Óscar Martínez Mozos.
Supervised Learning of Places from Range Data using AdaBoost.
Master's Thesis. University of Freiburg. December 2004.

Finalist: ICRA Best Student Paper
For the paper of my thesis:
Óscar Martínez Mozos, Cyrill Stachniss, Wolfram Burgard.
Supervised Learning of Places from Range Data Using AdaBoost.
IEEE International Conference on Robotics and Automation (ICRA).
pp. 1742-1747. Barcelona, Spain. April, 2005.

Abstract

In the past, several researchers focused on building accurate metric or topological maps out of sensor data. The majority of approaches present solutions to simultaneous localization and mapping but only a few works try to acquire semantic information autonomously. In this work we address the problem of classifying places in environments into semantic classes based on range data only. We use a supervised learning algorithm to train a set of classifiers based on the Adaboost algorithm. Using our classification system, a mobile robot is able to distinguish different places like rooms, corridors, doorways, and hallways.

Thesis: [pdf: 1370k] [ps.gz: 1732k (better image quality)]

Bibtex

@mastersthesis{martinez2004thesis,
    title   =   {Supervised Learning of Places from Range Data using AdaBoost},
    author  =   {Oscar Martinez Mozos},
    school  =   {University of Freiburg},
    month   =   {December},
    year    =   {2004},
	url 	=   {http://www.informatik.uni-freiburg.de/~omartine/publications/thesis.pdf}
}

Multimedia

Online classification with a mobile robot.
See how places are classified and colored as the robot moves.
Colors: room(blue), corridor(red), doorway(yellow).
Video: [avi: 77k].