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Advisor(s)
Abstract(s)
Object recognition requires that templates with canonical
views are stored in memory. Such templates must somehow be normalised.
In this paper we present a novel method for obtaining 2D
translation, rotation and size invariance. Cortical simple, complex and
end-stopped cells provide multi-scale maps of lines, edges and keypoints.
These maps are combined such that objects are characterised. Dynamic
routing in neighbouring neural layers allows feature maps of input objects
and stored templates to converge. We illustrate the construction
of group templates and the invariance method for object categorisation
and recognition in the context of a cortical architecture, which can be
applied in computer vision.
Description
Keywords
Visão computorizada Córtex visual 621.38
Citation
3rd Iberian Conference on Pattern Recognition and Image Analysis (IbPRIA 07). - Girona, 6 - 8 June 2007. - LNCS 4477. - p. 459-466
Publisher
Girona