A Reliable and Robust Lane Detection System Based on the Parallel Use of Three Algorithms for Driving Safety Assistance(Intelligent Transport Systems,<Special Section>Machine Vision Applications)
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概要
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Road traffic incidents analysis has shown that a third of them occurs without any conflict which indicates problems with road following. In this paper a driving safety assistance system is introduced, whose aim is to prevent the driver drifting off or running off the road. The road following system is based on a frontal on-board monocular camera. In order to get a high degree of reliability and robustness, an original combination of three different algorithms is performed. Low level results from the first two algorithms are used to compute a reliability indicator and to update a high level model through the third algorithm using Kalman filtering. Searching areas of the road sides for the next image are also updated. Experimental results show the reliability and the robustness of this original association of three different algorithms. Various road situations are addressed, including roads with high curvature. A multi-lanes extension is also presented.
- 社団法人電子情報通信学会の論文
- 2006-07-01
著者
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Chapuis Roland
Lasmea Research Unit-universit Blaise Pascal
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LABAYRADE Raphael
Vehicle-Infrastructure-Driver Interactions Research Unit LIVIC-INRETS LCPC
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DOURET Jerome
Vehicle-Infrastructure-Driver Interactions Research Unit LIVIC-INRETS LCPC
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LANEURIT Jean
LASMEA Research Unit-Universit Blaise Pascal
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Labayrade Raphael
Vehicle-infrastructure-driver Interactions Research Unit Livic-inrets
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Chapuis Roland
LASMEA Laboratory, Blaise Pascal University
関連論文
- A Reliable and Robust Lane Detection System Based on the Parallel Use of Three Algorithms for Driving Safety Assistance(Intelligent Transport Systems,Machine Vision Applications)
- Predictive Lane Detection by Interaction with Digital Road Map
- Predictive Lane Detection by Interaction with Digital Road Map
- Robust and Fast Stereovision Based Obstacles Detection for Driving Safety Assistance (ITS) (Machine Vision Applications)