DocumentCode
1483574
Title
FootSLAM: Pedestrian Simultaneous Localization and Mapping Without Exteroceptive Sensors—Hitchhiking on Human Perception and Cognition
Author
Angermann, Michael ; Robertson, Patrick
Author_Institution
DLR Oberpfaffenhofen, Inst. of Commun. & Navig., Wessling, Germany
Volume
100
fYear
2012
Firstpage
1840
Lastpage
1848
Abstract
In this paper, we describe FootSLAM, a Bayesian estimation approach that achieves simultaneous localization and mapping for pedestrians. FootSLAM uses odometry obtained with foot-mounted inertial sensors. Whereas existing approaches to infrastructure-less pedestrian position determination are either subject to unbounded growth of positioning error, or require either a priori map information, or exteroceptive sensors, such as cameras or light detection and ranging (LIDARs), FootSLAM achieves long-term error stability solely based on inertial sensor measurements. An analysis of the problem based on a dynamic Bayesian network (DBN) model reveals that this surprising result becomes possible by effectively hitchhiking on human perception and cognition. Two extensions to FootSLAM, namely, PlaceSLAM, for incorporating additional measurements or user provided hints, and FeetSLAM, for automated collaborative mapping, are discussed. Experimental data that validate FootSLAM and its extensions are presented. It is foreseeable that the sensors and processing power of future devices such as smartphones are likely to suffice to position the bearer with the same accuracy that FootSLAM achieves with foot-mounted sensors already today.
Keywords
Bayes methods; distance measurement; pedestrians; remote sensing; Bayesian estimation approach; DBN; FootSLAM; LIDAR; PlaceSLAM; automated collaborative mapping; cameras; dynamic Bayesian network; exteroceptive sensors; foot-mounted inertial sensors; human perception; inertial sensor measurements; infrastructureless pedestrian position determination; long-term error stability; odometry; pedestrian simultaneous localization; positioning error unbounded growth; smartphones; Bayesian methods; Human factors; Legged locomotion; Mobile radio mobility management; Navigation; Sensors; Simultaneous localization and mapping; Visualization; FeetSLAM; FootSLAM; odometry; pedestrian navigation; simultaneous localization and mapping (SLAM);
fLanguage
English
Journal_Title
Proceedings of the IEEE
Publisher
ieee
ISSN
0018-9219
Type
jour
DOI
10.1109/JPROC.2012.2189785
Filename
6178000
Link To Document