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

نویسندگان

  • Alhadi Ali Albousefi
  • Hao Ying
  • Dimitar Filev
  • Fazal U. Syed
  • Prakah-Asante Kwaku
  • Finn Tseng
  • Hsin-Hsiang Yang
چکیده

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 three-hour driving per subject) and six control drivers (approximately 20 minutes driving each). A total of 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 over 7.5 million prediction decisions demonstrates that: (1) D ow nl oa de d by [ U ni ve rs ity o f A ri zo na ] at 1 1: 34 1 4 Ju ne 2 01 6

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عنوان ژورنال:
  • J. Intellig. Transport. Systems

دوره 21  شماره 

صفحات  -

تاریخ انتشار 2017