A modular neural network classifier for the recognition of occluded characters in automatic license plate reading

  • JAG Nijhuis*
  • , A Broersma
  • , L Spaanenburg
  • *Corresponding author voor dit werk

    OnderzoeksoutputAcademicpeer review

    Samenvatting

    Occlusion is the most common reason for lowered recognition yield in free-flow license-plate reading systems. (Non-)occluded characters can readily be learned in separate neural networks but not together. Even a small proportion of occluded characters in the training set will already significantly reduce the overall recognition yield. This paper shows that a modular network can handle a realistic mixture of (non-) occluded characters with a 99.8% recognition yield per character.

    Originele taal-2English
    TitelCOMPUTATIONAL INTELLIGENT SYSTEMS FOR APPLIED RESEARCH
    RedacteurenD Ruan, P Dhondt, EE Kerre
    Plaats van productieSINGAPORE
    UitgeverijWorld Scientific Publishing
    Pagina's363-372
    Aantal pagina's10
    ISBN van geprinte versie981-238-066-3
    StatusPublished - 2002
    Evenement5th International Conference on Fuzzy Logic and Intelligent Technologies in Nuclear Science - , Belgium
    Duur: 16-sep.-200218-sep.-2002

    Other

    Other5th International Conference on Fuzzy Logic and Intelligent Technologies in Nuclear Science
    Land/RegioBelgium
    Periode16/09/200218/09/2002

    Vingerafdruk

    Duik in de onderzoeksthema's van 'A modular neural network classifier for the recognition of occluded characters in automatic license plate reading'. Samen vormen ze een unieke vingerafdruk.

    Citeer dit