compared to state-of-the-art methods on two dynamic natural scenes data sets. A quantitative and qualitative analysis illustrates how the learned slow features untangle the input manifolds and remain stable under various parameters settings.
Keywords
image classification; image motion analysis; image sequences; unsupervised learning; video signal processing; brain recognition process; dynamic natural scene data sets; fast varying visual stimulations; global classification architecture; handcrafted descriptors; local motion feature; motion features; perceptual invariance; qualitative analysis; quantitative analysis; slow feature analysis; stable motion components; supervised learning; training videos; unsupervised learning; video classification; video sequence categorization; visual system; Biomedical optical imaging; Dynamics; Encoding; Feature extraction; Integrated optics; Optical imaging; Visualization; Pattern recognition; machine learning; motion analysis; neural network; unsupervised learning; video signal processing;
fLanguage
English
Journal_Title
Selected Topics in Signal Processing, IEEE Journal of
Publisher
ieee
ISSN
1932-4553
Type
jour
DOI
10.1109/JSTSP.2014.2315742
Filename
6783694
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