DocumentCode :
1546385
Title :
Track-to-Track Fusion With Asynchronous Sensors Using Information Matrix Fusion for Surround Environment Perception
Author :
Aeberhard, Michael ; Schlichthärle, Stefan ; Kaempchen, Nico ; Bertram, Torsten
Author_Institution :
BMW Group Res. & Technol., Munich, Germany
Volume :
13
Issue :
4
fYear :
2012
Firstpage :
1717
Lastpage :
1726
Abstract :
Driver-assistance systems and automated driving applications in the future will require reliable and flexible surround environment perception. Sensor data fusion is typically used to increase reliability and the observable field of view. In this paper, a novel approach to track-to-track fusion in a high-level sensor data fusion architecture for automotive surround environment perception using information matrix fusion (IMF) is presented. It is shown that IMF produces the same good accuracy in state estimation as a low-level centralized Kalman filter, which is widely known to be the most accurate method of fusion. Additionally, as opposed to state-of-the-art track-to-track fusion algorithms, the presented approach guarantees a globally maintained track over time as an object passes in and out of the field of view of several sensors, as required in surround environment perception. As opposed to the often-used cascaded Kalman filter for track-to-track fusion, it is shown that the IMF algorithm has a smaller error and maintains consistency in the state estimation. The proposed approach using IMF is compared with other track-to-track fusion algorithms in simulation and is shown to perform well using real sensor data in a prototype vehicle with a 12-sensor configuration for surround environment perception in highly automated driving applications.
Keywords :
Kalman filters; driver information systems; sensor fusion; state estimation; 12-sensor configuration; IMF algorithm; asynchronous sensors; automated driving applications; automotive surround environment perception; driver-assistance systems; high-level sensor data fusion architecture; information matrix fusion; low-level centralized Kalman filter; state estimation; track-to-track fusion agorithm; Algorithm design and analysis; Covariance matrix; Data integration; Sensor fusion; Asynchronous sensors; driver-assistance systems; environment perception; information matrix fusion (IMF); multisensor fusion; track-to-track fusion;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2012.2202229
Filename :
6222334
Link To Document :
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