A two-stage-training support vector machine approach to predicting unintentional vehicle lane departure

ABSTRACT Advanced driver assistance systems, such as unintentional lane departure warning systems, have recently drawn much attention and efforts. In this study, we explored utilizing the nonlinear binary support vector machine (SVM) technique to predict unintentional lane departure, which is innovative, as the SVM methodology has not previously been attempted for this purpose in the literature. Furthermore, we developed a two-stage training scheme to improve SVM's prediction performance in terms of minimization of the number of false positive prediction errors. Experiment data generated by VIRTTEX, a hydraulically powered, 6-degrees-of-freedom moving base driving simulator at Ford Motor Company, were used. All the vehicle variables were sampled at 50 Hz and there were 16 drowsy drivers (about 3 hours of driving per subject) and six control drivers (approximately 20 minutes f driving each). In total, 3,508 unintentional lane departures occurred for the drowsy drivers and 23 for the control drivers. Our study involving these 22 drivers with a total of more than 7.5 million prediction decisions demonstrates that (a) excellent SVM prediction performance, measured by numbers of false positives (i.e., falsely predicted lane departures) and false negatives (i.e., lane departures failed to be predicted), was achieved when the prediction horizon was 0.6 seconds or less, (b) lateral position and lateral velocity worked the best as SVM input variables among the nine variable sets that we explored, and (c) the radial basis function performed the best as the SVM kernel function.

[1]  Wolfgang Birk,et al.  Evaluation of Lane Departure Warnings for Drowsy Drivers , 2006 .

[2]  Toshihiro Wakita,et al.  On the Use of Stochastic Driver Behavior Model in Lane Departure Warning , 2011, IEEE Transactions on Intelligent Transportation Systems.

[3]  Jason Weston,et al.  A user's guide to support vector machines. , 2010, Methods in molecular biology.

[4]  Chih-Sheng Hsu,et al.  Onboard Measurement and Warning Module for Irregular Vehicle Behavior , 2008, IEEE Transactions on Intelligent Transportation Systems.

[5]  Wu Meng,et al.  Application of Support Vector Machines in Financial Time Series Forecasting , 2007 .

[6]  Oliviero Carugo,et al.  Data Mining Techniques for the Life Sciences , 2009, Methods in Molecular Biology.

[7]  Paul Milgram,et al.  The Development of a Time-Related Measure to Describe Driving Strategy , 1984 .

[8]  Yang Shao,et al.  Comparison of support vector machine, neural network, and CART algorithms for the land-cover classification using limited training data points , 2012 .

[9]  Qingyang Chen,et al.  Prediction of unintended lane departure based on detection of lane boundary , 2011, Proceedings of 2011 IEEE International Conference on Vehicular Electronics and Safety.

[10]  Chieh-Li Chen,et al.  Vision-based lane departure detection system in urban traffic scenes , 2010, 2010 11th International Conference on Control Automation Robotics & Vision.

[11]  Monson H. Hayes,et al.  A Non Overlapping Camera Network : Calibration and Application Towards Lane Departure Warning , 2011, ICIP 2011.

[12]  A. El Hajjaji,et al.  Vehicle dynamics and road curvature estimation for lane departure warning system using robust fuzzy observers: experimental validation , 2015 .

[13]  S. Lokhande,et al.  An improved lane departure method for Advanced Driver Assistance System , 2012, 2012 International Conference on Computing, Communication and Applications.

[14]  Corinna Cortes,et al.  Support-Vector Networks , 1995, Machine Learning.

[15]  Wilfried Enkelmann,et al.  A video-based lane keeping assistant , 2000, Proceedings of the IEEE Intelligent Vehicles Symposium 2000 (Cat. No.00TH8511).

[16]  Yi Feng Su,et al.  FPGA Implement of a Vision Based Lane Departure Warning System , 2011 .

[17]  Saïd Mammar,et al.  Time to line crossing for lane departure avoidance: a theoretical study and an experimental setting , 2006, IEEE Transactions on Intelligent Transportation Systems.

[18]  Václav Hlaváč,et al.  Statistical Pattern Recognition Toolbox for Matlab User's guide , 2004 .

[19]  Edward Jones,et al.  Automotive standards-grade lane departure warning system , 2012 .

[20]  Azim Eskandarian,et al.  Research advances in intelligent collision avoidance and adaptive cruise control , 2003, IEEE Trans. Intell. Transp. Syst..

[21]  Jintao Xiong,et al.  Robust lane detection and tracking for lane departure warning , 2012, 2012 International Conference on Computational Problem-Solving (ICCP).

[22]  Jungho Im,et al.  Support vector machines in remote sensing: A review , 2011 .

[23]  Mohammed Hadi,et al.  Effect of Pavement Marking Retroreflectivity on the Performance of Vision-Based Lane Departure Warning Systems , 2011, J. Intell. Transp. Syst..

[24]  Sheng-De Wang,et al.  Fuzzy support vector machines , 2002, IEEE Trans. Neural Networks.

[25]  Vladimir N. Vapnik,et al.  The Nature of Statistical Learning Theory , 2000, Statistics for Engineering and Information Science.

[26]  PradhanBiswajeet A comparative study on the predictive ability of the decision tree, support vector machine and neuro-fuzzy models in landslide susceptibility mapping using GIS , 2013 .

[27]  Alexei Pozdnoukhov,et al.  Machine Learning for Spatial Environmental Data: Theory, Applications, and Software , 2009 .

[28]  Mascha C. van der Voort,et al.  A Review of Lateral Driver Support Systems , 2007, 2007 IEEE Intelligent Transportation Systems Conference.

[29]  Jing-Fu Liu,et al.  Development of a Vision-Based Driver Assistance System with Lane Departure Warning and Forward Collision Warning Functions , 2008, 2008 Digital Image Computing: Techniques and Applications.

[30]  Dimitar Filev,et al.  A support vector machine approach to unintentional vehicle lane departure prediction , 2014, 2014 IEEE Intelligent Vehicles Symposium Proceedings.

[31]  Alessandro Casavola,et al.  Predictive time-to-lane-crossing estimation for lane departure warning systems , 2009 .

[32]  Biswajeet Pradhan,et al.  A comparative study on the predictive ability of the decision tree, support vector machine and neuro-fuzzy models in landslide susceptibility mapping using GIS , 2013, Comput. Geosci..

[33]  A. Galip Ulsoy,et al.  Time to Lane Crossing calculation and Characterization of its associated Uncertainty , 1996, J. Intell. Transp. Syst..