Department of Computer Science
Boltzmannstrasse 3
85748 Garching
Germany
Tel: +49-89-289-17754
Fax: +49-89-289-17757
Office: 02.09.042
Mail: b.radig@in.tum.de
Prof. Dr. Bernd Radig is principal researcher and member of the executive board of the Cluster of Excellence >Cognition for Technical Systems (CoTeSys)< (since 2006) and Full Professor for Image Understanding and Knowledge Based Systems, Fakultaet fuer Informatik, TU Muenchen (1986-2009). He was chairman and founder of the Association of Bavarian Research Cooperations (1993-2007), a unique network of scientists, specialising in challenging disciplines in accordance with the Bavarian companies. 1988 he founded together with colleagues from Univ. Erlangen and Univ. Passau and support from Bavarian enterprises the Bavarian Research Centre for Knowledge Based Systems (FORWISS), an institute common to the three universities. He holds the German Order of Merit (1992) and the award >Pro Meritis Scientiae et Litterarum< of the State of Bavaria (2002). His current activities are in real-time image sequence understanding for applications in robotics, sports or driver assistance systems.
@InProceedings{ SchroeterDagm04DetectClassGW,
author = {D. Schr{\"o}ter and T. Weber and M. Beetz and B. Radig},
title = {{Detection and Classification of Gateways for the Acquisition of Structured Robot Maps}},
booktitle = {Proc. of 26th Pattern Recognition Symposium (DAGM), T\"ubingen/Germany},
year = {2004},
abstract = {{The automatic acquisition of structured object maps
requires sophisticated perceptual mechanisms that enable the robot
to recognize the objects that are to be stored in the robot map.
This paper investigates a particular object recognition problem:
the automatic detection and classification of gateways in office
environments based on laser range data. We will propose, discuss,
and empirically evaluate a sensor model for crossing gateways and
different approaches to gateway classification including simple
maximum classifiers and HMM-based classification
of observation sequences.}},
bib2html_pubtype = {Refereed Conference Paper},
bib2html_rescat = {Robot Mapping},
bib2html_groups = {IAS,EvI},
bib2html_funding = {EvI},
bib2html_keywords = {Environment Mapping},
}