• DocumentCode
    1762821
  • Title

    A Framework for Estimating Driver Decisions Near Intersections

  • Author

    Gadepally, Vijay ; Krishnamurthy, Ashok ; Ozguner, Umit

  • Author_Institution
    Massachusetts Inst. of Technol., Lexington, MA, USA
  • Volume
    15
  • Issue
    2
  • fYear
    2014
  • fDate
    41730
  • Firstpage
    637
  • Lastpage
    646
  • Abstract
    We present a framework for the estimation of driver behavior at intersections, with applications to autonomous driving and vehicle safety. The framework is based on modeling the driver behavior and vehicle dynamics as a hybrid-state system (HSS), with driver decisions being modeled as a discrete-state system and the vehicle dynamics modeled as a continuous-state system. The proposed estimation method uses observable parameters to track the instantaneous continuous state and estimates the most likely behavior of a driver given these observations. This paper describes a framework that encompasses the hybrid structure of vehicle-driver coupling and uses hidden Markov models (HMMs) to estimate driver behavior from filtered continuous observations. Such a method is suitable for scenarios that involve unknown decisions of other vehicles, such as lane changes or intersection access. Such a framework requires extensive data collection, and the authors describe the procedure used in collecting and analyzing vehicle driving data. For illustration, the proposed hybrid architecture and driver behavior estimation techniques are trained and tested near intersections with exemplary results provided. Comparison is made between the proposed framework, simple classifiers, and naturalistic driver estimation. Obtained results show promise for using the HSS-HMM framework.
  • Keywords
    automobiles; continuous systems; hidden Markov models; mobile robots; road safety; vehicle dynamics; HMMs; HSS-HMM framework; autonomous driving; continuous observation filtering; continuous-state system; data collection; discrete-state system; driver behavior estimation technique; driver behavior modeling; driver decision estimation; hidden Markov models; hybrid architecture technique; hybrid-state system; instantaneous continuous state tracking; observable parameters; vehicle driving data analysis; vehicle dynamics modeling; vehicle safety; vehicle-driver coupling; Decision support systems; Estimation; Hidden Markov models; Mobile robots; Sensors; Turning; Vehicles; Autonomous vehicles; Gaussian mixture models (GMMs); driver decision estimation; hidden Markov models; intelligent transportation;
  • fLanguage
    English
  • Journal_Title
    Intelligent Transportation Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1524-9050
  • Type

    jour

  • DOI
    10.1109/TITS.2013.2285159
  • Filename
    6670061