Lane Detection and Road Surface Reconstruction Based on Multiple Vanishing Point & Symposia

2018 IEEE Intelligent Vehicles Symposium (IV)(2018)

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摘要
Lane detection algorithm based on monocular camera is one of the most popular methods in recent years, which can meet the requirement of real-time and robust for autonomous vehicle. In this way, the position of lane markers can be transferred from perspective space to road space base on the planar road assumption. However, large numbers of road scenes, especially the up and down slope road environment, cannot meet this requirement.In this paper, we propose a multiple vanishing point detection method to reconstruct the road space in slope scenes. In order to improve the accuracy of vanishing point estimation, the road images are decomposed into near and far regions. We extract candidate lane markers in near region by using multiscale convolution kernel and Hough Transform at first. Then, the lane markers in far region can be detected based on the result of near region. At last, different vanishing points are extracted in near and far regions. With the help of a vanishing point based on camera model, we can project both of near and far regions into road space. The experiment is conducted on our self-driving car `TuLian' in campus environment.
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关键词
road surface reconstruction,lane detection algorithm,monocular camera,autonomous vehicle,road scenes,slope road environment,multiple vanishing point detection method,slope scenes,point estimation,road images,candidate lane markers,self-driving car TuLian,Symposia,multiscale convolution kernel,Hough transform
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