Title
Robust Data Fusion of Multimodal Sensory Information for Mobile Robots
Abstract
Urban search and rescue USAR missions for mobile robots require reliable state estimation systems resilient to conditions given by the dynamically changing environment. We design and evaluate a data fusion system for localization of a mobile skid-steer robot intended for USAR missions. We exploit a rich sensor suite including both proprioceptive inertial measurement unit and tracks odometry and exteroceptive sensors omnidirectional camera and rotating laser rangefinder. To cope with the specificities of each sensing modality such as significantly differing sampling frequencies, we introduce a novel fusion scheme based on an extended Kalman filter for six degree of freedom orientation and position estimation. We demonstrate the performance on field tests of more than 4.4 ﾿km driven under standard USAR conditions. Part of our datasets include ground truth positioning, indoor with a Vicon motion capture system and outdoor with a Leica theodolite tracker. The overall median accuracy of localization-achieved by combining all four modalities-was 1.2% and 1.4% of the total distance traveled for indoor and outdoor environments, respectively. To identify the true limits of the proposed data fusion, we propose and employ a novel experimental evaluation procedure based on failure case scenarios. In this way, we address the common issues such as slippage, reduced camera field of view, and limited laser rangefinder range, together with moving obstacles spoiling the metric map. We believe such a characterization of the failure cases is a first step toward identifying the behavior of state estimation under such conditions. We release all our datasets to the robotics community for possible benchmarking.
Year
DOI
Venue
2015
10.1002/rob.21535
Journal of Field Robotics
Field
DocType
Volume
Omnidirectional camera,Computer vision,Extended Kalman filter,Simulation,Odometry,Sensor fusion,Inertial measurement unit,Artificial intelligence,Engineering,Robot,Mobile robot,Robotics
Journal
32
Issue
ISSN
Citations 
4
1556-4959
12
PageRank 
References 
Authors
0.59
33
6
Name
Order
Citations
PageRank
Vladimir Kubelka1394.85
Lorenz Oswald2120.59
François Pomerleau341026.35
Francis Colas434718.87
Tomás Svoboda544230.00
Michal Reinstein61238.62