Affiliation:
1. College of Automotive Engineering, Shanghai University of Engineering Science, Shanghai, China
2. China National Institution of Standardization, Beijing, China
Abstract
An efficient approach for lane marking detection and classification by the combination of convolution neural network and recurrent neural network is proposed in this paper. First, convolution neural network is trained for lane marking features extraction, and then these convolution neural network features of continuous frames are transferred to recurrent neural network model for lane boundary detection and classification in the time domain. At last, a lane boundary fitting method based on dynamic programming is proposed to improve the lane detection accuracy and robustness. The method presented generates satisfactory results of lane detection and type classification under various traffic conditions according to the experimental results, which show that the approach provided in this paper outperforms traditional methods and the total lane markings classification reached 95.21% accuracy.
Funder
Scientific Research Project of Shanghai University of Engineering Science
Training and funding Program of Shanghai College young teachers
National Natural Science Foundation of China
Fund of National Automobile Accident In-depth Investigation System
Shanghai University of Engineering Science Innovation Fund for Graduate Students
National Fund for Fundamental Research
Subject
Mechanical Engineering,Aerospace Engineering
Cited by
9 articles.
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