Early cognitive vision: using Gestalt-laws for task-dependent, active image-processing

Wörgötter, F., Krüger, N., Pugeault, N. , Calow, D., Lappe, M., Pauwels, K., Van Hulle, M., Tan, S. and Johnston, A. (2004) Early cognitive vision: using Gestalt-laws for task-dependent, active image-processing. Natural Computing, 3(3), pp. 293-321. (doi: 10.1023/B:NACO.0000036817.38320.fe)

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Abstract

The goal of this review is to discuss different strategies employed by the visual system to limit data-flow and to focus data processing. These strategies can be hard-wired, like the eccentricity-dependent visual resolution or they can be dynamically changing like mechanisms of visual attention. We will ask to what degree such strategies are also useful in a computer vision context. Specifically we will discuss, how to adapt them to technical systems where the substrate for the computations is vastly different from that in the brain. It will become clear that most algorithmic principles, which are employed by natural visual systems, need to be reformulated to better fit to modern computer architectures. In addition, we will try to show that it is possible to employ multiple strategies in parallel to arrive at a flexible and robust computer vision system based on recurrent feedback loops and using information derived from the statistics of natural images.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Pugeault, Dr Nicolas
Authors: Wörgötter, F., Krüger, N., Pugeault, N., Calow, D., Lappe, M., Pauwels, K., Van Hulle, M., Tan, S., and Johnston, A.
College/School:College of Science and Engineering > School of Computing Science
Journal Name:Natural Computing
Publisher:Kluwer Academic Publishers
ISSN:1567-7818
ISSN (Online):1572-9796

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