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A Framework for Cooperative Object Recognition

contributor Bildverstehen (IPVR)
creator Oswald, N.
Levi, P.
date 1999-10-10
description 7 pages
This paper explores the problem of object recognition from multiple observers. The basic idea is to overcome the limitations of the recognition module by integrating information from multiple sources. Each observer is capable of performing appearance-based object recognition, and through knowledge of their relative positions and orientations, the observerrs can coordinate their hypotheses to make object recognition more robust. A framework is proposed for appearance-based object recognition using Canny edge maps that are effectively normalized to be translation and scale invariant. Object matching is formulated as a non-parametric statistical similarity computation between two distribution functions, while information integration is performed in a Bayesian belief net framework. Such nets enable both a continuous and a cooperative consideration of recognition result. Experiments which are reported on two observers recognizing mobile robots show a significant improvent of the recognition results.
format application/pdf
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identifier  http://www.informatik.uni-stuttgart.de/cgi-bin/NCSTRL/NCSTRL_view.pl?id=TR-1999-12&engl=1
language eng
publisher Stuttgart, Germany, Universität Stuttgart
relation Technical Report No. 1999/12
source ftp://ftp.informatik.uni-stuttgart.de/pub/library/ncstrl.ustuttgart_fi/TR-1999-12/TR-1999-12.pdf
subject Robotics (CR I.2.9)
Vision and Scene Understanding (CR I.2.10)
Distributed Artificial Intelligence (CR I.2.11)
Kooperation
Objekterkennung
Bayes
title A Framework for Cooperative Object Recognition
type Text
Technical Report