• DocumentCode
    3167215
  • Title

    A Hidden Markov Model for Vehicle Detection and Counting

  • Author

    Miller, Nicholas ; Thomas, Mohan A. ; Eichel, Justin A. ; Mishra, Akshaya

  • Author_Institution
    Miovision Technol. Inc., Kitchener, ON, Canada
  • fYear
    2015
  • fDate
    3-5 June 2015
  • Firstpage
    269
  • Lastpage
    276
  • Abstract
    To reduce roadway congestion and improve traffic safety, accurate traffic metrics, such as number of vehicles travelling through lane-ways, are required. Unfortunately most existing infrastructure, such as loop-detectors and many video detectors, do not feasibly provide accurate vehicle counts. Consequently, a novel method is proposed which models vehicle motion using hidden Markov models (HMM). The proposed method represents a specified small region of the roadway as ´empty´, ´vehicle entering´, ´vehicle inside´, and ´vehicle exiting´, and then applies a modified Viterbi algorithm to the HMM sequential estimation framework to initialize and track vehicles. Vehicle observations are obtained using an Adaboost trained Haar-like feature detector. When tested on 88 hours of video, from three distinct locations, the proposed method proved to be robust to changes in lighting conditions, moving shadows, and camera motion, and consistently out-performed Multiple Target Tracking (MTT) and Virtual Detection Line(VDL) implementations. The median vehicle count error of the proposed method is lower than MTT and VDL by 28%, and 70% respectively. As future work, this algorithm will be implemented to provide the traffic industry with improved automated vehicle counting, with the intent to eventually provide real-time counts.
  • Keywords
    Haar transforms; feature extraction; hidden Markov models; image sensors; object detection; road vehicles; traffic engineering computing; Adaboost trained Haar-like feature detector; HMM sequential estimation framework; MTT; VDL implementations; automated vehicle counting; camera motion; hidden Markov model; lighting conditions; median vehicle count error; moving shadows; multiple target tracking; roadway congestion; traffic metrics; traffic safety; vehicle counting; vehicle counts; vehicle detection; vehicle entering; vehicle exiting; vehicle inside; vehicle motion; vehicle tracking; vehicle travel; virtual detection line; Detectors; Hidden Markov models; Real-time systems; Target tracking; Vehicle detection; Vehicles; Haar-like features; Intelligent Transportation Systems; hidden Markov models; machine learning; vehicle detection; vehicle tracking;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer and Robot Vision (CRV), 2015 12th Conference on
  • Conference_Location
    Halifax, NS
  • Type

    conf

  • DOI
    10.1109/CRV.2015.42
  • Filename
    7158929