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    Sensor for object detection in railway environment

    TitleSensor for object detection in railway environment
    Publication TypeJournal Article
    Año de publicación2008
    AutoresVazquez, JF, Lazaro, JL, Mazo, M, Luna, CA
    Idioma de publicaciónEnglish
    JournalSensor Letters
    Volumen6
    Número5
    Páginas690-698
    Fecha de publicación10/2008
    Lugar de publicaciónUSA
    EditorialAmerican Scientific Publishers
    Rank in category11/55
    JCR CategoryINSTRUMENTS & INSTRUMENT
    Palabras claveadaptive threshold, background subtraction, object detection, principal component analysis
    JCR Impact Factor1.587
    ISSN1546-198X
    DOI10.1166/sl.2008.m104
    Abstract

    In this paper, a solution for object detection in railway environment is presented. This solution is based on a background subtraction technique and adaptive threshold. The captured scene by a fixed camera is compared with a background model created by means of standard principal component analysis (PCA). The result of this comparison is a matrix of distances, from which a binary image, representing the background and objects, is obtained, using the adaptive threshold proposed. The histogram of the matrix of distances and the variance of a mean image is used to obtain the adaptive proposed threshold. This thresholding method was compared with the methods of Kittler and Kapur. The error rate in the detection of false-negatives with our algorithm was, at the worst, 1.3% (with Kittler's algorithm, it was 7.8% and with Kapur's algorithm, it was 6.9%). The low error rate of our thresholding method in the varied illumination and weather conditions show the validity and robustness of this alternative, which is also observed in comparison with other algorithms

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