DocumentCode
2797911
Title
Generating high precision maps for advanced guidance support
Author
Noyer, Ulf ; Schomerus, Jan ; Mosebach, Henning H. ; Gacnik, Jan ; Löper, Christian ; Lemmer, Karsten
Author_Institution
Inst. of Transp. Syst., German Aero Space Center, Braunschweig
fYear
2008
fDate
4-6 June 2008
Firstpage
871
Lastpage
876
Abstract
Modern driver assistance systems increasingly support safer and more fuel-efficient driving. To fulfill these tasks information about the vehicle environment is essential. Besides extracting this information from sensors to perceive the environment, it is also possible to use stored static data. These models allow a reliable and fast access to the environmental data without the typical problems faced with the recognition by sensors, like noise or glitches. Nowadays street maps produced for navigation purposes reach a precision of several meters. To support the driver during manoeuvres however a precision one magnitude better is necessary. Positioning technology has steadily improved over the years and will further improve in the near future. Alongside this development it can be expected, that more precise digital maps will gain more importance. In this paper a method is presented to create these maps mainly automatically. The primary goal for this method is to achieve the best precision possible investing a very small effort. Data is recorded using a test vehicle equipped with a navigation system featuring high precision DGPS and inertial sensors. Lateral deviations are compensated by using a image processing lane-detection sensor. Several measurement iterations are made and merged into a digital map of the street using statistical methods. In order to show the suitability of the generated map for all kinds of ADAS, a test track was surveyed and the digital map was used for automatic guidance of another test vehicle. It could be shown that the map generation algorithm is generally able to produce high precision maps even in challenging environments, however ADAS demanding precise lateral and longitudinal position information can only rely on digital maps and GNSS in environments with little or no obstruction to the sky.
Keywords
cartography; driver information systems; image processing; iterative methods; navigation; road safety; sensors; statistical analysis; ADAS; DGPS; GNSS; advanced guidance support; digital maps; driver assistance systems; driving safety; fuel-efficient driving; high precision map generation; image processing lane-detection sensor; inertial sensors; lateral deviations; measurement iterations; navigation system; positioning technology; statistical methods; street maps; vehicle environment; Automatic testing; Data mining; Face recognition; Global Positioning System; Image processing; Navigation; Sensor systems; System testing; Vehicles; Working environment noise;
fLanguage
English
Publisher
ieee
Conference_Titel
Intelligent Vehicles Symposium, 2008 IEEE
Conference_Location
Eindhoven
ISSN
1931-0587
Print_ISBN
978-1-4244-2568-6
Electronic_ISBN
1931-0587
Type
conf
DOI
10.1109/IVS.2008.4621193
Filename
4621193
Link To Document