DocumentCode
565467
Title
Hybrid tracking of human operators using IMU/UWB data fusion by a Kalman filter
Author
Corrales, J.A. ; Candelas, F.A. ; Torres, F.
Author_Institution
Phys., Syst. Eng. & Signal Theor. Dept, Univ. of Alicante., Alicante, Spain
fYear
2008
fDate
12-15 March 2008
Firstpage
193
Lastpage
200
Abstract
The precise localization of human operators in robotic workplaces is an important requirement to be satisfied in order to develop human-robot interaction tasks. Human tracking provides not only safety for human operators, but also context information for intelligent human-robot collaboration. This paper evaluates an inertial motion capture system which registers full-body movements of an user in a robotic manipulator workplace. However, the presence of errors in the global translational measurements returned by this system has led to the need of using another localization system, based on Ultra-WideBand (UWB) technology. A Kalman filter fusion algorithm which combines the measurements of these systems is developed. This algorithm unifies the advantages of both technologies: high data rates from the motion capture system and global translational precision from the UWB localization system. The developed hybrid system not only tracks the movements of all limbs of the user as previous motion capture systems, but is also able to position precisely the user in the environment.
Keywords
Kalman filters; control engineering computing; human-robot interaction; manipulators; sensor fusion; tracking; ultra wideband technology; IMU data fusion; Kalman filter fusion algorithm; UWB data fusion; UWB localization system; full-body movement; global translational measurement; global translational precision; human operator localization; human tracking; human-robot interaction task; hybrid tracking; inertial motion capture system; intelligent human-robot collaboration; limb movement tracking; robotic manipulator workplace; robotic workplace; ultra-wideband technology; Humans; Kalman filters; Mathematical model; Position measurement; Robots; Sensors; Tracking; Kalman filter; Motion capture; UWB; data fusion; human tracking and monitoring; indoor location; inertial sensors;
fLanguage
English
Publisher
ieee
Conference_Titel
Human-Robot Interaction (HRI), 2008 3rd ACM/IEEE International Conference on
Conference_Location
Amsterdam
ISSN
2167-2121
Print_ISBN
978-1-60558-017-3
Type
conf
Filename
6249434
Link To Document