posted on 2009-11-18, 14:06authored byWashington Y. Ochieng, Mohammed Quddus, Robert B. Noland
Global Navigation Satellite Systems (GNSS) such as GPS and digital road maps can be used for land vehicle navigation
systems. However, GPS requires a level of augmentation with other navigation sensors and systems such as Dead
Reckoning (DR) devices, in order to achieve the required navigation performance (RNP) in some areas such as urban
canyons, streets with dense tree cover, and tunnels. One of the common solutions is to integrate GPS with DR by
employing a Kalman Filter (Zhao et al., 2003). The integrated navigation systems usually rely on various types of
sensors. Even with very good sensor calibration and sensor fusion technologies, inaccuracies in the positioning sensors
are often inevitable. There are also errors associated with spatial road network data. This paper develops an improved
probabilistic Map Matching (MM) algorithm to reconcile inaccurate locational data with inaccurate digital road network
data. The basic characteristics of the algorithm take into account the error sources associated with the positioning
sensors, the historical trajectory of the vehicle, topological information on the road network (e.g., connectivity and
orientation of links), and the heading and speed information of the vehicle. This then enables a precise identification of
the correct link on which the vehicle is travelling. An optimal estimation technique to determine the vehicle position on
the link has also been developed and is described. Positioning data was obtained from a comprehensive field test carried
out in Central London. The algorithm was tested on a complex urban road network with a high resolution digital road
map. The performance of the algorithm was found to be very good for different traffic maneuvers and a significant
improvement over using just an integrated GPS/DR solution.
History
School
Architecture, Building and Civil Engineering
Citation
OCHIENG, W.Y., QUDDUS, M.A. and NOLAND, R.B., 2003. Map-matching in complex urban road networks. Brazilian Journal of Cartography, 55 (2), pp. 1-14