DocumentCode :
1452004
Title :
A Learning Approach Towards Detection and Tracking of Lane Markings
Author :
Gopalan, Raghavan ; Tsai Hong ; Shneier, Michael ; Chellappa, Rama
Author_Institution :
Video & Multimedia Dept., AT&T LabsResearch, Middletown, NJ, USA
Volume :
13
Issue :
3
fYear :
2012
Firstpage :
1088
Lastpage :
1098
Abstract :
Road scene analysis is a challenging problem that has applications in autonomous navigation of vehicles. An integral component of this system is the robust detection and tracking of lane markings. It is a hard problem primarily due to large appearance variations in lane markings caused by factors such as occlusion (traffic on the road), shadows (from objects like trees), and changing lighting conditions of the scene (transition from day to night). In this paper, we address these issues through a learning-based approach using visual inputs from a camera mounted in front of a vehicle. We propose the following: 1) a pixel-hierarchy feature descriptor to model the contextual information shared by lane markings with the surrounding road region; 2) a robust boosting algorithm to select relevant contextual features for detecting lane markings; and 3) particle filters to track the lane markings, without knowledge of vehicle speed, by assuming the lane markings to be static through the video sequence and then learning the possible road scene variations from the statistics of tracked model parameters. We investigate the effectiveness of our algorithm on challenging daylight and night-time road video sequences.
Keywords :
cameras; feature extraction; hidden feature removal; image sequences; learning (artificial intelligence); lighting; object detection; object tracking; particle filtering (numerical methods); road vehicles; roads; statistics; traffic engineering computing; appearance variations; autonomous vehicle navigation; daylight road video sequences; learning-based approach; lighting conditions; night-time road video sequences; occlusion; particle filters; pixel-hierarchy feature descriptor; road scene analysis; robust boosting algorithm; robust lane marking detection; robust lane marking tracking; shadows; vehicle mounted camera; Boosting; Context modeling; Feature extraction; Learning; Road vehicles; Roads; Training; Boosting; context; lane marking detection; outlier robustness; tracking and learning;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2012.2184756
Filename :
6155090
Link To Document :
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