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Visual Processing and Representation of Spatio-temporal Patterns
| Book Series | Lecture Notes in Computer Science |
| Publisher | Springer Berlin / Heidelberg |
| ISSN | 0302-9743 (Print) 1611-3349 (Online) |
| Volume | Volume 1849/2000 |
| Book | Spatial Cognition II |
| DOI | 10.1007/3-540-45460-8 |
| Copyright | 2000 |
| ISBN | 978-3-540-67584-6 |
| DOI | 10.1007/3-540-45460-8_11 |
| Pages | 145-156 |
| Subject Collection | Computer Science |
| SpringerLink Date | Saturday, January 01, 2000 |
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Visual Processing and Representation of Spatio-temporal Patterns
Andreas Eisenkolb4 , Kerstin Schill4 , Florian Röhrbein4 , Volker Baier4 , Alexandra Musto5 and Wilfried Brauer5 
| (4) |
Ludwig-Maximilians-Universität München, Germany |
| (5) |
Technische Universität, München, Germany |
Abstract
In an ongoing research we address the problem of representation and processing of motion information from an integrated perspective
covering the range from early visual processing to higher-level cognitive aspects. Here we present experiments that were conducted
to investigate the representation and processing of spatio-temporal information. Whereas research in this field is typically
concerned with the formulation and implementation of visual algorithms like, e.g., navigation by an analysis of the retinal flow pattern caused by locomotion, we are interested in memory based
capabilities, like the recognition of complicated gestures [ 16].
The result of this array of experiments will deliver a subset of parameters used for the training of an artificial neural
network model. Alternatively, these parameters are important for determining the ranges of symbolic descriptions like, e.g., the qualitative approach by [11] in order to provide an user interface matched to conditions in human vision. The architecture of the neural net will be
briefly sketched. Its output will be used as input for a higher-level stage modelled with qualitative means.
Not only for itclassification, also for prediction (which is a classi.cation of incomplete data) spatio-temporal information
has to be stored for subsequent processes operating on it.
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